Arouna Oloulade, A. Moukengue, R. Agbokpanzo, A. Vianou, H. Tamadaho, Ramanou Badarou
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引用次数: 4
摘要
贝宁电力能源公司(SBEE)的电网损失非常大,因此引起了运营商的关注。本文的工作是利用改进蚁群算法(Modified Ant Colony Algorithms, MACA)对41节点的SBEE真实网络寻找最优拓扑结构,以减少网络损失,并确保在该网络的任何分支发生干扰时能够持续向客户供电。随着自动化与监控系统(SCADA)技术的突破,可以远程实时地保证配电网的运行,从而最大限度地减少损失,消除设备过载,提高可靠性。在运行约束下制定技术性能改进准则,在Matlab平台上采用蚁群系统与模糊逻辑相结合的改进蚁群算法求解。得到的最佳结果表明了该方法的有效性和有效性。SBEE的HVA网络可以自动重新配置,以显着提高其供应的连续性和可靠性。在标准33节点网络和实际41节点网络上的测试结果表明,该算法具有较好的鲁棒性和准确性。
New Multi Objective Approach for Optimal Network Reconfiguration in Electrical Distribution Systems Using Modified Ant Colony Algorithm
The losses in networks of Beninese Electrical Energy Company (SBEE) are very high and therefore constitute a concern for the operators. This work consisted in finding an optimal topology of a 41 nodes real network of SBEE by Modified Ant Colony Algorithms (MACA) in order to reduce the losses and ensure a continuous power supply to the customers in case of occurrence disturbances on any branch of this network. With technological breakthrough of Automation and Supervision Systems (SCADA), the operation of distribution networks can be ensured remotely in real time with the aim of minimizing losses, eliminating equipment overload and improving reliability. The criteria of technical performance improvement formulated under operating constraints are solved by Modified Ant Colony Algorithm (MACA) which is association of ant system and fuzzy logic on the Matlab platform. The best results obtained show the effectiveness and efficiency of this method. The SBEE's HVA networks can then be reconfigured automatically to significantly improve their continuity of supply and reliability. The improved results obtained after tests on a standard 33-nodes and a real 41 nodes networks show the robustness and accuracy of this MACA algorithm.