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Abstract



Predictive Maintenance of Lead-Acid Batteries with Sparse Vehicle Operational Data


Predictive maintenance aims to predict failures in compo- nents of a system, a heavy-duty vehicle in this work, and do maintenance before any actual fault occurs. Predictive main- tenance is increasingly important in the automotive industry due to the development of new services and autonomous ve- hicles with no driver who can notice first signs of a compo- nent problem. The lead-acid battery in a heavy vehicle is mostly used during engine starts, but also for heating and cooling the cockpit, and is an important part of the electri- cal system that is essential for reliable operation. This paper develops and evaluates two machine-learning based methods for battery prognostics, one based on Long Short-Term Mem- ory (LSTM) neural networks and one on Random Survival Forest (RSF). The objective is to estimate time of battery fail- ure based on sparse and non-equidistant vehicle operational data, obtained from workshop visits or over-the-air readouts. The dataset has three characteristics: 1) no sensor measure- ments are directly related to battery health, 2) the number of data readouts vary from one vehicle to another, and 3) read- outs are collected at different time periods. Missing data is common and is addressed by comparing different imputation techniques. RSF- and LSTM-based models are proposed and evaluated for the case of sparse multiple-readouts. How to measure model performance is discussed and how the amount of vehicle information influences performance.

Sergii Voronov, Erik Frisk and Mattias Krysander

International Journal of Prognostics and Health Management, Accepted for publication

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