Abstract :
[en] Automatic fault detection and diagnosis (FDD) methods are rarely used in building systems due to their individual design. We present a residual generating FDD approach combining multilayer perceptron networks trained with historical data and Bayesian optimisation for hyperparameter tuning. A comprehensive engineering process has been developed, which is highly automated and applicable by non-machine learning experts. We demonstrate the transferability using datasets from twelve different air handling units and provide an estimation of fault-free behaviour. Applied on a synthetic data set, the approach shows comparably results to a rule-based fault detection, with the advantages of less threshold tuning, detecting unknown faults, and facilitating fault diagnosis based on residuals.
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