11 results on '"Althobiani F"'
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2. Diagnosis of Centrifugal Pump Faults Using Vibration Methods
- Author
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Albraik, A, primary, Althobiani, F, additional, Gu, F, additional, and Ball, A, additional
- Published
- 2012
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3. Ensemble learning approach for advanced metering infrastructure in future smart grids.
- Author
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Irfan M, Ayub N, Althobiani F, Masood S, Arbab Ahmed Q, Saeed MH, Rahman S, Abdushkour H, Gommosani ME, Shamji VR, and Faraj Mursal SN
- Subjects
- Algorithms, Computer Systems, Support Vector Machine, Learning, Education, Distance
- Abstract
Typically, load forecasting models are trained in an offline setting and then used to generate predictions in an online setting. However, this approach, known as batch learning, is limited in its ability to integrate new load information that becomes available in real-time. On the other hand, online learning methods enable load forecasting models to adapt efficiently to new incoming data. Electricity Load and Price Forecasting (ELPF) is critical to maintaining energy grid stability in smart grids. Existing forecasting methods cannot handle the available large amount of data, which are limited by different issues like non-linearity, un-adjusted high variance and high dimensions. A compact and improved algorithm is needed to synchronize with the diverse procedure in ELPF. Our model ELPF framework comprises high/low consumer data separation, handling missing and unstandardized data and preprocessing method, which includes selecting relevant features and removing redundant features. Finally, it implements the ELPF using an improved method Residual Network (ResNet-152) and the machine-improved Support Vector Machine (SVM) based forecasting engine to forecast the ELP accurately. We proposed two main distinct mechanisms, regularization, base learner selection and hyperparameter tuning, to improve the performance of the existing version of ResNet-152 and SVM. Furthermore, it reduces the time complexity and the overfitting model issue to handle more complex consumer data. Furthermore, numerous structures of ResNet-152 and SVM are also explored to improve the regularization function, base learners and compatible selection of the parameter values with respect to fitting capabilities for the final forecasting. Simulated results from the real-world load and price data confirm that the proposed method outperforms 8% of the existing schemes in performance measures and can also be used in industry-based applications., Competing Interests: The authors have declared that no competing interests exist., (Copyright: © 2023 Irfan et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.)
- Published
- 2023
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4. Enhancing fine retinal vessel segmentation: Morphological reconstruction and double thresholds filtering strategy.
- Author
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Abdushkour H, Soomro TA, Ali A, Ali Jandan F, Jelinek H, Memon F, Althobiani F, Mohammed Ghonaim S, and Irfan M
- Subjects
- Humans, Image Processing, Computer-Assisted methods, Algorithms, Fundus Oculi, Retinal Vessels diagnostic imaging, Retinal Vessels anatomy & histology, Diabetic Retinopathy diagnostic imaging
- Abstract
Eye diseases such as diabetic retinopathy are progressive with various changes in the retinal vessels, and it is difficult to analyze the disease for future treatment. There are many computerized algorithms implemented for retinal vessel segmentation, but the tiny vessels drop off, impacting the performance of the overall algorithms. This research work contains the new image processing techniques such as enhancement filters, coherence filters and binary thresholding techniques to handle the different color retinal fundus image problems to achieve a vessel image that is well-segmented, and the proposed algorithm has improved performance over existing work. Our developed technique incorporates morphological techniques to address the center light reflex issue. Additionally, to effectively resolve the problem of insufficient and varying contrast, our developed technique employs homomorphic methods and Wiener filtering. Coherent filters are used to address the coherence issue of the retina vessels, and then a double thresholding technique is applied with image reconstruction to achieve a correctly segmented vessel image. The results of our developed technique were evaluated using the STARE and DRIVE datasets and it achieves an accuracy of about 0.96 and a sensitivity of 0.81. The performance obtained from our proposed method proved the capability of the method which can be used by ophthalmology experts to diagnose ocular abnormalities and recommended for further treatment., Competing Interests: The authors have declared that no competing interests exist., (Copyright: © 2023 Abdushkour et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.)
- Published
- 2023
- Full Text
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5. Interference mitigation in intentional jammers aided non-uniform heterogeneous cellular networks.
