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Successive approximate model based multi-objective optimization for an industrial straight grate iron ore induration process using evolutionary algorithm

机译:基于进化算法的连续近似模型多目标优化工业直rate铁矿石硬化工艺

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摘要

Multi-objective optimization of any complex industrial process using first principle computationally expensive models often demands a substantially higher computation time for evolutionary algorithms making it less amenable for real time implementation. A combination of the above-mentioned first principle model and approximate models based on artificial neural network (ANN) successively learnt in due course of optimization using the data obtained from first principle models can be intelligently used for function evaluation and thereby reduce the aforementioned computational burden to a large extent. In this work, a multi-objective optimization task (simultaneous maximization of throughput and Tumble index) of an industrial iron ore induration process has been studied to improve the operation of the process using the above-mentioned metamodeling approach. Different pressure and temperature values at different points of the furnace bed, grate speed and bed height have been used as decision variables whereas the bounds on cold compression strength, abrasion index, maximum pellet temperature and burn-through point temperature have been treated as constraints. A popular evolutionary multi-objective algorithm, NSGA II, amalgamated with the first principle model of the induration process and its successively improving approximation model based on ANN, has been adopted to carry out the task. The optimization results show that as compared to the PO solutions obtained using only the first principle model, similar or better quality PO solutions can be achieved by this metamodeling procedure with a close to 50% savings in function evaluation and thereby computation time and by keeping the total number of function evaluations same, better quality PO solutions can be obtained.
机译:使用第一原理计算昂贵的模型对任何复杂的工业过程进行多目标优化,对于进化算法通常需要实质上更高的计算时间,从而使其更不适合实时实施。可以将上述第一原理模型和基于人工神经网络(ANN)的近似模型相结合,在适当的优化过程中使用从第一原理模型获得的数据进行优化,从而可以智能地进行功能评估,从而减轻上述计算负担很大程度上来说。在这项工作中,已经研究了工业铁矿石硬化工艺的多目标优化任务(生产量和翻滚指数的同时最大化),以使用上述元建模方法来改善工艺操作。炉床不同点的不同压力和温度值,炉排速度和床层高度已被用作决策变量,而冷抗压强度,磨损指数,最高颗粒温度和烧穿点温度的界限已被视为约束条件。采用了流行的进化多目标算法NSGA II,该算法与硬化过程的第一个原理模型及其基于ANN的逐次改进的近似模型相结合,以完成任务。优化结果表明,与仅使用第一个原理模型获得的PO解决方案相比,通过此元建模过程,可以实现相似或更好质量的PO解决方案,在功能评估和计算时间上节省了近50%,并通过保持功能评估的总数相同,可以获得质量更好的PO解决方案。

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