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Wavelet kernel function based multiscale LSSVM for elliptic boundary value problems

机译:基于小波内核功能的多尺度LSSVM,用于椭圆边值问题问题

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Recently, Mehrkanoon and Suykens designed a least square support vector machine (LSSVM) for learning solutions to partial differential equations in [1], where the Gaussian radial basis function is used as the kernel of the LSSVM. The purpose of the present paper is twofold: firstly, we extend the Gaussian kernel to wavelet kernel; and secondly, we propose a multiscale scheme, by noticing the multiscale nature of the wavelet kernel functions. The multiscale algorithm consists of a sequence of residual corrections to the solution of the partial differential equation, in which different scale parameters are employed to accommodate information at different scales. However, the direct computation of the multiscale problem would be difficult due to the mixing of different scales. To resolve this problem, we further introduce a multilevel algorithm, which decompose the multiscale algorithm into multiple levels: on the first level, a coarse data set and a large scale parameter are chosen and the target function is interpolated in this data set to capture the large-scale variations of the target function; next, on the second level, a smaller scale parameter is used to interpolate the residuals on a finer data set, capturing the finer details. The sum of both interpolants obviously better approximates the target function at the data sites on the finer data set. This process can be further applied to finer and finer scales till the anticipated accuracy is achieved. Note that sometimes the correction on the finer scale is necessary only at some local sites, thus an adaptive algorithm with only local corrections on finer scale is introduced. The numerical tests on some linear second order elliptic boundary value problems show the efficiency of the multilevel algorithm and the adaptive algorithm. (C) 2019 Elsevier B.V. All rights reserved.
机译:最近,Mehrkanoon和Suykens设计了一种最小二乘支持向量机(LSSVM),用于[1]中的部分微分方程,其中高斯径向基函数用作LSSVM的内核。本文的目的是双重的:首先,我们将高斯内核延伸到小波核;其次,我们通过注意小波核函数的多尺度性质来提出多尺度方案。多尺度算法包括一系列剩余校正,对部分微分方程的解决方案,其中采用不同的比例参数来适应不同尺度的信息。然而,由于不同尺度的混合,多尺度问题的直接计算将困难。为了解决这个问题,我们进一步引入了一种多级算法,该算法将多尺度算法分解为多个级别:在第一级别上,选择粗略数据集和大规模参数,并在该数据集中插入目标函数以捕获目标功能的大规模变化;接下来,在第二级,较小的比例参数用于在更精细的数据集上插入残差,捕获更精细的细节。两个内括号的总和显然更好地近似于更精细数据集的数据站点上的目标函数。该过程可以进一步应用于更精细和更精细的尺度,直到实现预期的准确性。注意,有时,较好刻度上的校正仅在一些本地站点处是必要的,因此引入了仅在更精细校正的局部校正的自适应算法。一些线性二阶椭圆边值问题的数值测试显示了多级算法的效率和自适应算法。 (c)2019 Elsevier B.v.保留所有权利。

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