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A Hybrid Water Flow-Like Algorithm and Variable Neighbourhood Search for Traveling Salesman Problem
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@article{IJASEIT7957, author = {Mohamed Rafique Othman and Zulaiha Ali Othman and Ayman Ibraheem Srour and Nor Samsiah Sani}, title = {A Hybrid Water Flow-Like Algorithm and Variable Neighbourhood Search for Traveling Salesman Problem}, journal = {International Journal on Advanced Science, Engineering and Information Technology}, volume = {9}, number = {5}, year = {2019}, pages = {1505--1511}, keywords = {hybrid algorithm; water flow; variable neighbourhood search; travelling salesman problem; metaheuristic.}, abstract = {Various metaheuristic methods have been proposed earlier and applied for solving the Travelling Salesman Problem (TSP). Water Flow Algorithm (WFA) is one of the recent population-based metaheuristic optimization techniques used for solving this problem. Past research has shown that improving WFA local search strategy has a significant impact on the algorithm performance. Therefore, this paper aims to solve TSP by enhancing WFA searching strategy based on a Variable Neighbourhood Search (VNS) known as hybrid WFA-VNS. It is a mixture of the exploration of WFA and the exploitation capability of VNS. This study is conducted in two stages: Pre-experiment and initial experiment. The objective of doing pre-experiment is to select four neighborhood structures to be used for the initial experiment. At the first stage, three instances are used, and there are five neighborhood structures involved. Those neighborhood structures are two opt, three opt, four opt, swapping, and insertion move. Because of pre-experiment, it discovers four best neighborhood structures, which are two opt, three opt, exchanging and insertion move. These neighborhood structures will be used in the initial experiment, which an improvement approach is employed. In an initial experiment, the performance of the proposed hybrid WFA-VNS is further studied and tested on 26 established benchmarked symmetric TSP datasets using four neighborhood structures selected in pre-experiment earlier. The TSP datasets involved are categorized into three types: small datasets, medium datasets, and large datasets. Selected neighborhood structures obtained in pre-experiment are applied and generated randomly to intensify the initial solution achieved at an earlier stage of hybrid WFA-VNS. The results of the comparison show that this hybrid approach represents an improvement and able to produce competitive results.
}, issn = {2088-5334}, publisher = {INSIGHT - Indonesian Society for Knowledge and Human Development}, url = {http://ijaseit.insightsociety.org/index.php?option=com_content&view=article&id=9&Itemid=1&article_id=7957}, doi = {10.18517/ijaseit.9.5.7957} }
EndNote
%A Othman, Mohamed Rafique %A Ali Othman, Zulaiha %A Srour, Ayman Ibraheem %A Sani, Nor Samsiah %D 2019 %T A Hybrid Water Flow-Like Algorithm and Variable Neighbourhood Search for Traveling Salesman Problem %B 2019 %9 hybrid algorithm; water flow; variable neighbourhood search; travelling salesman problem; metaheuristic. %! A Hybrid Water Flow-Like Algorithm and Variable Neighbourhood Search for Traveling Salesman Problem %K hybrid algorithm; water flow; variable neighbourhood search; travelling salesman problem; metaheuristic. %XVarious metaheuristic methods have been proposed earlier and applied for solving the Travelling Salesman Problem (TSP). Water Flow Algorithm (WFA) is one of the recent population-based metaheuristic optimization techniques used for solving this problem. Past research has shown that improving WFA local search strategy has a significant impact on the algorithm performance. Therefore, this paper aims to solve TSP by enhancing WFA searching strategy based on a Variable Neighbourhood Search (VNS) known as hybrid WFA-VNS. It is a mixture of the exploration of WFA and the exploitation capability of VNS. This study is conducted in two stages: Pre-experiment and initial experiment. The objective of doing pre-experiment is to select four neighborhood structures to be used for the initial experiment. At the first stage, three instances are used, and there are five neighborhood structures involved. Those neighborhood structures are two opt, three opt, four opt, swapping, and insertion move. Because of pre-experiment, it discovers four best neighborhood structures, which are two opt, three opt, exchanging and insertion move. These neighborhood structures will be used in the initial experiment, which an improvement approach is employed. In an initial experiment, the performance of the proposed hybrid WFA-VNS is further studied and tested on 26 established benchmarked symmetric TSP datasets using four neighborhood structures selected in pre-experiment earlier. The TSP datasets involved are categorized into three types: small datasets, medium datasets, and large datasets. Selected neighborhood structures obtained in pre-experiment are applied and generated randomly to intensify the initial solution achieved at an earlier stage of hybrid WFA-VNS. The results of the comparison show that this hybrid approach represents an improvement and able to produce competitive results.
%U http://ijaseit.insightsociety.org/index.php?option=com_content&view=article&id=9&Itemid=1&article_id=7957 %R doi:10.18517/ijaseit.9.5.7957 %J International Journal on Advanced Science, Engineering and Information Technology %V 9 %N 5 %@ 2088-5334
IEEE
Mohamed Rafique Othman,Zulaiha Ali Othman,Ayman Ibraheem Srour and Nor Samsiah Sani,"A Hybrid Water Flow-Like Algorithm and Variable Neighbourhood Search for Traveling Salesman Problem," International Journal on Advanced Science, Engineering and Information Technology, vol. 9, no. 5, pp. 1505-1511, 2019. [Online]. Available: http://dx.doi.org/10.18517/ijaseit.9.5.7957.
