论文标题

随机的事件预备准备,以增强具有高DER穿透的分配系统的弹性

Stochastic Pre-Event Preparation for Enhancing Resilience of Distribution Systems with High DER Penetration

论文作者

Zhang, Qianzhi, Wang, Zhaoyu, Ma, Shanshan, Arif, Anmar

论文摘要

本文提出了一种随机的最佳准备和资源分配方法,用于分发系统中即将发生的极端天气事件,这可以帮助实用程序实现更快,更有效的事后恢复。以最大化服务负载并最大程度地减少运营成本的目的,本文开发了两阶段的随机混合构成线性编程(SMILP)模型。第一阶段决定了移动资源,燃料资源和劳动力资源的最佳位置和数量。第二阶段考虑网络操作约束和维修人员调度限制。提出的随机事件预制备模型通过方案分解方法,进行性套期保值(pH)来求解,以缓解大量场景引入的计算复杂性。此外,为了显示太阳能光伏(PV)生成对系统弹性的影响,我们在停电过程中考虑了三种类型的PV系统,并将弹性改善与不同的PV渗透水平进行比较。在大规模(超过10,000个节点)上的模拟的数值结果已被用来验证所提出方法的可伸缩性和有效性。

This paper proposes a stochastic optimal preparation and resource allocation method for upcoming extreme weather events in distribution systems, which can assist utilities to achieve faster and more efficient post-event restoration. With the objective of maximizing served load and minimizing operation cost, this paper develops a two-stage stochastic mixed-integer linear programming (SMILP) model. The first-stage determines the optimal positions and numbers of mobile resources, fuel resources, and labor resources. The second-stage considers network operational constraints and repair crew scheduling constraints. The proposed stochastic pre-event preparation model is solved by a scenario decomposition method, Progressive Hedging (PH), to ease the computational complexity introduced by a large number of scenarios. Furthermore, to show the impact of solar photovoltaic (PV) generation on system resilience, we consider three types of PV systems during power outage and compare the resilience improvements with different PV penetration levels. Numerical results from simulations on a large-scale (more than 10,000 nodes) distribution feeder have been used to validate the scalability and effectiveness of the proposed method.

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