- Author
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Ghonaim SM, Khan S, Althobiani F, Alghaffari S, Khan S, Irfan M, Haroon MS, and Muhammad F
- Subjects
- Communication, Hydrolases
- Abstract
Coverage and capacity are optimized in fifth generation (5G) networks by small base station (SBS) distribution in the coverage realm of macro base station (MBS). However, system performance is significantly reduced by inter-cell interference (ICI) because of the orthogonal frequency division multiple access assumption. In addition to ICI, this work considers intentional jammers' interference (IJI) due to the presence of jammers. These Jammers try to inject undesirable energies into the legitimate communication band, which significantly degrade uplink (UL) signal-to-interference ratio (SIR). To reduce ICI and IJI, in this work, we employ SBS muting, where the SBSs near MBS are switched off. To further mitigate ICI and IJI, we use one of the effective interference management schemes a.k.a reverse frequency allocation (RFA). We presume that due to mitigation in ICI and IJI, the UL coverage performance of the proposed network model can be further improved., Competing Interests: The authors have declared that no competing interests exist., (Copyright: © 2023 Ghonaim et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.)
- Published
- 2023
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6. Multi-region electricity demand prediction with ensemble deep neural networks.
- Author
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Irfan M, Shaf A, Ali T, Zafar M, Rahman S, Mursal SNF, AlThobiani F, A Almas M, Attar HM, and Abdussamiee N
- Abstract
Electricity consumption prediction plays a vital role in intelligent energy management systems, and it is essential for electricity power supply companies to have accurate short and long-term energy predictions. In this study, a deep-ensembled neural network was used to anticipate hourly power utilization, providing a clear and effective approach for predicting power consumption. The dataset comprises of 13 files, each representing a different region, and ranges from 2004 to 2018, with two columns for the date, time, year and energy expenditure. The data was normalized using minmax scalar, and a deep ensembled (long short-term memory and recurrent neural network) model was used for energy consumption prediction. This proposed model effectively trains long-term dependencies in sequence order and has been assessed using several statistical metrics, including root mean squared error (RMSE), relative root mean squared error (rRMSE), mean absolute bias error (MABE), coefficient of determination (R2), mean bias error (MBE), and mean absolute percentage error (MAPE). Results show that the proposed model performs exceptionally well compared to existing models, indicating its effectiveness in accurately predicting energy consumption., Competing Interests: The authors have declared that no competing interests exist., (Copyright: © 2023 Irfan et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.)
- Published
- 2023
- Full Text
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7. Unusual Driver Behavior Detection in Videos Using Deep Learning Models.
- Author
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Abosaq HA, Ramzan M, Althobiani F, Abid A, Aamir KM, Abdushkour H, Irfan M, Gommosani ME, Ghonaim SM, Shamji VR, and Rahman S
- Subjects
- Accidents, Traffic prevention & control, Safety, Deep Learning, Automobile Driving, Problem Behavior
- Abstract
Anomalous driving behavior detection is becoming more popular since it is vital in ensuring the safety of drivers and passengers in vehicles. Road accidents happen for various reasons, including health, mental stress, and fatigue. It is critical to monitor abnormal driving behaviors in real time to improve driving safety, raise driver awareness of their driving patterns, and minimize future road accidents. Many symptoms appear to show this condition in the driver, such as facial expressions or abnormal actions. The abnormal activity was among the most common causes of road accidents, accounting for nearly 20% of all accidents, according to international data on accident causes. To avoid serious consequences, abnormal driving behaviors must be identified and avoided. As it is difficult to monitor anyone continuously, automated detection of this condition is more effective and quicker. To increase drivers' recognition of their driving behaviors and prevent potential accidents, a precise monitoring approach that detects abnormal driving behaviors and identifies abnormal driving behaviors is required. The most common activities performed by the driver while driving is drinking, eating, smoking, and calling. These types of driver activities are considered in this work, along with normal driving. This study proposed deep learning-based detection models for recognizing abnormal driver actions. This system is trained and tested using a newly created dataset, including five classes. The main classes include Driver-smoking, Driver-eating, Driver-drinking, Driver-calling, and Driver-normal. For the analysis of results, pre-trained and fine-tuned CNN models are considered. The proposed CNN-based model and pre-trained models ResNet101, VGG-16, VGG-19, and Inception-v3 are used. The results are compared by using the performance measures. The results are obtained 89%, 93%, 93%, 94% for pre-trained models and 95% by using the proposed CNN-based model. Our analysis and results revealed that our proposed CNN base model performed well and could effectively classify the driver's abnormal behavior.
