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Time-Series Prediction Approaches to Forecasting Deformation in Sentinel-1 InSAR Data

机译:定期预测预测哨声-1 insar数据中变形的方法

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Time series of displacement are now routinely available from satellite InSAR and are used for flagging anomalous ground motion, but not yet forecasting. We test conventional time series forecasting methods such as SARIMA and supervised machine learning approaches such as long short-term memory (LSTM) compared to simple function extrapolation. We focus initially on forecasting seasonal signals and begin by characterizing the time-series using sinusoid fitting, seasonal decomposition, and autocorrelation functions. We find that the three measures are broadly comparable but identify different types of seasonal characteristic. We use this to select a set of 310 points with highly seasonal characteristics and test the three chosen forecasting methods over prediction windows of 1-9 months. The lowest overall median RMSE values are obtained for SARIMA when considering short term predictions (<1 month), whereas sinusoid extrapolation produces the lowest median RMSE values for longer predictions (>6 months). Machine learning methods (LSTM) perform less well. We then test the prediction methods on 2,000 randomly selected points with a range of seasonalities and find that simple extrapolation of a constant function performed better overall than any of the more sophisticated time series prediction methods. Comparisons between seasonality and RMSE show a small improvement in performance with increasing seasonality. This proof-of-concept study demonstrates the potential of time-series prediction for InSAR data but also highlights the limitations of applying these techniques to nonperiodic signals or individual measurement points. We anticipate future developments, especially to shorter timescales, will have a broad range of potential applications, from infrastructure stability to volcanic eruptions.
机译:位移时间序列现在通常可以从卫星InSAR中获得,并用于标记异常地面运动,但尚未进行预测。我们测试了传统的时间序列预测方法,如SARIMA和监督机器学习方法,如长短时记忆(LSTM),与简单的函数外推相比。我们最初关注预测季节信号,并从使用正弦拟合、季节分解和自相关函数描述时间序列开始。我们发现,这三个指标具有广泛的可比性,但识别出不同类型的季节特征。我们利用这一点选择了一组具有高度季节性特征的310个点,并在1-9个月的预测窗口内测试了三种选择的预测方法。当考虑短期预测(<1个月)时,SARIMA的总体RMSE中值最低,而正弦外推则会产生较长预测(>6个月)的最低RMSE中值。机器学习方法(LSTM)表现较差。然后,我们在2000个随机选择的点上测试了预测方法,发现简单的常数函数外推总体上比任何更复杂的时间序列预测方法表现更好。季节性和RMSE之间的比较表明,随着季节性的增加,性能略有改善。这项概念验证研究展示了InSAR数据时间序列预测的潜力,但也强调了将这些技术应用于非周期信号或单个测量点的局限性。我们预计未来的发展,尤其是更短的时间,将有广泛的潜在应用,从基础设施的稳定性到火山爆发。

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