运营管理问题的一种新的基于粒子群算法

A. Vilcu, I. Herghiligiu, I. Verzea, Raluca P. Lazarescu
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引用次数: 0

摘要

运营管理问题是当前经济环境和研究活动面临的永久性挑战。本研究将对旅行推销员问题(TSP)进行建模。这个基本问题的复杂性(np-hard)使我们有机会应用和开发启发式方法和进化算法以及精确方法(动态规划、分枝定界)。本文提出了一种基于粒子群优化(PSO)技术的离散TSP算法。该方法的特点是通过迭代过程快速确定最优问题,对所有解进行广义搜索,并避免局部最优。为了避免过早收敛,我们引入了一种具有新数学函数的新算子,并提出了测量和保持种群多样性的新技术。我们通过将该算法应用于数值实例来测试其性能,并将其与其他进化算法提供的解和性能进行了比较。通过延迟收敛过程,新算法PSO在质量方面提供了合理的解决方案,与测试的不同进化算法提供的解决方案相当。在研究的最后,我们强调了基于PSO算法的结论、局限性和新技术。
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A NEW PSO-BASED ALGORITHM FOR AN OPERATIONAL MANAGEMENT PROBLEM
Operational management issues represent a permanent challenge for the current economic environment and the research activity. This research will model a Travelling Salesman Problem (TSP). The complexity of this fundamental problem (np-hard) allows a chance to apply and develop heuristic methods and evolutionary algorithms along with exact methods (dynamic programming, branch & bound). This paper proposes a new discrete algorithm to solve the TSP based on the Particle Swarm Optimization (PSO) technique. The features of this method are fast determination through an iterative process of the optimal problem, the generalised search in all the solutions, and the avoidance of the local optimal. To avoid premature convergence, we have introduced a new operator with a new mathematical function, and we have proposed new techniques for measuring and maintaining population diversity. We tested the algorithm's performance by applying it to numerical instances and compared it to the solutions and performance provided by other evolutionary algorithms. By delaying the convergence process, the new algorithm PSO offers reasonable solutions in terms of quality comparable to those offered by different evolutionary algorithms tested. At the end of the research, we highlighted the conclusions, limitations, and new techniques based on the PSO algorithm.
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来源期刊
International Journal of Modern Manufacturing Technologies
International Journal of Modern Manufacturing Technologies Engineering-Industrial and Manufacturing Engineering
CiteScore
0.70
自引率
0.00%
发文量
15
期刊介绍: The main topics of the journal are: Micro & Nano Technologies; Rapid Prototyping Technologies; High Speed Manufacturing Processes; Ecological Technologies in Machine Manufacturing; Manufacturing and Automation; Flexible Manufacturing; New Manufacturing Processes; Design, Control and Exploitation; Assembly and Disassembly; Cold Forming Technologies; Optimization of Experimental Research and Manufacturing Processes; Maintenance, Reliability, Life Cycle Time and Cost; CAD/CAM/CAE/CAX Integrated Systems; Composite Materials Technologies; Non-conventional Technologies; Concurrent Engineering; Virtual Manufacturing; Innovation, Creativity and Industrial Development.
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