1,320 results on '"Expert system"'
Search Results
2. A case study of improving a non-technical losses detection system through explainability.
- Author
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Coma-Puig, Bernat, Calvo, Albert, Carmona, Josep, and Gavaldà, Ricard
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ARTIFICIAL intelligence ,CORPORATE meetings ,MACHINE learning ,NATURE reserves ,BUSINESS analysts - Abstract
Detecting and reacting to non-technical losses (NTL) is a fundamental activity that energy providers need to face in their daily routines. This is known to be challenging since the phenomenon of NTL is multi-factored, dynamic and extremely contextual, which makes artificial intelligence (AI) and, in particular, machine learning, natural areas to bring effective and tailored solutions. If the human factor is disregarded in the process of detecting NTL, there is a high risk of performance degradation since typical problems like dataset shift and biases cannot be easily identified by an algorithm. This paper presents a case study on incorporating explainable AI (XAI) in a mature NTL detection system that has been in production in the last years both in electricity and gas. The experience shows that incorporating this capability brings interesting improvements to the initial system and especially serves as a common ground where domain experts, data scientists, and business analysts can meet. [ABSTRACT FROM AUTHOR]
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- 2024
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3. TRANSFORMER FAULT DIAGNOSIS AND LOCATION METHOD BASED ON FAULT TREE ANALYSIS.
- Author
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ZHIWU WU, TIANFU HUANG, CHUNGUANG WANG, XIANG WU, and YANZHAO TU
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CURRENT transformers (Instrument transformer) ,FAULT diagnosis ,FAULT location (Engineering) ,ELECTRIC power distribution grids ,OPTICAL fibers ,FAULT trees (Reliability engineering) - Abstract
Fiber optical current transformer (FOCT) is widely used in power systems for fault diagnosis and analysis, which can improve its operational reliability. Construct fault modes and fault trees based on fault data of all fiber current transformers, and construct a fault feature space. Constructing a fault diagnosis expert system using fault trees and fault feature space clustering centers to achieve accurate diagnosis of fault types, patterns, and components. The proposed method was validated using fault data and case studies of all fiber current transformers in a regional power grid, and the results showed that: The on-site fault case is closest to the cluster center of drift deviation fault, so it belongs to drift deviation fault. Further extract the on-site maintenance report, which indicates that the operating temperature of the all fiber current transformer is relatively high. The diagnostic results of the fault diagnosis expert system for the faulty all fiber current transformer are consistent with the actual results on site, verifying the accuracy and reliability of this method. [ABSTRACT FROM AUTHOR]
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- 2024
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4. The investigation of a digitalized projective psychological assessment: Comparison to human expert on bender gestalt test.
- Author
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Chang, Won-Du, Kim, Byeongjun, Kim, Bogeum, Lee, Kyunghan, Kim, Yeonji, Hwang, Jueun, and Choi, Seong-Jin
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IMPLICIT bias ,COMPUTER algorithms ,PSYCHOLOGICAL tests ,COUNSELORS ,PENCILS - Abstract
The Bender-Gestalt Test (BGT) is a psychological assessment used to understand the characteristics of a person by evaluating the drawings of the examinees when asked to copy provided shapes. The evaluation results in numerical scores for each shape, which describe the level of psychological issues. This test has been conducted using a pencil and a paper by a human counsellor traditionally, but the results can be contaminated by unconscious bias or mistakes. This paper proposed a digitalized BGT system which utilizes a stylus pen and a tablet to assist a human counsellor. The proposed system records the responses of examinees, and the responses were evaluated by computer algorithms. The proposed system was evaluated by comparing the scores of the proposed system and human experts, with the BGT responses of 28 participants. Both scores were similar in general, but it was found that the scores of the proposed system were more accurate for the ambiguous drawings. The results indicate that the proposed system can be utilized to assist counsellors for the diagnosis of the abnormalities precisely by accurately detecting small differences in the drawings. [ABSTRACT FROM AUTHOR]
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- 2024
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5. The Development of TOEFL ITP Learning Determination Application Using Forward Chaining Method.
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Nurrahmi, Herly and Putri, Liza Amalia
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ENGLISH language ,INTERNATIONAL communication ,PROBLEM solving ,RECOMMENDER systems ,WATERFALLS - Abstract
Adequate English language competency is very necessary in today's modern era so as not to discuss difficulties in global communication and interaction. The average English language skills of students or generations aged 18-20 years in Indonesia show low results. To solve this problem, efforts are needed to increase English language competency through appropriate learning activities. The system development method for this application uses the waterfall method. The use of the forward channeling method in an expert system will help determine appropriate and effective ways of teaching and learning English to students. The aim of this research is to apply an expert system to obtain recommendations for effective English learning based on TOEFL ITP scores. Three aspects of TOEFL ITP, namely listening, reading and structure, will be used in the analysis process using forward chaining. The forward chaining method carries out processing starting from the data set and then performs inference according to the rules used until the optimal inference is found. The inference engine will continue to go through the process to arrive at the right decision result. The expert system application is designed to be website-based so that it makes it easier for users to use it at any time. [ABSTRACT FROM AUTHOR]
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- 2024
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6. Application of USTER Quality Expert System in spinning quality control.
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CHEN Fang and WANG Zhenzhen
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TOTAL quality management ,LABOR costs ,INDUSTRIAL efficiency ,QUALITY control ,PROCESS optimization - Abstract
The main functions and application effects of USTER Quality Expert System were described. The composition and operation mechanism of USTER Quality Expert System were introduced. Five modules of USTER Quality Expert System, such as alarm center, factory analysis, yarn prediction, ring spinning optimization and total foreign fiber control, were described in detail. Practical application effects were illustrated by examples. Practice proved that USTER Quality Expert System could quickly and effectively collect all online and offline quality data for accurate and efficient quality management. It is considered that the USTER quality expert system, combined with online equipment and laboratory testing instruments, has greatly changed the way of quality management, which is conducive to reducing labor cost while improving product quality, and provides a new intelligent solution for the spinning mill to realize the total quality management from fiber to fabric. [ABSTRACT FROM AUTHOR]
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- 2024
7. Decision Support System for Mining Machinery Risk Mitigation Driven by Ergonomics and Contextual Theory.
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Misita, Mirjana, Brkić, Aleksandar, Mihajlović, Ivan, Đurić, Goran, Stanojević, Nada, Bugarić, Uglješa, and Spasojević Brkić, Vesna
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DECISION support systems ,MINING machinery ,STRUCTURAL equation modeling ,MINE accidents ,LOGIC design ,EXPERT systems ,KNOWLEDGE base - Abstract
Despite being very old, the mining industry continues to be one of the major sources of pollution, with more people killed or injured than in all other industries. Prevention of incidents/accidents on machinery in mining pits and the issues of operator safety on mining machinery largely depend on the ergonomic adaptation of the workplace, compliance with safety procedures and policies, and organizational and other influential factors. Evidently, scarce consideration of those factors in the available literature has not given satisfactory results till now. The aim of this paper is to first set up a comprehensive model based on ergonomic factors and contextual theory, which takes into account all the influencing factors on the occurrence of incidents/accidents and represents a complex system of interdependence of influential variables of diverse, mostly stochastic nature, and then design a software solution on the given basis. In this research, based on the extensive data collected, a model was generated using the structural equations modelling methodology, which was then used to design the reasoning logic in the expert system for mitigating the risks of the operation of mining machines. An innovative solution incorporating a mathematical model of the interdependence of influential variables into the stored knowledge base offers a decision support system that provides recommendations for the maintenance of a particular mining machine, depending on the assessment of model factors in a specific decision-making situation at the higher organizational level and ergonomic suitability for the operator at the lower organizational level, and, in that manner, enables the mitigating of risky/unwanted events. [ABSTRACT FROM AUTHOR]
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- 2024
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8. Artificial intelligence in optical lens design.