- Published
- 2022
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8. Role of Hybrid Deep Neural Networks (HDNNs), Computed Tomography, and Chest X-rays for the Detection of COVID-19.
- Author
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Irfan M, Iftikhar MA, Yasin S, Draz U, Ali T, Hussain S, Bukhari S, Alwadie AS, Rahman S, Glowacz A, and Althobiani F
- Subjects
- Humans, Neural Networks, Computer, Radiography, Thoracic, SARS-CoV-2, Tomography, X-Ray Computed, X-Rays, COVID-19, Deep Learning
- Abstract
COVID-19 syndrome has extensively escalated worldwide with the induction of the year 2020 and has resulted in the illness of millions of people. COVID-19 patients bear an elevated risk once the symptoms deteriorate. Hence, early recognition of diseased patients can facilitate early intervention and avoid disease succession. This article intends to develop a hybrid deep neural networks (HDNNs), using computed tomography (CT) and X-ray imaging, to predict the risk of the onset of disease in patients suffering from COVID-19. To be precise, the subjects were classified into 3 categories namely normal, Pneumonia, and COVID-19. Initially, the CT and chest X-ray images, denoted as 'hybrid images' (with resolution 1080 × 1080) were collected from different sources, including GitHub, COVID-19 radiography database, Kaggle, COVID-19 image data collection, and Actual Med COVID-19 Chest X-ray Dataset, which are open source and publicly available data repositories. The 80% hybrid images were used to train the hybrid deep neural network model and the remaining 20% were used for the testing purpose. The capability and prediction accuracy of the HDNNs were calculated using the confusion matrix. The hybrid deep neural network showed a 99% classification accuracy on the test set data.
- Published
- 2021
- Full Text
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9. Design and Experimental Analysis of Multiband Frequency Reconfigurable Antenna for 5G and Sub-6 GHz Wireless Communication.
- Author
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Dildar H, Althobiani F, Ahmad I, Khan WUR, Ullah S, Mufti N, Ullah S, Muhammad F, Irfan M, and Glowacz A
- Abstract
A low-profile frequency reconfigurable monopole antenna operating in the microwave frequency band is presented in this paper. The proposed structure is printed on Flame Retardant-4 (FR-4) substrate having relative permittivity of 4.3 and tangent loss of 0.025. Four pin diode switches are inserted between radiating patches for switching the various operating modes of an antenna. The proposed antenna operates in five modes, covering nine different bands by operating at single bands of 5 and 3.5 GHz in Mode 1 and Mode 2, dual bands (i.e., 2.6 and 6.5 GHz, 2.1 and 5.6 GHz) in Mode 3 and 4 and triple bands in Mode 5 (i.e., 1.8, 4.8, and 6.4 GHz). The Voltage Standing Waves Ratio (VSWR) of the presented antenna is less than 1.5 for all the operating bands. The efficiency of the designed antenna is 84 % and gain ranges from 1.2 to 3.6 dBi, respectively, at corresponding resonant frequencies. The achieve bandwidths at respective frequencies ranges from 10.5 to 28%. The proposed structure is modeled in Computer Simulation Technology microwave studio (CST MWS) and the simulated results are experimentally validated. Due to its reasonably small size and support for multiple wireless standards, the proposed antenna can be used in modern handheld fifth generation (5G) devices as well as Internet of Things (IoT) enabled systems in smart cities.
- Published
- 2020
- Full Text
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10. Effect of non-surgical periodontal therapy on the fibrinogen levels in chronic periodontitis patients.
