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Roll force parameter self-learning method and device

A self-learning method and self-learning technology are applied in the field of rolling force parameter self-learning method and device, which can solve the problems of low strip rolling precision and inaccurate rolling force parameter self-learning method.

Active Publication Date: 2018-07-24
SHOUGANG CORPORATION
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  • Application Information

AI Technical Summary

Problems solved by technology

In the existing technology, the self-learning method of rolling force parameters is not accurate enough, resulting in a large deviation between the model rolling force and the actual rolling force, and the rolling precision of the strip is low

Method used

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  • Roll force parameter self-learning method and device
  • Roll force parameter self-learning method and device
  • Roll force parameter self-learning method and device

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Experimental program
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Embodiment

[0055] Please refer to figure 1 , the rolling force parameter self-learning method in the first embodiment of the present invention includes:

[0056] S101: Obtain attribute parameters of the steel strip to be rolled, the attribute parameters include the thickness of the steel strip to be rolled, the width of the steel strip to be rolled, the finish rolling temperature of the steel strip to be rolled, the Describe the furnace number and flow number of the steel strip to be rolled, the rolling roll number for rolling the steel strip to be rolled, the time interval between rolling the steel strip to be rolled and rolling the last piece of steel strip;

[0057] S102: Determine the steel strip to be rolled based on the thickness of the steel strip to be rolled, the width of the steel strip to be rolled, and the finish rolling temperature of the steel strip to be rolled The first weight coefficient of the corresponding rolling model;

[0058] S103: Determine the genetic type of t...

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Abstract

The invention discloses a roll force parameter self-learning method and device for determining a roll force self-learning parameter adaptively according to attribute of strip steel and a real-time working condition and improving the rolling precision of the strip steel. The method comprises the following steps: acquiring an attribute parameter of to-be-rolled strip steel; determining a first weight coefficient of a rolling model corresponding to the to-be-rolled strip steel according to thickness, width and finish rolling temperature of the to-be-rolled strip steel; determining the hereditaryform of the to-be-rolled strip steel based on the first weight coefficient, heat number, flow number and rolling roller number of the to-be-rolled strip steel as well as time interval, with the prevision strip steel, of the to-be-rolled strip steel; if the hereditary form of the to-be-rolled strip steel is a short hereditary form, determining the roll force self-learning coefficient correspondingto the to-be-rolled strip steel with a self-learning strategy corresponding to the short hereditary form; and if the hereditary form of the to-be-rolled strip steel is a long hereditary form, determining the roll force self-learning coefficient corresponding to the to-be-rolled strip steel with a self-learning strategy corresponding to the long hereditary form.

Description

technical field [0001] The invention relates to the technical field of hot rolling, in particular to a rolling force parameter self-learning method and device. Background technique [0002] In the industrial automatic control system, the production control system of hot continuous strip steel is relatively complicated. Improving the prediction accuracy of the model in the hot strip rolling process is the goal that the automatic control technology of hot strip rolling is constantly pursuing. In order to meet the strict requirements of strip size and shape accuracy, it is becoming more and more urgent to improve the setting accuracy of rolling parameters. Rolling force is one of the most important parameters in the production process of hot strip rolling, and its calculation model is the core of the setting model of the strip hot rolling finishing mill. The product thickness control level of hot-rolled strip depends largely on the prediction accuracy of the rolling force mod...

Claims

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Application Information

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IPC IPC(8): B21B37/58
CPCB21B37/58
Inventor 郭薇张喜榜谈霖马闻宇王凤琴刘子英
Owner SHOUGANG CORPORATION
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