Applied AMT machine learning and multi-objective optimization for enhanced performance and reduced environmental impact of sunflower oil biodiesel in compression ignition engine

Q1 Chemical Engineering
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Abstract

Biodiesel has emerged as a compelling substitute for conventional diesel fuel, providing a sustainable and eco-friendly choice for fueling compression ignition engines. This comprehensive study investigates the influence of biodiesel, specifically derived from sunflower oil, through the esterification method, on crucial engine performance parameters and environmental effects. The study examines the impact of varying engine torque on the performance of a single-cylinder, four-stroke compression ignition engine, encompassing parameters such as brake thermal efficiency (BTE) and brake specific fuel consumption (BSFC), as well as exhaust emissions, including unburned hydrocarbons (HC), carbon monoxide (CO), and nitrogen oxides (NOx). Four distinct biodiesel blends (B10, B20, B30, B40) with varying sunflower oil content are systematically compared to pure diesel (B0). The engine operates at a consistent speed of 1700 rpm, while the torque undergoes controlled adjustments from 0 to 10 Nm. Subsequently, this study explores the application of an alternating model tree (AMT) machine learning algorithm to establish relationships between independent factors, specifically torque and biodiesel volume (%vol), and dependent variables, including BTE, BSFC, CO, and NOx in a combustion engine. Additionally, the study employs a multi-objective ameliorative whale optimization algorithm (AWOA) to optimize the model's output. The objective is to identify optimal values for torque and%vol that maximize engine performance (BTE) while minimizing engine emissions (CO and NOx) and reducing fuel consumption (BSFC). The optimization process yields noteworthy results, with AWOA achieving peak BTE at 29.714 %, BSFC at 0.262 kg.kWh-1, and NOx emissions at 992 ppm at torque 7.3 N.m and 13% vol. In contrast, particle swarm optimization (PSO) secured the minimum CO level at 0.123 %, with torque set at 7.6 N.m and 26% vol. The AMT models demonstrate high prediction accuracy, with coefficient of determination (R2) values exceeding 0.98.

应用 AMT 机器学习和多目标优化技术,提高压燃式发动机中葵花籽油生物柴油的性能并减少其对环境的影响
生物柴油已成为传统柴油的替代品,为压燃式发动机提供了一种可持续和环保的燃料选择。这项综合研究调查了生物柴油(特别是通过酯化方法从葵花籽油中提取的生物柴油)对发动机关键性能参数和环境影响的影响。研究考察了不同发动机扭矩对单缸四冲程压燃发动机性能的影响,包括制动热效率 (BTE) 和制动比耗油量 (BSFC) 等参数,以及废气排放,包括未燃烧碳氢化合物 (HC)、一氧化碳 (CO) 和氮氧化物 (NOx)。四种不同葵花籽油含量的生物柴油混合物(B10、B20、B30、B40)与纯柴油(B0)进行了系统比较。发动机以 1700 rpm 的稳定转速运行,扭矩在 0 到 10 Nm 之间进行可控调节。随后,本研究探索了交替模型树(AMT)机器学习算法的应用,以建立内燃机中自变量(特别是扭矩和生物柴油量(%vol))与因变量(包括 BTE、BSFC、CO 和 NOx)之间的关系。此外,该研究还采用了多目标改进鲸鱼优化算法(AWOA)来优化模型的输出。目标是确定扭矩和体积百分比的最佳值,使发动机性能(BTE)最大化,同时使发动机排放(CO 和 NOx)最小化,并降低油耗(BSFC)。优化过程产生了值得注意的结果,AWOA 在扭矩为 7.3 N.m 和容积为 13% 时实现了峰值 BTE(29.714%)、BSFC(0.262 kg.kWh-1)和 NOx 排放量(992 ppm)。相比之下,粒子群优化(PSO)在扭矩为 7.6 N.m 和容积为 26% 时确保了最低 CO 水平(0.123%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Thermofluids
International Journal of Thermofluids Engineering-Mechanical Engineering
CiteScore
10.10
自引率
0.00%
发文量
111
审稿时长
66 days
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