Establishment of Landslide Groundwater Level Prediction Model Based on GA-SVM and Influencing Factor Analysis
Abstract
:1. Introduction
2. The Forecast Model of Groundwater Level
2.1. Proposed Prediction Model
2.2. Introduction of the GA-SVM Model
2.3. Introduction of the BPNN Model
2.4. Evaluation Model of the Prediction Accuracy
3. Sensors Installation and Data Acquisition
3.1. Geologic Conditions of the Monitored Landslide—The Tangjiao Landslide
3.2. In-Suit Monitoring and Data Acquisition
4. The Groundwater Level Prediction of STK-1
4.1. Monitoring Data of Groundwater Level
- (1)
- Between September 2012 and May 2013, the fluctuation of the reservoir level maintained a high degree of consistency with the groundwater level of hydrological hole STK-1. From May to July 2013, the reservoir level was continuously decreasing from 160 m to 145 m, while the groundwater level clearly fluctuated under the influence of rainfall. The reason is that the front part of the landslide is covered by loose deposits, the high permeability of the soil, and the penetrative pressure induced by short-time intensive rainfall make the groundwater recharge quickly by the rainfall. So, the continuous rise of the groundwater level was affected by the rainfall more than the reservoir level during this period.
- (2)
- On 25 May 2013, the rainfall reached 115 mm/d, and the groundwater level rose from 173.5 m to 177.5 m which increased 4 m within 24 h. Meanwhile, the reservoir level fell at a speed of 1.1 m/d. Three days after the rain stopped, the groundwater level dropped to 174 m again, and then rose rapidly when the rainfall reached 54.6 mm/d on 29 May.
- (3)
- Between September and November 2013, the reservoir level increased into the normal storage level of 175 m, but the groundwater level showed a slight downward trend.
4.2. Determination of Influencing Factors
4.3. The Result Analysis of the Prediction Model
5. The Groundwater Level Prediction of STK-3
5.1. Monitoring Data of Groundwater Level
5.2. Determination of Influencing Factors
5.3. The Result Analysis of the Prediction Model
6. Discussion
6.1. Performance Comparison of GA-SVM and BPNN
6.2. Future Developments of ML Methods
6.3. Geological Factors of Groundwater Level
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Influencing Factor | Degree of Grey Correlation |
---|---|
The reservoir level on the current day | 0.988 |
The change of the reservoir level on the previous day | 0.827 |
The change of the reservoir level over the past two days | 0.827 |
The change of the reservoir level over the past one week | 0.828 |
The rainfall on the current day | 0.854 |
The cumulative rainfall on the previous day | 0.854 |
The cumulative rainfall over the past two days | 0.859 |
The cumulative rainfall over the past one week | 0.879 |
Prediction Model | Multi-Factor GA-SVM | Single-Factor GA-SVM | Multi-Factor BPNN | |
---|---|---|---|---|
Accuracy | RMSE/m | 1.104 | 1.409 | 1.195 |
MAPE/% | 0. 465 | 0.525 | 0.522 | |
R | 0.881 | 0.591 | 0.718 |
Influencing Factor | Degree of Grey Correlation |
---|---|
The rainfall on the current day | 0.856 |
the cumulative rainfall on the previous day | 0.856 |
the cumulative rainfall over the past two days | 0.860 |
the cumulative rainfall over the past one week | 0.880 |
Prediction Model | Multi-Factor GA-SVM | Single-Factor GA-SVM | Multi-Factor BPNN | |
---|---|---|---|---|
Accuracy | RMSE/m | 0.072 | 0.116 | 0.117 |
MAPE/% | 0.032 | 0.048 | 0.0376 | |
R | 0.953 | 0.914 | 0.860 |
STK-1 | STK-3 | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
Model | 1st | 2nd | 3rd | Mean | Variance | 1st | 2nd | 3rd | Mean | Variance |
BPNN | 1.195 | 1.466 | 1.295 | 1.319 | 0.112 | 0.118 | 0.117 | 0.115 | 0.117 | 0.001 |
GA-SVM | 1.104 | 1.104 | 1.104 | 1.104 | 0.000 | 0.072 | 0.072 | 0.072 | 0.072 | 0.000 |
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Cao, Y.; Yin, K.; Zhou, C.; Ahmed, B. Establishment of Landslide Groundwater Level Prediction Model Based on GA-SVM and Influencing Factor Analysis. Sensors 2020, 20, 845. https://doi.org/10.3390/s20030845
Cao Y, Yin K, Zhou C, Ahmed B. Establishment of Landslide Groundwater Level Prediction Model Based on GA-SVM and Influencing Factor Analysis. Sensors. 2020; 20(3):845. https://doi.org/10.3390/s20030845
Chicago/Turabian StyleCao, Ying, Kunlong Yin, Chao Zhou, and Bayes Ahmed. 2020. "Establishment of Landslide Groundwater Level Prediction Model Based on GA-SVM and Influencing Factor Analysis" Sensors 20, no. 3: 845. https://doi.org/10.3390/s20030845
APA StyleCao, Y., Yin, K., Zhou, C., & Ahmed, B. (2020). Establishment of Landslide Groundwater Level Prediction Model Based on GA-SVM and Influencing Factor Analysis. Sensors, 20(3), 845. https://doi.org/10.3390/s20030845