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Experimental study of hydrogen enriched compressed natural gas (HCNG) engine and application of support vector machine (SVM) on prediction of engine performance at specific condition
Affiliation:1. Department of Mechanical Design, School of Mechanical and Precision Instrument Engineering, Xi''an University of Technology, Xi''an, 710048, People''s Republic of China;2. State Key Laboratory of Automobile Safety and Energy, Tsinghua University, Beijing, 100084, People''s Republic of China;3. Henan Diesel Engine Industry Co.Ltd, Luoyang, 471003, People''s Republic of China;1. Faculty of Environment and Energy, Islamic Azad University Science & Research Branch, Tehran, Iran;2. MLC Research and Development Center, MAPNA Group Co., Tehran, Iran;1. Centre for Energy Studies, Indian Institute of Technology Delhi, New Delhi, 110016, Delhi, India;2. Mechanical Engineering Department, The NorthCap University, Sector – 23A, Gurugram, 122017, Haryana, India;1. State Key Laboratory of Automobile Safety and Energy, Tsinghua University, Beijing 100084, People’s Republic of China;2. State Key Laboratory of Multiphase Flow in Power Engineering, Xi’an Jiaotong University, Xi’an 710049, People’s Republic of China
Abstract:The effect of excess air ratio (λ) and ignition advance angle (θig) on the combustion and emission characteristics of hydrogen enriched compressed natural gas (HCNG) on a 6-cylinder compressed natural gas (CNG) engine has been experimental studied in an engine test bench, aiming at enriching the sophisticated calibration of HCNG fueled engine and increasing the prediction accuracy of the SVM method on automobile engines. Three different fuel blends were selected for the experiment: 0%, 20% and 40% volumetric hydrogen blend ratios. It is noted that combustion intensity varies with the excess air ratio and the ignition advance angle, so are the emissions. The optimal value of λ or θig has been explored in the specific engine condition. Results show that blending hydrogen can enhance and advance the combustion and stability of CNG engine, and it also has some benefic influence on the emissions such as reducing the CO and CH4. Meanwhile, a simulation research on forecasting the engine performance by using the support vector machine (SVM) method was conducted in detail. The torque, brake specific fuel consumption and NOx emission have been selected to characterize the power, economic and emissions of the engine with various HCNG fuels, respectively. It can be seen that the optimal model built by the SVM method can highly describe the relationship of the engine properties and condition parameters, since the value of the complex correlation coefficient is larger than 0.97. Secondly, the prediction performance of the optimal model for torque or BSFC is much better than the case of NOx. Besides, the optimal model built by the PSO optimization method has the best prediction accuracy, and the accuracy of the model obtained based on the training group with 20% hydrogen blend ratio is the best compared with those of others. The upshots in this article provide experimental support and theoretical basis for the adoption of HCNG fuel on internal combustion engines as well as the application of intelligent algorithmic in the engine calibration technology field.
Keywords:Hydrogen enriched compressed natural gas engine  Support vector machine  Ignition advance angle  Thermal efficiency  Emission
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