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Evaluation of model complexity in model predictive control within an exercise-enabled artificial pancreas

机译:在可运动的人工胰腺内进行模型预测控制中模型复杂性的评估

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Model predictive control (MPC) algorithms have been used often within artificial pancreas control systems both in-silico and in clinical studies. Increasingly complex models in the controller can more accurately predict the glycemic response, but they introduce increased computational complexity which can be challenging to implement especially within an embedded environment where computational resources are limited. Less complex models are also preferable in that they can be evaluated in silico against more complex plant models. There has not yet been an evaluation of how the complexity of models used within an MPC impacts performance within an artificial pancreas. A model within an artificial pancreas MPC algorithm should be as complex as necessary to accurately predict a glycemic response to meals, exercise, stress, and other disturbances, but not overly complex. In this paper, we evaluate four glucoregulatory models used within an MPC, starting with a 4-state model and increasing in complexity up to six states. We evaluate the complexity using an in-silico population derived from a more complex glucoregulatory model (9 state variables). We assess how complexity of the model impacts performance both in terms of standard control metrics such as settling time and overshoot as well as clinically relevant metrics such as percent time in euglycemia (glucose between 70 and 180 mg/dl), percent time in hypoglycemia (70 mg/dl) and percent time in hyperglycemia (>180 mg/dl). We find that model complexity matters far less than how well the model parameters match the individual subjects. When the simplest model is used, but fit to an individual subject’s data, it performed comparably with more complex models. We selected a middle-complexity model and integrated it into our previously published exercise-enabled MPC model and evaluated it in a virtual patient population both with and without the exercise model present. We found that increasing complexity by modeling exercise is critical to help enable early insulin shut-off by the controller to avoid hypoglycemia.
机译:在计算机内和临床研究中,模型预测控制(MPC)算法经常在人工胰腺控制系统中使用。控制器中越来越复杂的模型可以更准确地预测血糖反应,但是它们引入了增加的计算复杂性,这对于在计算资源有限的嵌入式环境中尤其难以实现具有挑战性。较不复杂的模型也是可取的,因为它们可以与更复杂的植物模型进行计算机评估。尚未评估MPC中使用的模型的复杂性如何影响人造胰腺的性能。人工胰腺MPC算法中的模型应尽可能复杂,以准确预测对进餐,运动,压力和其他干扰的血糖反应,但又不要过于复杂。在本文中,我们评估了MPC中使用的四个糖调节模型,从一个4状态模型开始,直到6个状态,其复杂性都增加了。我们使用更复杂的糖调节模型(9个状态变量)得出的计算机内人口来评估复杂性。我们根据标准控制指标(例如建立时间和超调)以及临床相关指标(例如,正常血糖时间百分比(葡萄糖在70至180 mg / dl之间),低血糖时间百分比( 70 mg / dl)和高血糖时间百分比(> 180 mg / dl)。我们发现,模型复杂性的重要性远不及模型参数与各个主题的匹配程度。如果使用最简单的模型,但适合单个受试者的数据,则其性能与更复杂的模型相当。我们选择了一个中等复杂度模型,并将其集成到我们先前发布的具有运动功能的MPC模型中,并在存在和不存在运动模型的虚拟患者人群中对其进行了评估。我们发现通过对运动进行建模来增加复杂性对于帮助控制者尽早关闭胰岛素以避免低血糖至关重要。

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