| Literature DB >> 35187478 |
Lu Xiao1, Ming Zhong1,2, Dawei Zha3.
Abstract
Runoff forecasting is useful for flood early warning and water resource management. In this study, backpropagation (BP) neural network, generalized regression neural network (GRNN), extreme learning machine (ELM), and wavelet neural network (WNN) models were employed, and a high-accuracy runoff forecasting model was developed at Wuzhou station in the middle reaches of Xijiang River. The GRNN model was selected as the optimal runoff forecasting model and was also used to predict the streamflow and water level by considering the flood propagation time. Results show that (1) the GRNN presents the best performance in the 7-day lead time of streamflow; (2) the WNN model shows the highest accuracy in the 7-day lead time of water level; (3) the GRNN model performs well in runoff forecasting by considering flood propagation time, increasing the Qualification Rate (QR) of mean streamflow and water level forecast to 98.36 and 82.74%, respectively, and illustrates scientifically of the peak underestimation in streamflow and water level. This research proposes a high-accuracy runoff forecasting model using machine learning, which would improve the early warning capabilities of floods and droughts, the results also lay an important foundation for the mid-long-term runoff forecasting.Entities:
Keywords: forecast; generalized regression neural network (GRNN); machine learning; streamflow; water level; wavelet neural network (WNN)
Year: 2022 PMID: 35187478 PMCID: PMC8856602 DOI: 10.3389/fdata.2021.752406
Source DB: PubMed Journal: Front Big Data ISSN: 2624-909X
Figure 1Map of the study area.
Correlation of input parameters with mean streamflow and mean water level of Wuzhou station.
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| Streamflow | 0.670** | 0.698** | 0.614** | 0.648** | 0.565** | 0.605** | 0.244** | −0.541** | 0.473** | 0.571** | 0.316** | 0.237** |
| Water level | 0.704** | 0.755** | 0.653** | 0.705** | 0.605** | 0.659** | 0.247** | −0.603** | 0.532** | 0.637** | 0.353** | 0.253** |
Pearson correlation coefficient between 0.8 and 1.0, very strong correlation; 0.6–0.8, strong correlation; 0.4–0.6, moderate correlation; 0.2–0.4, weak correlation; 0.0–0.2, very weak correlation or no correlation; “**” represents significant correlation at 0.01 and “*” represents significant correlation at 0.05.
Performance indices of Wuzhou station mean streamflow forecast in the 7-, 10-, and 15-day lead time.
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| BP | 1,772.7856 | 1,934.0324 | 2,098.2541 | 0.2081 | 0.0951 | −0.2322 | 0.5224 | 0.4541 | 0.4333 | 0.2630 | 0.2995 | 0.3715 | 3,036.2640 | 3,268.3675 | 3,304.2589 | 64.88 | 68.86 | 53.50 |
| GRNN | 1,783.1870 | 1,888.3839 | 2,067.9450 | 0.5082 | 0.4338 | 0.3811 | 0.5138 | 0.4497 | 0.3848 | 0.2657 | 0.2767 | 0.3451 | 3,066.2337 | 3,290.1598 | 3,439.9025 | 71.06 | 75.31 | 61.45 |
| ELM | 1,940.0608 | 2,102.5341 | 2,165.5322 | 0.4763 | 0.4122 | 0.3705 | 0.5008 | 0.4420 | 0.4051 | 0.3156 | 0.3696 | 0.3741 | 3,164.0892 | 3,352.1745 | 3,469.1480 | 56.24 | 51.03 | 55.28 |
| WNN | 1,778.2273 | 2,129.8711 | 2,097.3720 | 0.4940 | 0.3928 | 0.3556 | 0.5003 | 0.3932 | 0.3688 | 0.2951 | 0.3705 | 0.3576 | 3,110.2468 | 3,407.3199 | 3,510.0276 | 59.81 | 50.62 | 56.10 |
Performance indices of Wuzhou station mean water level forecast in the 7-, 10-, and 15-day lead time.
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| BP | 1.3460 | 1.4400 | 1.5976 | 0.5205 | 0.3759 | 0.2415 | 0.6365 | 0.5816 | 0.5125 | 0.2100 | 0.2313 | 0.2712 | 1.8897 | 1.9926 | 2.1758 | 67.22 | 63.24 | 60.77 |
| GRNN | 1.3499 | 1.4714 | 1.5761 | 0.6077 | 0.5458 | 0.4713 | 0.6167 | 0.5588 | 0.4781 | 0.2178 | 0.2409 | 0.2614 | 1.9068 | 2.0518 | 2.2138 | 66.12 | 63.65 | 65.98 |
| ELM | 1.3590 | 1.4842 | 1.5871 | 0.5948 | 0.5637 | 0.4687 | 0.6162 | 0.5823 | 0.5001 | 0.2142 | 0.2505 | 0.2729 | 1.9379 | 2.0111 | 2.2192 | 65.71 | 60.08 | 60.22 |
| WNN | 1.2725 | 1.5224 | 1.5850 | 0.6401 | 0.5255 | 0.4644 | 0.6412 | 0.5483 | 0.4662 | 0.2017 | 0.2632 | 0.2589 | 1.8264 | 2.0972 | 2.2282 | 69.68 | 63.79 | 64.61 |
Figure 2Scatter plots of observed and simulated mean streamflow.
Figure 3Hydrographs of observed and simulated mean streamflow.
Figure 4Scatter plots of observed and simulated mean water level.
Figure 5Hydrographs of observed and simulated mean water level.
Performance indices of Wuxuan–Dahuangjiangkou–Wuzhou stations mean streamflow and water level forecast by GRNN.
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| Mean streamflow | 895.9491 (m3·s−1) | 0.8884 | 0.9228 | 0.1302 | 1,459.9038 (m3·s−1) | 98.36 |
| Mean water level | 0.7117 (m) | 0.9099 | 0.9169 | 0.1346 | 0.9134(m) | 82.74 |
Figure 6Scatter plots of Wuxuan–Dahuangjiangkou–Wuzhou stations mean streamflow and water level observed and simulated by GRNN.
Figure 7Hydrograph of Wuxuan–Dahuangjiangkou–Wuzhou stations mean streamflow (A) and water level (B) observed and simulated by GRNN. GRNN, generalized regression neural network.