首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Detecting change-point, trend, and seasonality in satellite time series data to track abrupt changes and nonlinear dynamics: A Bayesian ensemble algorithm
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Detecting change-point, trend, and seasonality in satellite time series data to track abrupt changes and nonlinear dynamics: A Bayesian ensemble algorithm

机译:检测卫星时间序列数据中的变更点,趋势和季节性,以跟踪突然变化和非线性动力学:贝叶斯集合算法

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Satellite time-series data are bolstering global change research, but their use to elucidate land changes and vegetation dynamics is sensitive to algorithmic choices. Different algorithms often give inconsistent or sometimes conflicting interpretations of the same data. This lack of consensus has adverse implications and can be mitigated via ensemble modeling, an algorithmic paradigm that combines many competing models rather than choosing only a single "best" model. Here we report one such time-series decomposition algorithm for deriving nonlinear ecosystem dynamics across multiple timescales-A Bayesian Estimator of Abrupt change, Seasonal change, and Trend (BEAST). As an ensemble algorithm, BEAST quantifies the relative usefulness of individual decomposition models, leveraging all the models via Bayesian model averaging. We tested it upon simulated, Landsat, and MODIS data. BEAST detected changepoints, seasonality, and trends in the data reliably; it derived realistic nonlinear trends and credible uncertainty measures (e.g., occurrence probability of changepoints over time) some information difficult to derive by conventional single-best-model algorithms but critical for interpretation of ecosystem dynamics and detection of low-magnitude disturbances. The combination of many models enabled BEAST to alleviate model misspecification, address algorithmic uncertainty, and reduce over fitting. BEAST is generically applicable to time-series data of all kinds. It offers a new analytical option for robust changepoint detection and nonlinear trend analysis and will help exploit environmental time-series data for probing patterns and drivers of ecosystem dynamics.
机译:卫星时间序列数据是润稳的全球变化研究,但它们用于阐明土地变化和植被动态对算法选择敏感。不同的算法通常会产生不一致的或有时相互冲突的相同数据的解释。这种缺乏共识具有不利影响,可以通过集合建模,这是一种结合许多竞争模型的算法范例来缓解,而不是仅选择一个“最佳”模型。在这里,我们报告了一个这样的时间序列分解算法,用于跨多个时间尺度导出非线性生态系统动态 - 突然变化,季节变化和趋势(野兽)的贝叶斯估计者。作为集合算法,野兽量量化了各个分解模型的相对有用性,通过贝叶斯模型平均利用所有模型。我们在模拟,LANDSAT和MODIS数据上进行了测试。野兽检测到可靠数据的变换点,季节性和趋势;它衍生出现实的非线性趋势和可信的不确定性措施(例如,随着时间的推移发生变化点的发生概率)一些信息难以通过传统的单个最佳模型算法导出,但对于对生态系统动态和低幅度扰动的检测至关重要。许多模型的组合使得野兽能够减轻模型拼写,地址算法不确定性,并减少拟合。野兽在一般适用于各种时序数据。它为强大的变换点检测和非线性趋势分析提供了一种新的分析选项,并有助于利用生态系统动态探测模式和驱动程序的环境时间序列数据。

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