Search

Showing total 592 results

Search Constraints

Start Over You searched for: Search Limiters Peer Reviewed Remove constraint Search Limiters: Peer Reviewed Topic machine learning Remove constraint Topic: machine learning Topic renewable energy sources Remove constraint Topic: renewable energy sources Publication Year Range Last 50 years Remove constraint Publication Year Range: Last 50 years
592 results

Search Results

1. Guest Editorial: Artificial intelligence‐empowered reliable forecasting for energy sectors.

2. Analysis of Using Machine Learning Techniques for Estimating Solar Panel Performance in Edge Sensor Devices.

3. A review of asset management using artificial intelligence‐based machine learning models: Applications for the electric power and energy system.

4. Quantum-inspired deep reinforcement learning for adaptive frequency control of low carbon park island microgrid considering renewable energy sources.

5. A Comprehensive Review on Deep Learning Algorithms for Wind Power Prediction.

6. Comprehensive review of solar radiation modeling based on artificial intelligence and optimization techniques: future concerns and considerations.

7. Intelligent Integration of Renewable Energy Resources Review: Generation and Grid Level Opportunities and Challenges.

8. A Comprehensive Review of the Current Status of Smart Grid Technologies for Renewable Energies Integration and Future Trends: The Role of Machine Learning and Energy Storage Systems.

9. Analysis of a Grid-Connected Solar PV System with Battery Energy Storage for Irregular Load Profile.

10. Efficient Identification Method for Power Quality Disturbance: A Hybrid Data-Driven Strategy.

11. Detection of Cracks in Solar Panel Images Using Improved AlexNet Classification Method.

12. Comparison and Enhancement of Machine Learning Algorithms for Wind Turbine Output Prediction with Insufficient Data.

13. Comparative Analysis of Machine Learning Methods for Predicting Energy Recovery from Waste.

14. Sustainable power management in light electric vehicles with hybrid energy storage and machine learning control.

15. A Review on Machine/Deep Learning Techniques Applied to Building Energy Simulation, Optimization and Management.

16. Bulk Power Systems Emergency Control Based on Machine Learning Algorithms and Phasor Measurement Units Data: A State-of-the-Art Review.

17. Enhanced fault identification in grid-connected microgrid with SVM-based control algorithm.

18. Unlocking the potential: A review of artificial intelligence applications in wind energy.

19. Overview of the PI (2DoF) algorithm in wind power system optimization and control.

20. Machine learning-based energy management and power forecasting in grid-connected microgrids with multiple distributed energy sources.

21. Forecasting Solar Photovoltaic Power Production: A Comprehensive Review and Innovative Data-Driven Modeling Framework.

22. Frequency control using fuzzy active disturbance rejection control and machine learning in a two‐area microgrid under cyberattacks.

23. MACHINE LEARNING METHODS IN FORECASTING SOLAR PHOTOVOLTAIC ENERGY PRODUCTION.

24. Environmental Assessment of Glucose Production using Neuronal Networks.

25. Performance Assessment of Multi-Phase Switched Reluctance Machine for Wind Energy Applications.

26. A Comprehensive Review of Fault Diagnosis and Prognosis Techniques in High Voltage and Medium Voltage Electrical Power Lines.

27. Auctions for Renewables: Does the Choice of the Remuneration Scheme Matter?

28. Advancing Renewable Energy Forecasting: A Comprehensive Review of Renewable Energy Forecasting Methods.

29. ANALYSING THE ELECTRICITY LOAD AND PRODUCTION BY MEANS OF DIFFERENT MACHINE LEARNING METHODS: A CASE STUDY OF A MG SYSTEM.

30. Exploring the application of machine‐learning techniques in the next generation of long‐term hydropower‐thermal scheduling.

31. Performance enhancement of short-term wind speed forecasting model using Realtime data.

32. Intelligent Low-Consumption Optimization Strategies: Economic Operation of Hydropower Stations Based on Improved LSTM and Random Forest Machine Learning Algorithm.

33. Machine Learning Approaches to Predict Electricity Production from Renewable Energy Sources.

34. Forecasting and gap analysis of renewable energy integration in zero energy-carbon buildings: a comprehensive bibliometric and machine learning approach.

35. A Novel Method for Parameter Identification of Renewable Energy Resources based on Quantum Particle Swarm–Extreme Learning Machine.

36. Enhancing Zero-Energy Building Operations for ESG: Accurate Solar Power Prediction through Automatic Machine Learning.

37. Machine learning roles in advancing the power network stability due to deployments of renewable energies and electric vehicles.

38. Big data resolving using Apache Spark for load forecasting and demand response in smart grid: a case study of Low Carbon London Project.

39. DETERMINATION OF NETWORK TRAFFIC ANOMALIES IN A DISTRIBUTED COMPUTER SYSTEM WITH ENERGY FACILITIES.

40. Data-Driven Techniques for Short-Term Electricity Price Forecasting through Novel Deep Learning Approaches with Attention Mechanisms.

41. Improvement of Smart Grid Stability Based on Artificial Intelligence with Fusion Methods.

42. Diffusion‐based conditional wind power forecasting via channel attention.

43. Short-Term Wind Speed Forecasting Using Nonlinear Autoregressive Neural Network: A Case Study in Kocaeli-Türkiye.

44. A Survey of Machine Learning Applications in Renewable Energy Sources.

45. Review and Evaluation of Reinforcement Learning Frameworks on Smart Grid Applications.

46. Machine Learning Applications in Renewable Energy (MLARE) Research: A Publication Trend and Bibliometric Analysis Study (2012–2021).

47. Greener RAN Operation Through Machine Learning.

48. Techno-Economic Analysis of a 12-kW Photovoltaic System Using an Efficient Multiple Linear Regression Model Prediction.

49. An integrated method with adaptive decomposition and machine learning for renewable energy power generation forecasting.

50. A Novel Feature Representation for Prediction of Global Horizontal Irradiance Using a Bidirectional Model.