Assessing the Forecasting Accuracy of a Modified Grey Self-Memory Precipitation Model Considering Scale Effects
Abstract
:1. Introduction
2. Methods
2.1. Study Area
2.2. Data Sources
2.3. The Modified Grey Self-Memory Precipitation Forecasting Theory
2.3.1. The Modified Grey Self-Memory Model
- (1)
- Assuming the rainfall time series is , the first-order accumulation series is . According to grey forecasting theory, the whitening equation in GM(1,1) is constructed as follows:
- (2)
- The dynamic core of the self-memory model is constructed as follows:
- (3)
- Taking as a time series, represent historical observation moments, represents the initial forecasting moment, t represents a future forecasting moment, and p is the backtracking order. According to self-memory theory, Equation (3) can be transformed into:Using the mean value theorem, inner product, and integration by parts, Equation (4) can be transformed into:
- (4)
- Let and ; then, the p-order self-memory equation can be transformed into:
- (5)
- According to grey forecasting theory, was reduced, and the reduced value of precipitation was obtained as follows:
2.3.2. Evaluation of Model Accuracy
3. Results and Discussion
3.1. Construction of the Precipitation Forecasting Model
3.2. Evaluation of the MGSM and Comparison with Other Grey System Models
3.3. Precipitation Forecasts
4. Conclusions
- (1)
- The MGSM model constructed in this paper yields higher fitting accuracy at different scales than both the GM(1,1) model and the GSM. The NSE of the precipitation forecasting results at various scales was greater than 0.69, the MARE was between 0.28% and 9.36%, and the RMSE was between 8.5 and 31.81 mm.
- (2)
- Based on the time scale effects of precipitation, the accuracy of the precipitation forecasting results from 2019 to 2023 was tested. The growth period and annual NSE values both exceeded 0.5, and the average relative error was within 5%. The RMSE was also within 30 mm, and the accuracy of estimates in the forecasting stage met the relevant requirements. The proposed method can overcome the shortcomings of traditional methods in which the forecasting accuracy cannot be assessed because of the lack of available measurements.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Serial Number | Station Number | Station Name | Longitude | Latitude | Starting Date (year month) | Ending Date (year month) | Date(s) of the Missing |
---|---|---|---|---|---|---|---|
1 | 50557 | Nenjiang | 125.23 | 49.17 | 1951 01 | 2018 12 | |
2 | 50646 | Nehe | 124.85 | 48.48 | 1961 01 | 2018 12 | |
3 | 50655 | Dedu | 126.18 | 48.5 | 1966 08 | 2018 12 | 1961 01–1966 07 |
4 | 50656 | Beian | 126.51 | 48.28 | 1958 09 | 2018 12 | |
5 | 50658 | Keshan | 125.88 | 48.05 | 1951 01 | 2018 12 | |
6 | 50659 | Kedong | 126.25 | 48.03 | 1959 01 | 2018 12 | 1995 04–1998 12 |
7 | 50739 | Longjiang | 123.18 | 47.33 | 1958 01 | 2018 12 | |
8 | 50741 | Gannan | 123.5 | 47.93 | 1954 11 | 2018 12 | |
9 | 50742 | Fuyu | 124.48 | 47.8 | 1956 10 | 2018 12 | |
10 | 50745 | Qiqihaer | 123.92 | 47.38 | 1951 01 | 2018 12 | |
11 | 50749 | Lindian | 124.83 | 47.18 | 1956 12 | 2018 12 | |
12 | 50750 | Yian | 125.3 | 47.9 | 1956 12 | 2018 12 | |
13 | 50755 | Baiquan | 126.1 | 47.6 | 1956 12 | 2018 12 | |
14 | 50756 | Hailun | 126.97 | 47.43 | 1952 07 | 2018 12 | |
15 | 50758 | Mingshui | 125.9 | 47.16 | 1953 01 | 2018 12 | |
16 | 50767 | Suiling | 127.1 | 47.23 | 1961 01 | 2018 12 | 1995 04–1998 12 |
17 | 50842 | Dumeng | 124.43 | 46.87 | 1959 01 | 2018 12 | |
18 | 50844 | Tailai | 123.42 | 46.4 | 1958 01 | 2018 12 | |
19 | 50851 | Qingang | 126.1 | 46.68 | 1956 12 | 2018 12 | |
20 | 50852 | Wangkui | 126.48 | 46.87 | 1956 12 | 2018 12 | |
21 | 50853 | Suihua | 126.96 | 46.61 | 1952 07 | 2018 12 | |
22 | 50854 | Anda | 125.32 | 46.38 | 1952 07 | 2018 12 | |
23 | 50858 | Zhaodong | 125.97 | 46.07 | 1959 01 | 2018 12 | |
24 | 50859 | Lanxi | 126.27 | 46.25 | 1956 11 | 2018 12 | 1995 04–1998 12 |
