An LSTM based soft sensor for rear motorcycle suspension

Marco Carratù, Vincenzo Gallo, Antonio Pietrosanto, Paolo Sommella
Abstract:
The increasing development of neural networks for classification and prediction of temporal sequences has opened the way for a new development of mathematical models for soft sensor design. In particular, Long Short-Term Memory (LSTM) networks have greatly improved execution time and reduced error in both single-step and multi-step prediction. In this context, it is therefore possible to improve on the current concept of Instrument Fault Detection and Isolation (IFDI), reducing costs and footprint by not using physical redundancies of sensitive elements but by employing virtual sensors themselves. Therefore, the work aims to develop a soft sensor for rear suspension stroke using an LSTM network. This new approach was trained on over 50000 samples acquired in a real-world environment, and the results were compared with ground truth on a total of over 100000 samples. The results of the analysis showed excellent potential of the method and wide room for improvement in future developments.
Keywords:
Soft Sensor; Deep Neural Network; LSTM; IFDI; Industry Innovation and Infrastructure; SDG 9
Download:
IMEKO-TC10-2022-011.pdf
DOI:
10.21014/tc10-2022.011
Event details
IMEKO TC:
TC10
Event name:
TC10 Conference 2022
Title:

18th IMEKO TC10 Conference "Measurement for Diagnostics, Optimisation and Control to Support Sustainability and Resilience"

Place:
Warsaw, POLAND
Time:
26 September 2022 - 27 September 2022