Study of Precipitation Forecast Based on Deep Belief Networks
Abstract
:1. Introduction
2. Related Work
3. Material and Methods
3.1. SVM Based on the PSO
3.2. Deep Belief Network
- Step 1.
- Train the raw input, , as the first RBM layer. The first layer is its visible layer.
- Step 2.
- The hidden layer of the first RBM layer is used as the visual layer of the second RBM layer. The output of the first layer is used as the input of the second layer. This representation can be chosen as being the samples of or mean activations of .
- Step 3.
- Take the transformed samples or mean activations as training examples to train the second layer as an RBM.
- Step 4.
- Repeat Step 2 and Step 3, upward of either samples or mean values each iterate.
- Step 5.
- When the training period is reached, or this satisfies the stop condition, end the iteration.
4. Results and Discussion
4.1. Data Collection and Preprocessing
4.2. Data Normalization
4.3. Algorithm Validation
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Province | Station No. | Station Name | Latitude | Longitude | Air Pressure Sensor Pull Height (m) | Observatory Height (m) |
---|---|---|---|---|---|---|
Jiangsu | 58238 | Nanjing | 31.56 | 118.54 | 36.4 | 35.2 |
PRS (hPa) | PRS_Sea (hPa) | WIN_D (°) | WIN_S (0.1 m/s) | TEM (°C) | RHU (%) | PRE_1h (mm) |
---|---|---|---|---|---|---|
1031.2 | 1035.8 | 89 | 2.5 | 77 | 2 | 0 |
1030.8 | 1035.4 | 113 | 2.9 | 61 | 6.4 | 0 |
1027.3 | 1031.9 | 153 | 2.1 | 49 | 8.3 | 0 |
1026.2 | 1030.8 | 122 | 2 | 55 | 7.1 | 0 |
1027.1 | 1031.7 | 121 | 0.7 | 71 | 4.1 | 0 |
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Du, J.; Liu, Y.; Liu, Z. Study of Precipitation Forecast Based on Deep Belief Networks. Algorithms 2018, 11, 132. https://doi.org/10.3390/a11090132
Du J, Liu Y, Liu Z. Study of Precipitation Forecast Based on Deep Belief Networks. Algorithms. 2018; 11(9):132. https://doi.org/10.3390/a11090132
Chicago/Turabian StyleDu, Jinglin, Yayun Liu, and Zhijun Liu. 2018. "Study of Precipitation Forecast Based on Deep Belief Networks" Algorithms 11, no. 9: 132. https://doi.org/10.3390/a11090132
APA StyleDu, J., Liu, Y., & Liu, Z. (2018). Study of Precipitation Forecast Based on Deep Belief Networks. Algorithms, 11(9), 132. https://doi.org/10.3390/a11090132