Simulation and Evaluation of Statistical Downscaling of Regional Daily Precipitation over North China Based on Self-Organizing Maps
Abstract
:1. Introduction
2. Data
2.1. Study Area
2.2. Data
2.2.1. Station Precipitation Data
2.2.2. Reanalysis Data
2.2.3. Division of Time Periods
2.3. Data Pre-Processing
3. Methods
3.1. Principles and Methods for the Selection of Predictive Factors
3.2. The Main Implementation Steps of the SOM-SD Model
3.2.1. Obtaining Various Weather Patterns That Represent the Atmospheric State around the Station through SOM Clustering
3.2.2. Establishing the Relationship between Station Precipitation and Weather Patterns around the Station
3.2.3. Obtaining Downscaled Precipitation Series Based on Monte Carlo Simulation
3.3. Methodology for Evaluating the Simulation Capability of the SOM-SD Model
3.3.1. Evaluation Index of the Degree of Error of the Probability Density Function
3.3.2. Evaluation Index of Statistical Characteristics of Daily Precipitation Statistical Downscaling Results
4. Application of SOM-SD Model in North China
4.1. Selection of Prediction Factors
4.2. Analysis of Precipitation Characteristics at Different Nodes of SOM
4.2.1. Cumulative Probability Distribution Function CDF Curves of Precipitation Values Corresponding to SOM Nodes
4.2.2. Distribution Patterns of Different Factors in the Same Type
4.2.3. Analysis of the Relationship between Interannual Variation of Wet and Dry Node Frequency Difference and Interannual Variation of Average Daily Precipitation
4.3. Simulation Test of SOM-SD Model in North China
4.3.1. Analysis of Simulation Results on the Probability Density Function of Downscaling Results
4.3.2. Evaluation of the Validity of the SOM-SD Simulation Results for Station Precipitation
- a. Evaluation of Precipitation Simulations
- b. Evaluation of Precipitation Frequency Simulations
- c. Assessment of Extreme Precipitation
5. Summary and Conclusions
- (a)
- The representative local atmospheric states around the stations that are closely associated with the formation of precipitation can be described jointly by a set of climate element fields combined together. A certain atmospheric state can be automatically identified and successfully captured using the SOM-based circulation mode typing method, and they are automatically classified into different categories (i.e., weather patterns), each of which corresponds to a different precipitation probability distribution characteristic.
- (b)
- There is a very significant positive correlation between the interannual variation of the difference in the frequency of wet and dry nodes and the interannual variation of precipitation. It is not necessary for the model to well simulate the frequency of each climate mode. As long as the trend of the difference in the frequency of the wet and dry nodes can be successfully simulated, the trend of precipitation can be estimated. This can provide a new perspective to determine the credibility of the predicted future climate change results.
- (c)
- The selection of forecast factors is a critical aspect of precipitation downscaling, which directly affects the downscaling results. When downscaling precipitation at different stations, it is necessary to select forecast factors for each station separately. In general, among all of the forecast factors, such as hur850, hus850, ua500, and va500 a significant positive correlation is shown with precipitation at most of the stations. The effect of slp, uas, and vas on precipitation was relatively weak and differed significantly among the stations. In the wet node, the variables that contribute more to precipitation are often at high values and are prone to precipitation formation. Conversely, in the dry node, the variables that are more correlated with precipitation are often at low values and are not prone to precipitation formation.
- (d)
- To test the applicability of this precipitation downscaling model in the North China region, the downscaling results were analyzed and evaluated in three aspects, including precipitation amount, precipitation frequency, and extreme precipitation. All of the tested indicators performed well.
- (1)
- In the simulation of probability density function, the simulation results of its probability density curve are in good agreement with the observed values. The values of the indicators are between 0 and 1.5 × 10−4, and the values of the indicators are between 0.8 and 1. The precipitation indicators, Prtot and SDII, can obtain better simulation results in summer: The average size of the simulation error of the precipitation downscale total precipitation (Prtot) is −25.3 mm (the average error percentage is −7.4%). The precipitation intensity (SDII) shows negative simulation errors at most of the stations, with an average error size of −1.1 mm (the average error percentage is −11.6%).
- (2)
- In general, the downscaling results are able to reproduce the frequency characteristics of the observed values. The total number of rainy days is underestimated to different degrees at all of the stations. The simulated error of the total number of rainy days (nr001) is −3.1 days, and the SOM-SD model slightly underestimates the total number of rainy days (error percentage −9.8%).
- (3)
- In the simulation of extreme precipitation characteristics, the downscaling model is more capable of simulating extreme summer precipitation events in North China, and the extreme precipitation contribution (P95T) is overestimated with an error of 3.4% (error percentage 6.1%). The maximum continuous rain days (CWD) at each station is underestimated by 1.1 days on average (error percentage −20.0%), and the maximum continuous rain-free days (CDD) is overestimated by 3.5 days on average (error percentage 31.1%).
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Acronym | Definition | Unit |
---|---|---|
Prtot | Total season precipitation | mm/season |
SDII | Simple daily intensity (mean daily precipitation on wet days) | mm/day |
nr001 | Mean number of rainy days for daily precipitation ≥0.1 mm | Days |
P95T | Percentage of rainfall from events beyond 95th percentile value of overall precipitation | Percent |
CWD | Maximum consecutive wet days | Days |
CDD | Maximum consecutive dry days | Days |
Acronym | Unit | Observation | Downscaling | Simulation Error | Error Percentage |
---|---|---|---|---|---|
Prtot | mm/season | 300.5 | 287.3 | −13.2 | −4.4% |
SDII | mm/day | 9.5 | 8.5 | −1.0 | −10.5% |
nr001 | days | 31.8 | 28.7 | −3.1 | −9.7% |
P95T | percent | 56.9% | 58.3% | 1.4% | 2.5% |
CWD | days | 5.1 | 4.1 | −1.0 | −19.6% |
CDD | days | 11.1 | 14.6 | 3.5 | 31.5% |
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Wang, Y.; Sun, X. Simulation and Evaluation of Statistical Downscaling of Regional Daily Precipitation over North China Based on Self-Organizing Maps. Atmosphere 2022, 13, 86. https://doi.org/10.3390/atmos13010086
Wang Y, Sun X. Simulation and Evaluation of Statistical Downscaling of Regional Daily Precipitation over North China Based on Self-Organizing Maps. Atmosphere. 2022; 13(1):86. https://doi.org/10.3390/atmos13010086
Chicago/Turabian StyleWang, Yongdi, and Xinyu Sun. 2022. "Simulation and Evaluation of Statistical Downscaling of Regional Daily Precipitation over North China Based on Self-Organizing Maps" Atmosphere 13, no. 1: 86. https://doi.org/10.3390/atmos13010086
APA StyleWang, Y., & Sun, X. (2022). Simulation and Evaluation of Statistical Downscaling of Regional Daily Precipitation over North China Based on Self-Organizing Maps. Atmosphere, 13(1), 86. https://doi.org/10.3390/atmos13010086