Parameter sensitivity analysis for diesel spray penetration prediction based on GA-BP neural network

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2024-11-05 DOI:10.1016/j.egyai.2024.100443
Yifei Zhang , Gengxin Zhang , Dawei Wu , Qian Wang , Ebrahim Nadimi , Penghua Shi , Hongming Xu
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Abstract

Machine learning has started to be used in engine research to optimize combustion and predict fuel spray characteristics. This paper presents the development of a machine learning model using a Genetic Algorithm-Backpropagation (GA-BP) neural network to predict spray penetration. The GA-BP neural network was selected for its ability to optimize neural network weights and thresholds, thereby improving model convergence and avoiding local minima, which are common challenges in complex, non-linear problems such as spray prediction. The model was trained using experimental data from diesel injector spray tests, and its accuracy was evaluated through parametric sensitivity analysis, examining the influence of various input factors. A comparison between the machine learning model and the traditional empirical formulas of spray penetration revealed that the machine learning model achieved greater accuracy. In terms of the sensitivity to inputs, it is interesting to find that the cognition of machines is different from that of humans. When an input parameter does not have any functional relationship with other input parameters, the absence of this input parameter will lead to a significant decrease in the accuracy of the output result. The results demonstrate that the machine learning approach offers higher accuracy and better generalizability compared to traditional empirical methods. This study recommends the ways to get better results of penetration prediction with BP neural networks, which is efficient in training and utilizing Artificial Neural Networks (ANNs).

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基于 GA-BP 神经网络的柴油机喷雾渗透率预测参数敏感性分析
机器学习已开始用于发动机研究,以优化燃烧和预测燃料喷射特性。本文介绍了利用遗传算法-反向传播(GA-BP)神经网络开发的机器学习模型,用于预测喷射穿透性。之所以选择 GA-BP 神经网络,是因为它能够优化神经网络权重和阈值,从而提高模型的收敛性并避免局部最小值,而局部最小值是喷雾预测等复杂非线性问题中常见的难题。利用柴油喷射器喷雾测试的实验数据对模型进行了训练,并通过参数敏感性分析评估了模型的准确性,检查了各种输入因素的影响。通过比较机器学习模型和传统的喷雾渗透经验公式,发现机器学习模型的准确性更高。在对输入的敏感性方面,有趣的是,机器的认知与人类不同。当一个输入参数与其他输入参数没有任何功能关系时,缺少这个输入参数将导致输出结果的准确性大大降低。结果表明,与传统的经验方法相比,机器学习方法具有更高的准确性和更好的普适性。本研究推荐了利用 BP 神经网络获得更好的渗透预测结果的方法,该方法可有效地训练和利用人工神经网络(ANN)。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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