基于人工神经网络(ANN)和田口灰关联分析(GRA)的棉籽生物柴油柴油喷射参数及乙醇份额优化

IF 4.3 3区 工程技术 Q1 MECHANICS
G. Praveen Kumar Yadav, Pullarao Muvvala, R. Meenakshi Reddy
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引用次数: 0

摘要

化石燃料驱动的工业过程和车辆的增加导致了石油储量的枯竭和环境的污染。由于其清洁燃烧、可再生和可生物降解的特性,生物柴油越来越被认为是一种潜在的柴油替代品。在单缸压缩点火发动机上,通过不同的喷射时间、喷射压力和乙醇份额,研究了棉籽油(CSBD20)和柴油混合物的发动机性能和排放特性。利用人工神经网络(ANN)和田口灰色关联分析(GRA),将制动热效率(BTE)、制动油耗(BSFC)、废气排放(碳氢化合物(HC)、一氧化碳(CO)、氮氧化物(NO x)、二氧化碳(CO2)和烟雾等性能参数作为输出因素,将喷射定时(IT)、乙醇份额(ES)、喷射压力(IP)作为输入因素。人工神经网络模型准确地预测了乙醇和棉籽生物柴油混合物的投入产出关系,并通过实验比较得到了验证。BTE、BSFC、HC、CO、NO x和smoke的预测值与实验结果吻合较好,边际误差分别为6.2%、2.8%、7.1%、4.7%、6.8%和5.6%,证明了该方法的可靠性。此外,本研究利用田口灰色关联分析(GRA)来寻找发动机的最佳工况。分析表明,发动机的最佳工作条件是27°CA bTDC, 15% ES和200 bar的IP。并在最优工况下进行了验证试验,所得结果与田口GRA实验和人工神经网络预测值更为接近。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of injection parameters, and ethanol shares for cottonseed biodiesel fuel in diesel engine utilizing artificial neural network (ANN) and taguchi grey relation analysis (GRA)
The increase of fossil fuel powered industrial processes and vehicles has resulted in the exhaustion of petroleum reserves and pollution of the environment. Because of its clean-burning, renewable, and biodegradable qualities, biodiesel is becoming more and more recognized as a potential diesel fuel alternative. The present study investigates engine performance and emission characteristics of cottonseed oil (CSBD20) and diesel blends tested on single-cylinder compression ignition engine by several injection timings, injection pressures, and ethanol shares. Performance parameters such as brake thermal efficiency (BTE), brake-specific fuel consumption (BSFC), exhaust emissions such as hydrocarbons (HC), carbon monoxide (CO), nitrogen oxides (NO x ), carbon dioxide (CO2), and smoke were considered as output factors, considering injection timing (IT), ethanol share (ES), injection pressure (IP) as input factors utilizing artificial neural network (ANN) and taguchi grey relation analysis (GRA). The ANN model accurately predicts the input-output relationships of ethanol and cottonseed biodiesel blends, as validated by experimental comparisons. The predicted values for BTE, BSFC, HC, CO, NO x , and smoke show close alignment with experimental results, with marginal errors of 6.2 %, 2.8 %, 7.1 %, 4.7 %, 6.8 %, and 5.6 %, respectively, confirming its reliability. In addition, this study utilized Taguchi grey relational analysis (GRA) to find optimum engine operating conditions. The analysis revealed that the optimal engine operating conditions were IT at 27° CA bTDC, ES at 15 %, and IP at 200 bar. Furthermore, confirmation tests are also conducted at optimum operating conditions, and the revealed values are closer to taguchi GRA experiments and ANN predicted values.
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来源期刊
CiteScore
9.10
自引率
18.20%
发文量
31
审稿时长
1 months
期刊介绍: The Journal of Non-Equilibrium Thermodynamics serves as an international publication organ for new ideas, insights and results on non-equilibrium phenomena in science, engineering and related natural systems. The central aim of the journal is to provide a bridge between science and engineering and to promote scientific exchange on a) newly observed non-equilibrium phenomena, b) analytic or numeric modeling for their interpretation, c) vanguard methods to describe non-equilibrium phenomena. Contributions should – among others – present novel approaches to analyzing, modeling and optimizing processes of engineering relevance such as transport processes of mass, momentum and energy, separation of fluid phases, reproduction of living cells, or energy conversion. The journal is particularly interested in contributions which add to the basic understanding of non-equilibrium phenomena in science and engineering, with systems of interest ranging from the macro- to the nano-level. The Journal of Non-Equilibrium Thermodynamics has recently expanded its scope to place new emphasis on theoretical and experimental investigations of non-equilibrium phenomena in thermophysical, chemical, biochemical and abstract model systems of engineering relevance. We are therefore pleased to invite submissions which present newly observed non-equilibrium phenomena, analytic or fuzzy models for their interpretation, or new methods for their description.
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