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一种基于减法平均的优化器,用于解决工程问题及其在电力系统TCSC配置中的应用

A Subtraction-Average-Based Optimizer for Solving Engineering Problems with Applications on TCSC Allocation in Power Systems.

作者信息

Moustafa Ghareeb, Tolba Mohamed A, El-Rifaie Ali M, Ginidi Ahmed, Shaheen Abdullah M, Abid Slim

机构信息

Electrical Engineerng Department, Jazan University, Jazan 45142, Saudi Arabia.

Electrical Engineerng Department, Suez Canal University, Ismailia 41522, Egypt.

出版信息

Biomimetics (Basel). 2023 Jul 27;8(4):332. doi: 10.3390/biomimetics8040332.

Abstract

The present study introduces a subtraction-average-based optimization algorithm (SAOA), a unique enhanced evolutionary technique for solving engineering optimization problems. The typical SAOA works by subtracting the average of searcher agents from the position of population members in the search space. To increase searching capabilities, this study proposes an improved SAO (ISAO) that incorporates a cooperative learning technique based on the leader solution. First, after considering testing on different standard mathematical benchmark functions, the proposed ISAOA is assessed in comparison to the standard SAOA. The simulation results declare that the proposed ISAOA establishes great superiority over the standard SAOA. Additionally, the proposed ISAOA is adopted to handle power system applications for Thyristor Controlled Series Capacitor (TCSC) allocation-based losses reduction in electrical power grids. The SAOA and the proposed ISAOA are employed to optimally size the TCSCs and simultaneously select their installed transmission lines. Both are compared to two recent algorithms, the Artificial Ecosystem Optimizer (AEO) and AQuila Algorithm (AQA), and two other effective and well-known algorithms, the Grey Wolf Optimizer (GWO) and Particle Swarm Optimizer (PSO). In three separate case studies, the standard IEEE-30 bus system is used for this purpose while considering varying numbers of TCSC devices that will be deployed. The suggested ISAOA's simulated implementations claim significant power loss reductions for the three analyzed situations compared to the GWO, AEO, PSO, and AQA.

摘要

本研究介绍了一种基于减法平均的优化算法(SAOA),这是一种用于解决工程优化问题的独特增强进化技术。典型的SAOA通过从搜索空间中的种群成员位置减去搜索代理的平均值来工作。为了提高搜索能力,本研究提出了一种改进的SAO(ISAO),它结合了基于最优解的合作学习技术。首先,在考虑对不同的标准数学基准函数进行测试后,将所提出的ISAOA与标准SAOA进行比较评估。仿真结果表明,所提出的ISAOA比标准SAOA具有很大的优势。此外,所提出的ISAOA被用于处理电力系统应用,以基于晶闸管控制串联电容器(TCSC)的配置来降低电网中的损耗。SAOA和所提出的ISAOA被用于优化TCSC的尺寸,并同时选择其安装的输电线路。将它们与两种近期算法,即人工生态系统优化器(AEO)和阿奎拉算法(AQA),以及另外两种有效且知名的算法,即灰狼优化器(GWO)和粒子群优化器(PSO)进行比较。在三个单独的案例研究中,为此使用了标准的IEEE - 30母线系统,同时考虑了将部署的不同数量的TCSC设备。所建议的ISAOA的模拟实现表明,与GWO、AEO、PSO和AQA相比,在所分析的三种情况下功率损耗显著降低。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4642/10452347/53c987df8be5/biomimetics-08-00332-g001.jpg

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