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Stochastic Maintenance Schedules of Active Distribution Networks Based on Monte-Carlo Tree Search

机译:基于Monte-Carlo树搜索的主动分配网络随机维护计划

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摘要

The integration of volatile distributed energy resources (DERs) brings new challenges for the active distribution network maintenance scheduling (DN-MS). Conventionally, the DN-MS is formulated as a deterministic optimization model without considering the uncertainties of DERs. In this paper, the DN-MS is formulated as a multistage stochastic optimization problem, which is cast as a stochastic mixed-integer nonlinear programming model. It aims to reduce the total maintenance cost constrained by the reliability indices. To capture the operational characteristics of active distribution networks, the uncertainties of DERs and post-outage operation strategies of switching devices are incorporated into the model. In general, this type of model is intractable and mainly solved by heuristic search methods with low efficiency. Recently, Monte-Carlo tree search (MCTS) is emerging as a scalable and promising reinforcement learning approach. We propose a stochastic MCTS solution to this problem. In the tree search procedure, a sample average approximation technique is developed to estimate multistage maintenance costs considering uncertainties. To speed up the MCTS, the complicated constraints of the original problem are transformed to penalty or heuristics functions. This approach can asymptotically approximate the optimum with promising computation efficiency. Numerical test results demonstrate the superiority of the proposed method over benchmark methods.
机译:挥发性分布式能源(DERs)的集成为主动分配网络维护调度(DN-MS)带来了新的挑战。传统上,DN-MS被配制成确定性优化模型,而不考虑DER的不确定性。在本文中,DN-MS被配制成多级随机优化问题,其作为随机混合整数非线性编程模型铸造。它旨在减少可靠性指数的总维护成本。为了捕获有源分配网络的操作特性,将切换设备的DER和中断操作策略的不确定性结合在模型中。通常,这种类型的模型是棘手的,主要由具有低效率的启发式搜索方法解决。最近,Monte-Carlo树搜索(MCT)正在成为可扩展和有前途的加强学习方法。我们向这个问题提出了一个随机的MCTS解决方案。在树搜索过程中,开发了样本平均近似技术以估计考虑不确定性的多级维护成本。为了加快MCTS,原始问题的复杂约束转变为惩罚或启发式功能。这种方法可以渐近地近似最佳的计算效率。数值测试结果证明了所提出的方法通过基准方法的优越性。

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