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Locating service facilities to reduce lost demand

机译:定位服务设施以减少需求损失

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摘要

We analyze the problem of locating a set of service facilities on a network when the demand for service is stochastic and congestion may arise at the facilities. We consider two potential sources of lost demand: (i) demand lost due to insufficient coverage; and (ii) demand lost due to congestion. Demand loss due to insufficient coverage arises when a facility is located too far away from customer locations. The amount of demand lost is modeled as an increasing function of the travel distance. The second source of lost demand arises when the queue at a facility becomes too long. It is modeled as the proportion of balking customers in a Markovian queue with a fixed buffer length. The objective is to find the minimum number of facilities, and their locations, so that the amount of demand lost from either source does not exceed certain pre-set levels. After formulating the model, we derive and investigate several different integer programming formulations, focusing in particular on alternative representations of closest assignment constraints. We also investigate a wide variety of heuristic approaches, ranging from simple greedy-type heuristics, to heuristics based on time-limited branch and bound, tabu search, and random adaptive search heuristics. The results of an extensive set of computational experiments are presented and discussed.
机译:我们分析了当服务需求是随机的并且在设施处可能出现拥塞时在网络上定位一组服务设施的问题。我们考虑了需求损失的两个潜在来源:(i)由于覆盖范围不足而导致的需求损失; (ii)由于交通拥堵导致需求损失。当设施距离客户位置太远时,由于覆盖范围不足而导致需求损失。需求损失量被建模为行进距离的增加函数。当设施中的队列变得太长时,就会产生需求损失的第二个原因。它被建模为在固定缓冲区长度的Markovian队列中拒绝客户的比例。目的是找到最少数量的设施及其位置,以使任一来源损失的需求量不超过某些预设水平。建立模型后,我们推导并研究了几种不同的整数编程公式,尤其着眼于最接近分配约束的替代表示。我们还研究了各种各样的启发式方法,从简单的贪婪型启发式方法到基于限时分支和界限,禁忌搜索和随机自适应搜索启发式方法的启发式方法。提出并讨论了一系列计算实验的结果。

著录项

  • 来源
    《IIE Transactions》 |2006年第11期|p.933-946|共14页
  • 作者单位

    Rotman School of Management, University of Toronto, 105 St. George St., Toronto, Ontario, Canada M5S 3E6;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;
  • 关键词

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