2022
DOI: 10.1115/1.4053301
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Comparison of Random Forest and Neural Network in Modeling the Performance and Emissions of a Natural Gas Spark Ignition Engine

Abstract: Machine learning (ML) models can accelerate the development of efficient internal combustion engines. This study assessed the feasibility of data-driven methods towards predicting the performance of a diesel engine modified to natural gas spark ignition, based on a limited number of experiments. As the best ML technique cannot be chosen a priori, the applicability of different ML algorithms for such an engine application was evaluated. Specifically, the performance of two widely used ML algorithms, the random … Show more

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Cited by 62 publications
(11 citation statements)
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“…hotter than metal piston throughout the entire engine cycle) should be avoided for combustion modes that do not require intake thermal management (e.g. boosted SI, 44 MCCI with diesel fuel, gasoline controlled autoignition (CAI) with high internal residual rates, etc.) because charge heating causes difficulties with air handling, lowers power density, and increases the knock tendency (for SI specifically).…”
Section: Backgrounds Of Thermal Barrier Coatings For Ic Enginesmentioning
confidence: 99%
“…hotter than metal piston throughout the entire engine cycle) should be avoided for combustion modes that do not require intake thermal management (e.g. boosted SI, 44 MCCI with diesel fuel, gasoline controlled autoignition (CAI) with high internal residual rates, etc.) because charge heating causes difficulties with air handling, lowers power density, and increases the knock tendency (for SI specifically).…”
Section: Backgrounds Of Thermal Barrier Coatings For Ic Enginesmentioning
confidence: 99%
“…These especially offer greater ease and speed when determining the model structure and during its application and tuning. 64 For energy-related forecasting, Alova et al. 65 used a similar supervised machine-learning technique.…”
Section: Methodsmentioning
confidence: 99%
“…Machine learning offers the capability to adjust input parameters to simulate the combustion characteristics of an engine, thereby forecasting pertinent engine parameters effectively [16], [17]. Intelligent internal combustion engines can analyze a wider array of data inputs, encompassing climate conditions and geographical parameters, to enhance engine efficiency and reduce CO2 emissions [18]. Dornof et al [19] examined the influence of European C-segment passenger car models on the comparison of CO2 emissions under controlled laboratory conditions versus real-world road conditions.…”
Section: Introductionmentioning
confidence: 99%