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An Adaptive Perturbation-Based Heuristic: An Application to the Continuous p-Centre Problem

机译:基于自适应摄动的启发式方法:在连续p中心问题中的应用

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摘要

A self-adaptive heuristic that incorporates a variable level of perturbation, a novel local search and a learning mechanism is proposed to solve the p-centre problem in the continuous space. Empirical results, using several large TSP-Lib data sets, some with over 1300 customers with various values of p, show that our proposed heuristic is both effective and efficient. This perturbation metaheuristic compares favourably against the optimal method on small size instances. For larger instances the algorithm outperforms both a multi-start heuristic and a discrete-based optimal approach while performing well against a recent powerful VNS approach. This is a self-adaptive method that can easily be adopted to tackle other combinatorial/global optimisation problems. For benchmarking purposes, the medium size instances with nodes are solved optimally for the first time, though requiring a large amount of computational time. As a by-product of this research, we also report for the first time the optimal solution of the vertex p-centre problem for these TSP-Lib data sets.
机译:为了解决连续空间中的p中心问题,提出了一种自适应的启发式方法,该方法结合了可变的摄动水平,新颖的局部搜索和学习机制。使用多个大型TSP-Lib数据集(其中有1300多个客户使用p的不同值)的经验结果表明,我们提出的启发式方法既有效又高效。这种微调的启发式方法与小规模实例的最佳方法相比具有优势。对于较大的实例,该算法优于多点启发式和基于离散的最优方法,同时与最近强大的VNS方法相比表现良好。这是一种自适应方法,可以轻松地采用它来解决其他组合/全局优化问题。为了进行基准测试,虽然需要大量计算时间,但具有节点的中型实例首次得到了最佳解决。作为这项研究的副产品,我们还首次报告了针对这些TSP-Lib数据集的顶点p中心问题的最佳解决方案。

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