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Model Predictive Control-Adaptive Neuro-Fuzzy Inference System Control Strategies for Photovoltaic-Wind Microgrid: Feasibility Review

机译:光伏风微电网的模型预测控制-自适应神经模糊推理系统控制策略:可行性研究

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Microgrids are increasingly gaining attention in the modern power industry. This is because it provides an attractive technology for utilizing distributed renewable energy resources such as Photovoltaic (PV) and Wind. The main problem currently facing PV-Wind microgrids is that of lower power quality due to their intermittent nature. This leads to variations in voltage and frequency which must be regulated and managed using a microgrid control system. This paper reviews the application of Model Predictive Control (MPC) and Adaptive Neuro-Fuzzy Inference System (ANFIS) control strategies to PV-Wind based microgrids. The outcome of the review was that these two control strategies can be hybridized to complement each other when applied in a Multilevel Microgrid Control System (MMCS). This improves the power quality of the microgrid in terms of better regulation of voltage and frequency. The research directions in this field lean towards the hybridization of artificial intelligence with analytical methods to optimize microgrid performance.
机译:微电网在现代电力工业中越来越受到关注。这是因为它为利用分布式可再生能源(例如光伏(PV)和风能)提供了一种有吸引力的技术。 PV-Wind微电网目前面临的主要问题是由于其间歇性而导致的电能质量较低。这导致电压和频率变化,必须使用微电网控制系统进行调节和管理。本文回顾了模型预测控制(MPC)和自适应神经模糊推理系统(ANFIS)控制策略在基于PV-Wind的微电网中的应用。审查的结果是,当在多级微电网控制系统(MMCS)中应用时,这两种控制策略可以相互杂交以相互补充。就更好地调节电压和频率而言,这提高了微电网的电能质量。该领域的研究方向倾向于将人工智能与分析方法进行杂交以优化微电网性能。

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