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Bayesian inference and uncertainty propagation using efficient fractional-order viscoelastic models for dielectric elastomers

机译:使用高效分数载粘弹性模型的介电弹性体的贝叶斯推断和不确定性传播

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摘要

Dielectric elastomers are employed for a wide variety of adaptive structures. Many of these soft elastomers exhibit significant rate-dependencies in their response. Accurately quantifying this viscoelastic behavior is non-trivial and in many cases a nonlinear modeling framework is required. Fractional-order operators have been applied to modeling viscoelastic behavior for many years, and recent research has shown fractional-order methods to be effective for nonlinear frameworks. This implementation can become computationally expensive to achieve an accurate approximation of the fractional-order derivative. Accurate estimation of the elastomer’s viscoelastic behavior to quantify parameter uncertainty motivates the use of Markov Chain Monte Carlo (MCMC) methods. Since MCMC is a sampling based method, requiring many model evaluations, efficient estimation of the fractional derivative operator is crucial. In this paper, we demonstrate the effectiveness of using quadrature techniques to approximate the Riemann–Liouville definition for fractional derivatives in the context of estimating the uncertainty of a nonlinear viscoelastic model. We also demonstrate the use of parameter subset selection techniques to isolate parameters that are identifiable in the sense that they are uniquely determined by measured data. For those identifiable parameters, we employ Bayesian inference to compute posterior distributions for parameters. Finally, we propagate parameter uncertainties through the models to compute prediction intervals for quantities of interest.
机译:介电弹性体用于各种各样的自适应结构。许多这些软弹性体在其反应中表现出显着的速率依赖性。准确地量化此粘弹性行为是非琐碎的,并且在许多情况下需要非线性建模框架。分数级运营商已应用于粘弹性行为的建模多年,而最近的研究表明了为非线性框架有效的分数顺序方法。该实现可以变得昂贵,以实现分数阶衍生物的准确近似。精确估计弹性体的粘弹性行为,以量化参数不确定性激励马尔可夫链蒙特卡罗(MCMC)方法的使用。由于MCMC是一种基于采样的方法,因此需要许多模型评估,因此分数衍生算子的有效估计至关重要。在本文中,我们证明了在估计非线性粘弹性模型的不确定性的背景下,使用正交技术对分数衍生物进行分数衍生物的riemann-liouville定义的有效性。我们还展示了使用参数子集选择技术来隔离可识别的参数,以至于它们由测量数据唯一确定。对于那些可识别的参数,我们使用贝叶斯推理来计算参数的后部分布。最后,我们通过模型传播参数不确定性来计算感兴趣的数量的预测间隔。

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