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首页> 外文期刊>Annals of Biomedical Engineering: The Journal of the Biomedical Engineering Society >Nonlinear stochastic system identification of skin using volterra kernels
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Nonlinear stochastic system identification of skin using volterra kernels

机译:基于Volterra核的皮肤非线性随机系统辨识。

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Volterra kernel stochastic system identification is a technique that can be used to capture and model nonlinear dynamics in biological systems, including the nonlinear properties of skin during indentation. A high bandwidth and high stroke Lorentz force linear actuator system was developed and used to test the mechanical properties of bulk skin and underlying tissue in vivo using a non-white input force and measuring an output position. These short tests (5 s) were conducted in an indentation configuration normal to the skin surface and in an extension configuration tangent to the skin surface. Volterra kernel solution methods were used including a fast least squares procedure and an orthogonalization solution method. The practical modifications, such as frequency domain filtering, necessary for working with low-pass filtered inputs are also described. A simple linear stochastic system identification technique had a variance accounted for (VAF) of less than 75%. Representations using the first and second Volterra kernels had a much higher VAF (90-97%) as well as a lower Akaike information criteria (AICc) indicating that the Volterra kernel models were more efficient. The experimental second Volterra kernel matches well with results from a dynamic-parameter nonlinearity model with fixed mass as a function of depth as well as stiffness and damping that increase with depth into the skin. A study with 16 subjects showed that the kernel peak values have mean coefficients of variation (CV) that ranged from 3 to 8% and showed that the kernel principal components were correlated with location on the body, subject mass, body mass index (BMI), and gender. These fast and robust methods for Volterra kernel stochastic system identification can be applied to the characterization of biological tissues, diagnosis of skin diseases, and determination of consumer product efficacy.
机译:Volterra内核随机系统识别是一种可用于捕获和建模生物系统中非线性动力学的技术,包括压痕过程中皮肤的非线性特性。开发了高带宽,高行程的洛伦兹力线性执行器系统,并使用非白色输入力并测量了输出位置,用于测试体内大块皮肤和底层组织的机械性能。这些短测试(5 s)是在与皮肤表面垂直的压痕结构和与皮肤表面相切的延伸结构中进行的。使用了Volterra内核求解方法,包括快速最小二乘法和正交求解方法。还描述了使用低通滤波输入所需的实际修改,例如频域滤波。一种简单的线性随机系统识别技术的方差(VAF)小于75%。使用第一和第二个Volterra内核的表示具有更高的VAF(90-97%)和更低的Akaike信息标准(AICc),表明Volterra内核模型更有效。实验性的第二Volterra核与动态参数非线性模型的结果非常匹配,该模型具有固定质量作为深度的函数,并且刚度和阻尼随进入皮肤的深度而增加。一项针对16位受试者的研究表明,籽粒峰值的平均变异系数(CV)为3%至8%,并且表明籽粒主要成分与人体位置,受试者体重,体重指数(BMI)相关和性别。这些用于Volterra核随机系统识别的快速而可靠的方法可以应用于生物组织的表征,皮肤疾病的诊断以及消费产品功效的确定。

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