连续光生物反应器微藻培养的非线性模型预测控制

S. E. Benattia, S. Tebbani, D. Dumur
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引用次数: 12

摘要

本研究的目的是为微藻培养过程设计一个非线性模型预测控制器,在选定的设定值上调节生物量浓度。将优化问题离散化,转化为非线性规划问题,采用控制矢量参数化技术求解。然而,当植物的真实进化与模型预测的进化显著偏离时,NMPC的性能通常会下降。因此,进一步考虑考虑模型不确定性的控制方法是通过添加系统模型误差信号来表示系统输出与模型预测之间的差距。为了减小传感器引入的测量噪声的影响,使控制信号平滑,在目标函数中加入了对控制变化的惩罚项。最后,对该方法进行了仿真验证,并给出了数值结果,说明了该控制策略在存在参数不确定性、测量噪声和光照变化的情况下对设定值跟踪的有效性。
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Nonlinear Model Predictive Control for regulation of microalgae culture in a continuous photobioreactor
The objective of this study is to design a Nonlinear Model Predictive Controller for a microalgae culture process to regulate the biomass concentration at a chosen setpoint. The optimization problem is discretized and transformed into a nonlinear programming problem, solved by Control Vector Parametrization technique. However, the performances of the NMPC usually decrease when the true plant evolution deviates significantly from that predicted by the model. Therefore, a control approach that considers model uncertainty is further considered by adding a system-model error signal which represents the gap between the system output and the model prediction. In order to reduce the influence of measurement noise introduced by sensors and to have a smooth control signal, a penalty term on the control variation is added in the objective function. Finally, the method is validated in simulation and numerical results are given to illustrate the efficiency of the control strategy for setpoint tracking in the presence of parameter uncertainties, measurement noise and light variation.
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