Machine Learning for Agile and Self-Adaptive Congestion Management in Active Distribution Networks

Muhammad Babar, M. Roos, Phuong H. Nguyen
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引用次数: 2

Abstract

Although congestion management via Demand Response (DR) has gain sufficient popularity recently, there are still some fundamental impediments to achieve a trade-off between demand flexibility scheduling and demand flexibility dispatch for congestion management. To find a solution to the challenge, the paper introduces the concept and design of an Agile Net, which is an agile control strategy for congestion management. The model of Agile Net has triple cores. First, it percepts the network environment by using the concept of demand elasticity. Second, it possesses an online model-free learning technique for the management of network externality, such as congestion. Third, it enables distributed system scalability. The efficiency of the proposed Agile Net is investigated by extending the simulation tool for DR paradigm for a generic low-voltage network of the Netherlands. Simulation results reveal a significant reduction in congestion over a year while confirming expected levels of performance.
主动配电网络中敏捷自适应拥塞管理的机器学习
尽管基于需求响应(DR)的拥塞管理方法近年来得到了广泛的应用,但在实现需求灵活性调度和需求灵活性调度之间的权衡方面仍然存在一些根本性的障碍。为了解决这一问题,本文引入了敏捷网络的概念和设计,这是一种用于拥塞管理的敏捷控制策略。敏捷网络的模型有三个核心。首先,利用需求弹性的概念来感知网络环境。其次,它具有在线无模型学习技术,用于管理网络外部性,如拥塞。第三,它支持分布式系统的可伸缩性。通过扩展荷兰通用低压电网的DR范式仿真工具,研究了所提出的敏捷网络的效率。模拟结果显示,在确认预期性能水平的同时,一年多的拥堵显著减少。
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