American Journal of Operations Research

Volume 12, Issue 6 (November 2022)

ISSN Print: 2160-8830   ISSN Online: 2160-8849

Google-based Impact Factor: 0.84  Citations  

Multivariate Analyses for Finding Significant Track Irregularities to Generate an Optimal Track Maintenance Schedule

HTML  XML Download Download as PDF (Size: 2339KB)  PP. 261-292  
DOI: 10.4236/ajor.2022.126015    95 Downloads   422 Views  Citations

ABSTRACT

We first discuss the relationship between the optimal track maintenance scheduling model and an efficient detection method for abnormal track irregularities given by the longitudinal level irregularity displacement (LLID). The results of applying the cluster analysis technique to the sampling data showed that maintenance operation is required for approximately 10% of the total lots, and these lots were further classified into three groups according to the degree of maintenance need. To analyze the background factors for detecting abnormal LLID lots, a principal component analysis was performed; the results showed that the first principal component represents LLIDs from the viewpoints of the rail structure, equipment, and operating conditions. Binomial and ordinal logit regression models (LRMs) were used to quantitatively investigate the determinants of abnormal LLIDs. Binomial LRM was used to characterize the abnormal LLIDs, whereas ordinal LRM was used to distinguish the degree of influence of factors that are considered to have a significant impact on LLIDs.

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Matsumoto, M. , Miwa, M. and Oyama, T. (2022) Multivariate Analyses for Finding Significant Track Irregularities to Generate an Optimal Track Maintenance Schedule. American Journal of Operations Research, 12, 261-292. doi: 10.4236/ajor.2022.126015.

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