Energetic thermo-physical analysis of MLP-RBF feed-forward neural network compared with RLS Fuzzy to predict CuO/liquid paraffin mixture properties

Xiaoluan Zhang, Xinni Liu, Xifeng Wang, Shahab S. Band, Seyed Amin Bagherzadeh, Somaye Taherifar, Ali Abdollahi, Mehrdad Bahrami, Arash Karimipour, Kwok-Wing Chau & Amir Mosavi (2022) Energetic thermo-physical analysis of MLP-RBF feed-forward neural network compared with RLS Fuzzy to predict CuO/li

40 Pages Posted: 27 Apr 2022

See all articles by Xiaoluan Zhang

Xiaoluan Zhang

affiliation not provided to SSRN

Xinning Liu

Tsinghua University

Xifeng Wang

Nanchang University - Department of Anesthesiology

Shahab Band

National Yunlin University of Science and Technology

Seyed Amin Bagherzadeh

affiliation not provided to SSRN

Somaye Taherifar

affiliation not provided to SSRN

Ali Abdollahi

affiliation not provided to SSRN

Mehrdad Bahrami

affiliation not provided to SSRN

Arash Karimipour

Islamic Azad University (IAU)

Kwok-Wing Chau

Hong Kong Polytechnic University

Amir Mosavi

TU Dresden; Obuda University

Date Written: April 12, 2022

Abstract

Dynamic viscosity of novel generated Copper Oxide (CuO)/Liquid Paraffin nanofluids is obtained experimentally for various temperatures and concentrations. To optimize the empirical process and for cost-efficiency, Feed-Forward Neural Networks (FFNNs) were modeled and compared with Recursive Least Squares (RLS) Fuzzy model. To prepare CuO/ liquid paraffin nanofluids, CuO nanoparticles are dispersed within paraffin. Based on the empirical results, two types of FFNNs are examined and compared with RLSF model to predict CuO/liquid paraffin nanofluids. To evaluate the best optimization methods of nanofluid viscosity, Multi-Layer Feed forward (MLF), Radial Basis Function (RBF), and RLSF are compared and discussed. The MLF network provides a global approximation while the RBF acts more locally, further, RLSF provides a better fit. On the contrary, the RBF network has better properties from the generalization and noise rejection points of view. Also, RBF networks can be applied in an online manner. Further, three curves of RLS Fuzzy model by Parabola2D, ExtremeCum, and Poly2D models were fitted on the empirical data and compared. The ExtremeCum model showed the least margin of error and can be employed to predict the data.

Keywords: Viscosity, Copper Oxide, Liquid Paraffin, artificial intelligence, RLS Fuzzy, machine learning

JEL Classification: C80

Suggested Citation

Zhang, Xiaoluan and Liu, Xinning and Wang, Xifeng and Band, Shahab and Bagherzadeh, Seyed Amin and Taherifar, Somaye and Abdollahi, Ali and Bahrami, Mehrdad and Karimipour, Arash and Chau, Kwok-Wing and Mosavi, Amir, Energetic thermo-physical analysis of MLP-RBF feed-forward neural network compared with RLS Fuzzy to predict CuO/liquid paraffin mixture properties (April 12, 2022). Xiaoluan Zhang, Xinni Liu, Xifeng Wang, Shahab S. Band, Seyed Amin Bagherzadeh, Somaye Taherifar, Ali Abdollahi, Mehrdad Bahrami, Arash Karimipour, Kwok-Wing Chau & Amir Mosavi (2022) Energetic thermo-physical analysis of MLP-RBF feed-forward neural network compared with RLS Fuzzy to predict CuO/li, Available at SSRN: https://ssrn.com/abstract=4082008

Xiaoluan Zhang

affiliation not provided to SSRN

Xinning Liu

Tsinghua University ( email )

Xifeng Wang

Nanchang University - Department of Anesthesiology ( email )

Shahab Band

National Yunlin University of Science and Technology

Seyed Amin Bagherzadeh

affiliation not provided to SSRN

Somaye Taherifar

affiliation not provided to SSRN

Ali Abdollahi

affiliation not provided to SSRN

Mehrdad Bahrami

affiliation not provided to SSRN

Arash Karimipour

Islamic Azad University (IAU) ( email )

Kwok-Wing Chau

Hong Kong Polytechnic University ( email )

11 Yuk Choi Rd
Hung Hom
Hong Kong

Amir Mosavi (Contact Author)

TU Dresden ( email )

Münchner Platz 2 - 3
Dresden, 01069
Germany

Obuda University ( email )

Bécsi út 96/B
Budapest, 034
Hungary

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