Dynamic Inspection Planning for River Water Conservancy Facilities Based on Coupled Risk Warning and Genetic Algorithm

For planning river inspection routes, the traditional method relies heavily on the experience of workers to select inspection sites and plan routes for river water conservancy facilities, which may lead to insufficient coverage of inspection sites and delayed identification of issues with these faci...

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Main Authors: LUO Gang, LIN Yuanqin, ZHOU Xinmin, LIN Xu
Format: Article
Language:zho
Published: Editorial Office of Pearl River 2024-09-01
Series:Renmin Zhujiang
Subjects:
Online Access:http://www.renminzhujiang.cn/thesisDetails#10.3969/j.issn.1001-9235.2024.09.013
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author LUO Gang
LIN Yuanqin
ZHOU Xinmin
LIN Xu
author_facet LUO Gang
LIN Yuanqin
ZHOU Xinmin
LIN Xu
author_sort LUO Gang
collection DOAJ
description For planning river inspection routes, the traditional method relies heavily on the experience of workers to select inspection sites and plan routes for river water conservancy facilities, which may lead to insufficient coverage of inspection sites and delayed identification of issues with these facilities. Therefore, it is necessary to develop a new method for planning river inspection routes that can achieve broader coverage and more efficient inspection in river water conservancy facilities with potential hazards. This paper proposes a method based on a coupled risk warning-genetic algorithm to establish a risk warning model for river water conservancy facilities and a route planning model for river inspections, thereby achieving the planning of inspection routes for river water conservancy facilities. The risk warning model in this paper calculates the risk levels of the inspection targets using the entropy weight-Topsis method. By coupling a genetic algorithm-based route planning model for river inspections, the risk warning model uses these risk levels as input data for the route planning model, ultimately determining the routes for river inspections. Daily river inspections conducted by the Guangzhou River Monitoring Center have proven that the proposed method provides more reasonable routes than the traditional method, performing better in terms of coverage and efficiency in inspecting potential hazards.
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spelling doaj-art-a04ea42e093440c594deea6fcf1089392025-01-15T03:02:05ZzhoEditorial Office of Pearl RiverRenmin Zhujiang1001-92352024-09-014511011766689903Dynamic Inspection Planning for River Water Conservancy Facilities Based on Coupled Risk Warning and Genetic AlgorithmLUO GangLIN YuanqinZHOU XinminLIN XuFor planning river inspection routes, the traditional method relies heavily on the experience of workers to select inspection sites and plan routes for river water conservancy facilities, which may lead to insufficient coverage of inspection sites and delayed identification of issues with these facilities. Therefore, it is necessary to develop a new method for planning river inspection routes that can achieve broader coverage and more efficient inspection in river water conservancy facilities with potential hazards. This paper proposes a method based on a coupled risk warning-genetic algorithm to establish a risk warning model for river water conservancy facilities and a route planning model for river inspections, thereby achieving the planning of inspection routes for river water conservancy facilities. The risk warning model in this paper calculates the risk levels of the inspection targets using the entropy weight-Topsis method. By coupling a genetic algorithm-based route planning model for river inspections, the risk warning model uses these risk levels as input data for the route planning model, ultimately determining the routes for river inspections. Daily river inspections conducted by the Guangzhou River Monitoring Center have proven that the proposed method provides more reasonable routes than the traditional method, performing better in terms of coverage and efficiency in inspecting potential hazards.http://www.renminzhujiang.cn/thesisDetails#10.3969/j.issn.1001-9235.2024.09.013risk warningroute planningriver inspectionwater conservancy facility
spellingShingle LUO Gang
LIN Yuanqin
ZHOU Xinmin
LIN Xu
Dynamic Inspection Planning for River Water Conservancy Facilities Based on Coupled Risk Warning and Genetic Algorithm
Renmin Zhujiang
risk warning
route planning
river inspection
water conservancy facility
title Dynamic Inspection Planning for River Water Conservancy Facilities Based on Coupled Risk Warning and Genetic Algorithm
title_full Dynamic Inspection Planning for River Water Conservancy Facilities Based on Coupled Risk Warning and Genetic Algorithm
title_fullStr Dynamic Inspection Planning for River Water Conservancy Facilities Based on Coupled Risk Warning and Genetic Algorithm
title_full_unstemmed Dynamic Inspection Planning for River Water Conservancy Facilities Based on Coupled Risk Warning and Genetic Algorithm
title_short Dynamic Inspection Planning for River Water Conservancy Facilities Based on Coupled Risk Warning and Genetic Algorithm
title_sort dynamic inspection planning for river water conservancy facilities based on coupled risk warning and genetic algorithm
topic risk warning
route planning
river inspection
water conservancy facility
url http://www.renminzhujiang.cn/thesisDetails#10.3969/j.issn.1001-9235.2024.09.013
work_keys_str_mv AT luogang dynamicinspectionplanningforriverwaterconservancyfacilitiesbasedoncoupledriskwarningandgeneticalgorithm
AT linyuanqin dynamicinspectionplanningforriverwaterconservancyfacilitiesbasedoncoupledriskwarningandgeneticalgorithm
AT zhouxinmin dynamicinspectionplanningforriverwaterconservancyfacilitiesbasedoncoupledriskwarningandgeneticalgorithm
AT linxu dynamicinspectionplanningforriverwaterconservancyfacilitiesbasedoncoupledriskwarningandgeneticalgorithm