Modeling and optimization of multiple traveling salesmen problems: An evolution strategy approach
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Date
2021
Authors
Korhan Karabulut
Hande Oztop
Levent Kandiller
M. Fatih Tasgetiren
Journal Title
Journal ISSN
Volume Title
Publisher
PERGAMON-ELSEVIER SCIENCE LTD
Open Access Color
Green Open Access
No
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Publicly Funded
No
Abstract
The multiple traveling salesmen problems (mTSP) are variants of the well-known traveling salesmen problems in which n cities are to be assigned to m salespeople. In this paper we propose an evolution strategy (ES) approach for solving the mTSP with minsum and minmax objectives. The ES employs a self-adaptive Ruin and Recreate (RR) heuristic to generate an offspring population. In the RR heuristic some solution components are removed from a solution and the removed components are reinserted into the partial solution to obtain a new complete solution again. We employ the Multiple Insertion Heuristic (MIH) when carrying out insertions with the speed-up method based on the nearest neighbor approach in the recreate procedure. Through the ES the ruin size parameter of the RR heuristic and the selection probabilities of applying a random search algorithm consisting of four different moves are self-adapted. 3Opt local search is also embedded in the ES to further enhance the solution quality. A Boolean flag is developed whether or not to apply 3Opt local search which is computationally expensive on non-improving tours. Moreover new constructive heuristics are presented for both minsum and minmax mTSP. Computational experiments show that the proposed ES algorithm is very competitive or superior to the best performing algorithms from the literature for both objectives. Ultimately 21 new best-solutions are presented for the mTSP with minsum and minmax objectives for the first time in the literature. In this paper the multi-depot mTSP with non-predetermined depots (M-mTSP) is also studied as an extension of the mTSP. Two new MILP models are proposed for both minsum and minmax M-mTSP as well as lower bounds and optimal results are obtained for small instances. The computational results show that the ES algorithm can find the optimal solution for all the small-sized instances. Furthermore we derive new large-sized M-mTSP benchmarks from the well-known TSPLIB which have nodes ranging from 52 and 442. We report the results for both minsum and minmax objectives for these instances as new M-mTSP benchmarks considering four different m settings. (C) 2020 Elsevier Ltd. All rights reserved.
Description
Keywords
Multiple traveling salesmen problem, Evolution strategy, Modeling and optimization, minmax mTSP, minsum mTSP, GROUPING GENETIC ALGORITHM, NEURAL-NETWORK, FORMULATIONS, DESIGN, Combinatorial optimization, evolution strategy, modeling and optimization, \textit{minsum} mTSP, Programming involving graphs or networks, Approximation methods and heuristics in mathematical programming, multiple traveling salesmen problem, \textit{minmax} mTSP
Fields of Science
0211 other engineering and technologies, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
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OpenCitations Citation Count
37
Source
Computers & Operations Research
Volume
129
Issue
Start Page
105192
End Page
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Citations
CrossRef : 39
Scopus : 39
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Mendeley Readers : 35
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