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Yow, Ai Ping, Wong, Damon, Zhang, Yueqian, Menke, Christoph, Wolleschensky, Ralf, and Török, Peter
- Abstract
Traditional optical design entails arduous, iterative stages that significantly rely on the intuition and experience of lens designers. Starting-point design selection has always been the major hurdle for most optical design problem, and different designers might produce different final lens designs even if using the same initial specification. Lens designers typically choose designs from existing lens databases, analyse relevant lens structures, or explore patent literature and technical publications. With increased processing capability, producing automated lens designs using Artificial Intelligence (AI) approaches is becoming a viable alternative. Therefore, it is noteworthy that a comprehensive review addressing the latest advancements in using AI for starting-point design is still lacking. Herein, we highlight the gap at the confluence of applied AI and optical lens design, by presenting a comprehensive review of the current literature with an emphasis on using various AI approaches to generate starting-point designs for refractive optical systems, discuss the limitations, and suggest a potential alternate approach for further research. [ABSTRACT FROM AUTHOR]
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- 2024
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9. Expert System for Extracting Hidden Information from Electronic Documents during Outgoing Control.
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Tan, Lingling and Yi, Junkai
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ELECTRONIC records ,ELECTRONIC systems ,FEATURE extraction ,ELECTRONIC control ,KNOWLEDGE base ,EXPERT systems - Abstract
For confidential and sensitive electronic documents within enterprises and organizations, failure to conduct proper checks before sending can easily lead to incidents such as security degradation. Sensitive information transmission has become one of the main ways of internal data leakage. However, existing methods or systems cannot extract hidden data and do not support mining the binary structure of hidden information in files. In this paper, an expert system for mining electronic document hidden information is designed for various office documents, compressed files, and image files. This system can quickly mine various forms of concealment in more than 40 common types of electronic documents and extract hidden information, such as file type tampering, encryption concealment, structure concealment, redundant data concealment, etc. Additionally, feature information in the binary structure of the document is extracted to form a feature information base. Subsequently, an expert knowledge base is constructed. Finally, a hidden information mining engine is designed using the knowledge base to realize the security control of corresponding outgoing files with good expansibility and integration. By controlling the exit of documents through scanning for sensitive information contained within them, the security level contents can be obtained effectively, avoiding data leakage by technical means while also facilitating forensics. The actual test result proves that this system can quickly mine various means used to conceal information, extract their respective information, and provide a fast, practical diagnostic way for outgoing control over these electronic documents. [ABSTRACT FROM AUTHOR]
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- 2024
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10. Insights into the spectrum of transtibial prosthetic socket design from expert clinicians and their digital records.
- Author
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Dickinson, A. S., Steer, J. W., Rossides, C., Diment, L. E., Mbithi, F. M., Bramley, J. L., Hannett, D., Blinova, J., Tankard, Z., and Worsley, P. R.
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ARTIFICIAL limbs ,MEDICAL personnel ,RESEARCH funding ,COMPUTER-aided design ,STATISTICAL sampling ,SCIENTIFIC observation ,DESCRIPTIVE statistics ,LONGITUDINAL method ,EXPERTISE ,COMPARATIVE studies ,PROSTHESIS design & construction ,REGRESSION analysis - Abstract
Background: Transtibial prosthetic sockets are often grouped into patella tendon bearing (PTB) or total surface bearing (TSB) designs, but many variations in rectifications are used to apply these principles to an individual’s personalised socket. Prosthetists currently have little objective evidence to assist them as they make design choices. Aims: To compare rectifications made by experienced prosthetists across a range of patient demographics and limb shapes to improve understanding of socket design strategies. Methodology: 163 residual limb surface scans and corresponding CAD/CAM sockets were analysed for 134 randomly selected individuals in a UK prosthetics service. This included 142 PTB and 21 TSB designs. The limb and socket scans were compared to determine the location and size of rectifications. Rectifications were compiled for PTB and TSB designs, and associations between different rectification sizes were assessed using a variety of methods including linear regression, kernel density estimation (KDE) and a Naïve Bayes (NB) classification. Results: Differences in design features were apparent between PTB and TSB sockets, notably for paratibial carves, gross volume reduction and distal end elongation. However, socket designs varied across a spectrum, with most showing a hybrid of the PTB and TSB principles. Pairwise correlations were observed between the size of some rectifications (e.g., paratibial carves; fibular head build and gross volume reduction). Conversely, the patellar tendon carve depth was not associated significantly with any other rectification, indicating its relative design insensitivity. The Naïve Bayes classifier produced design patterns consistent with expert clinician practice. For example, subtle local rectifications were associated with a large volume reduction (i.e., a TSB-like design), whereas more substantial local rectifications (i.e., a PTB-like design) were associated with a low volume reduction. Clinical implications: This study demonstrates how we might learn from design records to support education and enhance evidence-based socket design. The method could be used to predict design features for newly presenting patients, based on categorisations of their limb shape and other demographics, implemented alongside expert clinical judgement as smart CAD/CAM design templates. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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11. A review of automated cutting tool selection methods.
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Navaneethan, Gowthri, Palanisamy, Suresh, Jayaraman, Prem Prakash, Kang, Yong-Bin, Stephens, Guy, Papageorgiou, Angelo, and Navarro, John
- Abstract
The selection of appropriate cutting tool (CT) is a critical part of machining. Selecting the right tool for the right job will enable customers to achieve economic machining, saving time and cost while delivering high-quality products. Nowadays, the complexity of CT and workpiece is increasing; this changes the input and output requirements for cutting tool selection paving way to automation. There are two types of CT selection methods, manual and automated CT selection. This article focuses on automated CT selection, which has different inputs and outputs based on the algorithm/AI technique used. The potential and promising aspects of CT selection could enhance the machining in terms of productivity, time, cost, and quality aspects. A comprehensive review of automated CT selection methods has been presented in this paper. The review surveys different automated CT selection methods in terms of inputs, outputs, and artificial intelligence (AI) techniques/different algorithms since most of the researchers have not focused on this perspective. It outlines the current status of research and application, which has the potential to improve the automated CT selection methods for the benefit of the manufacturing industry. [ABSTRACT FROM AUTHOR]
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- 2024
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12. Application of intelligent decision system based on artificial neural network in free forging of the engine main shaft.
- Author
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Xu, Shucong, Yuan, Lin, and Shan, Debin
- Abstract
The engine main shaft forgings have high requirements for product consistency and reliability, which are difficult to be guaranteed by traditional manual free forging. On the basis of the already-in-place machinery, technical optimization was done in order to realize intelligent forging of the engine main shaft forgings. A rail trailer, holding robot, inspection robot, and expert system were installed as well as other hardware and software. Additionally, the procedure and specifications for robot intelligent free forging were revised. Based on the artificial neural network (ANN) model, an optimization model and a prediction model were created, and the process parameters can be controlled during forging. The verification result shows that the intelligent free forging production line can achieve real-time control of the shaft forging process, and obtain the forgings whose shape, size, microstructure, performance and consistency meet the requirements. With the help of this production line, free forging can be produced more quickly and efficiently, which is crucial for realizing the automation, digitization, and intelligence of shaft forging free forging. [ABSTRACT FROM AUTHOR]
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- 2024
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13. A semantic-based methodology for the management of document workflows in e-government: a case study for judicial processes.
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Di Martino, Beniamino, Colucci Cante, Luigi, Graziano, Mariangela, D'Angelo, Salvatore, Esposito, Antonio, Lupi, Pietro, and Ammendolia, Rosario
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JUDICIAL process ,WORKFLOW management ,NATURAL language processing ,RECORDS management ,INTERNET in public administration ,TRAFFIC accidents - Abstract
Trial excessive duration is a common problem in Juridical systems worldwide, even if some countries seem to be more affected by it than others. The European Council has provided metrics and statistics to identify this problem and has pointed out solutions, such as the simplification of norms and the digitization of Juridical procedures. The Italian Telematic Civil Process (TCP) is an example of this digitization effort that has surely positively influenced the duration of Trials, their traceability and general complexity. However, there are still many possible actions that can be taken to simplify the work of Judges and Chancellors, and to support their daily operations in dealing with several Trials at once, and with the consistent number of documents that are involved in them. This paper presents a toolchain and a related methodology for the management of documentation attached to Trials, based on semantic technologies and Natural Language Processing techniques, which will help Judges in faster assessing the situation of each Trial they follow, and will also provide the means to identify potential correlations among different Juridical procedures. The methodology is tested against a case study, i.e. the compensation requests related to road accidents, which has been provided and described by Domain Experts from the Italian Ministry of Justice. [ABSTRACT FROM AUTHOR]
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- 2024
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14. Degumming and bleaching process troubleshooting in a palm oil refining process using fuzzy expert system with thematic analysis.
