基于动态模式分解的马来西亚COVID-19大流行可靠趋势预测策略

IF 0.6 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES Chiang Mai Journal of Science Pub Date : 2023-05-31 DOI:10.12982/cmjs.2023.026
Noor Atinah Ahmad, Nurul Ashikin Othman
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引用次数: 0

摘要

采用带时延嵌入的动态模态分解(DMD)来预测单变量时间序列的动态模式。使用DMD可以提取的一个重要模式是时间序列中的趋势或全球变化,这对产生可靠的预测很有用。DMD利用计算效率高的奇异值分解(SVD)来产生线性算子的低秩近似,从而产生时间序列中的动态模式。时间序列中的趋势被转换为低频算子的动态模态。这种低频模式的时间演化产生了时间序列的预测。本文概述了从马来西亚COVID-19时间序列中提取趋势分量的策略。研究发现,除了识别频率变化缓慢的模态外,还需要解决时间戳延迟问题,使重构时间序列的均方误差最小。DMD模态的幅度和相位信息对于识别持久模式和去除非平稳模式是有用的。我们将DMD的性能与另一种基于奇异谱分析(SSA)的方法进行了比较,我们的结果突出了这两种方法之间的一些根本区别。基于SSA的预测倾向于方差最大的方向,重构误差小,但对时间序列突变的检测较慢。另一方面,DMD的预报捕获了支配全球总体格局的主导模态的阶段,因此对时间序列的未来动态提供了更好的预测。
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Strategies for Producing Reliable Trends Forecasting of COVID-19 Pandemic in Malaysia using Dynamic Mode Decomposition
Dynamic Mode Decomposition (DMD) with time delay embedding is used to predict dynamic patterns in univariate time series. An important pattern that can be extracted using DMD is the trend or global change in a time series which is useful for producing reliable forecast. DMD utilizes the computationally effi cient singular value decomposition (SVD) to produce a low rank approximation of the linear operator that brings about the dynamic patterns in the time series. Trend in the time series is translated as dynamic modes of the operator with low frequencies. The time evolution of this low frequency pattern produces forecast of the time series. In this paper, we outline the strategies for extracting trend component from COVID-19 time series of Malaysia. It is discovered that, other than identifying modes with slow varying frequencies, we need to also resolve the time stamp delay, so that mean-square error of the reconstructed time series is minimal. Information of the magnitude and phase of DMD modes are useful to identify persistent patterns and remove nonstationary ones. We compare the performance of DMD with another SVD-based method which is the singular spectrum analysis (SSA) and our results highlight certain fundamental difference between these two methods. The forecasts from SSA tend to lean towards the direction of maximum variance, producing low reconstruction error but slow to detect sudden changes in the time series. On the other hand, forecasts from DMD captures the phases of dominant modes that dictates the overall global pattern, hence providing a better prediction of future dynamics of the time series.
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来源期刊
Chiang Mai Journal of Science
Chiang Mai Journal of Science MULTIDISCIPLINARY SCIENCES-
CiteScore
1.00
自引率
25.00%
发文量
103
审稿时长
3 months
期刊介绍: The Chiang Mai Journal of Science is an international English language peer-reviewed journal which is published in open access electronic format 6 times a year in January, March, May, July, September and November by the Faculty of Science, Chiang Mai University. Manuscripts in most areas of science are welcomed except in areas such as agriculture, engineering and medical science which are outside the scope of the Journal. Currently, we focus on manuscripts in biology, chemistry, physics, materials science and environmental science. Papers in mathematics statistics and computer science are also included but should be of an applied nature rather than purely theoretical. Manuscripts describing experiments on humans or animals are required to provide proof that all experiments have been carried out according to the ethical regulations of the respective institutional and/or governmental authorities and this should be clearly stated in the manuscript itself. The Editor reserves the right to reject manuscripts that fail to do so.
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