[Regular Paper] Stochastic Non-minimal State Space Control with Application to Automated Drug Delivery

Emma D. Wilson, Q. Clairon, C. Taylor
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引用次数: 2

Abstract

This paper shows how a standard proportional-integral-plus controller, based on a non-minimal state space (NMSS) design, can be extended to reduce the effects of measurement noise and so yield smoother control inputs for automated drug delivery control applications. Use of a NMSS model for state variable feedback control design, in which all the states are based on the directly measured input and output variables, removes the need for state estimation. Nonetheless, a stochastic NMSS form, with a Kalman filter, can optionally be introduced to reduce the effect of measurement noise and so yield smoother control inputs. In this case, the Kalman filter attenuates measurement noise but does not address state disturbances. In this article, we propose a modification to the stochastic NMSS control system to enable the elimination of such state disturbances. This involves further extending the non–minimal state vector to include additional terms based on the innovations. We compare the deterministic, stochastic and extended stochastic NMSS controllers via a simulation of the control of anaesthesia using propofol.
随机非极小状态空间控制在自动给药中的应用
本文展示了基于非最小状态空间(NMSS)设计的标准比例积分加控制器如何扩展以减少测量噪声的影响,从而为自动给药控制应用提供更平滑的控制输入。使用NMSS模型进行状态变量反馈控制设计,其中所有状态都基于直接测量的输入和输出变量,从而消除了状态估计的需要。尽管如此,可以选择性地引入带有卡尔曼滤波器的随机NMSS形式,以减少测量噪声的影响,从而产生更平滑的控制输入。在这种情况下,卡尔曼滤波器衰减测量噪声,但不处理状态干扰。在本文中,我们提出了一种改进的随机NMSS控制系统,以消除这种状态干扰。这涉及到进一步扩展非最小状态向量,以包含基于创新的附加项。我们通过模拟使用异丙酚麻醉的控制来比较确定性、随机和扩展随机NMSS控制器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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