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Ali, Nur Syuhada Mohd, Salleh, Intan Suhairi, Sulaiman, Nurul Sulaiha, Malim‐Busu, Tengku Zulaikha, Jamaluddin, Hishamuddin, Othman, Mohd Fauzi, Abdullah, Shahrum Shah, and Mohd‐Yusof, Khairiyah
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FUZZY expert systems ,PETROLEUM refining ,THEMATIC analysis ,MEMBERSHIP functions (Fuzzy logic) ,PETROLEUM refineries ,EXPERT systems - Abstract
Degumming and bleaching are critical steps in the palm oil refining process, as they are the precursors to the qualities of refined, bleached, and deodorized palm oil. In practice, plant operators often face oil rejections in these processes and solve the problem by trial and error. Hence, a fuzzy expert system is developed to troubleshoot the degumming and bleaching process, for identifying failures and suggesting actions. However, developing the knowledge base and inference engine in the fuzzy expert system for troubleshooting the degumming and bleaching process is challenging because the data in the actual palm oil refining process are poorly documented and must be obtained from various sources, including field observation, document analysis, and interviews, and need to be analyzed using thematic analysis. The results from the thematic analysis were represented as input and output variables of the fuzzy expert system. The developed fuzzy expert system is tested and validated against different data sets and industrial data to identify faults and suggest necessary actions. To evaluate the robustness of the troubleshooting system, the membership functions of the fuzzy expert system are adjusted based on the distributed control system (DCS). The results show that the troubleshooting system can effectively diagnose potential faults and provide necessary actions and can serve as a useful guidance for failures in the degumming and bleaching process. [ABSTRACT FROM AUTHOR]
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- 2024
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15. A novel approach detection for IIoT attacks via artificial intelligence.
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Karacayılmaz, Gökçe and Artuner, Harun
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PROGRAMMABLE controllers ,ARTIFICIAL intelligence ,INFRASTRUCTURE (Economics) ,LITERATURE reviews ,CYBER physical systems - Abstract
The Industrial Internet of Things (IIoT) is a paradigm that enables the integration of cyber-physical systems in critical infrastructures, such as power grids, water distribution networks, and transportation systems. IIoT devices, such as sensors, actuators, and controllers, can provide various benefits, such as performance optimization, efficiency improvement, and remote management. However, these devices also pose new security risks and challenges, as they can be targeted by malicious actors to disrupt the normal operation of the infrastructures they are connected to or to cause physical damage or harm. Therefore, it is essential to develop effective and intelligent solutions to detect and prevent attacks on IIoT devices and to ensure the security and resilience of critical infrastructures. In this paper, we present a comprehensive analysis of the types and impacts of attacks on IIoT devices based on a literature review and a data analysis of real-world incidents. We classify the attacks into four categories: denial-of-service, data manipulation, device hijacking, and physical tampering. We also discuss the potential consequences of these attacks on the safety, reliability, and availability of critical infrastructures. We then propose an expert system that can detect and prevent attacks on IIoT devices using artificial intelligence techniques, such as rule-based reasoning, anomaly detection, and reinforcement learning. We describe the architecture and implementation of our system, which consists of three main components: a data collector, a data analyzer, and a data actuator. We also present a table that summarizes the main features and capabilities of our system compared to existing solutions. We evaluate the performance and effectiveness of our system on a testbed consisting of programmable logic controllers (PLCs) and IIoT protocols, such as Modbus and MQTT. We simulate various attacks on IIoT devices and measure the accuracy, latency, and overhead of our system. Our results show that our system can successfully detect and mitigate different types of attacks on IIoT devices with high accuracy and low latency and overhead. We also demonstrate that our system can enhance the security and resilience of critical infrastructures by preventing or minimizing the impacts of attacks on IIoT devices. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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16. Development of a decision-making module in the field of real estate rental using machine learning methods.
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Mukhanova, Ayagoz, Baitemirov, Madiyar, Ignatovich, Artyom, Bayegizova, Aigulim, Tanirbergenov, Adilbek, Tynykulova, Assemgul, Bapiyev, Ideyat, and Mukhamedrakhimova, Galiya
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MACHINE learning ,DECISION support systems ,LINEAR systems ,REAL estate business ,DECISION making - Abstract
The research is aimed at developing a prototype of a decision support information system for managers of a company operating in the real estate rental industry. The system provides tools for data analysis, the use of mathematical models and expert knowledge to solve complex problems. The work analyzes the practical aspects of the design and use of decision support systems and formulates the requirements for the functionality of the system being developed. The Python programming language was used for implementation. The prototype includes machine learning models, expert systems, user interface and reports. Linear regression, data clustering density-based spatial clustering of applications with noise (DBSCAN) and backpropagation methods were implemented to train the classifying perceptron. The developed tool represents a significant contribution to the field of decision support, providing unique analysis and forecasting capabilities in the dynamic real estate rental environment. This prototype is an innovative solution that promotes effective management and strategic decision making in complex real estate business scenarios. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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17. Expert systems in mental health: innovative approach for personalized treatment.
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Andrade-Arenas, Laberiano, Rubio-Paucar, Inoc, Celis, Domingo Hernández, and Yactayo-Arias, Cesar
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CLASSIFICATION of mental disorders ,MENTAL illness ,PEOPLE with mental illness ,SYSTEM identification ,STRUCTURAL frames ,EXPERT systems - Abstract
Custom classification of mental illnesses has emerged as a challenge for mental health specialists, often minimized by patients' lack of awareness of symptoms and the importance of early intervention. Therefore, the purpose of this research is to provide a comprehensive understanding of personalized treatment, encompassing both pharmacological and non-pharmacological options, specifically tailored to mental disorders, considering factors such as the patient's age and gender, among other relevant characteristics. In this context, the Buchanan methodology has been chosen as the framework for structuring a web-based expert system. This approach covers everything from problem identification to system implementation and subsequent evaluation. The survey results, with a total of 50 responses, reveal that the category "Good" leads with 70%, closely followed by "Fair" and "Poor," both at 14%. 71.4% of responses reflect a positive evaluation, with 85.7% combining "Good" or "Fair" responses, and all categories reaching 100%. These results support the feasibility and effectiveness of implementing a web-based expert system under the Buchanan methodology. A positive response in the survey suggests that this methodology can significantly contribute to personalizing and recommending appropriate treatments, both pharmacological and non-pharmacological, thereby benefiting a broad spectrum of patients with mental disorders. [ABSTRACT FROM AUTHOR]
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- 2024
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18. UTILIZATION OF ROBOTS IN INDUSTRIAL PRACTICE.
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STRONER, MAREK
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FLEXIBLE manufacturing systems ,INDUSTRIAL robots ,MANUFACTURING processes ,ENGINEERING firms ,CAPITALISM ,AUTOMATION ,PRODUCTION engineering - Abstract
Engineering companies, which are concerned with manufacturing activities in forming and welding technologies, consider with such a degree of an automation of the production process that will bring production improvement, lower production time and also economic benefits with return of investment. In the present time, businesses depend on a market economy conditions. Therefore, it is necessary to design production systems as very flexible with easy response to changes in a product range. In forming and welding technologies, which belong mostly to an area of wasteless technologies, an application of systems with a certain level of intelligence means a wide use of robots that replace the physical potential of people. They have a positive effect on a production quality and also on an ecology. [Hasse 2020] [ABSTRACT FROM AUTHOR]
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- 2024
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19. A knowledge-based expert system for campus helpdesk request processing.
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DOSUNMU, M. M., AYO, F. E., OGUNDELE, L. A., TAIWO, A. I., and OLATAYO, T. O.
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EXPERT systems ,INFORMATION technology ,FUZZY systems ,USER interfaces ,PROBLEM solving - Abstract
Copyright of Journal of Education & Science is the property of Republic of Iraq Ministry of Higher Education & Scientific Research (MOHESR) and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
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- 2024
- Full Text
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20. DIGITAL TRAUMA HEALING ADHERENCE INTERVENTION USING EXPERT SYSTEM METHOD AND SOCIAL MEDIA PARTICIPATION WITH TRAUMA SCALE LEVEL-BASED ANALYSIS AND HOBBY ANALYSIS TO IMPROVE SELFEFFICACY.
