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Hybrid Online Sensor Error Detection and Functional Redundancy for Artificial Pancreas Control Systems

机译:人工胰腺控制系统的混合在线传感器错误检测和功能冗余

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Artificial pancreas (AP) control systems rely on signals from glucose sensors to collect glucose concentration (GC) information from people with Type 1 diabetes and compute insulin infusion rates to maintain GC within a desired range Sensor performance is often limited by sensor errors, communication interruptions and noise A hybrid online sensor error detection and functional redundancy system is developed to detect errors in online signals, and replace erroneous or missing values detected with model-based estimates. The proposed hybrid system relies on two techniques, an outlier-robust Kalman filter (ORKF) and a locally-weighted partial least squares (LW-PLS) regression model. This leverages the advantages of automatic measurement error elimination with ORKF and data-driven prediction with LW-PLS. A novel method called nominal angle analysis is proposed to distinguish between signal faults and large changes in sensor values caused by real dynamic changes in the metabolism The performance of the system is illustrated with clinical data from continuous glucose monitoring sensors collected from people with Type 1 diabetes.
机译:人工胰腺(AP)控制系统依靠来自葡萄糖传感器的信号来收集来自1型糖尿病患者的葡萄糖浓度(GC)信息并计算胰岛素输注速率以将GC维持在所需范围内传感器性能通常受到传感器错误,通信中断的限制开发了一种混合的在线传感器错误检测和功能冗余系统,以检测在线信号中的错误,并用基于模型的估计值替代检测到的错误或遗漏值。提出的混合系统依赖于两种技术,离群鲁棒的卡尔曼滤波器(ORKF)和局部加权的偏最小二乘(LW-PLS)回归模型。这利用了利用ORKF消除自动测量误差和利用LW-PLS进行数据驱动的预测的优势。提出了一种称为标称角度分析的新方法,以区分信号故障和由新陈代谢的实际动态变化引起的传感器值的大变化。系统的性能通过从1型糖尿病患者身上收集的连续葡萄糖监测传感器的临床数据来说明。

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