基于人工神经网络的内燃机非线性预测建模

N. MohanaSundaram
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引用次数: 2

摘要

人工神经网络是一种强大的数据计算模型,具有表征物理系统复杂输入输出关系的能力。此外,它们还可以执行由人脑执行的“智能”任务。本文采用Elman递归神经网络、级联前向神经网络和前馈神经网络对内燃机的非线性预测模型进行了仿真,以预测内燃机的运行参数、发动机扭矩和氧化亚氮排放。发动机的燃油率和转速参数作为输入。使用标准基准数据集训练Elman神经网络。仿真结果表明,神经网络模型可以有效地映射非线性输入输出关系。三种不同的神经网络都能映射出输入输出关系,测试结果表明Elman神经网络的性能最好。
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Non Linear Predictive Modelling for IC Engine Using Artificial Neural Network
Artificial neural networks are powerful data computational models which have the capability of representation of complex input-output relationships of physical systems. Further they could perform “intelligent” tasks that performed by the human brain. In this work a predictive nonlinear model of an internal combustion engine is simulated using Elman recurrent neural work, Cascade Forward Neural Network and a Feed Forward Neural Network to predict the operational parameters engine torque and the nitrous oxide emissions. The parameters fuel rate and speed of the engine serve as input. A standard bench mark dataset is used for training the Elman neural network. The simulations results confirm that the Neural Network models can map the nonlinear input -output relationships in an effective manner. All the three different neural networks could map the input-output relationship and the test results confirm that Elman Neural Network has the best performance.
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