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Introduction

  • Min WuEmail author
  • Weihua Cao
  • Xin Chen
  • Jinhua She
Chapter
Part of the Engineering Applications of Computational Methods book series (EACM, volume 3)

Abstract

The iron and steel industry is the base for the development of national economy. It directly influences the industries of construction, machinery, shipbuilding, automobile, household electrical appliances, etc. The complexity and large uncertainties of the processes in the iron and steel industry make it difficult to establish accurate mathematical models and to control the processes using conventional control methods. On the other hand, since intelligent control does not require an accurate mathematics model, and its control algorithm has self-learning and adaptive ability, this control method is playing an increasingly important role in the iron and steel industry.

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Copyright information

© Science Press 2020

Authors and Affiliations

  1. 1.China University of GeosciencesWuhanChina
  2. 2.Hubei Key Laboratory of Advanced Control and Intelligent Automation for Complex SystemsWuhanChina
  3. 3.School of EngineeringTokyo University of TechnologyTokyoJapan

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