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作者:

Ping, Xu (Ping, Xu.) | Yang, Fubin (Yang, Fubin.) | Zhang, Hongguang (Zhang, Hongguang.) | Xing, Chengda (Xing, Chengda.) | Yao, Baofeng (Yao, Baofeng.) | Wang, Yan (Wang, Yan.)

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EI Scopus SCIE

摘要:

The high accuracy prediction model is the basis to investigate the organic Rankine cycle (ORC) system performance. Compared with the traditional thermodynamic model, the data-driven model of ORC system based on artificial neural network (ANN) has obvious advantages in reflecting the strong coupling characteristics of the system. The accuracy of ORC system prediction model depends on the training data, but the outlier removal from the training data has not been fully studied. This paper proposes an unsupervised learning approach for outlier removal in ORC system. Based on this approach, the nonlinear variation relationship between operating parameters and system performance is analyzed. The approach is further compared with the common outliers removal criteria. In addition, reasonable selection of input variables is the basis for the construction of ORC system prediction model, but commonly used selection process cannot effectively filter out the redundant and irrelevant features. A hybrid feature selection algorithm is presented based on Fourier transform and partial mutual information. The effectiveness of the proposed algorithm is compared with principal component analysis. A framework for ORC system outlier removal and feature dimensionality reduction is proposed. The results show that the use of this framework can significantly improve the prediction accuracy of the model. The MAPE and MSE of the model are 6.4 x 10(-3)% and 3.53 x 10(-11), respectively. This framework can provide a direct reference for the construction of data-driven ORC prediction model. (C) 2022 Elsevier Ltd. All rights reserved.

关键词:

Information theory Dimensionality reduction Organic Rankine cycle Unsupervised learning Outlier removal

作者机构:

  • [ 1 ] [Ping, Xu]Beijing Univ Technol, Fac Environm & Life, Key Lab Enhanced Heat Transfer & Energy Conservat, Beijing Key Lab Heat Transfer & Energy Convers, Beijing 100124, Peoples R China
  • [ 2 ] [Yang, Fubin]Beijing Univ Technol, Fac Environm & Life, Key Lab Enhanced Heat Transfer & Energy Conservat, Beijing Key Lab Heat Transfer & Energy Convers, Beijing 100124, Peoples R China
  • [ 3 ] [Zhang, Hongguang]Beijing Univ Technol, Fac Environm & Life, Key Lab Enhanced Heat Transfer & Energy Conservat, Beijing Key Lab Heat Transfer & Energy Convers, Beijing 100124, Peoples R China
  • [ 4 ] [Xing, Chengda]Beijing Univ Technol, Fac Environm & Life, Key Lab Enhanced Heat Transfer & Energy Conservat, Beijing Key Lab Heat Transfer & Energy Convers, Beijing 100124, Peoples R China
  • [ 5 ] [Yao, Baofeng]Beijing Univ Technol, Fac Environm & Life, Key Lab Enhanced Heat Transfer & Energy Conservat, Beijing Key Lab Heat Transfer & Energy Convers, Beijing 100124, Peoples R China
  • [ 6 ] [Wang, Yan]Beijing Univ Technol, Fac Environm & Life, Key Lab Enhanced Heat Transfer & Energy Conservat, Beijing Key Lab Heat Transfer & Energy Convers, Beijing 100124, Peoples R China

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来源 :

ENERGY

ISSN: 0360-5442

年份: 2022

卷: 254

9 . 0

JCR@2022

9 . 0 0 0

JCR@2022

ESI学科: ENGINEERING;

ESI高被引阀值:49

JCR分区:1

中科院分区:1

被引次数:

WoS核心集被引频次: 16

SCOPUS被引频次: 16

ESI高被引论文在榜: 0 展开所有

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中文被引频次:

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