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Ginting, Sri Widyanti, Hartati, Rukmi Sari, Sudarma, Made, and Alit Swarmardika, Ida Bagus
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EMOTIONAL trauma ,SOCIAL participation ,DISASTER victims ,SELF-efficacy ,ACCESS control ,SOCIAL media ,EARTHQUAKES ,HEALING ,EXPERT systems - Abstract
Copyright of Environmental & Social Management Journal / Revista de Gestão Social e Ambiental is the property of Environmental & Social Management Journal and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
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- 2024
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21. Efficient Paddy Grain Quality Assessment Approach Utilizing Affordable Sensors.
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Singh, Aditya, Raj, Kislay, Meghwar, Teerath, and Roy, Arunabha M.
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MACHINE learning ,DETECTORS ,IMAGE processing ,QUALITY control ,RICE quality ,PADDY fields - Abstract
Paddy (Oryza sativa) is one of the most consumed food grains in the world. The process from its sowing to consumption via harvesting, processing, storage and management require much effort and expertise. The grain quality of the product is heavily affected by the weather conditions, irrigation frequency, and many other factors. However, quality control is of immense importance, and thus, the evaluation of grain quality is necessary. Since it is necessary and arduous, we try to overcome the limitations and shortcomings of grain quality evaluation using image processing and machine learning (ML) techniques. Most existing methods are designed for rice grain quality assessment, noting that the key characteristics of paddy and rice are different. In addition, they have complex and expensive setups and utilize black-box ML models. To handle these issues, in this paper, we propose a reliable ML-based IoT paddy grain quality assessment system utilizing affordable sensors. It involves a specific data collection procedure followed by image processing with an ML-based model to predict the quality. Different explainable features are used for classifying the grain quality of paddy grain, like the shape, size, moisture, and maturity of the grain. The precision of the system was tested in real-world scenarios. To our knowledge, it is the first automated system to precisely provide an overall quality metric. The main feature of our system is its explainability in terms of utilized features and fuzzy rules, which increases the confidence and trustworthiness of the public toward its use. The grain variety used for experiments majorly belonged to the Indian Subcontinent, but it covered a significant variation in the shape and size of the grain. [ABSTRACT FROM AUTHOR]
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- 2024
- Full Text
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22. REVIEW PAPER BIOSENSORS FOR EARLY DIAGNOSIS AND AUTOMATED DRUG DELIVERY IN PANCREATIC CANCER.
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S., ANAND
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CANCER diagnosis ,DRUG delivery systems ,PANCREATIC cancer ,MACHINE learning ,CANCER prognosis - Abstract
Pancreatic cancer remains one of the most challenging malignancies to diagnose and treat effectively, resulting in poor patient outcomes due to late-stage detection and limited therapeutic options. The emergence of biosensors has revolutionized cancer diagnosis and therapy, providing new avenues for early detection and personalized treatment. This paper explores the development and integration of biosensors within a unique expert system for pancreatic cancer diagnosis and drug delivery automation. It discusses the principles, types, and applications of biosensors in pancreatic cancer diagnosis, their role in automating drug delivery, and the design of an expert system that leverages these technologies to enhance patient outcomes. [ABSTRACT FROM AUTHOR]
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- 2024
- Full Text
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23. Expert system for diagnosing learning disorders in children.
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Andrade-Arenas, Laberiano and Yactayo-Arias, Cesar
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LEARNING disabilities ,EXPERT systems ,MEDICAL personnel ,CONVENIENCE sampling (Statistics) ,VALIDITY of statistics ,DISABILITY identification ,INSTRUCTIONAL systems - Abstract
Given the urgent need for early detection of learning disorders such as dysgraphia, dyslexia, and dyscalculia in children, this study aimed to evaluate an expert system developed in Python to facilitate early diagnosis of these disorders. The background highlights the importance of providing parents, educators, and health professionals with an effective tool for early detection of these disorders. In 21 simulated cases, the system showed impressive performance with an accuracy rate of 95%, a precision of 100%, a sensitivity of 93%, and a specificity of 100%. Furthermore, the acceptability evaluation, conducted with 15 parents selected by convenience sampling, showed a high level of satisfaction, with an overall mean of 4.78 and a standard deviation of 0.45, indicating consistency in responses. In conclusion, this study confirms the effectiveness of the expert system in the early diagnosis of learning disabilities, providing parents, educators, and health professionals with a valuable tool. Despite these encouraging results, the need for additional research is recognized to address limitations and improve the external validity of the system to ensure its widespread utility and adaptability in real clinical settings. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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24. DESIGNING A SEMI-AUTOMATED DECISION-MAKING SYSTEM FOR SELECTING RECIPIENTS OF SOCIAL SERVICES.
- Author
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Kykyna, Yevhenii
- Subjects
SOCIAL services ,DATA protection ,MATHEMATICAL complex analysis ,SYSTEMS availability ,DECISION making ,EXPERT systems - Abstract
The object of this research is the decision-making process in the context of selecting recipients of social services using a semi-automated expert system. The main focus is on improving the mechanisms of assessment and selection of candidates eligible for assistance, in order to ensure a more efficient and objective allocation of resources. The problem addressed in this study is the need to improve the accuracy and efficiency of decision-making processes in social services through the implementation of semi-automated systems. In particular, reducing subjective influence in selection processes, as well as reducing the time and resources required to process applications. The study shows that the introduction of a semi-automated system can significantly reduce the response time to applications, increase the accuracy of candidate selection and ensure greater transparency in the decisionmaking process. The system, based on data analysis algorithms and production rules, is able to adapt to changing conditions and requirements, providing solutions based on up-to-date information. The effectiveness of the semi-automated system is due to the use of modern technologies for processing large volumes of data and the use of complex mathematical models for the analysis of this data. The implementation of a modular system with individually adjustable parameters allows the system to accurately evaluate each case based on the expected criteria, ensuring a high level of adaptability and accuracy. The results of the research can be applied in practice in various social security institutions, where there is a need to automate the processes of selection and decision-making. Important conditions for the effective implementation of the system are the availability of sufficient technical support, a high level of qualification of the personnel engaged in putting the system into operation, as well as a clear understanding of the rules and procedures that regulate social protection. In addition, to guarantee the successful application of the system, it is necessary to ensure compliance with all regulatory and legislative requirements, especially regarding the protection of personal data. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
25. Infrastructure Diagnosed by Solar Power Supply in an Intelligent Diagnostic System in Five-Valued Logic.
- Author
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Duer, Stanisław, Woźniak, Marek, Paś, Jacek, Stawowy, Marek, Rokosz, Krzysztof, Bernatowicz, Dariusz, Duer, Radosław, and Iqbal, Atif
- Subjects
ARTIFICIAL intelligence ,SOLAR energy ,POWER resources ,SOLAR power plants ,LOGIC - Abstract
This article discusses the issue of diagnosing low-power solar power plants using the five-valued (5VL) state evaluation {4, 3, 2, 1, 0}. We address in depth how the 5VL diagnostics built upon 2VL, 3VL, and 4VL—two-valued diagnostics, three-valued logistics, and four-valued diagnostics. Logic (5VL) assigns five state values to the range of signal value changes, and these states are completely operational ({4}), incomplete ({3}), critical efficiency ({2}), and pre-fault efficiency ({1}). For the identical ranges of diagnostic signal values, all three of the applied state valence logics interpret failure as changes outside of their permitted ranges. Diagnostic procedures made use of an AI-based DIAG 2 system. This article's goal is to provide a comprehensive overview of the DIAG 2 intelligent diagnostic system, including its architecture, algorithm, and inference rules. Diagnosis with the DIAG 2 system is based on a well-established technique for comparing diagnostic signal vectors with reference signal vectors. A differential vector metric is born out of this examination of vectors. The input cells of the neural network implement the challenge of signal analysis and comparison. It is then possible to classify the object components' states in the neural network's output cells. Based on the condition of the object's constituent parts, this approach can signal whether those parts are working, broken, or urgently require replacement. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
