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A model based inference engine for stress estimation

机译:基于模型的应力估计推导引擎

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Stress has become a household term for which ascertaining a meaning has become increasingly difficult these days. Physiologically, stress is observed to act through hypothalamus which modulates the autonomic nervous system mainly via sympathetically mediated effects. Utilizing this theory, a model based inference engine was developed for the estimation of stress. A computational model was used to generate a series of synthetic photo-plethysmogram (PPG) signals by varying the model parameters. Now using these artificial generated PPG signals, the inverse problem of estimating the stress parameter `F' was solved by a neural network, using Levenberg-Marquardt algorithm. The inference engine was then tested by using real PPG data collected twice (morning and evening) from a set of 13 subjects. As observed in experimental studies, our inference engine was able to replicate the pattern of stress levels i.e., exhibiting high levels of stress in mornings compared to evenings. These results validate the efficiency of the developed inference engine in estimating the stress.
机译:压力已成为这些日子所确定的意义的纪念。在生理学上,观察到应力通过下丘脑作用,该下丘脑主要通过令人互联网介导的效果来调节自主神经系统。利用该理论,开发了一种基于模型的推理引擎,用于估计应力。计算模型通过改变模型参数来生成一系列合成的光学体图(PPG)信号。现在使用这些人工生成的PPG信号,使用Levenberg-Marquardt算法通过神经网络求解应力参数`F'的逆问题。然后通过使用两次(早上和晚上)的真实PPG数据从一组13个受试者进行测试,然后测试推动引擎。如在实验研究中所观察到的,我们的推理发动机能够复制应力水平的模式,即与夜晚相比,在早晨表现出高水平的压力。这些结果验证了发达推理引擎估计压力的效率。

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