流数据分析的扩展在线DMD和加权修正

G. Nedzhibov
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引用次数: 0

摘要

我们提出了一种计算流数据集在线动态模式分解(online DMD)的新方法。我们提出了一个框架,允许在数据可用时对DMD操作符进行增量更新。由于该方法能够处理低阶数据集,因此比现有方法更具优势。该方法的一个值得注意的特点是,它完全是数据驱动的,不需要了解任何潜在的控制方程。此外,我们提出了我们提出的方法的修改版本,该方法利用加权替代在线DMD。通过几个数值算例对所建议的技术进行了论证。
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Extended Online DMD and Weighted Modifications for Streaming Data Analysis
We present novel methods for computing the online dynamic mode decomposition (online DMD) for streaming datasets. We propose a framework that allows incremental updates to the DMD operator as data become available. Due to its ability to work on datasets with lower ranks, the proposed method is more advantageous than existing ones. A noteworthy feature of the method is that it is entirely data-driven and does not require knowledge of any underlying governing equations. Additionally, we present a modified version of our proposed approach that utilizes a weighted alternative to online DMD. The suggested techniques are demonstrated using several numerical examples.
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