Using ant colony optimization for loss minimization in distribution networks

Ashish Ahuja, Anil Pahwa
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引用次数: 43

Abstract

Distribution systems have to bear different loading patterns at different times. This change in load causes distribution feeders to be overloaded at sometimes and lightly loaded at others. With this load variation, operating conditions of distribution system also vary. If not compensated well, voltage at different buses goes out of nominal range and real loss on the feeders also increases, leading to high operating cost of the system. However, with the advancement in automation of distribution networks, systems like SCADA have made possible to change the topology of the distribution network in real time for minimizing real loss in the system and for improving voltage profile at the buses. The configuration of the system is changed by changing the status of switches such that load is transferred from heavily loaded feeders to lightly loaded feeders. This paper proposes using ant colony optimization (ACO) for solving reconfiguration problem for loss minimization. Ant system, one of the ACO algorithms, has been implemented in a novel hypercube framework on a 33-bus test system and the results obtained show that ACO performs as well as any other proposed method for loss minimization. In fact, this ACO algorithm found the most optimum solution found so far by any other method proposed in the literature for the 33-bus test system considered.
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用蚁群算法求解配电网损耗最小化
配电系统在不同时间必须承受不同的负荷模式。负载的这种变化导致配电馈线有时过载,有时轻负荷。随着负荷的变化,配电系统的运行状况也会发生变化。如果没有很好地补偿,不同母线上的电压会超出标称范围,馈线上的实际损耗也会增加,从而导致系统的高运行成本。然而,随着配电网自动化的进步,像SCADA这样的系统已经可以实时改变配电网的拓扑结构,以最大限度地减少系统中的实际损耗,并改善总线上的电压分布。通过改变开关的状态来改变系统的配置,从而将负载从重负荷馈线转移到轻负荷馈线。本文提出用蚁群算法求解损失最小化的重构问题。蚁群算法是蚁群算法中的一种,在一个33总线测试系统的超立方体框架中实现了蚁群算法,结果表明蚁群算法的性能与其他提出的算法一样好。事实上,对于所考虑的33总线测试系统,该蚁群算法找到了迄今为止文献中任何其他方法所找到的最优解。
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