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A Study on the Generalized Approximation Modeling Method Based on Fitting Sensitivity for Prediction of Engine Performance

Author

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  • Lin Lin
  • Fang Wang
  • Shisheng Zhong

Abstract

Prediction technology for aeroengine performance is significantly important in operational maintenance and safety engineering. In the prediction of engine performance, to address overfitting and underfitting problems with the approximation modeling technique, we derived a generalized approximation model that could be used to adjust fitting precision. Approximation precision was combined with fitting sensitivity to allow the model to obtain excellent fitting accuracy and generalization performance. Taking the Grey model (GM) as an example, we discussed the modeling approach of the novel GM based on fitting sensitivity, analyzed the setting methods and optimization range of model parameters, and solved the model by using a genetic algorithm. By investigating the effect of every model parameter on the prediction precision in experiments, we summarized the change regularities of the root-mean-square errors (RMSEs) varying with the model parameters in novel GM. Also, by analyzing the novel ANN and ANN with Bayesian regularization, it is concluded that the generalized approximation model based on fitting sensitivity can achieve a reasonable fitting degree and generalization ability.

Suggested Citation

  • Lin Lin & Fang Wang & Shisheng Zhong, 2017. "A Study on the Generalized Approximation Modeling Method Based on Fitting Sensitivity for Prediction of Engine Performance," Discrete Dynamics in Nature and Society, Hindawi, vol. 2017, pages 1-12, March.
  • Handle: RePEc:hin:jnddns:5729786
    DOI: 10.1155/2017/5729786
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