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184 results

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

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

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

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

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

6. A Data-Driven-Based Optimal Planning of Renewable Rich Microgrid System.

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

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

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

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

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

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

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

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

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

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

17. Performance Evaluation of Multiple Machine Learning Models in Predicting Power Generation for a Grid-Connected 300 MW Solar Farm.

18. A Solar and Wind Energy Evaluation Methodology Using Artificial Intelligence Technologies.

19. Research Advances on Machine Learning Technologies for Enhanced Biodiesel Production: A Comprehensive Review.

20. Artificial Intelligence for Management of Variable Renewable Energy Systems: A Review of Current Status and Future Directions.

21. A Machine Learning Approach for Investment Analysis in Renewable Energy Sources: A Case Study in Photovoltaic Farms.

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

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

24. Forecasting of Energy Balance in Prosumer Micro-Installations Using Machine Learning Models.

25. Forecasting different dimensions of liquidity in the intraday electricity markets: A review.

26. Machine Learning Approach for Output Power Forecasting of Grid Connected Solar PV Plant in Madurai.

27. Artificial intelligence based prognostic maintenance of renewable energy systems: A review of techniques, challenges, and future research directions.

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

29. Artificial Intelligence Control System Applied in Smart Grid Integrated Doubly Fed Induction Generator-Based Wind Turbine: A Review.

30. Examining nonlinear effects of socioecological drivers on urban solar energy development in China using machine learning and high-dimensional data.

31. Exploring hydrogen geologic storage in China for future energy: Opportunities and challenges.

32. Model-Free Approach to DC Microgrid Optimal Operation under System Uncertainty Based on Reinforcement Learning.

33. An Empirical Analysis of Machine Learning Algorithms for Solar Power Forecasting in a High Dimensional Uncertain Environment.

34. Intelligent Micro-Cogeneration Systems for Residential Grids: A Sustainable Solution for Efficient Energy Management.

35. Energy Forecasting Model for Ground Movement Operation in Green Airport.

36. A Machine Learning Model Ensemble for Mixed Power Load Forecasting across Multiple Time Horizons.

37. IS IT POSSIBLE TO APPLY A DEEP LEARNING ALGORITHM TO INNOVATION MANAGEMENT RESEARCH?

38. Advanced Forecasting Methods of 5-Minute Power Generation in a PV System for Microgrid Operation Control.

39. AI-Based Scheduling Models, Optimization, and Prediction for Hydropower Generation: Opportunities, Issues, and Future Directions.

40. Multi-Microgrid Collaborative Optimization Scheduling Using an Improved Multi-Agent Soft Actor-Critic Algorithm.

41. Advanced Optimisation and Forecasting Methods in Power Engineering—Introduction to the Special Issue.

42. A Bayesian Optimization-Based LSTM Model for Wind Power Forecasting in the Adama District, Ethiopia.

43. Renewable Energy Potential Estimation Using Climatic-Weather-Forecasting Machine Learning Algorithms.

44. A Systematic Study on Reinforcement Learning Based Applications.

45. Projecting Annual Rainfall Timeseries Using Machine Learning Techniques.

46. Overview of Numerical Simulation of Solid-State Anaerobic Digestion Considering Hydrodynamic Behaviors, Phenomena of Transfer, Biochemical Kinetics and Statistical Approaches.

47. Ensemble optimization approach based on hybrid mode decomposition and intelligent technology for wind power prediction system.

48. Determinants of renewable energy consumption in the Fifth Technology Revolutions: Evidence from ASEAN countries.

49. An interdisciplinary approach on efficient virtual microgrid to virtual microgrid energy balancing incorporating data preprocessing techniques.

50. Digital twin application for attach detection and mitigation of PV-based smart systems using fast and accurate hybrid machine learning algorithm.