- Author
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Al-Isa M, Alotibi M, Alhashemi H, Althobiani F, Atia A, and Baz S
- Abstract
Objective: This study aimed to evaluate the effect of non-surgical periodontal therapy on the fibrinogen levels in chronic periodontitis patients when compared to the levels seen in healthy subjects., Materials and Methods: A total of 30 subjects, with an average age of 38 ± 25 years, were enrolled in the present study. They were divided into two groups, namely Group 1 (15 periodontally healthy subjects) and Group 2 (15 moderate to severe chronic periodontitis patients). The periodontal condition of each periodontitis patient was assessed by recording the probing pocket depth (PD), clinical attachment level (CAL), plaque index (PI), and bleeding index (BI) both before and after periodontal therapy had been administered for one month. Additionally, blood samples were collected from the healthy subjects and the periodontitis patients before and after the periodontal treatment in order to assay the plasma fibrinogen levels., Results: The clinical parameters were found to be improved after one month of periodontal therapy, with the statistical difference in the mean values of the BI and PD being highly significant (P < 0.01), while the statistical differences concerning the PI and CAL were significant (P < 0.05). The fibrinogen levels (mg/dL) for the periodontitis patients before and after treatment were 342.26 ± 69.00 and 352.93 ± 64.3 mg/dL, respectively. The level was 269.85 ± 43.68 mg/dL for the healthy subjects. In terms of the between-group comparison, the fibrinogen levels of the healthy subjects were observed to be highly significantly lower than the levels of the periodontitis patients before and after the treatment (P < 0.01), in contrast the statistical analysis showed a non-significant difference in the fibrinogen levels (P > 0.05) before and after the periodontal treatment. In addition, the statistical analysis revealed non-significant correlation between the fibrinogen levels and all the periodontal parameters (P > 0.05)., Conclusion: The non-surgical periodontal therapy proved to be effective in improving the clinical periodontal condition of the periodontitis patients, while the plasma fibrinogen levels were not found to be influenced by the periodontal therapy. Further studies are needed to evaluate the fibrinogen levels over a longer duration after periodontal treatment in patients following a periodontal maintenance program.
- Published
- 2019
- Full Text
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11. Exploring Drug-Related Problems in Diabetic Patients during Ramadan Fasting in Saudi Arabia: A Mixed-Methods Study.
- Author
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Alluqmani WS, Alotaibi MM, Almalki WJ, Althaqafi A, Alawi HA, Althobiani F, Albishi AA, Madkhali AA, Baunes LY, Alhazmi RI, Doman EM, Alhazmi AH, Ali M, and Cheema E
- Subjects
- Adult, Diabetes Complications prevention & control, Female, Humans, Hyperglycemia, Hypoglycemia, Interviews as Topic, Male, Middle Aged, Saudi Arabia epidemiology, Surveys and Questionnaires, Diabetes Mellitus drug therapy, Fasting, Hypoglycemic Agents adverse effects, Hypoglycemic Agents therapeutic use, Islam
- Abstract
This study aimed to identify any drug-related problems (DRPs) in diabetic patients during Ramadan fasting in Saudi Arabia. The study used a mixed-methods approach consisting of two phases and was conducted in Makkah, Saudi Arabia from December 2017 to March 2018. The first phase of the study involved qualitative semi-structured individual interviews with diabetic patients. A 13-item questionnaire was used in the second phase to further identify DRPs in the wider population. The data was mainly presented as frequencies and percentages. Inferential statistics was performed using Statistical Package for Social Sciences (SPSS) version 21 to compare relevant variables/questions using the chi-square test. Twenty patients (10 male, 10 female) attended face-to-face interviews during the first phase of the study while 95 (40 male, 55 female) completed the questionnaire in the second phase of the study. Two possible risk factors for DRPs were identified from the qualitative data: patient-related factors, including changes in their medicine intake during fasting, and healthcare professionals-related factors, including lack of advice from healthcare professionals regarding fasting. The quantitative results indicated that 52 (54%) of the 95 participants who observed fasting reported to have changed the way they were taking their medicines. Furthermore, 41% of the participants experienced general healthcare problems such as hypoglycemia, hyperglycemia, fatigue, excessive sweating, and gastrointestinal disturbances. Healthcare professionals need to educate patients who are at risk of DRPs by providing structured education and counseling.
- Published
- 2019
- Full Text
- View/download PDF
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