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Constructive Learning Neural Network Applied To Identification And Control Of A Fuel-ethanol Fermentation Process

机译:构造学习神经网络在燃料乙醇发酵过程识别与控制中的应用

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In the present work, a constructive learning algorithm was employed to design a near-optimal one-hidden layer neural network structure that best approximates the dynamic behavior of a bioprocess. The method determines not only a proper number of hidden neurons but also the particular shape of the activation function for each node. Here, the projection pursuit technique was applied in association with the optimization of the solvability condition, giving rise to a more efficient and accurate computational learning algorithm. As each activation function of a hidden neuron is defined according to the peculiarities of each approximation problem, better rates of convergence are achieved, guiding to parsimonious neural network architectures. The proposed constructive learning algorithm was successfully applied to identify a MIMO bioprocess, providing a multivariable model that was able to describe the complex process dynamics, even in long-range horizon predictions. The resulting identification model was considered as part of a model-based predictive control strategy, producing high-quality performance in closed-loop experiments.
机译:在目前的工作中,采用了建设性的学习算法来设计一种最接近生物过程动态行为的最佳近隐层神经网络结构。该方法不仅确定适当数量的隐藏神经元,而且还确定每个节点的激活函数的特定形状。在这里,将投影追踪技术与可溶性条件的优化结合起来应用,从而产生了一种更有效,更准确的计算学习算法。由于根据每个逼近问题的特殊性来定义隐藏神经元的每个激活函数,因此可以实现更高的收敛速度,从而可以指导简化的神经网络体系结构。所提出的建设性学习算法已成功应用于识别MIMO生物过程,从而提供了即使在远程水平预测中也能够描述复杂过程动力学的多变量模型。最终的识别模型被视为基于模型的预测控制策略的一部分,从而在闭环实验中产生了高质量的性能。

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