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Cylinder pressure reconstruction based on complex radial basis function networks from vibration and speed signals

机译:基于振动和速度信号的基于复杂径向基函数网络的气缸压力重构

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Methods to measure and monitor the cylinder pressure in internal combustion engines can contribute to reduced fuel consumption, noise and exhaust emissions. As direct measurements of the cylinder pressure are expensive and not suitable for measurements in vehicles on the road indirect methods which measure cylinder pressure have great potential value. In this paper, a non-linear model based on complex radial basis function (RBF) networks is proposed for the reconstruction of in-cylinder pressure pulse waveforms. Input to the network is the Fourier transforms of both engine structure vibration and crankshaft speed fluctuation. The primary reason for the use of Fourier transforms is that different frequency regions of the signals are used for the reconstruction process. This approach also makes it easier to reduce the amount of information that is used as input to the RBF network. The complex RBF network was applied to measurements from a 6-cylinder ethanol powered diesel engine over a wide range of running conditions. Prediction accuracy was validated by comparing a number of parameters between the measured and predicted cylinder pressure waveform such as maximum pressure, maximum rate of pressure rise and indicated mean effective pressure. The performance of the network was also evaluated for a number of untrained running conditions that differ both in speed and load from the trained ones. The results for the validation set were comparable to the trained conditions.
机译:测量和监控内燃机气缸压力的方法可有助于减少燃油消耗,噪音和废气排放。由于气缸压力的直接测量是昂贵的,并且不适合在道路上的车辆中测量,因此测量气缸压力的间接方法具有很大的潜在价值。本文提出了一种基于复径向基函数(RBF)网络的非线性模型,用于缸内压力脉冲波形的重建。网络的输入是发动机结构振动和曲轴速度波动的傅立叶变换。使用傅里叶变换的主要原因是信号的不同频率区域被用于重建过程。这种方法还使减少用作RBF网络输入的信息量变得更加容易。复杂的RBF网络被用于在广泛的运行条件下从6缸乙醇动力柴油发动机进行的测量。通过比较测得的气缸压力波形和预测的气缸压力波形中的许多参数(例如最大压力,最大升压速率和指示的平均有效压力)来验证预测准确性。还评估了网络的性能,以评估许多未经训练的运行条件,这些条件在速度和负载上均与受训练的条件不同。验证集的结果与训练条件相当。

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