Publication | Closed Access
Remaining useful life prediction via long‐short time memory neural network with novel partial least squares and genetic algorithm
17
Citations
24
References
2020
Year
Search OptimizationEngineeringMachine LearningIndustrial EngineeringLife PredictionSmart ManufacturingFault ForecastingRecurrent Neural NetworkData ScienceRul PredictionLongevityGenetic AlgorithmSystems EngineeringBiostatisticsNonlinear Time SeriesLstm MethodPrediction ModellingPredictive AnalyticsComputer EngineeringForecastingPredictive MaintenanceUseful Life PredictionLife Cycle Assessment
Abstract Advancements in information technology have made various industrial equipment increasingly sophisticated in recent years. The remaining useful life (RUL) of equipment plays a crucial important role in the industrial process. It is difficult to establish a functional RUL model as it requires the fusion of time‐series data across different scales. This paper proposes a long‐short term memory neural network, which integrates a novel partial least square based on a genetic algorithm (GAPLS‐LSTM). The parameters are first analyzed by PLS to obtain the parameter fusion function of the health index (HI). The GA then searches the optimal coefficients of the function; the expected HI values can be calculated with the fusion function. Finally, the RUL of the equipment is predicted with the LSTM method. The proposed GAPLS‐LSTM was applied to RUL prediction of a marine auxiliary engine to validate it by comparison against GAPLS‐BP and GAPLS‐RNN methods. The results show that the proposed method is capable of effective RUL prediction.
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