Publication | Open Access
Multi-Sensor Prognostics using an Unsupervised Health Index based on LSTM Encoder-Decoder
165
Citations
36
References
2016
Year
EngineeringMachine LearningLife PredictionMulti-sensor PrognosticsPrognosisDiagnosisFault ForecastingOperational Sensor DataRul EstimationDisease ClassificationLstm Encoder-decoderReliability EngineeringData ScienceSystems EngineeringService Life PredictionExponential DegradationPredictive AnalyticsStructural Health MonitoringHealth IndexComputer ScienceForecastingPredictive MaintenanceSensor HealthHealth MonitoringIndustrial InformaticsMedicinePrognosticsHealth Informatics
Many approaches for estimation of Remaining Useful Life (RUL) of a machine, using its operational sensor data, make assumptions about how a system degrades or a fault evolves, e.g., exponential degradation. However, in many domains degradation may not follow a pattern. We propose a Long Short Term Memory based Encoder-Decoder (LSTM-ED) scheme to obtain an unsupervised health index (HI) for a system using multi-sensor time-series data. LSTM-ED is trained to reconstruct the time-series corresponding to healthy state of a system. The reconstruction error is used to compute HI which is then used for RUL estimation. We evaluate our approach on publicly available Turbofan Engine and Milling Machine datasets. We also present results on a real-world industry dataset from a pulverizer mill where we find significant correlation between LSTM-ED based HI and maintenance costs.
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