微电网系统智能控制技术

M. Khaleel
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引用次数: 7

摘要

微电网是一种复杂的系统,它集成了分布式能源资源,为本地负荷提供可靠和高效的电力。由于MG环境的动态性和不确定性,智能控制技术已成为确保最佳性能的流行解决方案。本文概述了MG中应用的智能控制技术的最新进展,包括神经网络、模型预测控制、博弈论、深度强化学习和贝叶斯控制器。本文还讨论了这些技术的优点和局限性,强调了在MG系统中实现它们所面临的挑战。最后,对智能控制技术在MG系统中性能的现有文献进行了调查,提供了它们在提高MG系统的能效、稳定性和可靠性方面的有效性的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Control Techniques for Microgrid Systems
Microgrids (MG) are complex systems that integrate distributed energy resources to provide reliable and efficient power to local loads. Due to the dynamic and uncertain nature of the MG environment, intelligent control techniques have become a popular solution to ensure optimal performance. This paper provides an overview of the recent advances in intelligent control techniques applied in MG, including neural networks, model predictive control, game theory, deep reinforcement learning, and Bayesian controllers. The paper also presents a discussion of the advantages and limitations of these techniques, highlighting the challenges associated with implementing them in MG systems. Finally, investigation of the existing literature on the performance of intelligent control techniques in MG systems is presented, providing insights into their effectiveness in improving the energy efficiency, stability, and reliability of MG systems.  
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