Abstract

Being able to accurately predict the impending failures of truck components is often associated with significant amount of cost savings, customer satisfaction and flexibility in maintenanceservice plans. However, because of the diversity in the way trucks typically are configured and their usage under different conditions, the creation of accurate prediction models is not an easy task. This paper describes an effort in creating such a prediction model for the NOx sensor, i.e., a component measuring the emitted level of nitrogen oxide in the exhaust of the engine. This component was chosen because it is vital for the truck to function properly, while at the same time being very fragile and costly to repair. As input to the model, technical specifications of trucks and their operational data are used. The process of collecting the data and making it ready for training the model via a slightly modified Random Forest learning algorithm is described along with various challenges encountered during this process. The operational data consists of features represented as histograms, posing an additional challenge for the data analysis task. In the study, a modified version of the random forest algorithm is employed, which exploits the fact that the individual bins in the histograms are related, in contrast to the standard approach that would consider the bins as independent features. Experiments are conducted using the updated random forest algorithm, and they clearly show that the modified version is indeed beneficial when compared to the standard random forest algorithm. The performance of the resulting prediction model for the NOx sensor is promising and may be adopted for the benefit of operators of heavy trucks.

Highlights

  • In heavy duty trucks, it is important to ensure the availability of the truck and especially avoid any unexpected break-Ram B

  • The predictive performance (AUC) is likely affected in a positive direction by considering more distant time horizons, while moving the horizon closer in time will most likely lead to a further reduction in predictive performance

  • CONCLUDING REMARKS The primary objective of the paper was to investigate whether operational and environmental data from truck usage can be used for predicting component breakdown. This task is challenging, since the trucks can be configured in many different ways and they operate under very different conditions

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Summary

Introduction

It is important to ensure the availability of the truck and especially avoid any unexpected break-Ram B. The information about the current health of the components of trucks may be useful in organizing flexible maintenance plans rather than relying on fixed maintenance schedules, specifying when trucks should visit workshops independently of their condition (Lindgren, Warnquist, & Eineborg, 2013). This is in accordance with a current trend in the truck industry which is shifting from selling products to selling transport service solutions for customers that demand up-time guarantees. The field of prognostics and health management (PHM) deals with such issues of predicting the impending failures, estimations of remaining useful life and assessment of the overall health of vehicles

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