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Identification and Expert Approach to Controlling the Cement Grinding Process Using Artificial Neural Networks and Other Non-Linear Models | IEEE Journals & Magazine | IEEE Xplore

Identification and Expert Approach to Controlling the Cement Grinding Process Using Artificial Neural Networks and Other Non-Linear Models


The study focused on investigating techniques for identifying and managing a complex cement grinding process using artificial neural networks and other non-linear models....

Abstract:

The paper involved conducting preliminary research to explore the identification and control of a multi-dimensional, non-linear, and non-stationary cement grinding proces...Show More

Abstract:

The paper involved conducting preliminary research to explore the identification and control of a multi-dimensional, non-linear, and non-stationary cement grinding process using artificial neural networks and various other non-linear models. The primary objective was to establish a precise model that accurately characterizes the functioning of the grinding system. Several model structures were employed, including NARX models based on feed-forward network, Elman, Jordan, and Layer-Recurrent Network (LRN) recurrent networks, as well as MTL (Multi-Task Learning) and traditional NARX non-linear models. It was observed that, in contrast to the linear models, the non-linear models exhibited significantly superior performance in the modeling of the system. Another notable outcome of this research is the proposal of a neurocontroller, functioning as an expert system, which can provide control signals to operators. The development and implementation of such a neurocontroller have the potential to enhance the quality, simplicity, and efficiency of cement grinding process control.
The study focused on investigating techniques for identifying and managing a complex cement grinding process using artificial neural networks and other non-linear models....
Published in: IEEE Access ( Volume: 12)
Page(s): 26364 - 26383
Date of Publication: 16 February 2024
Electronic ISSN: 2169-3536

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