(N-1) contingency planning in radial distribution networks using genetic algorithms

A. Mendes, N. Boland, P. Guiney, C. Riveros
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引用次数: 11

Abstract

(N-1) contingency planning has been object of study in the area of distribution networks of several decades. Energy distribution companies have to reconnect areas affected by an outage within a very short time, and observe operational constraints, to avoid the possibility of severe financial penalties by regulatory bodies. Distribution networks are often operated with a radial topology, but, ideally, should have more than one route to deliver energy to any node of the network. Switches in the network are opened to create the radial topology used in normal operation, and, in the case of an outage, alternate routes are activated by opening or closing switches located at specific points of the network. Given an outage situation (in our case represented by te disconnection of a single branch), the choice of which switches should change their state is a combinatorial optimisation problem, with a search space of 2k, where k is the number of switches. Because of the exponential complexity, exact methods are prohibitively time-consuming. This work presents a genetic algorithm that provides a rapid answer to network managers in terms of a switching strategy to reconnect the affected area. The method takes into account the radial topology of the power flow and the operational limits of voltage and cable load. Computational tests were conducted on a real network with 96 buses and 16 switches, located within the operational area of Energy Australia. This paper describes the genetic algorithm in detail, presents thorough computational tests, and a complete contingency plan for the test network.
基于遗传算法的径向配电网(N-1)应急规划
(N-1)应急计划是几十年来配电网领域研究的对象。能源分配公司必须在很短的时间内重新连接受停电影响的地区,并遵守操作限制,以避免监管机构严厉的经济处罚。配电网络通常以径向拓扑运行,但理想情况下,应该有多条路线将能量输送到网络的任何节点。打开网络中的交换机以创建正常操作中使用的径向拓扑,并且在停电的情况下,通过打开或关闭位于网络特定点的交换机来激活备用路由。给定停电情况(在我们的例子中,单个分支断开),选择哪些交换机应该改变其状态是一个组合优化问题,搜索空间为2k,其中k是交换机的数量。由于指数复杂度,精确的方法非常耗时。这项工作提出了一种遗传算法,为网络管理人员提供了一个快速的答案,以切换策略重新连接受影响的区域。该方法考虑了潮流的径向拓扑结构以及电压和电缆负载的运行极限。计算测试是在一个真实的网络上进行的,该网络有96个总线和16个交换机,位于澳大利亚能源公司的业务范围内。本文对遗传算法进行了详细的描述,并进行了全面的计算试验,给出了完整的试验网络应急预案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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