基于机器学习的商用车轮胎寿命预测框架

IF 2.9 3区 工程技术 Q2 ENGINEERING, MECHANICAL
Vispi Karkaria, Jie Chen, Chase Siuta, Damien Lim, Robert Radelescu, Wei Chen
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引用次数: 0

摘要

在商业货运行业中,由于对轮胎剩余使用寿命的了解有限,轮胎翻新决策往往是保守的。这种做法导致成本增加和材料浪费。本文提出了一种基于机器学习的方法来估计轮胎胎壳的寿命和可翻新性,重点关注使用数据而不是磨损信息。这种方法可以延长轮胎的使用寿命,减少垃圾填埋。来自不同胎壳测量来源的数据集成带来了挑战,包括不平衡的移除数据。我们的方法通过使用历史检查、远程信息处理和有限元建模(FEM)数据集来解决这些挑战。引入“胎壳能量”作为综合使用输入,采用方差减小合成少数派过采样技术(VR-SMOTE)进行数据不平衡校正。采用随机森林模型估计胎体状态和胎体去除概率,并采用贝叶斯优化进行超参数整定,提高了模型精度。所提出的预测框架能够根据使用参数区分不同的卡车车队和轮胎位置。借助该机器学习模型,可以获得不同轮胎使用参数的重要性和敏感性,有利于实现轮胎寿命最大化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A MACHINE LEARNING BASED TIRE LIFE PREDICTION FRAMEWORK FOR INCREASING LIFE OF COMMERCIAL VEHICLE TIRES
Abstract In the commercial freight industry, tire retreading decisions are often conservative due to limited knowledge of a tire’s remaining service life. This practice leads to increased costs and material waste. This paper proposes a machine learning–based approach for estimating tire casing life and retreadability, focusing on usage data rather than wear information. This approach could extend the tire’s lifespan and reduce landfill waste. Data integration from diverse tire casing measurement sources presents challenges, including imbalanced removal data. Our methodology addresses these challenges by using historical inspection, telematics, and finite element modeling (FEM) datasets. We introduce “Tire Casing Energy” as a comprehensive usage input and apply a Variance-Reduction Synthetic Minority Oversampling Technique (VR-SMOTE) for data imbalance rectification. A random forest model is used to estimate the state of the tire casing and the casing removal probability, with Bayesian optimization applied for hyperparameter tuning, enhancing model accuracy. The proposed prediction framework is able to differentiate different truck fleets and tire locations based on their usage parameters. With the aid of this machine learning model, the importance and sensitivity of different tire usage parameters can be obtained, which is beneficial to maximize tire life.
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来源期刊
Journal of Mechanical Design
Journal of Mechanical Design 工程技术-工程:机械
CiteScore
8.00
自引率
18.20%
发文量
139
审稿时长
3.9 months
期刊介绍: The Journal of Mechanical Design (JMD) serves the broad design community as the venue for scholarly, archival research in all aspects of the design activity with emphasis on design synthesis. JMD has traditionally served the ASME Design Engineering Division and its technical committees, but it welcomes contributions from all areas of design with emphasis on synthesis. JMD communicates original contributions, primarily in the form of research articles of considerable depth, but also technical briefs, design innovation papers, book reviews, and editorials. Scope: The Journal of Mechanical Design (JMD) serves the broad design community as the venue for scholarly, archival research in all aspects of the design activity with emphasis on design synthesis. JMD has traditionally served the ASME Design Engineering Division and its technical committees, but it welcomes contributions from all areas of design with emphasis on synthesis. JMD communicates original contributions, primarily in the form of research articles of considerable depth, but also technical briefs, design innovation papers, book reviews, and editorials.
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