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Nonlinear predictive control based on artificial neural network model for industrial crystallization

机译:基于人工神经网络模型的工业结晶非线性预测控制

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摘要

This paper illustrates the benefits of a nonlinear model based predictive control (NMPC) strategy for set-point tracking control of an industrial crystallization process. A neural networks model is used as internal model to predict process outputs. An optimization problem is solved to compute future control actions taking into account real-time control objectives. Furthermore, a more suitable output variable is used for process control: the mass of crystals in the solution is used instead of the traditional electrical conductivity. The performance of the NMPC implementation is assessed via simulation results based on industrial data.
机译:本文说明了基于非线性模型的预测控制(NMPC)策略对工业结晶过程的设定点跟踪控制的好处。神经网络模型用作内部模型来预测过程输出。解决了一个优化问题,以考虑实时控制目标来计算将来的控制动作。此外,更合适的输出变量用于过程控制:使用溶液中的晶体质量代替传统的电导率。 NMPC实施的性能通过基于工业数据的模拟结果进行评估。

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