Maintenance cost prediction for the vehicle based on maintenance data

Author:

Zhonghui Sun1ORCID,Yanying Guo2,Zhonghong Sun3,Shouchen Yang1,Baoyu Hao1

Affiliation:

1. China FAW Jiefang Automotive Co., Ltd. Commercial Vehicle Development Institute Intelligent Connected Vehicle Development Department, Changchun, China

2. Changchun Automobile Industry Institute, Changchun, Jilin, China

3. School of Information and Electrical Engineering, Ludong University, Yantai, China

Abstract

With the fierce competition in the automobile market, the focus of competition in the automobile industry had gradually turned to the automobile extended warranty service. The prediction of maintenance cost was a very important premise for the formulation of automobile extended warranty service. Combining the failure frequency data of vehicles in multiple sales batches, the mixed Weibull model was used to fit the failure process, and the single vehicle failure rate prediction model was obtained; At the same time, combined with the maintenance cost data of the same batch of vehicles, the prediction model of single vehicle maintenance cost was obtained by iterative solution. Using the existing maintenance data, the maintenance cost prediction model based on user group had been verified. The results showed that the model was real, effective and had strong engineering application value.

Publisher

SAGE Publications

Subject

Mechanical Engineering,Aerospace Engineering

Reference20 articles.

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2. Koutsellis T, Mourelatos Z, Hijawi M, et al. Warranty forecasting of repairable systems for different production patterns. SAE paper 2017-01-0209, 2017.

3. Planning Flexible Maintenance for Heavy Trucks using Machine Learning Models, Constraint Programming, and Route Optimization

4. Warranty Data Analysis Method using Life Table and Its Practical Application

5. Field Fatigue Failure Prediction Using Multiple Regression with Random Variables

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