A Hybrid Particle Swarm Optimization algorithm for Discrete Simulation Optimization with One Stochastic Constraint

碩士 === 國立清華大學 === 工業工程與工程管理學系所 === 106 === This research is based on Particle Swarm Optimization (PSO) and combine with Ranking and Selection (R&S) method to solve the discrete event simulation optimization problem with single stochastic constraint. It needs to find the optimal or nearly optimal...

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Main Authors: Lu, You-Lin., 盧又麟
Other Authors: Lin, James-T
Format: Others
Language:zh-TW
Published: 2018
Online Access:http://ndltd.ncl.edu.tw/handle/zypsvr
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spelling ndltd-TW-106NTHU50310232019-05-16T00:15:34Z http://ndltd.ncl.edu.tw/handle/zypsvr A Hybrid Particle Swarm Optimization algorithm for Discrete Simulation Optimization with One Stochastic Constraint 混合粒子群演算法於具有單一隨機限制之離散式模擬最佳化問題 Lu, You-Lin. 盧又麟 碩士 國立清華大學 工業工程與工程管理學系所 106 This research is based on Particle Swarm Optimization (PSO) and combine with Ranking and Selection (R&S) method to solve the discrete event simulation optimization problem with single stochastic constraint. It needs to find the optimal or nearly optimal solution in finite time or budget when solving these problems. Because the constraints of problem exist stochastic, there are many feasible and infeasible solutions existing in solution space simultaneously. When dealing with such issues, researchers used heuristic algorithms to solve the problem of excessive number of solutions, and used R&S method to solve the sampling resource allocation problem in the past. However, there is still no method to consider the factors such as excessive number of plans, feasibility of plans, and sampling resource allocation simultaneously. This makes the problem with time-consuming in simulation and inefficient in solution solving process. Based on Optimal Simulation Budget Allocation for Constrained Optimization (OCBA-CO), this research proposed an Optimal Sample Allocation Strategy for Constrained Optimization (OSAS-CO) method. This method considers the variability and feasibility of solutions, and adds the concepts of Super individual and Elite group to allocate resources on key solutions for increasing the probability of selecting the best solution. Then applied to PSO to construct a hybrid algorithm. According to the characteristics of PSO, the proposed method can improve the problem of excessive number of solutions that makes simulation time consuming. According to the characteristics of OSAS-CO, our method can also evaluate the feasibility of solutions while allocate the repetitive simulations. Then it improves the problem that PSO combines OCBA-CO will consume a lot of simulation computation budgets on solutions which have similar performance, and increase the sampling resource allocation efficiency. This research used the hybrid algorithm to solve the simulation optimization problem with single stochastic constraint. This research used two different functional models and the buffer allocation problems respectively, and reduced the total simulation number by 57%, 14.4%, and 21.96% in three experiments respectively. This research proved that OSAS-CO can improve the usage efficiency of simulation computation budgets and reduce the total simulation numbers significantly. Lin, James-T 林則孟 2018 學位論文 ; thesis 74 zh-TW
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description 碩士 === 國立清華大學 === 工業工程與工程管理學系所 === 106 === This research is based on Particle Swarm Optimization (PSO) and combine with Ranking and Selection (R&S) method to solve the discrete event simulation optimization problem with single stochastic constraint. It needs to find the optimal or nearly optimal solution in finite time or budget when solving these problems. Because the constraints of problem exist stochastic, there are many feasible and infeasible solutions existing in solution space simultaneously. When dealing with such issues, researchers used heuristic algorithms to solve the problem of excessive number of solutions, and used R&S method to solve the sampling resource allocation problem in the past. However, there is still no method to consider the factors such as excessive number of plans, feasibility of plans, and sampling resource allocation simultaneously. This makes the problem with time-consuming in simulation and inefficient in solution solving process. Based on Optimal Simulation Budget Allocation for Constrained Optimization (OCBA-CO), this research proposed an Optimal Sample Allocation Strategy for Constrained Optimization (OSAS-CO) method. This method considers the variability and feasibility of solutions, and adds the concepts of Super individual and Elite group to allocate resources on key solutions for increasing the probability of selecting the best solution. Then applied to PSO to construct a hybrid algorithm. According to the characteristics of PSO, the proposed method can improve the problem of excessive number of solutions that makes simulation time consuming. According to the characteristics of OSAS-CO, our method can also evaluate the feasibility of solutions while allocate the repetitive simulations. Then it improves the problem that PSO combines OCBA-CO will consume a lot of simulation computation budgets on solutions which have similar performance, and increase the sampling resource allocation efficiency. This research used the hybrid algorithm to solve the simulation optimization problem with single stochastic constraint. This research used two different functional models and the buffer allocation problems respectively, and reduced the total simulation number by 57%, 14.4%, and 21.96% in three experiments respectively. This research proved that OSAS-CO can improve the usage efficiency of simulation computation budgets and reduce the total simulation numbers significantly.
author2 Lin, James-T
author_facet Lin, James-T
Lu, You-Lin.
盧又麟
author Lu, You-Lin.
盧又麟
spellingShingle Lu, You-Lin.
盧又麟
A Hybrid Particle Swarm Optimization algorithm for Discrete Simulation Optimization with One Stochastic Constraint
author_sort Lu, You-Lin.
title A Hybrid Particle Swarm Optimization algorithm for Discrete Simulation Optimization with One Stochastic Constraint
title_short A Hybrid Particle Swarm Optimization algorithm for Discrete Simulation Optimization with One Stochastic Constraint
title_full A Hybrid Particle Swarm Optimization algorithm for Discrete Simulation Optimization with One Stochastic Constraint
title_fullStr A Hybrid Particle Swarm Optimization algorithm for Discrete Simulation Optimization with One Stochastic Constraint
title_full_unstemmed A Hybrid Particle Swarm Optimization algorithm for Discrete Simulation Optimization with One Stochastic Constraint
title_sort hybrid particle swarm optimization algorithm for discrete simulation optimization with one stochastic constraint
publishDate 2018
url http://ndltd.ncl.edu.tw/handle/zypsvr
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