Model Predictive Control Strategies for Optimized mHealth Interventions for Physical Activity.

Mohamed El Mistiri, Daniel E Rivera, Predrag Klasnja, Junghwan Park, Eric Hekler
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Abstract

Many individuals fail to engage in sufficient physical activity (PA), despite its well-known health benefits. This paper examines Model Predictive Control (MPC) as a means to deliver optimized, personalized behavioral interventions to improve PA, as reflected by the number of steps walked per day. Using a health behavior fluid analogy model representing Social Cognitive Theory, a series of diverse strategies are evaluated in simulated scenarios that provide insights into the most effective means for implementing MPC in PA behavioral interventions. The interplay of measurement, information, and decision is explored, with the results illustrating MPC's potential to deliver feasible, personalized, and user-friendly behavioral interventions, even under circumstances involving limited measurements. Our analysis demonstrates the effectiveness of sensibly formulated constrained MPC controllers for optimizing PA interventions, which is a preliminary though essential step to experimental evaluation of constrained MPC control strategies under real-life conditions.

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优化移动医疗体育锻炼干预的模型预测控制策略。
尽管体力活动(PA)对健康的益处众所周知,但许多人却没有参加足够的体力活动。本文研究了模型预测控制 (MPC),将其作为提供优化的个性化行为干预的一种手段,以改善每天步行步数所反映的体育锻炼。利用代表社会认知理论的健康行为流体类比模型,在模拟场景中对一系列不同策略进行了评估,从而深入了解在 PA 行为干预中实施 MPC 的最有效方法。我们探讨了测量、信息和决策之间的相互作用,结果表明 MPC 具有提供可行、个性化和用户友好型行为干预的潜力,即使在测量有限的情况下也是如此。我们的分析表明了合理制定的受限 MPC 控制器在优化 PA 干预方面的有效性,这是在现实生活条件下对受限 MPC 控制策略进行实验评估的一个初步但必不可少的步骤。
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