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Model structure determination in neural network models

机译:神经网络模型中的模型结构确定

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Feedforward neural networks (FNN) have been used intensively for the identification and control of chemical engineering processes. However, there is no efficient model structure determination methodology for a particular mapping application. This has resulted in a tendency to use networks that are much larger than required. In this paper a new procedure for model structure determination in feedforward neural networks is proposed. This procedure is based on network pruning using the orthogonal least-squares technique to determine insignificant or redundant synaptic weights, biases, hidden nodes and network inputs. The advantages of this approach are discussed and illustrated using simulated and experimental data. The results show that the orthogonal least-squares technique is quite efficient in determining the significant elements on the neural network models. The results also show the importance of pruning procedures to identify parsimonious FNN models. (C) 2000 Elsevier Science Ltd. All rights reserved. [References: 21]
机译:前馈神经网络(FNN)已广泛用于化学工程过程的识别和控制。但是,没有针对特定地图绘制应用程序的有效模型结构确定方法。这导致倾向于使用比要求的网络大得多的网络。本文提出了一种前馈神经网络模型确定的新方法。该过程基于使用正交最小二乘技术的网络修剪,以确定无关紧要或多余的突触权重,偏差,隐藏节点和网络输入。使用模拟和实验数据讨论并说明了此方法的优点。结果表明,正交最小二乘法在确定神经网络模型中的重要元素方面非常有效。结果还显示了修剪程序对识别简约FNN模型的重要性。 (C)2000 Elsevier ScienceLtd。保留所有权利。 [参考:21]

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