Pressure prediction of a spark ignition single cylinder engine using optimized extreme learning machine models

被引:69
作者
Mariani, Viviana Cocco [1 ,2 ]
Och, Stephan Hennings [3 ]
Coelho, Leandro dos Santos [2 ,4 ]
Domingues, Eric [5 ,6 ]
机构
[1] Pontificia Univ Catolica Parana, Dept Mech Engn, Curitiba, Brazil
[2] Univ Fed Parana, Dept Elect Engn, Curitiba, Parana, Brazil
[3] Univ Fed Parana, Dept Mech Engn, Curitiba, Parana, Brazil
[4] Pontificia Univ Catolica Parana, Ind & Syst Engn Grad Program PPGEPS, Curitiba, Parana, Brazil
[5] Normadie Univ, CNRS, INSA, CORIA,UMR6614, F-76800 St Etienne Du Rouvray, France
[6] Univ Rouen, F-76800 St Etienne Du Rouvray, France
关键词
Spark ignition engine; Nonlinear regression; Extreme learning machine; Artificial neural networks; Biogeography-based optimization; WAVELET TRANSFORM; NEURAL-NETWORKS; PERFORMANCE; COMBUSTION; REGRESSION; ENSEMBLE; CAPABILITIES; CALIBRATION; ALGORITHMS; SIMULATION;
D O I
10.1016/j.apenergy.2019.04.126
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
In this study, the cyclic of a spark ignition engine using octane fuel is modeled using extreme learning machine, an emergent technology related to single-hidden layer feedforward neural networks (SLFNs). The experimental engine case study was operated with five different engine speeds from 1000 to 3000 rpm, and crankshaft angle from 360 to 360 without exhaust gas recirculation. The mean effective pressure was used to indicate the cyclic variability for the mean of 100 consecutive cycles. In this study the extreme learning machine (ELM), the regularized extreme learning machine and the outlier robust extreme learning machine were applied to predict the conditions of a combustion parameter used to reflect pressure information for entire cycle in a single-cylinder compression ignition naturally aspirated engine. Prediction by ELM models is normally faster than mathematical models employed to solve a set of differential equations by iterative numerical methods. The essence of ELM is that the hidden layer of SLFNs need not be tuned. Nevertheless, the selection of an appropriate ELM topology is crucial in terms of simplicity, velocity and accuracy. The suitable determination of the number of hidden layer nodes (neurons), type of activation function, and sparse connection structure of weights and biases were obtained using a modified biogeography-based optimization approach (BBO), a population-based metaheuristic algorithm inspired on the mathematical model of organism distribution in biological systems. The experimental dataset were used to train ELM models, and the reliability of these models was assessed and compared for two case studies based on performance criteria related to accuracy, sparsity and complexity using a cross-validation procedure. After training, experimental results show that the pressure can be modeled with reasonable accuracy. The results analysis indicated that the proposed optimized ELM and its variants optimized by BBO approaches have potential for prediction the mean effective pressure showed reasonable consistency with the experimental results.
引用
收藏
页码:204 / 221
页数:18
相关论文
共 78 条
  • [1] Differential Evolution Extreme Learning Machine for the Classification of Hyperspectral Images
    Bazi, Yakoub
    Alajlan, Naif
    Melgani, Farid
    AlHichri, Haikel
    Malek, Salim
    Yager, Ronald R.
    [J]. IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2014, 11 (06) : 1066 - 1070
  • [2] Effect of the engine calibration parameters on gasoline partially premixed combustion performance and emissions compared to conventional diesel combustion in a light-duty Euro 6 engine
    Belgiorno, Giacomo
    Dimitrakopoulos, Nikolaos
    Di Blasio, Gabriele
    Beatrice, Carlo
    Tunestal, Per
    Tuner, Martin
    [J]. APPLIED ENERGY, 2018, 228 : 2221 - 2234
  • [3] Learning Deep Architectures for AI
    Bengio, Yoshua
    [J]. FOUNDATIONS AND TRENDS IN MACHINE LEARNING, 2009, 2 (01): : 1 - 127
  • [4] Broomhead D. S., 1988, Complex Systems, V2, P321
  • [5] Hierarchical ensemble of Extreme Learning Machine
    Cai, Yaoming
    Liu, Xiaobo
    Zhang, Yongshan
    Cai, Zhihua
    [J]. PATTERN RECOGNITION LETTERS, 2018, 116 : 101 - 106
  • [6] A review on neural networks with random weights
    Cao, Weipeng
    Wang, Xizhao
    Ming, Zhong
    Gao, Jinzhu
    [J]. NEUROCOMPUTING, 2018, 275 : 278 - 287
  • [7] A survey on modeling, biofuels, control and supervision systems applied in internal combustion engines
    Carbot-Rojas, D. A.
    Escobar-Jimenez, R. F.
    Gomez -Aguilar, J. F.
    Tellez-Anguiano, A. C.
    [J]. RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2017, 73 : 1070 - 1085
  • [8] PCA-ELM: A Robust and Pruned Extreme Learning Machine Approach Based on Principal Component Analysis
    Castano, A.
    Fernandez-Navarro, F.
    Hervas-Martinez, C.
    [J]. NEURAL PROCESSING LETTERS, 2013, 37 (03) : 377 - 392
  • [9] Electricity Price Forecasting With Extreme Learning Machine and Bootstrapping
    Chen, Xia
    Dong, Zhao Yang
    Meng, Ke
    Ku, Yan
    Wong, Kit Po
    Ngan, H. W.
    [J]. IEEE TRANSACTIONS ON POWER SYSTEMS, 2012, 27 (04) : 2055 - 2062
  • [10] Intelligent fault diagnosis of photovoltaic arrays based on optimized kernel extreme learning machine and I-V characteristics
    Chen, Zhicong
    Wu, Lijun
    Cheng, Shuying
    Lin, Peijie
    Wu, Yue
    Lin, Wencheng
    [J]. APPLIED ENERGY, 2017, 204 : 912 - 931