Data fitting using solutions of differential equations: Fractional-order model versus integer-order model

T. Skovranek, I. Podlubny, I. Petráš, D. Bednárová
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引用次数: 11

Abstract

The present paper deals with using different mathematical tools and approaches for the data fitting. A comparison of two types of mathematical models, which solutions are used to fit experimental data is done, where the error-of-fit and the computation time are taken as the fitting benchmarks. Both types of the defined models consist of differential equations, one uses fractional, the other integer orders of differentiation. The first advantage of the fractional-order models is the fact that fractional-order differential equation (FDE) has one degree of freedom more (the order of differentiation lies in the interval (0,1)), whereas the integer-order differential equation has the order of differentiation constant, equal to 1. The other advantage besides the “freedom in order” is that FDEs provide a powerful instrument for description of memory and hereditary properties of systems in comparison to the integer-order models, where such effects are neglected or difficult to incorporate. The first aspect of this work consist in choosing a suitable optimization method for finding the parameters of the defined models based on minimizing chosen fitting criterion. The Medium-scale optimization, using the tools of sequential quadratic programming, Quasi-Newton and line-search algorithms (performed by the MATLAB function fmincon) is compared with the evolutionary - genetic algorithm (performed by the MATLAB function ga). The second aspect lies in using two different approaches in the formulation of the optimization criterion. For the time domain identification the classical least squares method (LSM) and so the sum of vertical offsets will be used. The state-space identification will use the total least squares method (TLSM or the so-called orthogonal distance fitting criterion - ODF), which uses the sum of orthogonal (perpendicular) distances between the experimental points and the fitting curve. Several examples are presented in the form of figures. The efficiency of computation and the values of the error-of-fit using different approaches are compared in the form of tables.
微分方程解的数据拟合:分数阶模型与整阶模型
本文讨论了使用不同的数学工具和方法进行数据拟合。以拟合误差和计算时间为拟合基准,对两类数学模型的解进行了比较。两种定义的模型都由微分方程组成,一种使用分数阶微分,另一种使用整数阶微分。分数阶模型的第一个优点是分数阶微分方程(FDE)多一个自由度(微分阶在区间(0,1)),而整阶微分方程的微分阶常数为1。除了“顺序自由”之外的另一个优点是,与整数阶模型相比,fde为描述系统的记忆和遗传特性提供了强大的工具,整数阶模型忽略了这些影响或难以合并。这项工作的第一个方面是在最小化所选拟合准则的基础上,选择合适的优化方法来寻找已定义模型的参数。采用顺序二次规划、准牛顿和直线搜索算法(由MATLAB函数fmincon执行)与进化遗传算法(由MATLAB函数ga执行)进行了中等规模的优化比较。第二个方面是采用两种不同的方法来制定优化准则。对于时域识别,将使用经典的最小二乘法(LSM)和垂直偏移量之和。状态空间识别将使用总最小二乘法(TLSM)或所谓的正交距离拟合准则(ODF),它使用实验点与拟合曲线之间的正交(垂直)距离和。以图表的形式给出了几个例子。用表格的形式比较了不同方法的计算效率和拟合误差值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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