Task Allocation Method for Wartime Equipment Maintenance under Multiple Constraint Conditions

ZAN Xiang;CHEN Chun-liang;ZHANG Shi-xin;WANG Zheng;LIU Yan

Acta Armamentarii ›› 2017, Vol. 38 ›› Issue (8) : 1603-1609. DOI: 10.3969/j.issn.1000-1093.2017.08.019
Paper

Task Allocation Method for Wartime Equipment Maintenance under Multiple Constraint Conditions

  • ZAN Xiang, CHEN Chun-liang, ZHANG Shi-xin, WANG Zheng, LIU Yan
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Abstract

A model of equipment maintenance task allocation is established for lack of constraint conditions of existing wartime equipment maintenance task allocation. The model can be used for optimal decision of maintenance task allocation in the case of time constraint and maintainability limitation. And the equipment repair time, maneuver time and maintainability are comprehensively considered in the model. A two-stage heuristic algorithm, including genetic algorithm and neighborhood searching method, is designed to solve the model. The effectiveness of the proposed algorithm is verified through example analysis and comparison.Key

Key words

ordnancescienceandtechnology / equipmentmaintenancetaskallocation / multipleconstraint / assignmentproblem / two-stageheuristicalgorithm

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ZAN Xiang, CHEN Chun-liang, ZHANG Shi-xin, WANG Zheng, LIU Yan. Task Allocation Method for Wartime Equipment Maintenance under Multiple Constraint Conditions. Acta Armamentarii. 2017, 38(8): 1603-1609 https://doi.org/10.3969/j.issn.1000-1093.2017.08.019

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第38卷
第8期2017年8月兵工学报ACTA
ARMAMENTARIIVol.38No.8Aug.2017

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