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An Online Self-Adapting Control Approach for Bell Annealers

An Online Self-Adapting Control Approach for Bell Annealers
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摘要 A suit of online self-adapting control (OSAC) approach has been developed to predict and optimize annealing craft system. The approach consists of three critical parts including prediction module, self-adapting optimization module, and self-learning amendment module. Firstly, the prediction module and self- adapting optimization module are based on the modeling methods. The self-adapting optimization module consists of two parts including "reappearance of annealed process" and "optimization of subsequent annealing process". Secondly, the self-learning amendment module, based on furnace atmosphere, equipment performance, and compensation coefficients, is designed to improve the accuracy of optimization results. The results obtained from the proposed approach, usually finished in about 3 min, are in good agreement with the test values, such as the deviation of temperature for hot-spot and cold-spot are within 10 K, the relative errors are within 1.1%, and the accuracy of annealing for heating period is increased by using self-learning amendment module. A suit of online self-adapting control (OSAC) approach has been developed to predict and optimize annealing craft system. The approach consists of three critical parts including prediction module, self-adapting optimization module, and self-learning amendment module. Firstly, the prediction module and self- adapting optimization module are based on the modeling methods. The self-adapting optimization module consists of two parts including "reappearance of annealed process" and "optimization of subsequent annealing process". Secondly, the self-learning amendment module, based on furnace atmosphere, equipment performance, and compensation coefficients, is designed to improve the accuracy of optimization results. The results obtained from the proposed approach, usually finished in about 3 min, are in good agreement with the test values, such as the deviation of temperature for hot-spot and cold-spot are within 10 K, the relative errors are within 1.1%, and the accuracy of annealing for heating period is increased by using self-learning amendment module.
出处 《Wuhan University Journal of Natural Sciences》 CAS 2009年第5期419-424,共6页 武汉大学学报(自然科学英文版)
基金 Supported by the Specialized Research Project of WuhanIron and Steel Corporation (20050038)
关键词 bell annealer self-adapting optimization annealing craft system modeling method process control bell annealer self-adapting optimization annealing craft system modeling method process control
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参考文献11

  • 1X. Zhang,F. Yu,W. Wu,Y. Zuo.Application of Radial Effective Thermal Conductivity for Heat Transfer Model of Steel Coils in HPH Furnace[J].International Journal of Thermophysics.2003(5)
  • 2Pal D,,Datta A,Sahay S S.An Efficient Model for Batch An- nealing Using a Neural Network[].Materials and Manufac- turing Processes.2006
  • 3Mehta R,Sahay S S,Datta A.Neural Network Models for Industrial Batch Annealing Operation[].Materials and Manufacturing Processes.2008
  • 4Wu Wenfei,Yu Fan,Zhang Xinxin, et al.Mathematical Model and Its Application of Radial Effective Thermal Con- ductivity for Coil Heat Transfer in HPH Furnace[].Journal of Thermoelectricity.2000
  • 5Lin Lin.Study of Annealing Thermal Process in High Per- formance Hydrogen Bell-type Annealing Furnace[]..2003
  • 6Mizikar E A,Bresky N P,Veitch R A.Improved Method for Calculation Soaking Times in Batch Annealing[].Iron and Steel Engineer.1972
  • 7Harvey G F.Mathematical Simulation of Tight Coil Anneal- ing[].Journal of the Australasian Institute of Metals.1977
  • 8Lewis R M.Tight Coil Annealing Process Modeling andDevelopment[].BHP Technical Bulletin.1981
  • 9Sterling D A.Distributed Control of Batch Annealing Using Coil Interior Temperature Prediction[].Third Conference on Control Engineering.1986
  • 10Fouarge A,Chefneux L,Cambier M.Modelling and Opti- mized Control of the Batch Annealing Process[].Revue de Metallurgie Cahiers information Techniques.1995

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