优化妊娠期体重增加行为干预的混合模型预测控制。

Yuwen Dong, Daniel E Rivera, Danielle S Downs, Jennifer S Savage, Diana M Thomas, Linda M Collins
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引用次数: 26

摘要

妊娠期体重增加过多(GWG)是一个重大的公共卫生问题。在本文中,我们通过应用模型预测控制(MPC)算法作为干预的决策策略来分配最佳干预剂量,从而采用控制工程方法来解决这个问题。干预包括教育、行为矫正和主动学习。干预剂量分配问题的分类性质决定了需要混合模型预测控制(HMPC)方案,最终导致改善的结果。目标是设计一个控制器,产生干预剂量序列,改善参与者的健康饮食行为和身体活动,以更好地控制GWG。通过使用内部模型控制(IMC),还提出了自我调节的改进公式,允许在描述自我调节行为方面具有更大的灵活性。仿真结果说明了该模型的基本工作原理,并证明了混合预测控制对优化的GWG自适应干预的好处。
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Hybrid Model Predictive Control for Optimizing Gestational Weight Gain Behavioral Interventions.

Excessive gestational weight gain (GWG) represents a major public health issue. In this paper, we pursue a control engineering approach to the problem by applying model predictive control (MPC) algorithms to act as decision policies in the intervention for assigning optimal intervention dosages. The intervention components consist of education, behavioral modification and active learning. The categorical nature of the intervention dosage assignment problem dictates the need for hybrid model predictive control (HMPC) schemes, ultimately leading to improved outcomes. The goal is to design a controller that generates an intervention dosage sequence which improves a participant's healthy eating behavior and physical activity to better control GWG. An improved formulation of self-regulation is also presented through the use of Internal Model Control (IMC), allowing greater flexibility in describing self-regulatory behavior. Simulation results illustrate the basic workings of the model and demonstrate the benefits of hybrid predictive control for optimized GWG adaptive interventions.

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