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Input and Structure Choices of Neural Networks on the Fuel Flow Rate Prediction in the Transient Operation Condition

机译:暂态工况下燃油流量预测的神经网络输入和结构选择

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Measurement accuracy and repeatability for fuel rate is the key to successfully improve fuel economy of diesel engines as fuel economy could only be achieve by precisely controlling air/fuel ratio and monitor real-time fuel consumption. The volumetric and gravimetric measurement principles are well-known methods to measure the fuel consumption of internal combustion engines. However, the fuel flow rate measured by these methods is not suitable for either real-time control or real-time measurement purposes. The problem concerning discontinuous data of fuel flow rate measured by using an AVL 733s fuel meter was solved for the steady state scenario by using neural networks. It is easier to choose inputs of the neural networks for the steady state scenario because the inputs could be chosen as the particular inputs which excited the system in the application. But for transient scenario, such as the NRTC cycle, it will be difficult to choose inputs as there are no excited inputs that could be chosen. This paper attempts to solve the problem of the input choice for the transient state. This paper illustrates input choices to catch fast and slow dynamics using both phenomenon models and principal component analysis (PCA) and demonstrates a comprehensive and detailed black-box modelling technique for engine applications in the transient condition. A non road transient cycle (NRTC) is used for system identification. Different neural network structures are compared among feed-forward NN, feed-forward NN with delays and non-linear autoregressive model with exogenous inputs (NLARX). The NLARX is the best structure for fuel flow rate prediction in the transient operation of the engine. It is shown that the input choice is reasonable and could be proved by both theory and simulation results. This paper shows that using chosen the inputs, NLARX could predict fuel flow rate accurately with R-square above 0.99.
机译:燃油费率的测量准确性和可重复性是成功改善柴油机燃油经济性的关键,因为只有通过精确控制空燃比和监控实时燃油消耗才能实现燃油经济性。体积和重量测量原理是用于测量内燃机的燃料消耗的公知方法。但是,通过这些方法测得的燃油流速既不适合实时控制,也不适合实时测量。通过使用神经网络解决了稳态情况下有关使用AVL 733s燃油表测量的燃油流量不连续数据的问题。对于稳态场景,选择神经网络的输入更为容易,因为可以将输入选择为特定的输入,从而激发应用程序中的系统。但是对于瞬态情况,例如NRTC周期,将很难选择输入,因为没有可以选择的激励输入。本文试图解决瞬态输入选择的问题。本文说明了使用现象模型和主成分分析(PCA)来捕捉快速和慢速动力的输入选择,并演示了用于瞬态工况的发动机的全面而详细的黑匣子建模技术。非道路瞬变周期(NRTC)用于系统识别。比较了前馈NN,带延迟的前馈NN和具有外源输入的非线性自回归模型(NLARX)之间的不同神经网络结构。 NLARX是在发动机瞬态运行中预测燃料流量的最佳结构。结果表明,输入选择是合理的,理论和仿真结果均可证明。本文表明,使用选定的输入,NLARX可以在R平方高于0.99的情况下准确预测燃料流量。

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