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An adaptive data-based modeling approach for predictive control of batch systems

机译:用于批处理系统的预测控制的基于数据的自适应建模方法

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In this work, we generalize a previously developed data-based modeling methodology for batch processes to account for time-varying dynamics by incorporating online learning ability into the model, making it adaptive. First, the standard recursive least squares (RLS) algorithm with a forgetting factor is applied to update the model parameters. However, applying the standard RLS algorithm leads to a global update of all the models, which may be unnecessary depending on the operating conditions of the process. We address this issue by developing a probabilistic RLS (PRLS) estimator (also with a forgetting factor) for each model that takes the probability of the model being representative of the current plant dynamics into account in the update. The main advantage of adopting this localized update approach is adaptation tuning flexibility. Specifically, the model adaptations can be made more aggressive while maintaining better parameter precision compared to the standard RLS algorithm. The benefits from incorporating both RLS algorithms are demonstrated via simulations of a nylon-6,6 batch polymerization reactor. Closed-loop simulation results illustrate the improvement in tracking performance (over the non-adaptive model based design). The model adaptation is also shown to be crucial for achieving acceptable control performance when encountering large disturbances in the initial conditions.
机译:在这项工作中,我们概括了以前开发的基于数据的批处理过程建模方法,以通过将在线学习功能纳入模型来使其适应性,从而解决时变动态。首先,采用具有遗忘因子的标准递归最小二乘(RLS)算法来更新模型参数。但是,应用标准RLS算法会导致所有模型的全局更新,这可能是不必要的,具体取决于过程的操作条件。我们通过为每个模型开发概率RLS(PRLS)估计器(也具有遗忘因子)来解决此问题,该模型在更新中考虑了代表当前工厂动态的模型的可能性。采用这种本地化更新方法的主要优点是适应调整的灵活性。具体来说,与标准RLS算法相比,可以在保持更好的参数精度的同时使模型适应性更强。通过对尼龙6,6间歇式聚合反应器的仿真,证明了结合这两种RLS算法的好处。闭环仿真结果说明了跟踪性能的改进(相对于基于非自适应模型的设计)。当在初始条件下遇到较大的干扰时,模型的适应性对于实现可接受的控制性能也至关重要。

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