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Data smoothing and numerical differentiation by a regularization method

机译:通过正则化方法进行数据平滑和数值微分

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摘要

While data smoothing by regularization is not new, the method has been little used by scientists and engineers to analyze noisy data. In this tutorial survey, the general concepts of the method and mathematical development necessary for implementation for a variety of data types are presented. The method can easily accommodate unequally spaced and even non-monotonic scattered data. Methods for scaling the regularization parameter and determining its optimal value are also presented. The method is shown to be especially useful for determining numerical derivatives of the data trend, where the usual finite-difference approach amplifies the noise. Additionally, the method is shown to be helpful for interpolation and extrapolation. Two examples data sets were used to demonstrate the use of smoothing by regularization: a model data set constructed by adding random errors to a sine curve and global mean temperature data from the NASA Goddard Institute for Space Studies.
机译:尽管通过正则化进行数据平滑并不是什么新鲜事,但科学家和工程师很少使用这种方法来分析嘈杂的数据。在本教程调查中,介绍了实现各种数据类型所需的方法和数学开发的一般概念。该方法可以轻松地容纳不等距甚至非单调的分散数据。还提出了缩放正则化参数并确定其最佳值的方法。结果表明,该方法对于确定数据趋势的数值导数特别有用,而通常的有限差分方法会放大噪声。此外,该方法还显示出有助于内插和外推。使用两个示例数据集来演示通过正则化进行平滑处理的方法:通过向正弦曲线中添加随机误差而构建的模型数据集,以及来自NASA哥达德空间研究所的全球平均温度数据。

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