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Load frequency regulation for multi-area power system using integral reinforcement learning

机译:基于积分强化学习的多区域电力系统负荷频率调节

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摘要

Active load variations in uncertain dynamical power system environments affect the energy exchange and efficiency in multi-area power systems, which could compromise the stability of power grids. Hence, model-free load frequency control mechanisms are needed in order to sustain proper performances under such conditions. An online model-free adaptive control scheme based on integral reinforcement learning is proposed to regulate load frequency deviations in multi-area power systems. This scheme takes into account the generation rate constraints of the power generation units and the optimal control decisions do not employ any knowledge about the dynamical model of the power system. This approach reformulates Bellman equation and approximates the associated solving value functions and model-free control strategies using neural networks. The adaption mechanism uses value iteration processes to evaluate the underlying modified-Bellman equation and model-free control strategy in real time. The performance of the adaptive learning scheme is compared with other control methodologies using challenging validation scenarios.
机译:不确定的动态电力系统环境中的有功负载变化会影响多区域电力系统中的能量交换和效率,这可能会损害电网的稳定性。因此,需要无模型的负载频率控制机制,以便在这种条件下维持适当的性能。提出了一种基于积分强化学习的在线无模型自适应控制方案,用于调节多区域电力系统的负荷频率偏差。该方案考虑了发电单元的发电速率约束,并且最优控制决策不使用关于电力系统的动力学模型的任何知识。该方法重新构造了Bellman方程,并使用神经网络近似了相关的求解值函数和无模型控制策略。自适应机制使用值迭代过程实时评估基本的修改后的Bellman方程和无模型控制策略。使用具有挑战性的验证方案,将自适应学习方案的性能与其他控制方法进行了比较。

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