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Multi-input-layer Neural Network for Large-scale Industrial Product Quality Modeling

机译:用于大规模工业产品质量建模的多输入层神经网络

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In this paper, a new architecture of wavelet neural network with multi-input-layer is proposed and implemented for modeling a class of largescale industrial processes. Because the processes are very complicated and the number of technological parameters, which determine the final product quality, is quite large, and these parameters do not make actions at the same time but work in different procedures, the conventional feed-forward neural networks cannot model this set of problems efficiently. The network presented in this paper has several input-layers according to the sequence of work procedure in large-scale industrial production processes. The performance of such networks is analyzed and the network is applied to model the steel plate quality of continuous casting furnace and hot rolling mill. Simulation results indicate that the developed methodology is competent and has well prospects to this set of problems.
机译:本文提出了一种新的具有多输入层的小波神经网络架构,并将其实现为一类大型工业过程的建模。由于过程非常复杂,并且决定最终产品质量的工艺参数数量非常大,并且这些参数不能同时起作用,而是在不同的过程中起作用,因此传统的前馈神经网络无法建模这组问题有效。根据大规模工业生产过程中的工作流程,本文介绍的网络具有多个输入层。分析了这种网络的性能,并将该网络用于模拟连铸炉和热轧机的钢板质量。仿真结果表明,所开发的方法是有效的,并且对于这一系列问题具有良好的前景。

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