Effect of Machine Learning Algorithms on Prediction of In-Cylinder Combustion Pressure of Ammonia–Oxygen in a Constant-Volume Combustion Chamber

Author:

Fang Lijia1ORCID,Singh Hardeep2,Ohashi Takuma1,Sanno Masato1,Lin Guansen1,Yilmaz Emir2ORCID,Ichiyanagi Mitsuhisa2ORCID,Suzuki Takashi2

Affiliation:

1. Graduate School of Science and Technology, Sophia University, Tokyo 102-8554, Japan

2. Department of Engineering and Applied Sciences, Sophia University, Tokyo 102-8554, Japan

Abstract

Road vehicles, particularly cars, are one of the primary sources of CO2 emissions in the transport sector. Shifting to unconventional energy sources such as solar and wind power may reduce their carbon footprints considerably. Consequently, using ammonia as a fuel due to its potential benefits, such as its high energy density, being a carbon-free fuel, and its versatility during storage and transportation, has now grabbed the attention of researchers. However, its slow combustion speed, larger combustion chamber requirements, ignition difficulties, and limited combustion stability are still major challenges. Therefore, authors tried to analyze the combustion pressure of ammonia in a constant-volume combustion chamber across different equivalence ratios by adopting a machine learning approach. While conducting the analysis, the experimental values were assessed and subsequently utilized to predict the induced combustion pressure in a constant-volume combustion chamber across various equivalence ratios. In this research, a two-step prediction process was employed. In the initial step, the Random Forest algorithm was applied to assess the combustion pressure. Subsequently, in the second step, artificial neural network machine learning algorithms were employed to pinpoint the most effective algorithm with a lower root-mean-square error and R2. Finally, Linear Regression illustrated the lowest error in both steps with a value of 1.0, followed by Random Forest.

Funder

Japan Society for the Promotion of Science, Grants-in-Aid for Scientific Research

Publisher

MDPI AG

Reference18 articles.

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3. Life-cycle energy use and greenhouse gas emissions of palm fatty acid distillate derived renewable diesel;Xu;Renew. Sustain. Energy Rev.,2020

4. (2021, August 10). Agency for Natural Resources and Energy, Japan. Available online: https://www.enecho.meti.go.jp/statistics/electric_power/ep002/pdf/2020/0-2020.pdf.

5. Ammonia as a Hydrogen Energy Carrier and Its Application to Internal Combustion Engines;Koike;J. Combust. Soc. Jpn.,2016

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