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A branch-and-cluster coordination scheme for selecting prison facility sites under uncertainty

机译:不确定条件下监狱设施选址的分群协调方案

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摘要

A multi-period stochastic model and an algorithmic approach to location of prison facilities under uncertainty are presented and applied to the Chilean prison system. The problem consists of finding locations and sizes of a preset number of new jails and determining where and when to increase the capacity of both new and existing facilities over a time horizon, while minimizing the expected costs of the prison system. Constraints include maximum inmate transfer distances, upper and lower bounds for facility capacities, and scheduling of facility openings and expansion, among others. The uncertainty lies in the future demand for capacity, because of the long time horizon under study and because of the changes in criminal laws, which could strongly modify the historical tendencies of penal population growth. Uncertainty comes from the effects of penal reform in the capacity demand. It is represented in the model through probabilistic scenarios, and the large-scale model is solved via a heuristic mixture of branch-and-fix coordination and branch-and-bound schemes to satisfy the constraints in all scenarios, the so-called branch-and-cluster coordination scheme. We discuss computational experience and compare the results obtained for the minimum expected cost and average scenario strategies. Our results demonstrate that the minimum expected cost solution leads to better solutions than does the average scenario approach. Additionally, the results show that the stochastic algorithmic approach that we propose outperforms the plain use of a state-of-the-art optimization engine, at least for the three versions of the real-life case that have been tested by us.
机译:提出了不确定性下监狱设施定位的多周期随机模型和算法,并将其应用于智利监狱系统。问题包括寻找预定数量的新监狱的位置和大小,并确定在一段时间内何时何地增加新设施和现有设施的容量,同时使监狱系统的预期成本降至最低。限制条件包括最大的囚犯转移距离,设施容量的上限和下限以及设施开放和扩展的时间表等。不确定性在于未来的能力需求,这是由于研究时间长和刑法的变化,这可能会大大改变刑事人口增长的历史趋势。不确定性来自对容量需求进行刑事改革的影响。在概率模型中将其表示为模型,并通过启发式混合分支固定解决方案和分支绑定方案来求解大型模型,以满足所有方案中的约束,即所谓的分支和集群协调方案。我们讨论了计算经验,并比较了最低预期成本和平均方案策略所获得的结果。我们的结果表明,与平均方案方法相比,最低预期成本解决方案可提供更好的解决方案。此外,结果表明,我们提出的随机算法方法至少在我们已经测试过的三个实际案例中胜过了最先进的优化引擎。

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