时间序列谐波分析的评价:间隙对时间序列重构的影响

Jie Zhou, L. Jia, G. Hu, M. Menenti
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引用次数: 14

摘要

近几十年来,研究人员开发了许多方法和模型来重建不规则间隔卫星遥感观测数据的时间序列,其中广泛使用的是时间序列谐波分析(HANTS)方法。许多基于HANTS重构时间序列的研究证明了该方法的优异性能。虽然在这些应用中已经注意到HANTS的一些局限性,但没有专门的研究对HANTS方法的性能进行系统评估。在本研究中,我们评估了间隙对HANTS重建NDVI时间序列的影响。为了具有全球代表性,构建了四种通用模式的模拟NDVI时间序列数据集,并作为参考数据集。然后在参考序列中引入随机间隙,通过谐波分析重构参考序列和间隙序列。利用重构结果之间的偏差,对不同间隙条件下谐波分析的精度进行了统计评价。选取最大间隙大小(MGS)、损耗数(NL)和间隙数(NG)作为间隙分布的参数化参数。结果表明,MGS、NL和NG是重建过程中的重要因素,序列的两个末端和峰值是关键位置。对于所有季节性或非季节性情况,MGS和NL在时间序列中不应太大;否则,重构序列不可靠。这些结论可以作为参考,表明HANTS在特定情况下对任何时间序列质量指标定义的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Harmonic Analysis of Time Series (HANTS): impact of gaps on time series reconstruction
In recent decades, researchers have developed methods and models to reconstruct time series of irregularly spaced observations from satellite remote sensing, among which the widely used Harmonic Analysis of Time Series (HANTS) method. Many studies based on time series reconstructed with HANTS documented the excellent performance of this method. While some limitations of HANTS have been noticed in these applications, there is no dedicated study on a systematic evaluation on the performance of the HANTS method. In this study, we evaluated the impact of gaps on the time series reconstruction of NDVI by HANTS. For global representativeness, a simulated NDVI time series dataset was constructed for four generic patterns and was applied as a reference dataset. Then random gaps were introduced into the reference series and both the reference and gapped series were reconstructed by harmonic analysis. The deviations between the two reconstructed results were used to evaluate statistically the accuracy of harmonic analysis under different gap conditions. The size of maximum gap (MGS), the number of loss (NL) and the number of gaps (NG) were selected to parameterize the gap distribution. The results showed that MGS, NL and NG were significant factors in the process of reconstruction and the two terminals and the peak of the series are crucial positions. MGS and NL should not be too large in the time series for all seasonal or non-seasonal case; otherwise the reconstructed series is not reliable. These conclusions can be taken as a reference to indicate the reliability of HANTS for particular cases towards the definition of a quality indicator of any time series.
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