首页> 外文会议>Mexican International Conference on Artificial Intelligence(MICAI 2007); 20071104-10; Aguascalientes(MX) >Sliding Mode Control of a Hydrocarbon Degradation in Biopile System Using Recurrent Neural Network Model
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Sliding Mode Control of a Hydrocarbon Degradation in Biopile System Using Recurrent Neural Network Model

机译:基于递归神经网络模型的生物堆系统中烃降解的滑模控制

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This paper proposes the use of a Recurrent Neural Network (RNN) for modeling a hydrocarbon degradation process carried out in a biopile system. The proposed RNN model represents a Kalman-like filter and it has seven inputs, five outputs and twelve neurons in the hidden layer, with global and local feedbacks. The learning algorithm is a modified version of the dynamic Backpropagation one. The obtained RNN model is simplified and used to design a Sliding Mode Control (SMC). The graphical simulation results of biopile system approximation, obtained via RNN model learning and the designed process SMC exhibited a good convergence, and precise system reference tracking.
机译:本文提出了使用递归神经网络(RNN)对在生物堆系统中进行的烃降解过程进行建模的方法。所提出的RNN模型代表了一个类似Kalman的滤波器,它在隐藏层中具有七个输入,五个输出和十二个神经元,具有全局和局部反馈。学习算法是动态反向传播算法的一种修改版本。简化所获得的RNN模型,并将其用于设计滑模控制(SMC)。通过RNN模型学习和设计的过程SMC获得的生物堆系统逼近的图形仿真结果显示出良好的收敛性和精确的系统参考跟踪。

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