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Modelling and Prediction of Diesel Engine Performance using Relevance Vector Machine

机译:使用相关性向量机对柴油发动机性能进行建模和预测

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摘要

Diesel engines are being increasingly adopted by many car manufacturers today, yet no exact mathematical diesel engine model exists due to its highly nonlinear nature. In the current literature, black-box identification has been widely used for diesel engine modelling and many artificial neural network (ANN) based models have been developed. However, ANN has many drawbacks such as multiple local minima, user burden on selection of optimal network structure, large training data size, and over-fitting risk. To overcome these drawbacks, this article proposes to apply an emerging machine learning technique, relevance vector machine (RVM), to model and predict the diesel engine performance. The property of global optimal solution of RVM allows the model to be trained using only a few experimental data sets. In this study, the inputs of the model are engine speed, load, and cooling water temperature, while the output parameters are the brake-specific fuel consumption and the amount of exhaust emissions like nitrogen oxides and carbon dioxide. Experimental results show that the model accuracy is satisfactory even the training data is scarce. Moreover, the model accuracy is compared with that using typical ANN. Evaluation results also show that RVM is superior to typical ANN approach.
机译:如今,许多汽车制造商越来越多地采用柴油发动机,但由于其高度非线性的性质,目前还没有精确的数学柴油发动机模型。在目前的文献中,黑盒识别已被广泛用于柴油发动机建模,并且已经开发了许多基于人工神经网络(ANN)的模型。然而,ANN存在多个局部最小值、用户选择最优网络结构负担大、训练数据量大、过拟合风险等诸多弊端。为了克服这些缺点,本文建议应用一种新兴的机器学习技术,即相关性向量机(RVM)来建模和预测柴油发动机的性能。RVM的全局最优解特性允许仅使用几个实验数据集来训练模型。在这项研究中,模型的输入是发动机转速、负载和冷却水温度,而输出参数是制动特定油耗和氮氧化物和二氧化碳等废气排放量。实验结果表明,即使在训练数据稀缺的情况下,模型的准确性也令人满意。此外,还比较了模型精度与典型ANN的精度,评估结果还表明RVM优于典型的ANN方法。

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