26. Enhancing Precision of Telemonitoring of COVID-19 Patients through Expert System Based on IoT Data Elaboration.
- Author
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Olivelli, Martina, Donati, Massimiliano, Vianello, Annamaria, Petrucci, Ilaria, Masi, Stefano, Bechini, Alessio, and Fanucci, Luca
- Subjects
COVID-19 ,EXPERT systems ,COMMUNICABLE diseases ,INTERNET of things ,SYSTEMS design ,GENERAL practitioners ,PRECISION farming - Abstract
The emergence of the highly contagious coronavirus disease has led to multiple pandemic waves, resulting in a significant number of hospitalizations and fatalities. Even outside of hospitals, general practitioners have faced serious challenges, stretching their resources and putting themselves at risk of infection. Telemonitoring systems based on Internet of things technology have emerged as valuable tools for remotely monitoring disease progression, facilitating rapid intervention, and reducing the risk of hospitalization and mortality. They allow for personalized monitoring strategies and tailored treatment plans, which are crucial for improving health outcomes. However, determining the appropriate monitoring intensity remains the responsibility of physicians, which poses challenges and impacts their workload, and thus, can hinder timely responses. To address these challenges, this paper proposes an expert system designed to recommend and adjust the monitoring intensity for COVID-19 patients receiving home treatment based on their medical history, vital signs, and reported symptoms. The system underwent initial validation using real-world cases, demonstrating a favorable performance (F1-score of 0.85). Subsequently, once integrated with an Internet of Things telemonitoring system, a clinical trial will assess the system's reliability in creating telemonitoring plans comparable with those of medics, evaluate its effectiveness in reducing medic–patient interactions or hospitalizations, and gauge patient satisfaction and safety. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
27. Active intrusion detection and prediction based on temporal big data analytics.
- Author
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Jemili, Farah and Korbaa, Ouajdi
- Subjects
INTRUSION detection systems (Computer security) ,TEMPORAL databases ,EXPERT systems ,MACHINE learning ,COMPUTER security ,COMPUTER network security ,DECISION trees - Abstract
Computer security consists in protecting access and manipulating system data by several mechanisms. However, conventional protection technologies are ineffective against current attacks. Thus, new tools have appeared, such as the intrusion detection and prediction systems which are important defense elements for network security since they detect the ongoing intrusions and predict the upcoming attacks. Besides, most of conventional protection technologies remain insufficient in terms of actions since they are all passive systems, unable to provide recommendations in order to block or stop the attacks. In this paper, a distributed detection and prediction system, composed of three major parts, is proposed. The first part deals with the detection of intrusions based on the decision tree learning algorithm. The second part deals with intrusions prediction using the chronicle algorithm. The third part proposes an expert system for security recommendations in response to detected intrusions, able to provide appropriate recommendations to stop the attacks. The proposed system gives good results in terms of accuracy and precision in detecting and predicting attacks, and efficiency in proposing the right recommendations to stop the attacks. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
28. Fuzzy expert system design for detecting stunting.
- Author
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Wanti, Linda Perdana, Somantri, Oman, Adi Prasetya, Nur Wachid, and Puspitasari, Lina
- Subjects
FUZZY expert systems ,SYSTEMS design ,EXPERT systems ,STUNTED growth ,TODDLERS - Abstract
Stunting is a chronic nutritional problem that occurs in toddler due to lack of nutritional intake which results in impaired growth toddler. Usually, toddler who experience stunting are characterized by not increasing weight over a long period of time. Application utilization health which makes it easier for users to access information, one of which can be used to identify toddler who are stunted by selecting symptoms. The symptoms experienced by toddlers go through a system known as the system expert. In this research an expert system will be developed that is capable of early detection developmental disorders in toddlers using the Mamdani fuzzy method. The results obtained from this research are an expert system design for early detection of stunting using the Mamdani fuzzy method. The Mamdani fuzzy method was implemented to group the criteria for toddlers who fall into the stunting category or not from the initial data which is still gray because they are still unsure whether to categorize the toddler as having stunting or not. The detection accuracy rate using the Mamdani fuzzy method is 80.87% compared to expert diagnosis. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
29. Enhancing English Competence Based on TOEFL Result with the Use of the Expert System with Forward Chaining Method.
- Author
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Putri, Liza Amalia, Nurrahmi, Herly, and Xirui Chu
- Subjects
ENGLISH language ,EXPERT systems ,LANGUAGE ability - Abstract
This article delves into a progressive approach for enhancing English competence based on TOEFL results through the utilization of an expert system employing the forward chaining method. As a benchmark for English proficiency, TOEFL necessitates a strategic and personalized approach to address individual weaknesses. The proposed expert system analyzes TOEFL performance, identifies specific areas of improvement, and tailors learning pathways accordingly. By employing forward chaining, the system can effectively guide learners through a logical progression of targeted exercises, tailored study plans, and recommended resources to fortify identified language skill deficits. This article sheds light on how this innovative integration of technology and pedagogy can significantly bolster English language competence for TOEFL success and the overall English language proficiency. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
30. Research on LKJ Automatic Test Platform and Key Technologies.
- Author
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SHAN Yilong, YANG Zhijie, LI Hui, HOU Dashan, LI Jianxiong, and HAO Jian
- Abstract
Train operation monitoring device (LKJ) is one of the most widely used on-board equipment in Chinese current ordinary speed railway. With the continuous improvement of railway transportation demand, as the key equipment to ensure traffic safety and improve operation efficiency, LKJ equipment is becoming more and more important. In order to solve the problems such as heavy workload, low efficiency and difficulty in finding the fault in the manual test process of LKJ equipment, an LKJ automatic test platform is designed and key technologies are studied. The automatic test platform fulfills optimization based on the traditional manual test process, generates test cases in a graphical manner, designs signal adaptation units to simulate the operating conditions of the equipment, adds humancomputer interaction units to simplify the test operation, automatically executes the test based on the Robot Framework automatic test framework, calls on fault analysis expert system to give the cause of the fault, so as to realize the unattended automatic test. Through the verification of LKJ-15 equipment and laboratory simulation environment, the verification results show that the automatic test platform can replace some manual operations in the traditional simulation test, provide guidance for the analysis of fault phenomena, and effectively improve the test efficiency. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
31. CFD—Assisted Expert System for N 2 -Controlled Atmosphere Process of Rice Storage Silos.
- Author
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Angsrisuraporn, Phakkawat, Samakkarn, Chawit, Lekawat, Lertsak, Singkhornart, Sasathorn, and Thongsri, Jatuporn
- Abstract
Since organic rice storage silos were faced with an insect problem, an owner solved this problem using the expert system (ES) in the controlled atmosphere process (CAP) under the required standard, fumigating insects with an N
2 , reducing O2 concentration to less than 2% for 21 days. This article presents the computational fluid dynamics (CFD) assisted ES successfully solved this problem. First, CFD was employed to determine the gas flow pattern, O2 concentration, proper operating conditions, and a correction factor (K) of silos. As expected, CFD results were consistent with the experimental results and theory, assuring the CFD's credibility. Significantly, CFD results revealed that the ES controlled N2 distribution throughout the silos and effectively reduced O2 concentration to meet the requirement. Next, the ES was developed based on the inference engine assisted by CFD results and the sweep-through purging principle, and it was implemented in the CAP. Last, the experiments evaluated CAP's efficacy in controlling O2 concentration and insect extermination in the actual silos. The experimental results and owner's feedback confirmed the excellent efficacy of ES implementation; therefore, the CAP is effective and practical. The novel aspect of this research is a CFD methodology to create the inference engine and the ES. [ABSTRACT FROM AUTHOR]- Published
- 2024
- Full Text
- View/download PDF
32. An Explainable AI System for the Diagnosis of High-Dimensional Biomedical Data.
- Author
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Ultsch, Alfred, Hoffmann, Jörg, Röhnert, Maximilian A., von Bonin, Malte, Oelschlägel, Uta, Brendel, Cornelia, and Thrun, Michael C.
