ANN-based IFD in Motorcycle Rear Suspension

Domenico Capriglione, Marco Carratù, Paolo Sommella, Antonio Pietrosanto
Abstract:
Semi-active suspension control needs to measure the relative velocity of the wheels respect to the vehicle body to regulate the damping forces. Linear potentiometers are the most used sensors in racing for linearity and simplicity, but they suffer of wear and tear and aging higher than the other sensors involved in the control loop. As a consequence, to save the efficiency and the effectiveness of the suspension control strategy, an Instrument Fault Detection (IFD) system able to detect the faults occurring on such a sensor should be adopted. In this framework, the paper proposes a IFD scheme based on the analytical redundancy existing among the quantity measured by the rear suspension sensor and the other quantities involved in a typical suspension control loop. In other words, the fault detection is made by comparing the actual sensor output with the expected one provided by a “soft” sensor. In particular, the soft sensor has been implemented by suitably designing and tuning a Nonlinear Auto-Regressive with eXogenous inputs (NARX) network which is able to take into account for the system nonlinearity. Experimental results have proven the good promptness and reliability of the scheme in detecting also “small faults” (e.g. due to slight variations of the input/output sensor curve).
Download:
IMEKO-TC10-2017-002.pdf
DOI:
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Event details
IMEKO TC:
TC10
Event name:
TC10 Workshop on Technical Diagnostics 2017
Title:

15th IMEKO TC10 Workshop "Technical Diagnostics in Cyber-Physical Era"

Place:
Budapest, HUNGARY
Time:
06 June 2017 - 07 June 2017