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ON-LINE STATE PREDICTION OF ENGINES BASED ON FLAT NEURAL NETWORK

ON-LINE STATE PREDICTION OF ENGINES BASED ON FLAT NEURAL NETWORK
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摘要 A flat neural network is designed for the on line state prediction of engine. To reduce the computational cost of weight matrix, a fast recursive algorithm is derived according to the pseudoinverse formula of a partition matrix. Furthermore, the forgetting factor approach is introduced to improve predictive accuracy and robustness of the model. The experiment results indicate that the improved neural network is of good accuracy and strong robustness in prediction, and can apply for the on line prediction of nonlinear multi input multi output systems like vehicle engines. A flat neural network is designed for the on line state prediction of engine. To reduce the computational cost of weight matrix, a fast recursive algorithm is derived according to the pseudoinverse formula of a partition matrix. Furthermore, the forgetting factor approach is introduced to improve predictive accuracy and robustness of the model. The experiment results indicate that the improved neural network is of good accuracy and strong robustness in prediction, and can apply for the on line prediction of nonlinear multi input multi output systems like vehicle engines.
出处 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2001年第1期51-56,共6页 中国机械工程学报(英文版)
基金 Ford ChinaResearch&DevelopmentFoundation !(No .0 9415 5 2 6 )
关键词 Engine model Neural network On line prediction Nonlinear system Engine model Neural network On line prediction Nonlinear system
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参考文献4

  • 1[1]Pan Chunghung, Moskwa John J. An analysis of the effects of torque, engine geometry and speed on choosing an engine inertia model to minimize prediction errors. In∶ Abraham H H ed. Proceedings of the 1993 American Control Conference, American Control Conference, San Francisco, 1993, California∶ American Automatic Control Council, 1993∶1 784~1789
  • 2李重焕,玄哲浩,辛德杰.用系统辨识的方法辨识发动机调速系统的模型[J].上海汽车,1995(4):45-47. 被引量:1
  • 3[3]Tan Yonghong. Nonlinear dynamic system identification based on wavelet neural network. Journal of Guilin Institute of Electronic Technology, 1999,1(19)∶1~6
  • 4[4]Pao Y H, Park G H, Sobajic D J. Learning and generalization characteristics of the random vector functional-link net, in Neuro-computing. Amsterdam, The Netherland∶ Elsevier, 1994(6)∶163~180

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