Design Exploration for Determining the Set Points of Continuous Casting Operation: An Industrial Application
Author:
Shukla Rishabh1, Goyal Sharad1, Singh Amarendra K.1, Panchal Jitesh H.2, Allen Janet K.3, Mistree Farrokh3
Affiliation:
1. Tata Consultancy Services, Pune 411013, India e-mail: 2. School of Mechanical Engineering, Purdue University, West Lafayette, IN 47907 e-mail: 3. The Systems Realization Laboratory @ OU, The University of Oklahoma, Norman, OK 73019 e-mail:
Abstract
To compete with other materials and/or contribute toward light-weighting of vehicles, newer grades of steel are continuously invented and experimented upon. Due to the costs and time involved in such developments, manufacture of new grades of steel at an industrial scale is difficult. We propose a method that is useful for steel manufacturers interested in producing a steel product mix with new grades of steels by predicting the required change in the operating set points of each unit operation in the manufacturing chain of products with the new grade of steel. Here, we demonstrate a method to determine the set points of one unit operation, continuous casting which is measured in terms of conflicting objectives including productivity, quality, and production costs. These parameters are sensitive to the operating set points of casting speed, superheat, mold oscillation frequency, and secondary cooling conditions. To ensure targeted performance and address the challenges of uncertainty and conflicting objectives, an integrated computational method based on surrogate models and the compromise decision support problem (cDSP) is presented. The method is used to explore the design space available for casting operations and determine operating set points to meet requirements imposed on the caster from subsequent downstream processes. This method is of value to the steel industry and enables the rapid and cost effective production of a product mix with a new grade of steel.
Publisher
ASME International
Subject
Industrial and Manufacturing Engineering,Computer Science Applications,Mechanical Engineering,Control and Systems Engineering
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