应用分形几何对应力进行数学建模;应力的幂律与分形复杂性

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引用次数: 1

摘要

在本研究中,我们分析了驾驶员在实际驾驶任务中的生理数据,以确定驾驶员的相对压力是单分形还是多重分形。我们使用了PhysioNet数据库,其中包括15名健康志愿者的长期心电图记录,这些记录是他们在马萨诸塞州波士顿市及其周边的城市街道和高速公路上行驶时拍摄的。利用功率谱密度(PSD)分析等振动分析方法,从这些过程的实现中估计出指数,并确定感兴趣的信号是否表现出幂律PSD。本文利用多重分形谱分析方法对心电信号的多重分形动力学进行了分析,探讨了心电记录是否属于多重分形过程,该过程需要大量的标度指数来表征其标度结构。应用Higuchi算法求出不同时间间隔内各心律的分形复杂度。通过分析,我们发现驾驶员在相对压力下的心电信号具有分形特征,而对照健康信号具有多重分形特征。我们的发现提供了一个全面的框架来检测压力,并区分有压力的人和没有压力的正常人,这对于找到最好的诊断和控制策略至关重要-在对抗许多由压力引起的健康问题,如高血压,心脏病,肥胖和糖尿病。此外,能够识别压力可以帮助我们管理它。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical Modeling of Stress Using Fractal Geometry; The Power Laws and Fractal Complexity of Stress
In this study, we analyze the physiological data during real-world driving tasks to determine whether driver’s relative stress is mono-fractal or multi-fractal. We use the PhysioNet database including long term ECG recordings from 15 healthy volunteers, taken while they were driving on a prescribed route including city streets and highways in and around Boston, Massachusetts. The vibration analysis such as power spectral densities (PSD) analysis has been performed to estimate the exponent from realizations of these pro- cesses and to find out if the signal of interest exhibits a power-law PSD. Multifractal dynamics of heartbeat interval signals have been assessed by multifractal spectrum analysis to explore the possibility that ECG recordings belong to class of multi-fractal process for which a large number of scaling exponents are re- quired to characterize their scaling structures. We apply Higuchi algorithm to find the fractal complexity of each cardiac rhythm for different time intervals. According to our analysis, we investigate that driver’s ECG signals under relative stress follows fractal behavior unlike control healthy signals which are multi-fractal. Our findings provide a comprehensive framework for detect stress and differentiate people who experience stress with normal people without stress which is crucial in finding the best diagnostic and controlling strat- egy in fight against many health problems due to stress, such as high blood pressure, heart disease, obesity and diabetes. Moreover, being able to recognize stress can help us to manage it.
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