Modeling and forecasting of injected fuel flow using neural network

Z. Saad, M. K. Osman, S. Omar, M. Y. Mashor
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引用次数: 1

Abstract

The aim of this research is to develop an intelligent automated online forecasting of a car fuel consumption using neural network and classified it into classes of driving style. A new online monitoring tool was developed to acquire and analyze data collected from a car for the purpose of fuel consumption modelling and forecasting. The data was transmitted via ECU Can Bus attach to the car to the automotive single board computer. The online monitoring and forecasting tools were developed by using 8-bit Single-Chip Microcontroller as a data acquisition processor. Distance, speed, revolution, fuel flow, fuel consumption and temperature transducer are taped from the experimented car to gain the information. The multilayered perceptron network trained by Levenberg-Marquardt algorithm was selected as a black box model for forecasting purposes. The input variables were taped from car sensors. The data set consists of 2000 data samples. The first 1000 data were used for training and the rest were used in validation and forecasting process. Based on the best network execution, it was found that the best MSE during validation phase is about 0.0804 produced at the 26 hidden neurons. The results of the forecasting during training obviously show that during the first 200 data series the forecasting error is quite high but after 200 data series the neural network model have a tendency to improve quickly and forecast slightly the real value of the injected fuel flow.
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喷射燃油流量的神经网络建模与预测
本研究的目的是开发一种基于神经网络的汽车油耗智能自动在线预测系统,并对其进行驾驶风格分类。开发了一种新的在线监测工具,以获取和分析从汽车收集的数据,用于燃料消耗建模和预测。数据通过连接在车上的ECU Can总线传输到车载单板计算机。采用8位单片机作为数据采集处理器,开发了在线监测预报工具。距离、速度、转数、燃油流量、油耗和温度传感器从实验车上录下来,以获取信息。采用Levenberg-Marquardt算法训练的多层感知器网络作为黑箱模型进行预测。输入变量是从汽车传感器录下来的。数据集由2000个数据样本组成。前1000个数据用于训练,其余用于验证和预测过程。基于最佳网络执行,发现26个隐藏神经元在验证阶段产生的最佳MSE约为0.0804。训练过程中的预测结果明显表明,在前200个数据序列中,神经网络模型的预测误差很大,而在200个数据序列之后,神经网络模型有快速改进的趋势,对喷射燃料流量的真实值的预测略有提高。
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