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首页> 外文期刊>Materials and Manufacturing Processes >Multiobjective Pareto Optimization of an Industrial Straight Grate Iron Ore Induration Process Using an Evolutionary Algorithm
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Multiobjective Pareto Optimization of an Industrial Straight Grate Iron Ore Induration Process Using an Evolutionary Algorithm

机译:基于进化算法的工业直G矿铁精矿多目标帕累托优化

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Multiobjective optimization of an industrial straight grate iron ore induration process is carried out in this study using an evolutionary algorithm. A simultaneous maximization of throughput and pellet quality indices like cold compression strength (CCS) and Tumbler index (TI) is adopted for this purpose, which leads to an improved optimal control of the induration process as compared to the conventional practice of controlling the process based on burn-through point (BTP) temperature. Discretized pressure and temperature profiles, grate speed, and bed height are used as decision variables whereas the bounds on CCS, abrasion index (AI), maximum pellet temperature, and BTP temperature are treated as constraints. The optimization results show that it may be possible to achieve significant improvement in the throughput with similar TI values and without violating any operational constraints. Commonality among decision variables corresponding to various Pareto optimal (PO) solutions obtained as a result of this multiobjective optimization study helps in unveiling the embedded relationship amongst them, which, in turn, can reveal the operating principles of running the process in an optimal fashion. The methodology is quite generic in nature and can be adopted for similar processes. The results of this optimization exercise can be used as a set of operating target points for the underlying model based predictive control algorithms to control and optimize the process.
机译:本研究使用进化算法对工业直炉g铁矿石硬化过程进行多目标优化。为此,采用了产量和粒料质量指标(例如冷抗压强度(CCS)和不倒翁指数(TI))的同时最大化,与传统的基于工艺控制工艺的实践相比,该工艺改善了对硬结工艺的最佳控制烧穿点(BTP)温度。离散的压力和温度曲线,炉排速度和床高用作决策变量,而CCS,磨耗指数(AI),最大颗粒温度和BTP温度的界限则作为约束条件。优化结果表明,在相似的TI值下并且不违反任何操作约束的情况下,可以显着提高吞吐量。这项多目标优化研究的结果是,与各种帕累托最优(PO)解决方案相对应的决策变量之间的共性,有助于揭示它们之间的内在联系,进而可以揭示以最优方式运行流程的操作原理。该方法本质上是非常通用的,可以用于类似的过程。该优化练习的结果可用作基于基础模型的预测控制算法的一组操作目标点,以控制和优化过程。

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