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Refining the conventional approach toward distribution networks expansion planning in metropolises by using self-adaptive particle swarm optimization

机译:通过自适应粒子群优化完善大城市配电网扩展规划的常规方法

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Considering load congestion, rising prices and difficulty in accessing lands suitable for substation constructions, as well as the reduction of liquidity in distribution system companies (Disco) after deregulation, and also significant loss in the low-voltage feeders which consist more than 50 percent of the total loss in the distribution level, lead us to rethink about the conventional methodology for the distribution network planning in the metropolis of Tehran. One of the most popular solutions is to use small transformers to reduce the length of the low voltage feeders in order to decline losses in these parts of the distribution networks. By analogy, in this paper, a new techno-economic method is proposed in order to contend with the aforementioned problems. The effectiveness of the method is evaluated by using several test systems. Self-adaptive PSO is selected as a metaheuristic optimization algorithm due to its high exploration and exploitation nature and fast convergence. Equivalent uniform annual cost is selected as a simple but effective tool so as to split the cost of the initial investment. The objective function is defined to minimize not only the initial investment but also the operation cost, simultaneously.
机译:考虑到负载拥挤,价格上涨以及难以获得适合变电站建设的土地,以及放松管制后配电系统公司(Disco)的流动性下降,以及低压馈线的重大损失,其中低压馈线的损耗超过50%。配电水平的总体损失,使我们重新考虑了德黑兰大都市的配电网络规划的常规方法。最受欢迎的解决方案之一是使用小型变压器来减少低压馈线的长度,以减少配电网这些部分的损耗。以此类推,本文提出了一种新的技术经济方法来解决上述问题。该方法的有效性通过使用多个测试系统进行了评估。由于自适应PSO具有较高的探索和利用性以及快速收敛性,因此被选择为元启发式优化算法。选择等值的统一年成本作为一种简单但有效的工具,以分割初始投资的成本。定义目标函数的目的是要同时最小化初始投资和运营成本。

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