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Model Identification and Physical Exercise Control using Nonlinear Heart Rate Model and Particle Filter

机译:使用非线性心率模型和粒子滤波器模型识别与体育锻炼控制

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Physical exercise has been proven to be beneficial for both healthy subjects and cardiac patients. It can improve cardiovascular health and promote recovery from various heart conditions. Heart Rate (HR) is a cardiovascular variable, which can be easily monitored and provides important insights about cardiac functions during and after physical exercise. This study presents a HR-based modeling and control framework to monitor physiological changes during exercise, from which the exercise intensity is optimized to capitalize exercise outcomes. HR models were previously developed to investigate exercise physiology, but efficient model identification has not been extensively discussed in the literature. Most existing HR models are nonlinear state-space models, and traditional optimization techniques may fail to provide accurate model identification results. In this work, we propose to use particle filter (PF) to identify HR model parameters and further optimize the intensity of exercise, e.g., walking or running speed, based on the calibrated model. Specifically, sequential importance sampling and resampling (SISR) and smoothing were chosen to estimate state variables, and particle marginal Metropolis-Hastings method was used to identify model parameters from HR observations. In addition, using predictions calculated from the HR model, treadmill speed was optimized by minimizing the difference between predictions and the target HR. The modeling and control framework is validated with different case studies. The results demonstrate that the proposed method is a useful tool for personalized HR modeling and exercise control, which can benefit both regular exercise training and cardiac rehabilitation.
机译:已被证明对健康受试者和心脏病患者有益的体育锻炼。它可以改善心血管健康,促进各种心脏病的恢复。心率(HR)是一种心血管变量,可以很容易地监测,并在体育锻炼期间和之后提供关于心脏功能的重要见解。本研究介绍了基于人力资源的建模和控制框架,以监测运动期间的生理变化,从中优化运动强度,以利用运动结果。 HR模型以前开发用于调查运动生理学,但在文献中尚未讨论有效的模型识别。大多数现有的HR模型是非线性状态空间模型,传统的优化技术可能无法提供准确的模型识别结果。在这项工作中,我们建议使用粒子过滤器(PF)来识别HR模型参数,并进一步优化基于校准模型的运动强度,例如步行或运行速度。具体地,选择顺序重要性采样和重采样(SISR)和平滑以估计状态变量,并且使用粒子边缘Metropolis-Hastings方法来识别来自HR观察的模型参数。另外,使用从HR模型计算的预测,通过最小化预测和目标HR之间的差异来优化跑步机速度。使用不同的案例研究验证了建模和控制框架。结果表明,该方法是个性化HR建模和运动控制的有用工具,可以使常规运动培训和心脏康复有益。

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