- Subjects
ARTIFICIAL intelligence ,BIOMEDICAL adhesives ,FLOW cytometry ,VISUALIZATION ,BENCHMARKING (Management) - Abstract
Typical state-of-the-art flow cytometry data samples typically consist of measures of 10 to 30 features of more than 100,000 cell "events". Artificial intelligence (AI) systems are able to diagnose such data with almost the same accuracy as human experts. However, such systems face one central challenge: their decisions have far-reaching consequences for the health and lives of people. Therefore, the decisions of AI systems need to be understandable and justifiable by humans. In this work, we present a novel explainable AI (XAI) method called algorithmic population descriptions (ALPODS), which is able to classify (diagnose) cases based on subpopulations in high-dimensional data. ALPODS is able to explain its decisions in a form that is understandable to human experts. For the identified subpopulations, fuzzy reasoning rules expressed in the typical language of domain experts are generated. A visualization method based on these rules allows human experts to understand the reasoning used by the AI system. A comparison with a selection of state-of-the-art XAI systems shows that ALPODS operates efficiently on known benchmark data and on everyday routine case data. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
33. Enhancing Smart City Safety and Utilizing AI Expert Systems for Violence Detection.
- Author
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Kumar, Pradeep, Shih, Guo-Liang, Guo, Bo-Lin, Nagi, Siva Kumar, Manie, Yibeltal Chanie, Yao, Cheng-Kai, Arockiyadoss, Michael Augustine, and Peng, Peng-Chun
- Subjects
SMART cities ,STABLE Diffusion ,ARTIFICIAL intelligence ,VIOLENCE ,CLOSED-circuit television ,EXPERT systems - Abstract
Violent attacks have been one of the hot issues in recent years. In the presence of closed-circuit televisions (CCTVs) in smart cities, there is an emerging challenge in apprehending criminals, leading to a need for innovative solutions. In this paper, the propose a model aimed at enhancing real-time emergency response capabilities and swiftly identifying criminals. This initiative aims to foster a safer environment and better manage criminal activity within smart cities. The proposed architecture combines an image-to-image stable diffusion model with violence detection and pose estimation approaches. The diffusion model generates synthetic data while the object detection approach uses YOLO v7 to identify violent objects like baseball bats, knives, and pistols, complemented by MediaPipe for action detection. Further, a long short-term memory (LSTM) network classifies the action attacks involving violent objects. Subsequently, an ensemble consisting of an edge device and the entire proposed model is deployed onto the edge device for real-time data testing using a dash camera. Thus, this study can handle violent attacks and send alerts in emergencies. As a result, our proposed YOLO model achieves a mean average precision (MAP) of 89.5% for violent attack detection, and the LSTM classifier model achieves an accuracy of 88.33% for violent action classification. The results highlight the model's enhanced capability to accurately detect violent objects, particularly in effectively identifying violence through the implemented artificial intelligence system. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
34. A novel adaptive vehicle speed recommender fuzzy system for autonomous vehicles on conventional two‐lane roads.
- Author
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Barreno, Felipe, Santos, Matilde, and Romana, Manuel G.
- Abstract
This paper presents an intelligent speed adaption system for vehicles on conventional roads. The fuzzy logic based expert system outputs a recommended speed to ensure both safety and passenger comfort. This intelligent system includes geometrical features of the road, as well as subjective perceptions of the drivers. It has been developed and checked with real data that were measured with an instrumental system incorporated in a vehicle, on several two‐lane roads located in the Madrid Region, Spain. Along with the road geometrical characteristics, other input variables to the system are external factors, such as weather conditions, distance to the preceding vehicle, tire pressure, and other subjective criteria, such as the desired comfort level, selected by the driver. The expert system output is the most suitable speed for the specific road type, considering real factors that may modify the category of the road and thus, the appropriate speed. This information could be added to the adaptive cruise control of the vehicle. The recommended speed can be a very useful input for both, drivers and the autonomous vehicles, to improve safety on the road system. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
35. Designing, validation and evaluation of the expert system of "Healthy Menopause" and assessing its effect on the management of menopause symptoms: an exploratory mixed method study protocol.
- Author
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Marvi, Nahid, Mollazadeh, Sanaz, Erfanian Arghavanian, Fatemeh, Atashi, Alireza, and Khadivzadeh, Talat
- Subjects
PERIMENOPAUSE ,EXPERT systems ,RESEARCH ,SELF-management (Psychology) ,RESEARCH methodology ,HEALTH status indicators ,SOFTWARE architecture ,RANDOMIZED controlled trials ,MENOPAUSE ,WOMEN'S health - Abstract
Background: Menopause is a period of women's life that has the especial physical, psychological and social challenges. So provision of an effective, practical and affordable way for meeting women's related needs is important. In addition, women should be able to incorporate such programs into their daily work. Considering the dearth of suitable services in this regard, this study will be conducted with the aim of designing, validating and evaluating the "Healthy Menopause" expert system on the management of menopausal symptoms. Methods/design: A mixed methods exploratory design will be used to conduct this study in 3 phases. The first phase is a qualitative conventional content analysis study with purposes of exploring the women's experience of menopausal symptoms and extracting their needs, and collecting data about their expectations from a healthy menopause expert system.. The purposive sampling (In his phase data will be gathered through interviewing menopaused women aged 40 to 60 years old and other persons that have rich information in this regard and will be continued until data saturation. The second phase includes designing a healthy menopause expert system in this stage, the needs will be extracted from the qualitative findings along with a comprehensive literature review. The extracted needs will be again confirmed by the participants. Then, through a participatory approach (Participatory Design) using nominal group or Delphi technique the experts' opinion about the priority needs of menopaused women and related solutions will be explored based on the categories of identified needs. Such findings will be used to design a healthy menopause expert system at this stage. The third phase of study is a quantitative research in which the evaluation of the healthy menopause expert system will be done through a randomized controlled clinical trial with the aim of determining the effect of the healthy menopause expert system on the management of menopause symptoms by menopausal women themselves. Discussion: This is the first study that uses a mixed method approach for designing, validating and evaluating of the expert system "Healthy Menopause". This study will fill the research gap in the field of improving menopausal symptoms and designing a healthy menopause expert system based on the needs of the large group of menopause women. We hope that by applying this expert system, the menopausal women be empowered to management and improving their health with an easy and affordable manner. Plain English summary: Menopause is a period of women's life that has the especial physical, psychological and social challenges. So provision of an effective, easy for use and affordable way for managing related problems and meeting related needs is important. Menopause is a period of women's life that has physical, psychological and social consequences. It is important to identify methods that are effective, practical and affordable. New technologies can increase women's ability to access educational information. This is the first study for designing, validating and evaluating of the expert system "Healthy Menopause". A mixed methods exploratory design will be used to conduct this study in 3 phases. The first phase (qualitative): The conventional content analysis method will be used. The second phase: Designing a healthy menopause expert system: It is based on the codes of women's challenges from the first phase, along with conducting interviews and literature review. The participatory approach (Participatory Design) through nominal group or if needed, Delphi method based on the categories of needs and solutions by considering the opinions of the participants, available experts related to this issue will be listed. It should be used to design a healthy menopause expert system at this stage. The third phase (quantitative): The evaluation of the healthy menopause expert system will be a randomized clinical trial that determine the effect of the healthy menopause expert system on the management of menopause symptoms. In the present study an expert system (ES) will be designed that can be installed on mobile phones and computers. This tool is not only educational but also interactively helps to adapt to continuous changes, so by asking questions about menopause the system will respond as if an expert (midwife or gynecologist) is giving advice. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
36. INTELLIGENT-BASED JOB APPLICANTS' ASSESSMENT AND RECRUITMENT SYSTEM.
- Author
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Ele, B. I., Ele, A. A., and Agaba, F.
- Subjects
COMPUTER science ,INFORMATION technology ,COMPUTER programming ,COMPUTER network management ,COMPUTER network monitoring - Abstract
This article discusses the development of an intelligent-based job applicants' assessment and recruitment system using artificial intelligence techniques. The system aims to automate the process of sorting resumes, assessing applicants, and notifying them of their status. The study highlights the advantages of using this system, such as speeding up the staffing process, automating tasks, and improving accuracy in matching applicants with the right jobs. The article also mentions the application of artificial intelligence in recruitment and the potential benefits and risks associated with it. Overall, the system offers a more efficient and cost-effective approach to recruitment, but it can still be upgraded in the future. [Extracted from the article]
- Published
- 2024
- Full Text
- View/download PDF
37. Bedeutung von Selbstoffenbarungseffekten in quasisozialen Beziehungen mit auf generativer KI basierten Systemen in Settings von Onlineberatung und -therapie.
