一种改进的基于神经网络的mg负载频率控制设计:分数阶建模方法

V. Skiparev, K. Nosrati, J. Belikov, A. Tepljakov, E. Petlenkov
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引用次数: 0

摘要

为微电网(MG)组件建立精确的数学模型是实施各种负荷频率控制(LFC)策略和分析的第一步。在这方面,包括与不同非线性相关的不同高阶模型,以提高建模精度,从而提高LFC技术的性能。然而,这些高阶非线性模型由于计算复杂度高,给系统的分析描述和控制问题带来了一些潜在的问题。因此,采用分数阶模型可以有效地平衡模型精度和分析复杂性。首先,将两个分数阶组件(储能系统和燃料电池)以可控的协调策略排列,以提高频率稳定性。然后,在多智能体框架中为每个组件部署两个人工神经网络控制器。为了完成这一步,应用多智能体随机强化学习优化来训练两个控制器。对分离的MG组分的测试结果验证了协调LFC策略的有效性。
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An Enhanced NN-based Load Frequency Control Design of MGs: A Fractional order Modeling Method
Developing accurate mathematical models for microgrid (MG) components is the initial step before implementing various load frequency control (LFC) strategies and analysis. In this regard, different high-order models associated with different nonlinearities have been included to increase the modeling accuracy resulted in a performance improvement in the LFC techniques. Nevertheless, these high-order nonlinear models pose some potential problems such as obstacles in the analytical description of the system and control problem along with its high computational complexity. In this light, the fractional order based models are deployed to effectively balance the model accuracy and analytical complexity. First, two fractional order components (energy storage system and fuel cell) are arranged in a controlled coordinated strategy to enhance the frequency stability. Then, two artificial neural network (ANN) controllers are deployed for each components in a multi-agent framework. To accomplish this step, a multi-agent stochastic reinforcement learning optimization is applied to train the two controllers. Test results on an isolated MG with fractional components validate the efficacy of the coordinated LFC strategy.
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