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Substation planning method based on the weighted Voronoi diagram using an intelligent optimisation algorithm

机译:基于加权Voronoi图的变电站规划智能优化算法

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Distribution network planning is a very complicated, non-linear, large scale multi-objective and multi-constraint combinatorial optimisation problem. The capacity, location and power supply range of the substation and the distribution network are optimised based on the load forecasting. In previous studies, this problem usually decomposes into two sub-problems, one is substation planning and the other is distribution network planning. The authors propose a method based on the self-adjustment weighted Voronoi diagram (WVD) using genetic algorithms and particle swarm optimisation for planning substations, which can optimise the location and power range of the substations when both the number and capacity of the substations are known. The weight is calculated according to the substation capacity and load distribution, and then the authors form the self-adjusted WVD whose weight can be adaptively adjusted. This method ensures the convergence of the algorithm and also makes the location and power supply range of the substations more reasonable. On this basis, the self-adjusted WVD based on the elitist selection genetic algorithm (ESGA-WVD) or the particle swarm optimisation algorithm (PSO-WVD) is achieved using the global search feature of the ESGA or the PSO. Numerical results show that ESGA-WVD and PSO-WVD are more reliable and reasonable than single ESGA, PSO or WVD; both in the determination of substation location and in the division of the substation power supply range. Compared with ESGA-WVD, PSO-WVD is better in terms of running time, convergence rate and investment costs.
机译:配电网络规划是一个非常复杂的,非线性的,大规模的多目标,多约束的组合优化问题。根据负荷预测对变电站和配电网的容量,位置和供电范围进行优化。在以前的研究中,此问题通常分解为两个子问题,一个是变电站规划,另一个是配电网规划。作者提出了一种基于自调整加权Voronoi图(WVD)的方法,该方法使用遗传算法和粒子群优化技术来规划变电站,该方法可以在已知变电站的数量和容量的同时优化变电站的位置和功率范围。根据变电站的容量和负荷分布来计算权重,然后作者形成可以自适应调整权重的自调整WVD。该方法既保证了算法的收敛性,又使变电站的位置和供电范围更加合理。在此基础上,利用ESGA或PSO的全局搜索功能,实现了基于精英选择遗传算法(ESGA-WVD)或粒子群优化算法(PSO-WVD)的自调整WVD。数值结果表明,ESGA-WVD和PSO-WVD比单个ESGA,PSO或WVD更可靠,更合理。无论是确定变电站的位置,还是确定变电站的供电范围。与ESGA-WVD相比,PSO-WVD在运行时间,收敛速度和投资成本方面更好。

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