25 | 50861 | Qingan | 127.48 | 46.88 | 1956 12 | 2018 12 | |
26 | 50867 | Bayan | 127.35 | 46.08 | 1960 01 | 2018 12 | |
27 | 50950 | Zhaozhou | 125.25 | 45.7 | 1961 01 | 2018 12 | |
28 | 50953 | Haerbin | 126.77 | 45.75 | 1951 01 | 2018 12 | |
29 | 50954 | Zhaoyuan | 125.08 | 45.5 | 1959 01 | 2018 12 | |
30 | 50955 | Shuangcheng | 126.3 | 45.38 | 1956 12 | 2018 12 | |
31 | 50956 | Hulan | 126.6 | 46 | 1955 01 | 2018 12 | 1961 01–2004 12 |
32 | 50958 | Acheng | 126.95 | 45.52 | 1959 05 | 2018 12 | |
33 | 50960 | Bixnian | 127.45 | 45.78 | 1958 01 | 2018 12 | |
34 | 50962 | Mulan | 128.03 | 45.95 | 1956 12 | 2018 12 | |
35 | 54080 | Wuchang | 127.15 | 44.9 | 1957 12 | 2018 12 |
Parameters | Annual | Crop Growth Period | Monthly | |||||
---|---|---|---|---|---|---|---|---|
May | June | July | August | September | ||||
Dynamic core parameters | a | 0.00 | 0.00 | −0.01 | −0.01 | 0.00 | 0.00 | 0.01 |
b | 471.38 | 418.65 | 29.77 | 65.53 | 148.47 | 113.51 | 59.43 | |
Backtracking order | p | 6 | 6 | 4 | 6 | 5 | 5 | 4 |
Self-memory model parameters | −0.50 | −0.50 | - | −0.50 | - | - | - | |
1.00 | 1.00 | - | 1.00 | 0.50 | 0.50 | - | ||
−1.50 | −1.50 | −0.67 | −1.50 | −1.17 | −1.17 | −0.67 | ||
2.00 | 2.00 | 1.33 | 2.00 | 1.67 | 1.67 | 1.33 | ||
−2.50 | −2.50 | −2.00 | −2.50 | −2.33 | −2.33 | −2.00 | ||
3.00 | 3.00 | 2.66 | 3.00 | 2.83 | 2.83 | 2.67 | ||
−3.50 | −3.50 | −3.33 | −3.50 | −3.50 | −3.50 | −3.33 | ||
2.00 | 2.00 | 2.00 | 2.00 | 2.00 | 2.00 | 2.00 | ||
202.59 | 700.25 | - | 36.25 | - | - | - | ||
−202.59 | −700.26 | - | −36.23 | 579.56 | 97.18 | - | ||
202.59 | 700.26 | 47.16 | 36.27 | −772.75 | −129.59 | −57.46 | ||
−202.59 | −700.26 | −47.14 | −36.26 | 579.56 | 97.19 | 57.45 | ||
202.60 | 700.26 | 47.19 | 36.32 | −772.75 | −129.60 | −57.49 | ||
−202.60 | −700.26 | −47.19 | −36.32 | 579.56 | 97.21 | 57.49 | ||
202.62 | 700.26 | 47.25 | 36.39 | −772.76 | −129.63 | −57.54 | ||
−202.62 | −700.27 | −47.27 | −36.41 | 579.57 | 97.24 | 57.55 |
Parameter | Annual | Crop Growth Period | May | June | July | August | September |
---|---|---|---|---|---|---|---|
NSE | 0.80 | 0.82 | 0.76 | 0.79 | 0.72 | 0.80 | 0.69 |
MARE | 0.28 | 0.33 | 4.88 | 3.13 | 3.48 | 3.26 | 9.36 |
RMSE | 31.81 | 28.20 | 8.50 | 13.07 | 21.37 | 18.27 | 11.46 |
Years/Parameters | Year (mm) | Crop Growth Period (mm) | May (mm) | June (mm) | July (mm) | August (mm) | September (mm) | ||
---|---|---|---|---|---|---|---|---|---|
2019 | 578 | 465 | 38 | 73 | 180 | 119 | 67 | 477 | 538 |
2020 | 480 | 410 | 36 | 90 | 150 | 84 | 41 | 402 | 474 |
2021 | 495 | 415 | 43 | 115 | 121 | 102 | 47 | 427 | 480 |
2022 | 578 | 515 | 32 | 128 | 103 | 140 | 61 | 464 | 596 |
2023 | 580 | 484 | 30 | 102 | 147 | 161 | 73 | 514 | 560 |
2019–2023 Mean value | 542 | 461 | 36 | 102 | 142 | 121 | 58 | / | / |
1961–2018 Mean value | 492 | 427 | 39 | 83 | 145 | 107 | 52 | / | / |
NSE | / | / | / | / | / | / | / | 0.520 | 0.745 |
MARE | / | / | / | / | / | / | / | 4.758 | 3.527 |
RMSE | / | / | / | / | / | / | / | 28.01 | 22.68 |
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Meng, F.; Sun, Z.; Yang, L.; Yu, K.; Wang, Z. Assessing the Forecasting Accuracy of a Modified Grey Self-Memory Precipitation Model Considering Scale Effects. Water 2022, 14, 1647. https://doi.org/10.3390/w14101647
Meng F, Sun Z, Yang L, Yu K, Wang Z. Assessing the Forecasting Accuracy of a Modified Grey Self-Memory Precipitation Model Considering Scale Effects. Water. 2022; 14(10):1647. https://doi.org/10.3390/w14101647
Chicago/Turabian StyleMeng, Fanxiang, Zhimin Sun, Long Yang, Kui Yu, and Zongliang Wang. 2022. "Assessing the Forecasting Accuracy of a Modified Grey Self-Memory Precipitation Model Considering Scale Effects" Water 14, no. 10: 1647. https://doi.org/10.3390/w14101647
APA StyleMeng, F., Sun, Z., Yang, L., Yu, K., & Wang, Z. (2022). Assessing the Forecasting Accuracy of a Modified Grey Self-Memory Precipitation Model Considering Scale Effects. Water, 14(10), 1647. https://doi.org/10.3390/w14101647