A Meta-Heuristic Method for Vehicle Routing Problem with Hard Time Window Constraints
碩士 === 中原大學 === 工業工程研究所 === 92 === This research proposes a heuristic, Tabu-Threshold Genetic Algorithm (TTGA), to efficiently and effectively solve Vehicle Routing Problem with Hard Time Window Constraints (VRPHTW). TTGA integrates Tabu Search (TS), Threshold Accepting (TA) and Genetic Algorithms...
Main Authors: | , |
---|---|
Other Authors: | |
Format: | Others |
Language: | en_US |
Published: |
2004
|
Online Access: | http://ndltd.ncl.edu.tw/handle/06187522153149675757 |
id |
ndltd-TW-092CYCU5030041 |
---|---|
record_format |
oai_dc |
spelling |
ndltd-TW-092CYCU50300412016-01-04T04:08:51Z http://ndltd.ncl.edu.tw/handle/06187522153149675757 A Meta-Heuristic Method for Vehicle Routing Problem with Hard Time Window Constraints 以複合啟發式演算法求解硬式時窗限制下車輛途程問題 Yu-Jing Tsai 蔡玉晶 碩士 中原大學 工業工程研究所 92 This research proposes a heuristic, Tabu-Threshold Genetic Algorithm (TTGA), to efficiently and effectively solve Vehicle Routing Problem with Hard Time Window Constraints (VRPHTW). TTGA integrates Tabu Search (TS), Threshold Accepting (TA) and Genetic Algorithms (GAs) that are the most popular generic heuristic in solving VRPHTW in recent years. The first objective is to determine the routes that minimize the total vehicle travel distances, and the second objective is to find the minimum required number of vehicles. Both objectives lead to quick response to satisfy customer demands and reduce the transportation cost. TTGA consists of three phases: initial solution construction, local search improvement, and generic search improvement. In the initial solution construction phase, enhanced Nearest Neighbor Method is used. In the local search improvement phase, vehicles reduction and Neighborhood Search modules are proposed. In the generic search improvement phase, a hybrid algorithm of TS, TA and GA is used to improve the current solution. TTGA results in good solution quality and efficiency. The average deviation of distance is less than 3.6% and the average deviation of the number of vehicles is about 11.5%, compared to the best known solutions of Solomon’s 56 benchmark instances. James Chien-Liang Chen 陳建良 2004 學位論文 ; thesis 34 en_US |
collection |
NDLTD |
language |
en_US |
format |
Others
|
sources |
NDLTD |
description |
碩士 === 中原大學 === 工業工程研究所 === 92 === This research proposes a heuristic, Tabu-Threshold Genetic Algorithm (TTGA), to efficiently and effectively solve Vehicle Routing Problem with Hard Time Window Constraints (VRPHTW). TTGA integrates Tabu Search (TS), Threshold Accepting (TA) and Genetic Algorithms (GAs) that are the most popular generic heuristic in solving VRPHTW in recent years. The first objective is to determine the routes that minimize the total vehicle travel distances, and the second objective is to find the minimum required number of vehicles. Both objectives lead to quick response to satisfy customer demands and reduce the transportation cost.
TTGA consists of three phases: initial solution construction, local search improvement, and generic search improvement. In the initial solution construction phase, enhanced Nearest Neighbor Method is used. In the local search improvement phase, vehicles reduction and Neighborhood Search modules are proposed. In the generic search improvement phase, a hybrid algorithm of TS, TA and GA is used to improve the current solution.
TTGA results in good solution quality and efficiency. The average deviation of distance is less than 3.6% and the average deviation of the number of vehicles is about 11.5%, compared to the best known solutions of Solomon’s 56 benchmark instances.
|
author2 |
James Chien-Liang Chen |
author_facet |
James Chien-Liang Chen Yu-Jing Tsai 蔡玉晶 |
author |
Yu-Jing Tsai 蔡玉晶 |
spellingShingle |
Yu-Jing Tsai 蔡玉晶 A Meta-Heuristic Method for Vehicle Routing Problem with Hard Time Window Constraints |
author_sort |
Yu-Jing Tsai |
title |
A Meta-Heuristic Method for Vehicle Routing Problem with Hard Time Window Constraints |
title_short |
A Meta-Heuristic Method for Vehicle Routing Problem with Hard Time Window Constraints |
title_full |
A Meta-Heuristic Method for Vehicle Routing Problem with Hard Time Window Constraints |
title_fullStr |
A Meta-Heuristic Method for Vehicle Routing Problem with Hard Time Window Constraints |
title_full_unstemmed |
A Meta-Heuristic Method for Vehicle Routing Problem with Hard Time Window Constraints |
title_sort |
meta-heuristic method for vehicle routing problem with hard time window constraints |
publishDate |
2004 |
url |
http://ndltd.ncl.edu.tw/handle/06187522153149675757 |
work_keys_str_mv |
AT yujingtsai ametaheuristicmethodforvehicleroutingproblemwithhardtimewindowconstraints AT càiyùjīng ametaheuristicmethodforvehicleroutingproblemwithhardtimewindowconstraints AT yujingtsai yǐfùhéqǐfāshìyǎnsuànfǎqiújiěyìngshìshíchuāngxiànzhìxiàchēliàngtúchéngwèntí AT càiyùjīng yǐfùhéqǐfāshìyǎnsuànfǎqiújiěyìngshìshíchuāngxiànzhìxiàchēliàngtúchéngwèntí AT yujingtsai metaheuristicmethodforvehicleroutingproblemwithhardtimewindowconstraints AT càiyùjīng metaheuristicmethodforvehicleroutingproblemwithhardtimewindowconstraints |
_version_ |
1718159143955595264 |