Fertilizer Production Planning Optimization Using Particle Swarm Optimization-Genetic Algorithm

D. Rahmalia, T. Herlambang, T. E. Saputro
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引用次数: 2

Abstract

Background: The applications of constrained optimization have been developed in many problems. One of them is production planning. Production planning is the important part for controlling the cost spent by the company.Objective: This research identifies about production planning optimization and algorithm to solve it in approaching. Production planning model is linear programming model with constraints : production, worker, and inventory.Methods: In this paper, we use heurisitic Particle Swarm Optimization-Genetic Algorithm (PSOGA) for solving production planning optimization. PSOGA is the algorithm combining Particle Swarm Optimization (PSO) and mutation operator of Genetic Algorithm (GA) to improve optimal solution resulted by PSO. Three simulations using three different mutation probabilies : 0, 0.01 and 0.7 are applied to PSOGA. Futhermore, some mutation probabilities in PSOGA will be simulated and percent of improvement will be computed.Results: From the simulations, PSOGA can improve optimal solution of PSO and the position of improvement is also determined by mutation probability. The small mutation probability gives smaller chance to the particle to explore and form new solution so that the position of improvement of small mutation probability is in middle of iteration. The large mutation probability gives larger chance to the particle to explore and form new solution so that the position of improvement of large mutation probability is in early of iteration.Conclusion: Overall, the simulations show that PSOGA can improve optimal solution resulted by PSO and therefore it can give optimal cost spent by the company for the  planning.Keywords: Constrained Optimization, Genetic Algorithm, Linear Programming, Particle Swarm Optimization, Production Planning
基于粒子群优化-遗传算法的化肥生产计划优化
背景:约束优化在许多问题中的应用得到了发展。其中之一是生产计划。生产计划是企业控制生产成本的重要环节。目的:研究生产计划优化问题及其求解算法。生产计划模型是具有生产、工人和库存约束的线性规划模型。方法:采用启发式粒子群优化-遗传算法求解生产计划优化问题。粒子群优化算法(PSOGA)是将粒子群优化算法(PSO)与遗传算法(GA)的变异算子相结合,对粒子群优化算法得到的最优解进行改进的算法。对PSOGA进行了三种不同突变概率(0、0.01和0.7)的模拟。在此基础上,模拟了PSOGA的一些突变概率,并计算了改进百分比。结果:从仿真结果来看,PSOGA可以改进PSO的最优解,改进的位置也由突变概率决定。小的突变概率使得粒子探索和形成新解的机会更小,使得小突变概率提高的位置处于迭代的中间。大的突变概率给粒子探索和形成新解的机会更大,使得大突变概率改进的位置处于迭代的早期。结论:总体而言,仿真结果表明,PSOGA可以改进PSO算法的最优解,从而给出企业规划的最优成本。关键词:约束优化,遗传算法,线性规划,粒子群优化,生产计划
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