Optimization of hydrogen-fueled engine ignition timing based on L-M neural network algorithm

被引:1
作者
Wang L. [1 ]
Liu Y. [1 ]
Liu Y. [1 ]
Wang W. [1 ]
Zhao Y. [1 ]
Yang Z. [1 ]
机构
[1] School of Mechanical Engineering, North China University of Water Resources and Electric Power, Zhengzhou, Henan
关键词
Hydrogen-fueled Engine; L-M Algorithm; Neural Network; Optimization;
D O I
10.12928/TELKOMNIKA.v14i3.2756
中图分类号
学科分类号
摘要
In view of the improvement measures of the optimization control algorithm for the ignition system of the hydrogen-fueled engine, the L-M neural network algorithm, Powell neural network algorithm and the traditional BP neural network algorithm are used to optimize the ignition system. The results showed that L-M algorithm not only can accurately predict the hydrogen-fueled engine ignition timing, but also has high precision, high convergence speed, a simple model and other outstanding advantages in the training process, which can greatly reduce the workload of human engine bench tests. Only a small amount of engine bench test is carried out, and the obtained sample data can be used to predict the ignition timing under the whole working conditions. The mean square error of the optimization results based on L-M algorithm arrives at 0.0028 after 100 times of calculation, the maximum value of absolute error arrives at 0.2454, and the minimum value of absolute error arrives at 0.00426. © 2016 Universitas Ahmad Dahlan.
引用
收藏
页码:923 / 932
页数:9
相关论文
共 12 条
  • [1] Verhelst S., Recent Progress in the Use of Hydrogen As a Fuel for Internal Combustion Eegines, International Journal of Hydrogen Energy, 39, 2, pp. 1071-1085, (2014)
  • [2] Bo Z., Changwei J., Shuofeng W., Yuchen X., Investigation on the Cold Start Characteristics of a Hydrogen-enriched Methanol Engine, International Journal of Hydrogen Energy, 39, 36, pp. 14466-14471, (2014)
  • [3] Gomes Antunes J.M., Mikalsen R., Roskilly A.P., An Experimental Study of a Direct Injection Compression Ignition Hydrogen Engine, International Journal of Hydrogen Energy, 34, 15, pp. 6516-6522, (2009)
  • [4] Xinghua L., Fushui L., Lei Z., Baigang S., Harold S., Backfire Prediction in a Manifold Injection Hydrogen Internal Combustion Engine, International Journal of Hydrogen Energy, 33, 14, pp. 3847-3855, (2008)
  • [5] Vinod Singh Y., Dilip S., Soni S.L., Performance and Combustion Analysis of Hydrogen-fuelled C.I, Engine with EGR, International Journal of Hydrogen Energy, 40, 2, pp. 4382-4391, (2015)
  • [6] Subroto, Ibnu M.I., Ali S., Plagiarism Detection Through Internet Using Hybrid Artificial Neural Network and Support Vectors Machine, Telkomnika (Telecommunication Computing Electronics and Control), 12, 1, pp. 209-218, (2014)
  • [7] Singh Khehraa B., Singh Pharwahab A.P., Classification of Clustered Microcalcifications using MLFFBP-ANN and SVM, Egyptian Informatics Journal, 17, 1, pp. 11-20, (2016)
  • [8] Basheer Shukur O., Hisyam Lee M., Daily Wind Speed Forecasting Through Hybrid KF-ANN Model Based on ARIMA, Renewable Energy, 76, pp. 637-647, (2015)
  • [9] Piotrowski A.P., Jarosllaw Napiorkowski J., Optimizing Neural Networks for River Flow Forecasting-Evolutionary Computation Methods versus the Levenberg-Marquardt Approach, Journal of Hydrology, 407, 1-4, pp. 12-27, (2011)
  • [10] Christodouloua C.A., Vitab V., Ekonomoub L., Chatzarakisb G.E., Stathopulosa I.A., Application of Powell's Optimization Method to Surge Arrester Circuit Models' Parameters, Energy, 35, 8, pp. 3375-3380, (2010)