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Multi-Objective Distribution Network Reconfiguration Based on Pareto Front Ranking

机译:基于帕累托前排名的多目标配电网重构

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Electrical distribution system reconfiguration is frequently addressed as a multi-objective problem, typically taking into account the system losses together with other objectives, among which reliability indicators are widely used. In the multi-objective context, Pareto front analysis enables the operator handling conflicting and even non-commensurable objectives without needing the use of additional hypotheses or weights. This paper provides advances on the application of Pareto front analysis to multi-objective distribution network reconfiguration. Starting from previous results in which genetic algorithms were effectively adopted to find the best-known Pareto front, a version of the multi-objective binary particle swarm optimization (MOBPSO) customized for distribution network reconfiguration has been developed by exploiting the internal ranking of the solutions (based on a multi-criteria decision making method in the selection of the local best) and the network topology. Furthermore, the Pareto front mismatch metric (already used by the authors to compare different methods for small networks for which the complete Pareto front can be calculated) has been generalized to be used with large systems for which only the best-known Pareto front is found. Applications to a test network and to a real urban distribution network are discussed, showing the consistent superiority of the customized MOBPSO version with respect to the application of genetic algorithms and of a more classical version of the particle swarm optimization method.
机译:配电系统的重新配置通常作为多目标问题解决,通常将系统损耗与其他目标一起考虑,其中可靠性指标得到了广泛的应用。在多目标环境中,Pareto前沿分析使操作员无需使用额外的假设或权重即可处理冲突甚至不可衡量的目标。本文提供了帕累托前沿分析在多目标配电网重构中的应用进展。从有效利用遗传算法找到最著名的Pareto前沿的先前结果开始,通过利用解决方案的内部排名,开发了针对配电网重构而定制的多目标二进制粒子群优化(MOBPSO)版本(基于在选择本地最佳方案时采用多标准决策方法)和网络拓扑。此外,帕累托阵线不匹配度量(作者已经使用它来比较小型网络的不同方法,可以计算出完整的帕累托阵线),用于大型系统,而大型系统只能找到最著名的帕累托阵线。讨论了在测试网络和实际城市配电网络中的应用,显示了定制的MOBPSO版本相对于遗传算法和更经典版本的粒子群优化方法的一贯优势。

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