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SCR CONTROL SYSTEM DESIGN BASED ON ON-LINE RADIAL BASIS FUNCTION AND BACKPROPAGATION NEURAL NETWORKS

机译:SCR控制系统设计基于在线径向基函数和BackProjagation神经网络

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Because of its high NO_x reduction efficiency, selective catalyst reduction (SCR) has become an indispensable part of diesel vehicle aftertreatment. This paper presents a control strategy for SCR systems that is based on an on-line radial basis function neural network (RBFNN) and an on-line backpropagation neural network (BPNN). In this control structure, the radial basis function neural network is employed as an estimator to provide Jacobian information for the controller; and the backpropagation neural network is utilized as a controller, which dictates the appropriate urea-solution to be injected into the SCR system. This design is tested by simulations based in Gamma Technologies software (GT-ISE) as well as MATLAB Simulink. The results show that the RBF-BPNN control technique achieves a 1 - 5% higher NO_x reduction efficiency than a PID controller.
机译:由于其高NO_X降低效率,减少选择性催化剂(SCR)已成为柴油机后处理的不可缺少的一部分。本文介绍了基于在线径向基函数神经网络(RBFNN)和在线背交神经网络(BPNN)的SCR系统的控制策略。在该控制结构中,采用径向基函数神经网络作为估计器,为控制器提供雅各比比信息;并且BackProjagation神经网络用作控制器,其决定要注入SCR系统的适当尿素解决方案。该设计是通过基于伽马技术软件(GT-ISE)以及Matlab Simulink的模拟测试。结果表明,RBF-BPNN控制技术比PID控制器达到1 - 5%的NO_X降低效率。

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