- Author
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Linnemann, Gesa, Löhe, Julian, and Rottkemper, Beate
- Subjects
MENTAL health counseling ,ARTIFICIAL intelligence ,EXPERT systems ,CHATBOTS ,DISCLOSURE - Abstract
Copyright of E-Beratungsjournal is the property of E-beratungsjournal.net and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
- Full Text
- View/download PDF
38. Enhancing Self-Care Prediction in Children with Impairments: A Novel Framework for Addressing Imbalance and High Dimensionality.
- Author
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Alyasin, Eman Ibrahim, Ata, Oguz, Mohammedqasim, Hayder, and Mohammedqasem, Roa'a
- Subjects
EXPERT systems ,FEATURE selection ,MEDICAL personnel ,ARTIFICIAL intelligence ,RANDOM forest algorithms ,EXCEPTIONAL children - Abstract
Addressing the challenges in diagnosing and classifying self-care difficulties in exceptional children's healthcare systems is crucial. The conventional diagnostic process, reliant on professional healthcare personnel, is time-consuming and costly. This study introduces an intelligent approach employing expert systems built on artificial intelligence technologies, specifically random forest, decision tree, support vector machine, and bagging classifier. The focus is on binary and multi-label SCADI datasets. To enhance model performance, we implemented resampling and data shuffling methods to tackle data imbalance and generalization issues, respectively. Additionally, a hyper framework feature selection strategy was applied, using mutual-information statistics and random forest recursive feature elimination (RF-RFE) based on a forward elimination method. Prediction performance and feature significance experiments, employing Shapley value explanation (SHAP), demonstrated the effectiveness of the proposed model. The framework achieved a remarkable overall accuracy of 99% for both datasets used with the fewest number of unique features reported in contemporary literature. The use of hyperparameter tuning for RF modeling further contributed to this significant improvement, suggesting its potential utility in diagnosing self-care issues within the medical industry. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
39. Diagnosis and treatment of Guillain-Barre using the prolog expert system.
- Author
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Andrade-Arenas, Laberiano, Molina-Velarde, Pedro, Pucuhuayla-Revatta, Félix, and Yactayo-Arias, Cesar
- Subjects
EXPERT systems ,MEDICAL personnel ,DIAGNOSIS ,GUILLAIN-Barre syndrome ,MEDICAL care ,NEUROLOGICAL disorders - Abstract
This research is mostly about Guillain-Barre syndrome (GBS), a complicated neurological condition with many subtypes that make diagnosis and treatment hard, even though medical care is always getting better. The main goal of this study is to build and test an expert system that can correctly diagnose these subtypes, with a focus on early detection and personalized treatments. The evaluation of the system was carried out using a dataset composed of 20 cases (12 positive and 8 negative). A confusion matrix was used to evaluate key metrics such as precision, sensitivity, and specificity. The findings demonstrate precision and sensitivity of 83% and specificity of 75%. These findings unambiguously demonstrate the efficacy of the system in correctly identifying positive Guillain-Barre cases while substantially reducing false negatives. In conclusion, this expert system offers a potentially useful tool to improve the accuracy of the diagnosis and treatment of Guillain-Barre patients. However, to take advantage of its full potential in clinical practice, it should be used as diagnostic support and not replace the medical staff, and it should be updated periodically to reflect new findings in medicine. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
40. Using Level-Based Multiple Reasoning in a Web-Based Intelligent System for the Diagnosis of Farmed Fish Diseases.
- Author
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Kovas, Konstantinos, Hatzilygeroudis, Ioannis, Dimitropoulos, Konstantinos, Spiliopoulos, Georgios, Poulos, Konstantinos, Abatzidou, Evi, Aravanis, Theofanis, Ilias, Aristeidis, Kanlis, Grigorios, and Theodorou, John A.
- Subjects
FISH diseases ,KNOWLEDGE representation (Information theory) ,PRODUCTION losses ,FISH farming ,SEA basses ,EXPERT systems - Abstract
Farmed fish disease diagnosis is an important problem in the fish farming industry, affecting quality of production and financial losses. In this paper, we present a web-based intelligent system that tackles the problem of fish disease diagnosis. To this end, it uses multiple knowledge representation and reasoning methods: rule-based, case-based, weight-based, and voting. Knowledge, which concerns the diagnosis of sea bass diseases, was acquired from experts in the field and represented in the form of decision trees. The diagnostic process is performed in two stages: a general one and a specialized one. In the general stage, a level-based diagnosis is performed, where environmental parameters, external signs, and internal signs are successively examined, and the three most probable diseases are identified. In the specialized stage, which is optional, a specialized expert system is used for each of the resulting diseases, where additional parameters concerning laboratory tests (microbiological, microscopic, molecular, and chemical) are considered. The general stage is the most useful, given that it can be performed on-site in real-time, whereas the specialized one requires time-consuming lab tests. The system also provides explanations for its decisions. Evaluation of the general-stage diagnostic process showed a top-3 accuracy of 78.79% on expert test cases and 94% on an artificial dataset. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
41. RSM based expert system development for cutting force prediction during machining of Ti–6Al–4V under minimum quantity lubrication.
- Author
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Shetty, R., Kumar, C. R. Sanjeev, and Ravindra, M. R.
- Abstract
In recent days the manufacturing process have become more precise and cost efficient due to advancement in the field of computer technology. Information technology has been integrated with manufacturing practice and has resulted in time reduction from concept of a product to marketing of the product. Cutting force generated is the main manufacturing issue raised among industries as it clearly affects quality and cost of the final product. Hence using extensive literature and data base knowledge optimum cutting parameters are selected. Therefore, this paper focuses on a response surface methodology (RSM) based expert system that has been developed using JAVA programming with the help of response surface second order model to automatically generate values of cutting force during machining of Ti–6Al–4V alloy under minimum quantity lubrication (MQL) for different process input parameters. From RSM it has been observed that calculated value of F (20.36) was greater than the F-table value (3.02) and hence the model developed can be effectively used for machining of Ti–6Al–4V alloy. Further the developed RSM based expert system model can be successfully used to predict the force generated during cutting process while machining Ti–6Al–4V alloy under MQL conditions. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
42. Evaluation of a Prototype Mobile Application Based on Expert System for the Diagnosis of Diseases Transmitted by the Aedes Aegypti Mosquito.
- Author
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Jáuregui-Velarde, Raúl, Molina-Velarde, Pedro, Yactayo-Arias, Cesar, and Andrade-Arenas, Laberiano
- Subjects
AEDES aegypti ,MOBILE apps ,MOSQUITOES ,DIAGNOSIS ,EXPERT systems ,MOSQUITO control ,CHIKUNGUNYA virus ,INSECTICIDE resistance - Abstract
The Aedes aegypti mosquito transmits the dengue, zika, and chikungunya viruses, endangering the health and lives of people in affected countries due to a lack of timely diagnosis. The objective of this study is to design and evaluate the feasibility of a mobile application based on an expert system for early diagnosis of diseases transmitted by the Aedes aegypti mosquito. The Buchanan methodology was used to develop the application. The results obtained show that the proposed mobile application has a diagnostic accuracy of 83%, a sensitivity of 91%, a specificity of 63%, and an error rate of 17%. The technical aspects of the application were also evaluated through a questionnaire administered to five computer experts. The results showed that the technical aspects of the application received an average rating of 3.91 out of a maximum of 5, with a standard deviation of 0.482. In addition, the usability of the application was evaluated using the standardized System Usability Scale (SUS), which was administered to a total of 15 users. The results of this evaluation showed that the application received an average score of 83 on the SUS scale, indicating a positive level of usability. In conclusion, the results support the effectiveness and potential of the application for the early diagnosis of diseases transmitted by the Aedes aegypti mosquito, providing a useful tool for the rapid detection of these diseases. Although it requires more attention to specificity and error rate to improve the accuracy of the diagnosis. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
43. M-VITAL: AN EXPERT SYSTEM AIDED MEDICAL MASK TO MEASURE AND TRANSMIT VITAL PARAMETERS FOR EMERGENCY SERVICES AND COVID-19 CASES.
