Numerical restorability of parameter values of space-time fractional soil consolidation model

Vsevolod Bohaienko
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Abstract

At present, a large number of fractional differential models of migration processes in soils are developed. Their practical application largely depends on the possibility to determine the values of their parameters. In this regard, we study the possibility of recovering the values of parameters for one such generalized model from noised data in order to assess the threshold of measurement accuracy, beyond which the complication of a model leads to an inability to distinguish its solutions from the solutions of simpler models. We consider the 1D fractional-order model of water head dissipation in water-saturated soil with linear deformation that includes the Caputo–Fabrizio derivative with respect to the time variable and the Riemann–Liouville derivative with respect to the space variable. Direct problems for this model are proposed to be solved by an optimized computational procedure based on a finite-difference scheme. Inverse problems of model’s parameter identification are solved using a multi-threaded Particle Swarm Optimization technique. The results of computational experiments showed that the values of model parameters can be restored with less than \(10\%\) relative error for the number of input water head values equal to 1000 and the level of noise less than \(5\%\). Our results also show that the order of the Riemann–Liouville derivative can be with an average relative error of less than \(3\%\) restored even at \(10\%\) level of noise and 40 input values, when the accuracy of other parameters’ restoration drops significantly.

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时空分数土壤固结模型参数值的数值复原性
目前,已开发出大量有关土壤中迁移过程的分数微分模型。这些模型的实际应用在很大程度上取决于能否确定其参数值。在这方面,我们研究了从噪声数据中恢复此类广义模型参数值的可能性,以评估测量精度的临界值,超过该临界值,模型的复杂性将导致无法将其解与更简单模型的解区分开来。我们考虑了具有线性变形的水饱和土壤中水头耗散的一维分数阶模型,该模型包括相对于时间变量的 Caputo-Fabrizio 导数和相对于空间变量的黎曼-刘维尔导数。该模型的直接问题建议通过基于有限差分方案的优化计算程序来解决。利用多线程粒子群优化技术解决了模型参数识别的逆问题。计算实验结果表明,当输入水头值的数量等于 1000 且噪声水平小于 \(5\%\)时,模型参数值可以以小于 \(10\%\)的相对误差恢复。我们的结果还表明,即使在噪声水平为10%、输入值为40的情况下,黎曼-利乌维尔导数的阶数也能以小于3%的平均相对误差得到恢复,而此时其他参数的恢复精度会明显下降。
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来源期刊
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11.50%
发文量
352
期刊介绍: Computational & Applied Mathematics began to be published in 1981. This journal was conceived as the main scientific publication of SBMAC (Brazilian Society of Computational and Applied Mathematics). The objective of the journal is the publication of original research in Applied and Computational Mathematics, with interfaces in Physics, Engineering, Chemistry, Biology, Operations Research, Statistics, Social Sciences and Economy. The journal has the usual quality standards of scientific international journals and we aim high level of contributions in terms of originality, depth and relevance.
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