Benchmarking Sensor-Fault Robustness in Forecasting
Alexander Windmann, Philipp Wittenberg, Gianluca Manca, Marcel Dix, Jens U. Brandt, Oliver Niggemann

TL;DR
This paper introduces SensorFault-Bench, a standardized protocol for evaluating the robustness of forecasting models in cyber-physical systems under sensor faults, highlighting the discrepancy between nominal and worst-case performance.
Contribution
It provides a shared benchmarking protocol, a taxonomy for method comparison, and empirical insights into robustness and fault-transferability of forecasting architectures and methods.
Findings
Forecasting models often degrade sharply under sensor faults.
Clean error metrics can be misleading about robustness.
Certain robustness-improvement methods reduce degradation in specific fault scenarios.
Abstract
Cyber-physical system (CPS) forecasting models depend on sensor streams with noisy, biased, missing, or temporally misaligned readings, yet standard forecasting evaluation often selects models by nominal error without showing whether they remain robust under such faults. We introduce SensorFault-Bench, a shared CPS-grounded sensor-fault stress-test protocol for evaluating forecasting architectures and robustness-improvement methods, and an operational taxonomy organizing the method comparison. Across four real-world datasets and eight scored scenarios governed by a standardized severity model, it reports worst-scenario degradation, clean mean squared error (MSE), and worst-scenario fault-time MSE, separating relative robustness from absolute error. A disjoint fault-transfer split lets explicit fault-training methods train on adjacent fault families while evaluation uses separate…
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