A platform for research: civil engineering, architecture and urbanism
Research on CVT fault diagnosis system based on artificial neural network
To accomplish the demand of continuously variable transmission (CVT) fault diagnosis, the structure of CVT fault diagnosis system is built and the application model of Back-Propagation Neural Network is established aiming at the features of CVT faults. The structure and 3 algorithms of network are devised. The network proposed is simulated and the results are analyzed in detail. The simulation results indicate that the fault diagnosis system based on Back-Propagation neural network with momentum and self-adaptive learning rate algorithm is effective.
Research on CVT fault diagnosis system based on artificial neural network
To accomplish the demand of continuously variable transmission (CVT) fault diagnosis, the structure of CVT fault diagnosis system is built and the application model of Back-Propagation Neural Network is established aiming at the features of CVT faults. The structure and 3 algorithms of network are devised. The network proposed is simulated and the results are analyzed in detail. The simulation results indicate that the fault diagnosis system based on Back-Propagation neural network with momentum and self-adaptive learning rate algorithm is effective.
Research on CVT fault diagnosis system based on artificial neural network
Zhou, Meilan (author) / Zhang, Shige (author) / Wen, Jiabin (author) / Wang, Xudong (author)
2008
5 Seiten, 7 Quellen
Conference paper
English
Artificial Neural Network Based Fault Diagnosis of IC Engines
British Library Online Contents | 2012
|Applied Technology on Artificial Neural Network in Fault Diagnosis System
British Library Conference Proceedings | 2014
|Fault diagnosis of pneumatic systems with artificial neural network algorithms
Tema Archive | 2009
|Fault Diagnosis Research of Hydraulic Excavator Based on Fault Tree and Fuzzy Neural Network
Trans Tech Publications | 2013
|Kohonen Neural Network-based Gas Turbine Fault Diagnosis
British Library Online Contents | 2005
|