Predictive modeling of specific fuel consumption in compression ignition engines using neural networks: A comparative analysis across diesel and polymer-based fuels

Maulik A. Modi, Tushar M. Patel
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Abstract

The study utilized neural network modeling to forecast the fuel consumption in compression ignition engines fueled by diesel, HDPE PO, PP PO, and LDPE PO. Using empirical data, a Neural Network model was constructed and used to estimate specific fuel consumption (SFC). Employing orthogonal arrays and parameter adjustments ensured accurate prediction of SFC, which was validated through experimentation. The multilayer perception network coupled with traditional backpropagation facilitates the nonlinear mapping of inputs to outcomes. In the LM10TP architecture, the key metrics from the training set included an impressive R-squared value of 1, indicating a perfect fit with a root mean square error (RMSE) of 0.0012 and a mean square error (MSE) of 1.5143E-06. Similarly, the validation set exhibited robust performance metrics with an R-squared value of 0.9999, RMSE of 0.0011, and MSE of 1.2185E-06. These metrics underscore the efficacy of neural networks in both the training and validation phases, affirming their utility as reliable predictive tools for SFC. Overall, this study highlights the effectiveness of neural network modeling for accurately predicting fuel consumption in compression ignition engines across diesel and polymer-based fuels. By leveraging empirical data and sophisticated modeling techniques, this study contributes to advancing the predictive capabilities in the field, offering valuable insights for optimizing engine performance and fuel efficiency.
利用神经网络建立压燃式发动机特定燃料消耗量的预测模型:柴油和聚合物燃料的比较分析
该研究利用神经网络建模来预测以柴油、高密度聚乙烯聚丙烯、聚丙烯聚丙烯和低密度聚乙烯聚丙烯为燃料的压燃式发动机的燃料消耗量。利用经验数据,构建了一个神经网络模型,用于估算特定燃料消耗量(SFC)。采用正交阵列和参数调整确保了对 SFC 的准确预测,并通过实验进行了验证。多层感知网络与传统的反向传播相结合,促进了输入到结果的非线性映射。在 LM10TP 架构中,训练集的关键指标包括令人印象深刻的 1 R 平方值,表明其完美拟合,均方根误差 (RMSE) 为 0.0012,均方误差 (MSE) 为 1.5143E-06。同样,验证集也表现出强劲的性能指标,R 方值为 0.9999,RMSE 为 0.0011,MSE 为 1.2185E-06。这些指标强调了神经网络在训练和验证阶段的功效,肯定了其作为 SFC 可靠预测工具的实用性。总之,本研究强调了神经网络建模在准确预测柴油和聚合物燃料压燃式发动机油耗方面的有效性。通过利用经验数据和复杂的建模技术,本研究有助于提高该领域的预测能力,为优化发动机性能和燃油效率提供有价值的见解。
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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