Numerical optimization of transverse flux induction heating systems

E. Mannanov, S. Galunin, K. Blinov
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引用次数: 6

Abstract

Transverse flux induction heating (TFH) of flat metal products is one of the most effective induction technologies. This method provides very high efficiency in combination with unique technological flexibility and extremely low floor space required. It makes TFH beyond competition to be applied in continuous strip production and processing lines. However, to realise all potential advantages of TFH concept is possible only by optimal design and control of heating installations. Experience of last years shows that successful creation of TFH systems can be only based on numerical modelling. At the same time even advanced 3D simulation codes do not provide exactable engineering solution by themselves. Additional application of automatic optimisation techniques is only the way to overcome this situation. This paper is devoted to application of most effective optimisation algorithms for atomised design of TFH systems. Genetic algorithms of optimisation are more and more often used in engineering science because of their unique possibilities. Use of genetic algorithms in combination with 3D electromagnetic and thermal analysis of TFH systems allows to make optimal 3D shape design of inductors. This problem can not be solved in effective way by conventional design methods.
横向磁通感应加热系统的数值优化
平板金属制品的横向磁通感应加热(TFH)是一种最有效的感应技术。这种方法结合了独特的技术灵活性和极低的占地面积,提供了非常高的效率。使TFH在连续带材生产加工生产线上的应用具有无可比拟的优势。然而,要实现TFH概念的所有潜在优势,只有通过优化设计和控制加热装置。过去几年的经验表明,成功地建立TFH系统只能基于数值模拟。同时,即使是先进的三维仿真代码本身也不能提供精确的工程解决方案。自动优化技术的额外应用是克服这种情况的唯一途径。本文研究了最有效的优化算法在TFH系统雾化设计中的应用。遗传优化算法由于其独特的可能性在工程科学中得到越来越多的应用。利用遗传算法结合三维电磁和热分析的TFH系统允许使电感器的最佳三维形状设计。传统的设计方法无法有效地解决这一问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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