TIDM患者血糖调节的扰动模型自适应控制

A. Patra, Girija Sankar Panigrahi, Vijaya Laxmi Patra, A. Mishra, Narayan Nahak, B. Rout
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引用次数: 0

摘要

为了控制糖尿病患者的血糖水平,本文介绍了一种基于教学的优化pid (TLBO-PID)控制器的创建,该控制器通过人工胰腺(AP)提供适当的胰岛素剂量。使用基于教学的优化(TLBO),调整控制器增益以改善所提出的患者模型的BG控制。这种经典的TLBO控制器旨在提高患者血糖管理问题的性能和韧性,这些问题是由患者模型中的非线性引起的。使用基于ap的TLBO可以有效地处理患者模型的非线性,这也有助于将血糖水平保持在血糖范围(70-120 mg/dL)。在使用TLBO-PID的患者模型时,对准确性,鲁棒性,稳定性,降噪性和处理不确定性的增强能力进行了检查。通过对不同控制策略的数据比较,说明了该方法具有较好控制性能的原因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Control with Disturbance Modelling for BG Regulation in TIDM Patient
In order to control blood glucose levels in TIDM patients, this paper explains the creation of a Teaching Learning Based Optimization-PID (TLBO-PID) controller that delivers appropriate insulin doses through an artificial pancreas (AP). Using the Teaching Learning Based Optimization (TLBO), that adjusts the controller gains to improve the BG control of the proposed patient model. This classic controller with TLBO is intended to increase the performance and toughness of patient's problems with glycemic management which are resulting from nonlinearities in the patient model. The nonlinearity of patient models can be effectively handled by using an AP-based TLBO, which also helps to keep blood sugar levels in the glycemic range (70–120 mg/dL). The accuracy, robustness, stability, noise reduction, and enhanced capacity to handle uncertainties are examined while using the proposed patient model with TLBO-PID. A comparison of data from different control strategies indicates the reasons for the suggested approach's superior control performance.
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