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TY - JOUR AU - Othman, Mohamed Rafique AU - Ali Othman, Zulaiha AU - Srour, Ayman Ibraheem AU - Sani, Nor Samsiah PY - 2019 TI - A Hybrid Water Flow-Like Algorithm and Variable Neighbourhood Search for Traveling Salesman Problem JF - International Journal on Advanced Science, Engineering and Information Technology; Vol. 9 (2019) No. 5 Y2 - 2019 SP - 1505 EP - 1511 SN - 2088-5334 PB - INSIGHT - Indonesian Society for Knowledge and Human Development KW - hybrid algorithm; water flow; variable neighbourhood search; travelling salesman problem; metaheuristic. N2 -Various metaheuristic methods have been proposed earlier and applied for solving the Travelling Salesman Problem (TSP). Water Flow Algorithm (WFA) is one of the recent population-based metaheuristic optimization techniques used for solving this problem. Past research has shown that improving WFA local search strategy has a significant impact on the algorithm performance. Therefore, this paper aims to solve TSP by enhancing WFA searching strategy based on a Variable Neighbourhood Search (VNS) known as hybrid WFA-VNS. It is a mixture of the exploration of WFA and the exploitation capability of VNS. This study is conducted in two stages: Pre-experiment and initial experiment. The objective of doing pre-experiment is to select four neighborhood structures to be used for the initial experiment. At the first stage, three instances are used, and there are five neighborhood structures involved. Those neighborhood structures are two opt, three opt, four opt, swapping, and insertion move. Because of pre-experiment, it discovers four best neighborhood structures, which are two opt, three opt, exchanging and insertion move. These neighborhood structures will be used in the initial experiment, which an improvement approach is employed. In an initial experiment, the performance of the proposed hybrid WFA-VNS is further studied and tested on 26 established benchmarked symmetric TSP datasets using four neighborhood structures selected in pre-experiment earlier. The TSP datasets involved are categorized into three types: small datasets, medium datasets, and large datasets. Selected neighborhood structures obtained in pre-experiment are applied and generated randomly to intensify the initial solution achieved at an earlier stage of hybrid WFA-VNS. The results of the comparison show that this hybrid approach represents an improvement and able to produce competitive results.
UR - http://ijaseit.insightsociety.org/index.php?option=com_content&view=article&id=9&Itemid=1&article_id=7957 DO - 10.18517/ijaseit.9.5.7957
RefWorks
RT Journal Article ID 7957 A1 Othman, Mohamed Rafique A1 Ali Othman, Zulaiha A1 Srour, Ayman Ibraheem A1 Sani, Nor Samsiah T1 A Hybrid Water Flow-Like Algorithm and Variable Neighbourhood Search for Traveling Salesman Problem JF International Journal on Advanced Science, Engineering and Information Technology VO 9 IS 5 YR 2019 SP 1505 OP 1511 SN 2088-5334 PB INSIGHT - Indonesian Society for Knowledge and Human Development K1 hybrid algorithm; water flow; variable neighbourhood search; travelling salesman problem; metaheuristic. ABVarious metaheuristic methods have been proposed earlier and applied for solving the Travelling Salesman Problem (TSP). Water Flow Algorithm (WFA) is one of the recent population-based metaheuristic optimization techniques used for solving this problem. Past research has shown that improving WFA local search strategy has a significant impact on the algorithm performance. Therefore, this paper aims to solve TSP by enhancing WFA searching strategy based on a Variable Neighbourhood Search (VNS) known as hybrid WFA-VNS. It is a mixture of the exploration of WFA and the exploitation capability of VNS. This study is conducted in two stages: Pre-experiment and initial experiment. The objective of doing pre-experiment is to select four neighborhood structures to be used for the initial experiment. At the first stage, three instances are used, and there are five neighborhood structures involved. Those neighborhood structures are two opt, three opt, four opt, swapping, and insertion move. Because of pre-experiment, it discovers four best neighborhood structures, which are two opt, three opt, exchanging and insertion move. These neighborhood structures will be used in the initial experiment, which an improvement approach is employed. In an initial experiment, the performance of the proposed hybrid WFA-VNS is further studied and tested on 26 established benchmarked symmetric TSP datasets using four neighborhood structures selected in pre-experiment earlier. The TSP datasets involved are categorized into three types: small datasets, medium datasets, and large datasets. Selected neighborhood structures obtained in pre-experiment are applied and generated randomly to intensify the initial solution achieved at an earlier stage of hybrid WFA-VNS. The results of the comparison show that this hybrid approach represents an improvement and able to produce competitive results.
LK http://ijaseit.insightsociety.org/index.php?option=com_content&view=article&id=9&Itemid=1&article_id=7957 DO - 10.18517/ijaseit.9.5.7957