Uncertain multiobjective traveling salesman problem |
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Authors: | Zutong Wang Jiansheng Guo Mingfa Zheng Ying Wang |
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Affiliation: | 1. College of Materiel Management and Safety Engineering, Air Force Engineering University, Xi’an 710051, China;2. School of Mathematics and Statistics, Xi’an Jiaotong University, Xi’an 710048, China |
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Abstract: | ![]() Traveling salesman problem is a fundamental combinatorial optimization model studied in the operations research community for nearly half a century, yet there is surprisingly little literature that addresses uncertainty and multiple objectives in it. A novel TSP variation, called uncertain multiobjective TSP (UMTSP) with uncertain variables on the arc, is proposed in this paper on the basis of uncertainty theory, and a new solution approach named uncertain approach is applied to obtain Pareto efficient route in UMTSP. Considering the uncertain and combinatorial nature of UMTSP, a new ABC algorithm inserted with reverse operator, crossover operator and mutation operator is designed to this problem, which outperforms other algorithms through the performance comparison on three benchmark TSPs. Finally, a new benchmark UMTSP case study is presented to illustrate the construction and solution of UMTSP, which shows that the optimal route in deterministic TSP can be a poor route in UMTSP. |
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Keywords: | Uncertainty modeling Traveling salesman problem Multiobjective optimization Artificial bee colony algorithm |
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