Landslide Forecast by Time Series Modeling and Analysis of High-Dimensional and Non-Stationary Ground Motion Data
Abstract
:1. Introduction
2. Motivational Data on Ground Motion in Landslide
3. The Error-Correction Cointegration (ECC) Approach for VAR Time Series
3.1. ECC–VAR(p) Model
3.2. Making Statistical Inferences from the ECC–VAR Model
3.3. Forecasting Based on the Fitted ECC–VAR Model
4. The EDQ Technique for Vector Time Series Dimension Reduction
5. Applying the ECC–VAR–EDQ Method to Analyze the InSAR Landslide Data
5.1. Unit Root Test and Cointegration Test for the EDQ Series
5.2. Estimating and Fitting the ECC(r)–VAR(p) Model for the EDQ Series
5.3. Landslide Displacement Forecasting
6. Probabilistic Landslide Prediction via the ECC–VAR–EDQ Method
6.1. Forecast Intervals for Displacement and Velocity
6.2. Probability of Future Risk of Landslide
6.3. Landslide Prediction for All Locations
7. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Quantile Level | Selected Pixel | Quantile Level | Selected Pixel |
---|---|---|---|
Min | 202 | 0.6 | 827 |
0.1 | 1432 | 0.7 | 672 |
0.2 | 1454 | 0.8 | 685 |
0.3 | 1392 | 0.9 | 630 |
0.4 | 1307 | Max | 534 |
0.5 | 995 |
Quantile Level p | Pixel ID | Augment Dickey−Fuller(ADF) |
---|---|---|
Min | 202 | −0.9334/−26.8762 *** |
0.1 | 1432 | −2.9837 **/−21.3401 *** |
0.2 | 1454 | −4.6048 ***/−21.5254 *** |
0.3 | 1392 | −3.1837 **/−17.0134 *** |
0.4 | 1307 | −3.3355 **/−17.7037 *** |
0.5 | 995 | −2.8695 **/−16.1240 *** |
0.6 | 827 | −1.7187/−14.2224 *** |
0.7 | 672 | −1.4623/−13.3679 *** |
0.8 | 685 | −1.3172/−13.9375 *** |
0.9 | 630 | −1.5063/−11.7859 *** |
Max | 534 | −1.3808/−17.9545 *** |
Hypothesis | Statistic | 10% | 5% | 1% |
---|---|---|---|---|
0.42 | 6.50 | 8.18 | 11.65 | |
5.82 | 15.66 | 17.95 | 23.52 | |
16.77 | 28.71 | 31.52 | 37.22 | |
35.19 | 45.23 | 48.28 | 55.43 | |
57.56 | 66.49 | 70.60 | 78.87 | |
120.14 | 85.18 | 90.39 | 104.20 | |
253.29 | 118.99 | 124.25 | 136.06 | |
404.85 | 151.38 | 157.11 | 168.92 | |
628.63 | 186.54 | 192.84 | 204.79 | |
998.73 | 226.34 | 232.49 | 246.27 | |
1869.85 | 269.53 | 277.39 | 292.65 |
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Qian, G.; Tordesillas, A.; Zheng, H. Landslide Forecast by Time Series Modeling and Analysis of High-Dimensional and Non-Stationary Ground Motion Data. Forecasting 2021, 3, 850-867. https://doi.org/10.3390/forecast3040051
Qian G, Tordesillas A, Zheng H. Landslide Forecast by Time Series Modeling and Analysis of High-Dimensional and Non-Stationary Ground Motion Data. Forecasting. 2021; 3(4):850-867. https://doi.org/10.3390/forecast3040051
Chicago/Turabian StyleQian, Guoqi, Antoinette Tordesillas, and Hangfei Zheng. 2021. "Landslide Forecast by Time Series Modeling and Analysis of High-Dimensional and Non-Stationary Ground Motion Data" Forecasting 3, no. 4: 850-867. https://doi.org/10.3390/forecast3040051