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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part A, Systems and humans >A Hybrid Particle Swarm Branch-and-Bound (HPB) Optimizer for Mixed Discrete Nonlinear Programming
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A Hybrid Particle Swarm Branch-and-Bound (HPB) Optimizer for Mixed Discrete Nonlinear Programming

机译:混合离散非线性规划的混合粒子群分支与界(HPB)优化器

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This paper proposes a new algorithm for solving mixed discrete nonlinear programming (MDNLP) problems, designed to efficiently combine particle swarm optimization (PSO), which is a well-known global optimization technique, and branch-and-bound (BB), which is a widely used systematic deterministic algorithm for solving discrete problems. The proposed algorithm combines the global but slow search of PSO with the rapid but local search capabilities of BB, to simultaneously achieve an improved optimization accuracy and a reduced requirement for computational resources. It is capable of handling arbitrary continuous and discrete constraints without the use of a penalty function, which is frequently cumbersome to parameterize. At the same time, it maintains a simple, generic, and easy-to-implement architecture, and it is based on the sequential quadratic programming for solving the NLP subproblems in the BB tree. The performance of the new hybrid PSO-BB architecture algorithm is evaluated against real-world MDNLP benchmark problems, and it is found to be highly competitive compared with existing algorithms.
机译:本文提出了一种新的算法来解决混合离散非线性规划(MDNLP)问题,旨在有效地结合使用众所周知的全局优化技术的粒子群优化(PSO)和分支定界(BB)一种解决离散问题的广泛使用的系统确定性算法。所提出的算法将PSO的全局但缓慢的搜索与BB的快速但局部的搜索功能相结合,以同时提高优化精度和减少对计算资源的需求。它能够在不使用惩罚函数的情况下处理任意连续和离散的约束,而惩罚函数通常很难进行参数设置。同时,它保持简单,通用且易于实现的体系结构,并且基于顺序二次编程来解决BB树中的NLP子问题。针对新的MDNLP基准问题评估了新的混合PSO-BB体系结构算法的性能,并且与现有算法相比,它具有很高的竞争力。

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