- Author
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ŞATIR, Esra and KENDİRLİ, Oğuzhan
- Subjects
COVID-19 pandemic ,MEDICAL personnel ,EMERGENCY medical services ,MEDICAL masks ,HOSPITAL patients ,CALL centers ,RESPIRATION - Abstract
Copyright of Mugla Journal of Science & Technology is the property of Mugla Journal of Science & Technology and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2023
- Full Text
- View/download PDF
44. Expert System for Diagnosis of Lung Disease from X-Ray Using CNN and SVM.
- Author
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Zulkifli, Zulkifli, S., Retno Ariza, Sfenrianto, Wiyanti, Zulvi, Bintoro, Panji, Fitriana, Fitriana, Sukarni, Sukarni, Putri, Nopi Anggista, and Andini, Dwi Yana Ayu
- Subjects
LUNG disease diagnosis ,X-rays ,CONVOLUTIONAL neural networks ,SUPPORT vector machines ,INFLAMMATION - Abstract
The lung disease diagnosis expert system utilizes human knowledge to diagnose various conditions affecting the lung. Diseases caused by fungal or bacterial infection in the organ can cause inflammation as well as death when it is not detected on time. A standard method to diagnose these conditions is the use of a chest X-ray (CXR), which requires careful examination of the image by an expert. In this study, several CNN and SVM architectural models were proposed to classify CXR images to diagnose whether a person has COVID-19, Viral Pneumonia, Bacterial Pneumonia, Tuberculosis (TB), and Normal. The experiment showed that InceptionV3 had the best results compared to other CNN architectures and SVM. Classification accuracy, precision, recall, and f1-score of CXR images for COVID-19, Viral Pneumonia, Bacterial Pneumonia, TB, and Normal were 0.86, 0.91, 0.91, and 0.91, respectively. This study was based on a deep learning system with different CNN and SVM architectures that can work well on the CXR images dataset for diagnosing lung disease. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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45. 活塞式氢气压缩机排气温度超限故障诊断方法.
- Author
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韩宇恒, 胡光忠, 夏秋, and 王平
- Abstract
Copyright of Journal of Mechanical & Electrical Engineering is the property of Mechanical & Electrical Engineering Magazine and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
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- 2023
- Full Text
- View/download PDF
46. Analysis and Parameterization of Sports Performance: A Case Study of Soccer.
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Román-Gallego, Jesús-Ángel, Pérez-Delgado, María-Luisa, Cofiño-Gavito, Fernando-José, Conde, Miguel Á., and Rodríguez-Rodrigo, Rubén
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EXPERT systems ,BIG data ,FUZZY expert systems ,CAREER development ,SOCCER players ,PROFESSIONAL sports ,PERFORMANCE theory ,PARAMETERIZATION - Abstract
The importance of Big Data and the analysis of this data in recent years is indisputable, and this boom has spread to all areas of life, including professional sports and, within this, soccer. The significant amounts of money involved in this sport have led to the need for the top clubs to employ these techniques to gain a competitive advantage over their competitors. Despite this, there is very little information on how these tools are used or what parameters they consider. Similarly, there are a multitude of amateur analyses that offer very few conclusions. They simply focus on collecting and presenting the data in the form of a comparison without any analysis or pre-processing. This work describes the implementation of an expert system based on fuzzy logic used to evaluate the talent of a soccer player at all levels, his/her aptitude and attitude, to face his/her individual and collective professional development. For this purpose, the above aspects will be evaluated specifically in the different aspects of the game, which will allow us to evaluate the performance of a soccer team and thus determine the probability of victory, draw, and defeat in a confrontation. [ABSTRACT FROM AUTHOR]
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- 2023
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47. Cognitive Weeding: An Approach to Single-Plant Specific Weed Regulation.
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Niemeyer, Mark, Renz, Marian, Pukrop, Maren, Hagemann, David, Zurheide, Tim, Di Marco, Daniel, Höferlin, Markus, Stark, Philipp, Rahe, Florian, Igelbrink, Matthias, Jenz, Mario, Jarmer, Thomas, Trautz, Dieter, Stiene, Stefan, and Hertzberg, Joachim
- Abstract
This paper provides a comprehensive overview of the architecture required to implement selective weeding in arable farming, as developed within the Cognitive Weeding project. This end-to-end architecture begins with data acquisition utilizing drones, robots, or agricultural machinery, followed by data management, AI-based data annotation, knowledge-based inference to determine the necessary treatment, resulting in an application map for selective hoeing. The paper meticulously details the various components of the architecture and illustrates through examples how they are interconnected. [ABSTRACT FROM AUTHOR]
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- 2023
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48. Design and development of a fuzzy explainable expert system for a diagnostic robot of COVID-19.
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El Beggar, Omar, Ramdani, Mohammed, and Kissi, Mohamed
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FUZZY expert systems ,EXPERT systems ,COVID-19 ,ARTIFICIAL intelligence ,MEDICAL robotics ,PROGRAMMING languages - Abstract
Expert systems have been widely used in medicine to diagnose different diseases. However, these rule-based systems only explain why and how their outcomes are reached. The rules leading to those outcomes are also expressed in a machine language and confronted with the familiar problems of coverage and specificity. This fact prevents procuring expert systems with fully human-understandable explanations. Furthermore, early diagnosis involves a high degree of uncertainty and vagueness which constitutes another challenge to overcome in this study. This paper aims to design and develop a fuzzy explainable expert system for coronavirus disease-2019 (COVID-19) diagnosis that could be incorporated into medical robots. The proposed medical robotic application deduces the likelihood level of contracting COVID-19 from the entered symptoms, the personal information, and the patient's activities. The proposal integrates fuzzy logic to deal with uncertainty and vagueness in diagnosis. Besides, it adopts a hybrid explainable artificial intelligence (XAI) technique to provide different explanation forms. In particular, the textual explanations are generated as rules expressed in a natural language while avoiding coverage and specificity problems. Therefore, the proposal could help overwhelmed hospitals during the epidemic propagation and avoid contamination using a solution with a high level of explicability. [ABSTRACT FROM AUTHOR]
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- 2023
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49. Development of an Assessment Model for Electric Circuit Courses Based on "Free Campus Learning (MBKM) According to Industry Needs" Using an Expert System.
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Ahyanuardi, Arifin, Ari Syaiful Rahman, Efrianova, Vivi, Panggabean, Tongam E., and Verawardina, Unung
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ELECTRIC circuits ,UNIVERSITIES & colleges ,STRUCTURAL equation modeling ,JUDGMENT sampling ,SCHOOL schedules - Abstract
The aim of the research is to develop an MBKM-based assessment model for electrical circuit courses according to industry needs by using an expert system to provide recommendations in determining implementation policies on campus. The aspects assessed are the validity, practicality and effectiveness of the model. The instruments used are observation sheets, interview guides and questionnaires for students, lecturers and industry. And also use tests to measure student learning outcomes. The research population at the Faculty of Engineering, Padang State University, sample selection using a purposive sampling technique was 55 students and 5 lecturers, and industry instructors. Descriptive data analysis techniques to measure the validity, practicality and effectiveness of the model. And also the test uses Structural Equation Modeling (SEM) using the SMART PLS application. The findings from the needs analysis of an expert system-based assessment model are that the results are very much needed. In line with the results of observations and interviews, it shows that there are still problems that occur in learning activities, assessment and MBKM, which requires the development of assessment models. Meanwhile, the results of expert validation produce data models, questions and websites (usability), information quality, information quality or interaction quality that are proven to be valid. Likewise, the practicality of the lecturers' and students' responses proved to be practical. For student learning outcomes, the average student learning outcomes are classified as good. These findings were novelty by using CAT technology, expert systems, MBKM, holistic assessment, and student assessment needs in industry. The suggestion for this research is to be able to add the latest technology to the MBKM assessment. [ABSTRACT FROM AUTHOR]
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- 2023
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50. PERANCANGAN PURWARUPA SISTEM PAKAR MANAJEMEN INVESTASI TI BERBASIS TABEL MANFAAT BISNIS SI/TI GENERIK.
- Author
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Erwansyah, Yusrizal, Ranti, Benny, and Nugroho, Widijanto Satyo
- Abstract
Copyright of Syntax Idea is the property of Ridwan Institute and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2023
- Full Text
- View/download PDF
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