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Neural Network Based Feedforward Control for Electronic Throttles
Technical Paper
2002-01-1149
ISSN: 0148-7191, e-ISSN: 2688-3627
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English
Abstract
This paper addresses feedforward tracking control for electronic throttles. A robust and accurate tracking control scheme based on the training of a Neural Network model and feedback term (PID) is developed. The Neural Network based term can be trained off-line. This feedfoward term serves as a mathematical model capable of describing Electronic Throttle dynamics over a wide range. We have shown that by adding the Neural Network based feedforward control to a common feedback control method, such as the gain-scheduled PID used in many ETC production controllers, that the tracking control performance criteria such as transient errors, steady state errors, response time and overshoot, are greatly improved. Experiments conducted on a production Electronic Throttle Body with a Motorola H-brigde driver IC have shown good results utilizing this approach.
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Citation
Yang, H., Liu, L., and Wasacz, B., "Neural Network Based Feedforward Control for Electronic Throttles," SAE Technical Paper 2002-01-1149, 2002, https://doi.org/10.4271/2002-01-1149.Also In
Electronic Engine Controls 2002: Engine Control, Neural Networks and Non-Linear Systems
Number: SP-1689; Published: 2002-03-04
Number: SP-1689; Published: 2002-03-04
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