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Model-free adaptive control for MEA-based post-combustion carbon capture processes

机译:基于MEA的燃烧后碳捕集过程的无模型自适应控制

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摘要

For the flexible operation of mono-ethanol-amine-based post-combustion carbon capture processes, recent studies concentrate on model-based protocols which require underline model parameters of carbon capture processes for controller design. In this paper, a novel application of the model-free adaptive control algorithm is proposed that only uses measured input-output data for carbon capture processes. Compared with proportional-integral control, the stability of the closed-loop system can be easily guaranteed by increasing a stabilizing parameter. By updating the pseudo-partial derivative vector to estimate a dynamic model of the controlled plant on-line, this new protocol is robust to plant uncertainties. Compared with model predictive control, tuning tests of the protocol can be conducted on-line without non-trivial repetitive off-line sensitivity or identification tests. Performances of the model-free adaptive control are demonstrated within a neural network carbon capture plant model, identified and validated with data generated by a first-principle carbon capture model.
机译:为了灵活地运行基于单乙醇胺的燃烧后碳捕集过程,最近的研究集中在基于模型的协议上,该协议要求在碳捕集过程中使用下划线模型参数进行控制器设计。在本文中,提出了一种无模型自适应控制算法的新应用,该算法仅将测得的输入-输出数据用于碳捕集过程。与比例积分控制相比,通过增加一个稳定参数可以很容易地保证闭环系统的稳定性。通过更新伪偏导数向量以在线估计受控植物的动态模型,该新协议对于植物不确定性具有鲁棒性。与模型预测控制相比,协议的调整测试可以在线进行,而无需进行非重复性离线灵敏度或识别测试。在神经网络碳捕集工厂模型中演示了无模型自适应控制的性能,并用第一原理碳捕集模型生成的数据进行了识别和验证。

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