Journal
REMOTE SENSING
Volume 13, Issue 20, Pages -Publisher
MDPI
DOI: 10.3390/rs13204033
Keywords
precipitation; machine learning; random forest; merging; South Korea
Categories
Funding
- Korea Ministry of Environment [201900283001]
Ask authors/readers for more resources
This study utilized a Random Forest (RF) machine-learning algorithm to merge multiple satellite precipitation products, producing new grid-based daily precipitation data for South Korea. The results indicate that the RF model is more effective than statistical merging methods, especially in areas with sparse data.
Precipitation is a crucial component of the water cycle and plays a key role in hydrological processes. Recently, satellite-based precipitation products (SPPs) have provided grid-based precipitation with spatiotemporal variability. However, SPPs contain a lot of uncertainty in estimated precipitation, and the spatial resolution of these products is still relatively coarse. To overcome these limitations, this study aims to generate new grid-based daily precipitation based on a combination of rainfall observation data with multiple SPPs for the period of 2003-2017 across South Korea. A Random Forest (RF) machine-learning algorithm model was applied for producing a new merged precipitation product. In addition, several statistical linear merging methods have been adopted to compare with the results achieved from the RF model. To investigate the efficiency of RF, rainfall data from 64 observed Automated Synoptic Observation System (ASOS) installations were collected to analyze the accuracy of products through several continuous as well as categorical indicators. The new precipitation values produced by the merging procedure generally not only report higher accuracy than a single satellite rainfall product but also indicate that RF is more effective than the statistical merging method. Thus, the achievements from this study point out that the RF model might be applied for merging multiple satellite precipitation products, especially in sparse region areas.
Authors
I am an author on this paper
Click your name to claim this paper and add it to your profile.
Reviews
Recommended
No Data Available