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Nonlinear Model Predictive Control of Industrial Grinding Circuits using Machine Learning

机译:机器学习工业磨削电路的非线性模型预测控制

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Control problems of engineering interest such as industrial grinding circuit (IGC) are essential for minimizing the energy consumption, maximizing throughput or maintaining product quality to make these processes energy sustainable in future. Detailed physics based models, although provide more insight into the process and yield accurate results, often cannot be used for control purposes owing to the high computational time involved in solving the complicated mass, momentum, energy balance equations used to describe the process. In the current study, the aim is to use optimally designed Recurrent Neural Networks, a type of data-based modeling technique popularly used in the machine learning domain, for modeling transients involved in the IGC and test its effectiveness in set point (SP) tracking under the nonlinear model predictive control (NMPC) framework. SP tracking of throughput (related to the amount of raw materials processed to give products) and recirculation load (related to the energy consumption) is performed. We observe that the developed machine learning based models could effectively perform the SP tracking for nonlinear industrial process like grinding.
机译:控制工业磨削电路(IGC)等工程兴趣的控制问题对于最小化能量消耗,最大化吞吐量或维持产品质量,使得这些工艺将来能够可持续。基于物理的物理学模型,尽管提供了更多的洞察力并产生了准确的结果,但由于求解了用于描述该过程的复杂质量,动量,能量平衡方程所涉及的高计算时间,通常不能用于控制目的。在目前的研究中,目的是使用最佳设计的经常性神经网络,一种类型的基于数据的建模技术,流在机器学习域中,用于建模IGC涉及的瞬态,并在设定点(SP)跟踪中测试其有效性在非线性模型预测控制(NMPC)框架下。进行SP跟踪吞吐量(与加工给产品的原材料量有关)和再循环载荷(与能量消耗有关)。我们观察到,发达的基于机器的基于机器的模型可以有效地执行磨削的非线性工业过程的SP跟踪。

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