神经网络范例中BP和GRNN模型的性能比较与实际工业应用

F. Frost, V. Karri
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引用次数: 18

摘要

在动态的工业环境中,越来越需要应用新兴技术来实现工艺改进。特别是,过程控制作为一个制造领域越来越受欢迎,可以使用神经网络显着增强。首先,神经网络提供了一种技术,它有能力对过程行为进行建模,而不需要先验的过程知识,也不需要复杂的计算来对过程进行数学建模。本文特别关注两种特定的网络:反向传播(BP)和广义回归神经网络(GRNN)模型。通过铝冶炼行业的实际应用,对两种模型的预测精度进行了评价。铝熔炼过程的动态特性使其非常适合于神经网络建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance comparison of BP and GRNN models of the neural network paradigm using a practical industrial application
There is an increasing need to apply emerging technologies to achieve process improvements in a dynamic industrial environment. In particular, process control is increasingly popular as an area of manufacturing that can be significantly enhanced using neural networks. Neural networks offer a technology that has the capability, in the first instance, to model process behaviour without a-priori knowledge of the process or the need for complex calculations to model the process mathematically. This paper focuses on two particular networks in particular: backpropagation (BP) and general regression neural network (GRNN) models. As a measure of the performance of these two models, prediction accuracy is evaluated using a practical application in the aluminium smelting industry. The dynamic behaviour of aluminium smelting makes the particular application well-suited to neural network modelling.
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