IIR document

Accurate modelling of the scroll expander via a mechanism-incorporated data-driven method.

Author(s) : MA X., LV X., LI C., LI K.

Type of article: IJR article

Summary

Accurate modelling of the scroll expander is essential for efficiency analysis and optimal control. In this study, we propose a mechanism-incorporated adaptive-network-based fuzzy inference system (MI+ANFIS) to establish the scroll expander model. In this method, to fully utilize the mechanism characteristics and improve the prediction performance, we firstly identify the mechanistic model parameters based on the least squares method. Then, the ANFIS is adopted to construct residual prediction model according to the residual errors from the mechanistic model. The final forecasting outputs of the MI+ANFIS model are obtained by combining the mechanistic model and the ANFIS model. Experiments on forecasting the volume flow rate and torque of the scroll expander are taken separately. To demonstrate the superiorities of the proposed MI+ANFIS, it is compared with several other popular models, including the ANFIS, the extreme learning machine (ELM), the back-propagation neural network (BPNN), and the support vector regression (SVR), while with the MI+ELM, the MI+BPNN and the MI+SVR. Experimental results indicated that the proposed MI+ANFIS exhibits higher accuracy and greater robustness due to the consideration of the mechanistic properties.

Available documents

Format PDF

Pages: 32-46

Available

  • Public price

    20 €

  • Member price*

    Free

* Best rate depending on membership category (see the detailed benefits of individual and corporate memberships).

Details

  • Original title: Accurate modelling of the scroll expander via a mechanism-incorporated data-driven method.
  • Record ID : 30031988
  • Languages: English
  • Subject: Technology
  • Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 155
  • Publication date: 2023/11
  • DOI: http://dx.doi.org/10.1016/j.ijrefrig.2023.09.005

Links


See other articles in this issue (32)
See the source