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基于大偏差技术的子集排序最优仿真预算分配方法
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作者 肖辉 王子淳 +2 位作者 寇纲 顾先明 loo hay lee 《中国科学:信息科学》 CSCD 北大核心 2023年第6期1147-1162,共16页
排序选优方法已广泛应用于求解离散事件动态系统中的仿真优化问题,但该类方法鲜有研究聚焦于子集排序问题的高效求解,而子集排序问题广泛存在于智能制造、电气工程、供应链管理等众多领域.本文针对k个备选方案的子集排序问题,构建了以... 排序选优方法已广泛应用于求解离散事件动态系统中的仿真优化问题,但该类方法鲜有研究聚焦于子集排序问题的高效求解,而子集排序问题广泛存在于智能制造、电气工程、供应链管理等众多领域.本文针对k个备选方案的子集排序问题,构建了以最大化子集正确排序概率为目标的仿真预算优化分配模型,推导了该优化问题的渐进最优条件,并提出了相应的序贯仿真算法来实现仿真预算的渐进最优分配规则.数值实验结果表明,本文所提出的算法显著地提高了子集排序问题的仿真优化效率. 展开更多
关键词 离散事件动态系统 仿真优化 最优计量分配方法 大偏差技术 排序选优
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DESIGN SAMPLING AND REPLICATION ASSIGNMENT UNDER FIXED COMPUTING BUDGET 被引量:1
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作者 loo hay lee Ek Peng CHEW 《Journal of Systems Science and Systems Engineering》 SCIE EI CSCD 2005年第3期289-307,共19页
For many real world problems, when the design space is huge and unstructured, and time consuming simulation is needed to estimate the performance measure, it is important to decide how many designs to sample and how l... For many real world problems, when the design space is huge and unstructured, and time consuming simulation is needed to estimate the performance measure, it is important to decide how many designs to sample and how long to run for each design alternative given that we have only a fixed amount of computing time. In this paper, we present a simulation study on how the distribution of the performance measures and distribution of the estimation errors/noises will affect the decision. From the analysis, it is observed that when the underlying distribution of the noise is bounded and if there is a high chance that we can get the smallest noise, then the decision will be to sample as many as possible, but if the noise is unbounded, then it will be important to reduce the noise level first by assigning more replications for each design. On the other hand, if the distribution of the performance measure indicates that we will have a high chance of getting good designs, the suggestion is also to reduce the noise level, otherwise, we need to sample more designs so as to increase the chances of getting good designs. For the special case when the distributions of both the performance measures and noise are normal, we are able to estimate the number of designs to sample, and the number of replications to run in order to obtain the best performance. 展开更多
关键词 Ranking and selection ordinal optimization random sampling
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Connecting the Belt and Road through sea-rail collaboration 被引量:1
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作者 Chenhao ZHOU Haobin LI +2 位作者 Wencheng WANG loo hay lee Ek Peng CHEW 《Frontiers of Engineering Management》 2017年第3期315-324,共10页
As part of China's "the Belt and Road"strategy, China Railway Express provides alternative shipping routes and transportation modes from Asia to Europe and creates new opportunities for intermodal transp... As part of China's "the Belt and Road"strategy, China Railway Express provides alternative shipping routes and transportation modes from Asia to Europe and creates new opportunities for intermodal transportation in the shipping industry. A time–distancebased cost(time cost) function was proposed to compare China Railway Express with traditional transportation modes. Time cost was related to different types of cargoes,which exhibit distinct sensitivity to time. Using the proposed cost function as basis, we identified the cost indifference area where total costs are equal. Further analysis was performed for selecting the transportation mode and supply area for a specific cargo. This study provides various parties, such as business owners, the government, and the shipping industry, with many valuable insights. 展开更多
关键词 China Railway Express the Belt and Road shipping industry combined transportation
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A case study on sample average approximation method for stochastic supply chain network design problem
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作者 Yuan WANG Ruyan SHOU +1 位作者 loo hay lee Ek Peng CHEW 《Frontiers of Engineering Management》 2017年第3期338-347,共10页
This study aims to solve a typical long-term strategic decision problem on supply chain network design with consideration to uncertain demands. Existing methods for these problems are either deterministic or limited i... This study aims to solve a typical long-term strategic decision problem on supply chain network design with consideration to uncertain demands. Existing methods for these problems are either deterministic or limited in scale. We analyze the impact of uncertainty on demand based on actual large data from industrial companies.Deterministic equivalent model with nonanticipativity constraints, branch-and-fix coordination, sample average approximation(SAA) with Bayesian bootstrap, and Latin hypercube sampling were adopted to analyze stochastic demands. A computational study of supply chain network with front-ends in Europe and back-ends in Asia is presented to highlight the importance of stochastic factors in these problems and the efficiency of our proposed solution approach. 展开更多
关键词 supply chain network stochastic demand sampling average approximation Bayesian bootstrap Latin hypercube sampling
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Stochastic systems simulation optimization
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作者 Chun-Hung CHEN Leyuan SHI loo hay lee 《Frontiers of Electrical and Electronic Engineering in China》 CSCD 2011年第3期468-480,共13页
With the advance of new computational technology,stochastic systems simulation and optimization has become increasingly a popular subject in both academic research and industrial applications.This paper presents some ... With the advance of new computational technology,stochastic systems simulation and optimization has become increasingly a popular subject in both academic research and industrial applications.This paper presents some of recent developments about the problem of optimizing a performance function from a simulation model.We begin by classifying different types of problems and then provide an overview of the major approaches,followed by a more in-depth presentation of two specific areas:optimal computing budget allocation and the nested partitions method. 展开更多
关键词 simulation optimization discrete-event systems simulation-based decision making computing budget allocation ranking and selection
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