Forecasting of Engine Performance for Gasoline-Ethanol Blends using Machine Learning

IF 0.9 Q3 ENGINEERING, MULTIDISCIPLINARY Journal of Engineering and Technological Sciences Pub Date : 2023-09-18 DOI:10.5614/j.eng.technol.sci.2023.55.3.10
Shailesh Sonawane, Ravi Sekhar, Arundhati Warke, Sukrut Thipse, Chetan Varma
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Abstract

The incorporation of alternative fuels in the automotive domain has brought a new paradigm to tackle the environmental and energy crises. Therefore, it is of interest to test and forecast engine performance with blended fuels. This paper presents an experimental study on gasoline-ethanol blends to test and forecast engine behavior due to changes in the fuel. This study employed a machine learning (ML) technique called TOPSIS to forecast the performance of a slightly higher blend fuelled engine based on experimental data obtained from the same engine running on 0% ethanol blend (E0) and E10 fuels under full load conditions. The engine performance predictions of this ML model were validated for 15% ethanol blend (E15) and further used to predict the engine performance of 20% ethanol blend fuel. The prediction R2 score for the ML model was found to be greater than 0.95 and the MAPE range was 1% to 5% for all observed engine performance attributes. Thus, this paper presents the potential of TOPSIS methodology-based ML predictions on blended fuel engine performance to shorten the testing efforts of blended fuel engines. This methodology may help to faster incorporate higher blended fuels in the automotive sector.
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使用机器学习预测汽油-乙醇混合燃料发动机性能
替代燃料在汽车领域的应用为解决环境和能源危机提供了一个新的范例。因此,对混合燃料发动机的性能进行测试和预测具有重要意义。本文对汽油-乙醇混合燃料进行了试验研究,以测试和预测燃料变化对发动机性能的影响。本研究采用了一种名为TOPSIS的机器学习(ML)技术,根据同一台发动机在满载条件下使用0%乙醇混合物(E0)和E10燃料获得的实验数据,预测了稍高混合燃料发动机的性能。该ML模型对15%乙醇混合燃料(E15)的发动机性能预测进行了验证,并进一步用于预测20%乙醇混合燃料的发动机性能。ML模型的预测R2评分大于0.95,所有观察到的发动机性能属性的MAPE范围为1%至5%。因此,本文提出了基于TOPSIS方法的机器学习预测混合燃料发动机性能的潜力,以缩短混合燃料发动机的测试工作。这种方法可能有助于更快地将更高的混合燃料纳入汽车行业。
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来源期刊
Journal of Engineering and Technological Sciences
Journal of Engineering and Technological Sciences ENGINEERING, MULTIDISCIPLINARY-
CiteScore
2.30
自引率
11.10%
发文量
77
审稿时长
24 weeks
期刊介绍: Journal of Engineering and Technological Sciences welcomes full research articles in the area of Engineering Sciences from the following subject areas: Aerospace Engineering, Biotechnology, Chemical Engineering, Civil Engineering, Electrical Engineering, Engineering Physics, Environmental Engineering, Industrial Engineering, Information Engineering, Mechanical Engineering, Material Science and Engineering, Manufacturing Processes, Microelectronics, Mining Engineering, Petroleum Engineering, and other application of physical, biological, chemical and mathematical sciences in engineering. Authors are invited to submit articles that have not been published previously and are not under consideration elsewhere.
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