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A System Identification and Control Engineering Approach for Optimizing mHealth Behavioral Interventions Based on Social Cognitive Theory.

机译:基于社会认知理论的移动健康行为干预优化系统识别与控制工程方法。

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摘要

Behavioral health problems such as physical inactivity are among the main causes of mortality around the world. Mobile and wireless health (mHealth) interventions offer the opportunity for applying control engineering concepts in behavioral change settings. Social Cognitive Theory (SCT) is among the most influential theories of health behavior and has been used as the conceptual basis of many behavioral interventions. This dissertation examines adaptive behavioral interventions for physical inactivity problems based on SCT using system identification and control engineering principles. First, a dynamical model of SCT using fluid analogies is developed. The model is used throughout the dissertation to evaluate system identification approaches and to develop control strategies based on Hybrid Model Predictive Control (HMPC). An initial system identification informative experiment is designed to obtain basic insights about the system. Based on the informative experimental results, a second optimized experiment is developed as the solution of a formal constrained optimization problem. The concept of Identification Test Monitoring (ITM) is developed for determining experimental duration and adjustments to the input signals in real time. ITM relies on deterministic signals, such as multisines, and uncertainty regions resulting from frequency domain transfer function estimation that is performed during experimental execution. ITM is motivated by practical considerations in behavioral interventions; however, a generalized approach is presented for broad-based multivariable application settings such as process control. Stopping criteria for the experimental test utilizing ITM are developed using both open-loop and robust control considerations.;A closed-loop intensively adaptive intervention for physical activity is proposed relying on a controller formulation based on HMPC. The discrete and logical features of HMPC naturally address the categorical nature of the intervention components that include behavioral goals and reward points. The intervention incorporates online controller reconfiguration to manage the transition between the behavioral initiation and maintenance training stages. Simulation results are presented to illustrate the performance of the system using a model for a hypothetical participant under realistic conditions that include uncertainty. The contributions of this dissertation can ultimately impact novel applications of cyberphysical system in medical applications.
机译:诸如缺乏身体活动之类的行为健康问题是全世界死亡的主要原因之一。移动和无线健康(mHealth)干预为将控制工程概念应用于行为更改设置提供了机会。社会认知理论(SCT)是最有影响力的健康行为理论之一,已被用作许多行为干预的概念基础。本文运用系统辨识和控制工程原理,研究了基于SCT的对身体不活动问题的自适应行为干预。首先,开发了使用流体类比的SCT动力学模型。在整个论文中使用该模型来评估系统识别方法并基于混合模型预测控制(HMPC)制定控制策略。初步的系统识别信息实验旨在获得有关系统的基本信息。根据丰富的实验结果,开发了第二个优化实验作为形式约束优化问题的解决方案。识别测试监控(ITM)的概念旨在确定实验持续时间并实时调整输入信号。 ITM依赖于确定性信号,例如多正弦波和不确定性区域,这些不确定性区域是由实验执行期间执行的频域传递函数估计产生的。 ITM受行为干预中实际考虑因素的驱使;但是,针对通用的多变量应用程序设置(例如过程控制),提出了一种通用方法。基于开环和鲁棒控制考虑因素,开发了利用ITM进行实验测试的停止标准。提出了一种基于HMPC的控制器公式,提出了一种针对体育活动的闭环密集自适应干预。 HMPC的离散和逻辑功能自然可以解决干预组件的分类性质,包括行为目标和奖励积分。该干预措施包含在线控制器重新配置,以管理行为启动和维护培训阶段之间的过渡。给出了仿真结果,以说明使用模型的假设参与者在包括不确定性的实际条件下的系统性能。本文的贡献最终会影响电子物理系统在医学领域的新应用。

著录项

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Electrical engineering.;Behavioral psychology.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 294 p.
  • 总页数 294
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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