数学优化
反对派(政治)
水准点(测量)
最优化问题
光伏系统
人口
计算机科学
趋同(经济学)
优化设计
早熟收敛
工程类
数学
遗传算法
电气工程
经济
机器学习
地理
社会学
人口学
政治
经济增长
法学
政治学
大地测量学
作者
Laith Abualigah,Ali Diabat,Thanh Cuong-Le,Samir Khatir
标识
DOI:10.1016/j.cma.2023.116097
摘要
Prairie Dog Optimization is a population-based optimization method that uses the behavior of prairie dogs to find the optimal solution. This paper proposes a novel optimization method, called the Opposition-based Laplacian Distribution with Prairie Dog Optimization (OPLD-PDO), for solving industrial engineering design problems. The OPLD-PDO method combines the concepts of opposition-based Laplacian distribution and Prairie Dog Optimization to find near-optimal solutions. This causes faster convergence to the optimal solution and reduces the chances of getting stuck in a local minimum. The OPLD-PDO method was tested on several benchmark problems to validate its performance. The results were compared with other methods, and the OPLD-PDO method was superior regarding solution quality. The results of this study demonstrate the potential of the OPLD-PDO method as a useful tool for solving industrial engineering design problems and photovoltaic (PV) solar problems.
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