Data-Driven Robot Fault Detection and Diagnosis Using Generative Models: A Modified SFDD Algorithm
Mitrevski, Alex, Plöger, Paul G.
–arXiv.org Artificial Intelligence
This paper presents a modification of the datadriven sensor-based fault detection and diagnosis (SFDD) algorithm for online robot monitoring. Our version of the algorithm uses a collection of generative models, in particular restricted Boltzmann machines, each of which represents the distribution of sliding window correlations between a pair of correlated measurements. We use such models in a residual generation scheme, where high residuals generate conflict sets that are then used in a subsequent diagnosis step. As a proof of concept, the framework is evaluated on a mobile logistics robot for the problem of recognising Figure 1: Overview of our learning-based FDD schema disconnected wheels, such that the evaluation demonstrates the feasibility of the framework (on the faulty data set, the models obtained 88.6% The practical usefulness of the SFDD algorithm is significantly precision and 75.6% recall rates), but also shows affected by the choice of data modes that are to be that the monitoring results are influenced by the monitored during the operation of a robot, since an incomplete choice of distribution model and the model parameters or suboptimal choice of modes leads to either undetected as a whole.
arXiv.org Artificial Intelligence
Nov-23-2023