Performance Bounds for Neural Network Estimators: Applications in Fault Detection
Published in IEEE 2021 American Control Conference (ACC), 3260-3266, 2021
We exploit recent results in quantifying the robustness of neural networks to input variations to construct and tune a model-based anomaly detector, where the data-driven estimator model is provided by an autoregressive neural network. In tuning, we specifically provide upper bounds on the rate of false alarms expected under normal operation. To accomplish this, we provide a theory extension to allow for the propagation of multiple confidence ellipsoids through a neural network. The ellipsoid that bounds the output of the neural network under the input variation informs the sensitivity - and thus the threshold tuning - of the detector. We demonstrate this approach on a linear and nonlinear dynamical system.
Recommended citation: Hashemi, Navid, Mahyar Fazlyab, and Justin Ruths. "Performance bounds for neural network estimators: Applications in fault detection." 2021 American Control Conference (ACC). IEEE, 2021.
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