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Robust model-based steady-state feedback optimization for chemical plants.

机译:基于稳健模型的化工厂稳态反馈优化。

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Model-based real-time optimization (RTO) of steady-state operations of chemical plants is of industrial interest due to the fact that the model-based approach can deal with large-scale optimization systems effectively and the inevitable model-plant mismatch can be handled by adapting the model parameters repeatedly. The process operation is continuously improved by on-line computation of the optimal setpoints to be tracked by the lower level control system. It is noted that model updating usually involves a cumbersome re-optimization procedure to obtain the model parameters and may not necessarily improve the model. Thus, in this dissertation, a feedback optimization methodology which does not require model updating is proposed as a complementary approach to RTO. The proposed methodology is based on an extension of a method introduced in optimization-based run-to-run control for batch processes, in which any gradient-based optimization algorithm can be utilized. The plant operation is an integral part of the optimization system to provide measurement data as feedback used in the gradient computation. Thus the proposed methodology is inherently robust to model error and it improves plant operations gradually (iteratively) with successive search directions. Both implicit algebraic models and differential models (describing steady-state spatial distribution for distributed parameter systems) can be utilized directly for gradient formulation through the reduced gradient method and the adjoint method, respectively. The measurement noise effect on the performance of the methodology is quantitatively analyzed. According to the anticipated noise size for the sensors, a performance uncertainty region in the input space is determined to predict the area in which improvement directions are not possible to compute. For computational efficiency and convergence to global optimum, only multi-input single output (MISO) implicit algebraic models are considered in this off-line analysis. Finally, a statistical method for optimization results analysis is presented to on-line reduce the noise effect by evaluating the variability in the optimization variables. Only the optimization results that represent meaningful changes are transmitted as setpoints to the lower process control level. Thus unnecessary and profitless corrective actions caused by stationary measurement noise can be avoided.
机译:由于基于模型的方法可以有效地处理大规模优化系统,并且不可避免的模型工厂不匹配可能是一个事实,因此,基于模型的化工厂稳态运行实时优化(RTO)具有工业意义。通过反复调整模型参数来处理。通过在线计算下级控制系统跟踪的最佳设定值,可以不断改善过程操作。注意,模型更新通常涉及繁琐的重新优化过程以获得模型参数,并且可能未必会改进模型。因此,在本文中,提出了一种不需要模型更新的反馈优化方法作为RTO的补充方法。所提出的方法基于对批处理的基于优化的运行到运行控制中引入的方法的扩展,其中可以利用任何基于梯度的优化算法。工厂操作是优化系统的重要组成部分,可提供测量数据作为梯度计算中使用的反馈。因此,所提出的方法具有固有的鲁棒性,可以对错误进行建模,并且可以通过连续的搜索方向逐步(迭代地)改善工厂运营。隐式代数模型和微分模型(描述分布式参数系统的稳态空间分布)均可分别通过简化梯度法和伴随法直接用于梯度公式化。定量分析了测量噪声对方法性能的影响。根据传感器的预期噪声大小,确定输入空间中的性能不确定性区域,以预测无法计算改善方向的区域。为了提高计算效率和收敛到全局最优,在此离线分析中仅考虑多输入单输出(MISO)隐式代数模型。最后,提出了一种用于优化结果分析的统计方法,以通过评估优化变量的可变性来在线降低噪声影响。仅将代表有意义变化的优化结果作为设定值传输到较低的过程控制级别。因此,可以避免由静止的测量噪声引起的不必要和无益的纠正措施。

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