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A data-driven optimal control approach for solution purification process

机译:解决方案净化过程的数据驱动最优控制方法

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Solution purification holds a critical position in hydrometallurgy. With its inherent complexity and the mixed raw material supply, solution purification process exhibits various working conditions, and has nonlinear, time-varying dynamics. At current stage, a comprehensive and precise model of a solution purification process is still costly to obtain. More specifically, the model structure could be derived by applying physical and chemical principles, while the accurate model parameters cannot be obtained under certain working conditions due to reasons like insufficient data samples. This, in turn, introduces obstacles in achieving the optimal operation. In order to circumvent the modeling difficulty, this paper proposes a 'Process State Space' descriptive system to re-describe the optimal control problem of solution purification process, accordingly establishes a two-layer receding horizon framework for developing a data-driven optimal control of solution purification process. In the optimal control scheme, on the 'optimization' layer, by utilizing the 'multiple-reactors' characteristic of solution purification process, a 'gradient' optimization strategy is proposed to transform the dosage minimization problem into obtaining the optimal variation gradient of the outlet impurity concentrations along the reactors. On the 'control' layer, a model-free input constrained adaptive dynamic programming algorithm is devised and applied to calculate the optimal dosages for each reactor by learning from the real-time production data. Case studies are performed to illustrate the effectiveness and efficiency of the proposed approach. The results and problems need future research are also discussed. (C) 2018 Elsevier Ltd. All rights reserved.
机译:溶液纯化在氢晶冶金中保持着临界位置。凭借其固有的复杂性和混合原料供应,溶液净化过程具有各种工作条件,具有非线性,时变动力学。在当前阶段,溶液纯化过程的全面和精确模型仍然昂贵。更具体地,可以通过应用物理和化学原理来导出模型结构,而由于数据样本不足的原因,在某些工作条件下不能获得精确的模型参数。反过来,这介绍了实现最佳操作的障碍。为了规避建模难度,本文提出了一种“过程状态空间”描述性系统来重新描述解决方案净化过程的最佳控制问题,因此建立了一种用于开发数据驱动的最佳控制的双层后退地平线框架溶液纯化过程。在最佳控制方案中,在“优化”层上,通过利用溶液净化过程的“多反应器”特征,提出了“梯度”优化策略,以将剂量最小化问题转换为出口的最佳变化梯度。沿反应器杂质浓度。在“控制”层上,设计了一种无模型输入约束的自适应动态编程算法,并应用通过从实时生产数据学习来计算每个反应器的最佳剂量。进行案例研究以说明所提出的方法的有效性和效率。结果和问题还需要未来的研究。 (c)2018年elestvier有限公司保留所有权利。

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