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A two-stage optimization approach for inspection plan formulation of comprehensive inspection train: : The China case

Published: 01 September 2021 Publication History

Highlights

The multiple CITs inspection plan is formulated as arc-routing-planning problem with time window.
A two-stage model is established to optimize the CITs’ inspection plan.
A heuristic algorithm with feedback is designed to separate the network evenly.
An efficient neighborhood Euler circuit generation method is proposed to solve the model.

Abstract

The regular and dynamic inspections of high-speed railways (HSR) are carried out by comprehensive inspection train (CIT). Generally, the network of HSR (e.g., the HSR network in China) has some obvious characteristics such as complex network structure, high traffic density and strict maintenance restrictions of CIT, which make the formulation of CIT inspection plan extremely hard. However, formulating and optimizing the CIT inspection plan is one of the key issues to ensure the safety of HSR operations and to improve the efficiency of testing equipment. In this paper, the original model is proposed for the multiple CITs inspection plan formulation problem (MCIT-IPFP) firstly, and it is proved that the problem belongs to the NP-hard class of computational complexity by reduction. By decomposing the problem into two stages, one is used to divide the HSR network evenly for each CIT, and the other one is used to generate the path, the timetable, and maintenance base assignment for each CIT under requirements of reducing the total time cost and the difficulty of solving. In order to improve the efficiency of calculation, a Constructive Heuristic Algorithm with feedback regulation based on the greedy algorithm is designed to generate the task division plan. With the purpose of quickly formulating the inspection plans with low time cost for each CIT with Euler circuit characteristics, a simulated annealing algorithm with efficient neighborhood Euler circuit generation strategy is proposed. Finally, a case study is conducted to test the efficiency of the algorithm by taking the China’s HSR network as the background. Compared with the previous manual inspection plan, the utilization rate of CITs will increase by 30%-50% when using the models and algorithms proposed in this paper.

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  • (2023)An improved multi-objective framework for the Rich arc routing problemComputers and Operations Research10.1016/j.cor.2023.106345159:COnline publication date: 1-Nov-2023

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            Published In

            cover image Computers and Industrial Engineering
            Computers and Industrial Engineering  Volume 159, Issue C
            Sep 2021
            1104 pages

            Publisher

            Pergamon Press, Inc.

            United States

            Publication History

            Published: 01 September 2021

            Author Tags

            1. Comprehensive Inspection Train (CIT)
            2. Formulation and optimization of CIT inspection plan
            3. Euler circuit
            4. Time window
            5. Simulated annealing (SA)

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            • (2023)An improved multi-objective framework for the Rich arc routing problemComputers and Operations Research10.1016/j.cor.2023.106345159:COnline publication date: 1-Nov-2023

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