Machine Learning and Statistical Test–Based Culvert Condition Impact Factor Analysis

Author:

Gao Ce12ORCID,Li Zhibin2,Elzarka Hazem3ORCID,Yan Hongyan4ORCID,Li Peijin4ORCID

Affiliation:

1. School of Civil Engineering, Guangzhou University, Guangzhou 51000, China

2. School of Civil Engineering and Architecture, Guangzhou City Construction College, Guangzhou 51000, China

3. College of Engineering and Applied Science, University of Cincinnati, Cincinnati, Ohio 45221, USA

4. School of Construction Management, Hunan University of Finance and Economics, Changsha 410000, China

Abstract

For managers of road infrastructure, culvert deterioration is a major concern since culvert failures can cause serious risks to the traveling public. The efficiency of the cost- and labor-intensive culvert inspection and maintenance process can be improved by properly identifying the key impact factors on culvert condition deterioration. Although the use of machine learning (ML) techniques to predict culvert conditions has been proven to be a promising tool for enhancing culvert management and enabling proactive scheduling of maintenance tasks, the information provided by the developed ML models has been given little attention for further use and analysis. By utilizing the predictor importance results of an evaluated decision tree (DT) culvert condition prediction model and the Mann–Whitney U test, this study provided insights to the identification of the key variables influencing culvert deterioration. According to the findings, five impact factors, including culvert span, pH, age, rise, and cover height, often have significant impact on the condition ratings of culverts made of various materials. In addition, such a statistical test-assisted factor identification process offered a way of identifying and enhancing the input variable selection for predictive ML model development.

Funder

Key Area Dedicated Project of Guangdong General Universities and Colleges

Publisher

Hindawi Limited

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