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Neural Network-Based Diesel Engine Emissions Prediction for Variable Injection Timing, Injection Pressure, Compression Ratio and Load Conditions

机译:基于神经网络的柴油机排放预测,用于可变喷射正时,喷射压力,压缩比和负载条件

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The present study investigates the use of artificial neural network modelling for prediction of emission parameters of a four stroke single cylinder variable compression ratio diesel engine. ANN model was developed to predict emissions namely CO, NO_X and HC. Emission data was collected by conducting experiments by varying compression ratio, Injection time, and injection pressure in four steps and load in five steps. Two training algorithms traingd and trainlm with hidden nodes varying from 3 to 20 in step of one were developed and trained. Best network from 36 networks was selected based on MSE, regression coefficients for training, validation, testing and correlation coefficient for prediction of unseen data. The best model was found to be Levenberg-Marquardt algorithm with 17 neurons and regression coefficients for training, validation and testing are 0.99628, 0.99561, 0.99472 and 0.99577 respectively. The correlation coefficient R for training data is 0.99643 and for unseen data is 0.99322. The regression coefficients for prediction of training sets of CO, NO_X and HC are 0.99643, 0.99486 and 0.99601 respectively. The average % error for prediction of CO, NO_X and HC are -0.16178, -0.38814 and 0.7459 respectively which are less than 1. It is found that artificial neural networks serve as an excellent tool for prediction of emissions from diesel engine under variable operating and design parameters.
机译:本研究调查了使用人工神经网络模型预测四冲程单缸可变压缩比柴油机的排放参数。建立了ANN模型以预测排放量,即CO,NO_X和HC。通过进行实验来收集排放数据,方法是分四步改变压缩比,注入时间和注入压力,分五步加载。开发并训练了两种训练算法,即训练算法和训练算法,其中隐藏节点的大小从3变到20。根据MSE,用于训练,验证,测试的回归系数和用于预测看不见数据的相关系数,从36个网络中选择最佳网络。发现最佳模型是具有17个神经元的Levenberg-Marquardt算法,用于训练,验证和测试的回归系数分别为0.99628、0.99561、0.99472和0.99577。训练数据的相关系数R为0.99643,看不见的数据的相关系数为0.99322。用于预测CO,NO_X和HC训练集的回归系数分别为0.99643、0.99486和0.99601。预测CO,NO_X和HC的平均误差百分比分别为-0.16178,-0.38814和0.7459,均小于1。发现,人工神经网络可以作为预测柴油机排放变量的理想工具。设计参数。

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