With mobile robotics being applied for more and more complex applications, their autonomy should be preserved. While a lot of research is performed into the direction of failure prediction for autonomous processes or systems, the field of mobile robots has received less attention
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With mobile robotics being applied for more and more complex applications, their autonomy should be preserved. While a lot of research is performed into the direction of failure prediction for autonomous processes or systems, the field of mobile robots has received less attention. Proactive failure prediction for mobile robots is a useful tool to prevent unwanted downtime and undesired damages. This work attempts to fill this research gap by showing the applicability of anomaly detection methods for failure prediction in the field of mobile robots. Specifically, we employ an unsupervised Variational Autoencoder to predict failures in the operational data from the Discovery Collector, a manure cleaning robot developed by Lely Industries. We elaborately showcase the feature engineering steps which yield the best performance, provide the performance of three general datasets, and state promising next steps for root cause classification which is enabled by accurate failure prediction. All in all, our work shows that the use of feature offsets, calculated from desired values compared to actual values, enhances the model performance tremendously. The provided datasets showcase F1-scores ranging from 0.64-0.76, showing the proposed solution is able to solve the failure prediction problem in the field of mobile robots, while highlighting the encountered limitations for future improvement.