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Prediction of automotive engine power and torque using least squares support vector machines and Bayesian inference

机译:使用最小二乘支持向量机和贝叶斯推理预测汽车发动机的功率和扭矩

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摘要

Automotive engine power and torque are significantly affected with effective tune-up. Current practice of engine tune-up relies on the experience of the automotive engineer. The engine tune-up is usually done by trial-and-error method, and then the vehicle engine is run on the dynamometer to show the actual engine output power and torque. Obviously, the current practice costs a large amount of time and money, and may even fail to tune up the engine optimally because a formal power and torque model of the engine has not been determined yet. With an emerging technique, least squares support vector machines (LS-SVM), the approximated power and torque model of a vehicle engine can be determined by training the sample data acquired from the dynamometer. The number of dynamometer tests for an engine tune-up can therefore be reduced because the estimated engine power and torque functions can replace the dynamometer tests to a certain extent. Besides, Bayesian framework is also applied to infer the hyperparameters used in LS-SVM so as to eliminate the work of cross-validation, and this leads to a significant reduction in training time. In this paper, the construction, validation and accuracy of the functions are discussed. The study shows that the predicted results using the estimated model from LS-SVM are good agreement with the actual test results. To illustrate the significance of the LS-SVM methodology, the results are also compared with that regressed using a multilayer feed forward neural networks.
机译:有效的调整会严重影响汽车发动机的功率和扭矩。发动机调校的当前实践依赖于汽车工程师的经验。发动机的调试通常是通过反复试验的方法进行的,然后在测功机上运行车辆发动机,以显示实际的发动机输出功率和扭矩。显然,当前的实践花费大量时间和金钱,并且由于尚未确定发动机的正式功率和扭矩模型,甚至可能无法最优地调节发动机。使用新兴的最小二乘支持向量机(LS-SVM),可以通过训练从测功机获取的样本数据来确定车辆发动机的近似功率和扭矩模型。由于估计的发动机功率和扭矩功能可以在一定程度上替代测功机测试,因此可以减少用于发动机调试的测功机测试的次数。此外,贝叶斯框架还被用于推断用于LS-SVM的超参数,从而消除了交叉验证的工作,从而显着减少了训练时间。本文讨论了函数的构造,验证和准确性。研究表明,使用LS-SVM的估计模型进行的预测结果与实际测试结果吻合良好。为了说明LS-SVM方法的重要性,还将结果与使用多层前馈神经网络的回归结果进行了比较。

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