AI Article Synopsis

  • Deep learning has shown promising results in automotive and aerospace prognostics and health management, but most research focuses on model architecture rather than improvements in loss functions.
  • There’s a chance to enhance deep learning effectiveness in these domains without altering the model's structure by developing and testing dynamically weighted loss functions.
  • Two types of dynamically weighted loss functions were evaluated across four popular deep learning models, revealing significant improvements in predicting remaining useful life and fault detection rates compared to traditional loss function approaches.

Article Abstract

Deep learning has been employed to prognostic and health management of automotive and aerospace with promising results. Literature in this area has revealed that most contributions regarding deep learning is largely focused on the model's architecture. However, contributions regarding improvement of different aspects in deep learning, such as custom loss function for prognostic and health management are scarce. There is therefore an opportunity to improve upon the effectiveness of deep learning for the system's prognostics and diagnostics without modifying the models' architecture. To address this gap, the use of two different dynamically weighted loss functions, a newly proposed weighting mechanism and a focal loss function for prognostics and diagnostics task are investigated. A dynamically weighted loss function is expected to modify the learning process by augmenting the loss function with a weight value corresponding to the learning error of each data instance. The objective is to force deep learning models to focus on those instances where larger learning errors occur in order to improve their performance. The two loss functions used are evaluated using four popular deep learning architectures, namely, deep feedforward neural network, one-dimensional convolutional neural network, bidirectional gated recurrent unit and bidirectional long short-term memory on the commercial modular aero-propulsion system simulation data from NASA and air pressure system failure data for Scania trucks. Experimental results show that dynamically-weighted loss functions helps us achieve significant improvement for remaining useful life prediction and fault detection rate over non-weighted loss function predictions.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7038523PMC
http://dx.doi.org/10.3390/s20030723DOI Listing

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