A novel method overcomeing overfitting of artificial neural network for accurate prediction: Application on thermophysical property of natural gas

被引:35
作者
Chu, Jianchun [1 ]
Liu, Xiangyang [1 ]
Zhang, Ziwen [1 ]
Zhang, Yilin [1 ]
He, Maogang [1 ]
机构
[1] Xi An Jiao Tong Univ, Sch Energy & Power Engn, Key Lab Thermal Fluid Sci & Engn, MOE, Xian 710049, Peoples R China
基金
中国国家自然科学基金;
关键词
Artificial neuron network; K-nearest neighbor regression; Machine learning; Natural gas; Data learning; HYDROGEN BINARY-SYSTEM; DENSITY-MEASUREMENTS; 350; K; VISCOSITY MEASUREMENTS; SENSITIVITY-ANALYSIS; EXPERIMENTAL P; T DATA; THERMODYNAMIC CHARACTERIZATION; THERMAL-CONDUCTIVITY; PRESSURES;
D O I
10.1016/j.csite.2021.101406
中图分类号
O414.1 [热力学];
学科分类号
摘要
As a powerful tool to solve nonlinear problems, artificial neural network method (ANN) gets a wide range of applications in data regression. However, the overfitting often occurs during the ANN training process, which results in high accuracy of correlating the training data but poor prediction performance. At the same time, the principle of k-Nearest Neighbor method (kNN) makes it impossible to make an accurate prediction exceeding the range of the training data, but it can confine the overfitting of ANN. In this work, combining ANN and kNN, a new machine learning method called ANN-kNN combination method (AKC) for thermophysical property prediction of material is proposed. To evaluate the performance of AKC, we take the thermophysical properties of natural gas as an example. The inputs of AKC are temperature, pressure and the components of natural gas, the outputs are the compressibility factor, speed of sound and viscosity. AKC not only overcomes the overfitting problem but also needs less training data than ANN. The average absolute relative deviation of AKC for prediction are 2.5%, which are better than ANN (5.9%) and kNN (19.2%).
引用
收藏
页数:13
相关论文
共 55 条
[1]   Comparing various machine learning approaches in modeling the dynamic viscosity of CuO/water nanofluid [J].
Ahmadi, Mohammad Hossein ;
Mohseni-Gharyehsafa, Behnam ;
Ghazvini, Mahyar ;
Goodarzi, Marjan ;
Jilte, Ravindra D. ;
Kumar, Ravinder .
JOURNAL OF THERMAL ANALYSIS AND CALORIMETRY, 2020, 139 (04) :2585-2599
[2]   Viscosity of (CH4 + C3H8 + CO2 + N2) mixtures at temperatures between (243 and 423) K and pressures between (1 and 28) MPa: Experiment and theory [J].
Al Ghafri, Saif Z. S. ;
McKenna, Ashley ;
Czubinski, Fernando F. ;
May, Eric F. .
FUEL, 2019, 251 :447-457
[3]   Viscosity measurements of (CH4 + C3H8 + CO2) mixtures at temperatures between (203 and 420) K and pressures between (3 and 31) MPa [J].
Al Ghafri, Saif Z. S. ;
Czubinski, Fernando F. ;
May, Eric F. .
FUEL, 2018, 231 :187-196
[4]   Effects on thermophysical properties of carbon based nanofluids: Experimental data, modelling using regression, ANFIS and ANN [J].
Alrashed, Abdullah A. A. A. ;
Gharibdousti, Maryam Soltanpour ;
Goodarzi, Marjan ;
de Oliveira, Leticia Raquel ;
Safaei, Mohammad Reza ;
Bandarra Filho, Enio Pedone .
INTERNATIONAL JOURNAL OF HEAT AND MASS TRANSFER, 2018, 125 :920-932
[5]   Viscosity of natural-gas mixtures: Measurements and prediction [J].
Assael, MJ ;
Dalaouti, NK ;
Vesovic, V .
INTERNATIONAL JOURNAL OF THERMOPHYSICS, 2001, 22 (01) :61-71
[6]   p-ρ-T Behavior of Three Lean Synthetic Natural Gas Mixtures Using a Magnetic Suspension Densimeter and Isochoric Apparatus from (250 to 450) K with Pressures up to 150 MPa: Part II [J].
Atilhan, M. ;
Aparicio, S. ;
Ejaz, S. ;
Cristancho, D. ;
Mantilla, I. ;
Hall, K. R. .
JOURNAL OF CHEMICAL AND ENGINEERING DATA, 2011, 56 (10) :3766-3774
[7]   Viscosity Measurements and Data Correlation for Two Synthetic Natural Gas Mixtures [J].
Atilhan, Mert ;
Aparicio, Santiago ;
Alcalde, Rafael ;
Iglesias-Silva, Gustavo A. ;
El-Halwagi, Mahmoud ;
Hall, Kenneth R. .
JOURNAL OF CHEMICAL AND ENGINEERING DATA, 2010, 55 (07) :2498-2504
[8]   A novel sensitivity analysis model of EANN for F-MWCNTs-Fe3O4/EG nanofluid thermal conductivity: Outputs predicted analytically instead of numerically to more accuracy and less costs [J].
Bagherzadeh, Seyed Amin ;
D'Orazio, Annunziata ;
Karimipour, Arash ;
Goodarzi, Marjan ;
Quang-Vu Bach .
PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2019, 521 :406-415
[9]   Develop 24 dissimilar ANNs by suitable architectures & training algorithms via sensitivity analysis to better statistical presentation: Measure MSEs between targets & ANN for Fe-CuO/Eg-Water nanofluid [J].
Bahrami, Mehrdad ;
Akbari, Mohammad ;
Bagherzadeh, Seyed Amin ;
Karimipour, Arash ;
Afrand, Masoud ;
Goodarzi, Marjan .
PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2019, 519 :159-168
[10]   Supersonic refrigeration performances of nozzles and phase transition characteristics of wet natural gas considering shock wave effects [J].
Cao, Xuewen ;
Liu, Yang ;
Zang, Xuerui ;
Guo, Dan ;
Bian, Jiang .
CASE STUDIES IN THERMAL ENGINEERING, 2021, 24