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Adaptive neural model predictive control for the grape juice concentration process

机译:葡萄汁浓缩过程的自适应神经模型预测控制

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The four-stage evaporator is the core of the process in the manufacture of concentrated grape juice. The dynamic features of this process are very complex due to inputs and outputs constraints, time delays, loop interactions and the persistent unmeasured disturbances that affect it. Therefore, this kind of process requires a robust control in order to assure a stable operation taking into account the changes in the organoleptic properties of the raw material and, to guarantee the quality of the concentrated product. This work proposes an adaptive neural model to control of a four-stage evaporator in a grape juice concentration plant. In order to obtain a more accurate process description the neural model is trained with data from simulation of a phenomenological model and afterwards, is validated with actual plant data. This strategy allows to carry out the training without to introduce disturbance in the real plant. Neural networks of different size are trained and the performance of one of the neural models is compared with the first principles model. In a last step, the performance of a model predictive control based on the neural model is evaluated for disturbance rejection and compared with a MPC controller based on the phenomenological model and with a PI controller. The achieved results allow us to conclude that the developed neural model predictive control is adequate to control effectively the four-stage evaporator.
机译:四级蒸发器是浓缩葡萄汁生产过程的核心。由于输入和输出约束,时间延迟,回路相互作用以及影响该过程的持续无法测量的干扰,该过程的动态特征非常复杂。因此,考虑到原料的感官特性的变化,为了确保稳定的操作,这种过程需要鲁棒的控制,并保证浓缩产品的质量。这项工作提出了一种自适应神经模型,用于控制葡萄汁浓缩厂中的四级蒸发器。为了获得更准确的过程描述,使用来自现象学模型仿真的数据对神经模型进行训练,然后使用实际的工厂数据对神经模型进行验证。该策略允许进行培训,而不会在实际工厂中引入干扰。训练了不同大小的神经网络,并将其中一个神经模型的性能与第一个原理模型进行了比较。在最后一步中,评估了基于神经模型的模型预测控制的性能以消除干扰,并与基于现象学模型的MPC控制器和PI控制器进行了比较。所获得的结果使我们得出结论,即所开发的神经模型预测控制足以有效地控制四级蒸发器。

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