首页> 外文期刊>IFAC PapersOnLine >Artificial Pancreas: from Control-to-Range to Control-to-Target * * Corresponding author: Gian Paolo Incremona, Dipartimento di Ingegneria Industriale e dell’Informazione, University of Pavia, Via Ferrata 5, 27100 Pavia, Italy
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Artificial Pancreas: from Control-to-Range to Control-to-Target * * Corresponding author: Gian Paolo Incremona, Dipartimento di Ingegneria Industriale e dell’Informazione, University of Pavia, Via Ferrata 5, 27100 Pavia, Italy

机译:人工胰腺:从控制范围到控制目标 * * 通讯作者:Gian Paolo Incremona,系帕维亚大学工业与信息工程学院,费拉塔大街5号,意大利帕维亚27100

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摘要

In the last decade, control algorithms designed for Artificial Pancreas (AP) systems were characterized by significant progresses. In particular, the Control-to-Range Model Predictive Control (MPC) showed its effectiveness and safety in several real life studies. Recent studies on model individualization and the enhanced quality of glucose sensors further improved the efficacy of MPC, thus allowing moving from a Control-to-Range to a Control-to-Target approach. In this study, an integral action in the MPC approach (IMPC) is proposed. This ensures beneficial effects in terms of regulation to the target in presence of disturbances such as delays, pump limitation and model uncertainties. The integral action is even more important when model individualization is performed since, during the identification phase, it allows to focus on the identification of the dynamical part of the model rather than to the static gain. The patient models considered in this contribution have been identified through a constrained optimization approach. A procedure for tuning the IMPC aggressiveness by considering both the glucose control performance and the integral of the error with respect to the target is described. Finally, in silico experiments are presented to assess the effectiveness of the proposed IMPC.
机译:在过去的十年中,为人工胰腺(AP)系统设计的控制算法取得了重大进展。特别是,控制范围模型预测控制(MPC)在一些实际研究中显示了其有效性和安全性。关于模型个性化和葡萄糖传感器质量提高的最新研究进一步提高了MPC的功效,从而允许从“控制范围”方法过渡到“控制目标”方法。在这项研究中,提出了MPC方法(IMPC)中的整体动作。这确保了在存在干扰(例如延迟,泵限制和模型不确定性)的情况下对目标的调节方面的有益效果。当执行模型个性化时,积分作用甚至更为重要,因为在识别阶段,它可以专注于模型动态部分的识别,而不是静态增益。已通过约束优化方法确定了该贡献中考虑的患者模型。描述了通过考虑葡萄糖控制性能和关于目标的误差的积分来调节IMPC攻击性的过程。最后,提出了计算机模拟实验以评估提出的IMPC的有效性。

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