A Comparative Analysis of Machine Learning Approaches to Gap Filling Meteorological Datasets (Results Only)
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https://zenodo.org/record/12818854
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资源简介:
This dataset contains the results from our evaluation of methodologies for filling gaps in meterological data. Variables were chosen to represent a standard set of measurements for purposes typically performed using Weather Stations installed in urban and rural areas. There are 4 dimensions by which we measure and validate each of the gap filling models across a large set of experimental configurations: meteorological variables TargetVar (dewpoint, humidity, leaf wetness, temp); feature_set (AWS, AWS-ERA5, ERA5, ERA5_Debias, Spatial); 3 types of machine learning algorithms ML (linear regression, random forests, LightGBM) combined with 2 non-ML algorithms; and gap_length: 1, 4, 36 and 288. A total of 1,720 experiments were conducted: 1,440 machine learning experiments; 160 using a spatial algorithm and 120 experiments using ERA5. For the 3 machine learning experiments, the average result was selected for each of 10 sites for 4 gap sizes (40 results) with the 3 ML models using 3 different feature sets (120 results).
Data is provided in both CSV format and as a MySQL dump.
Resultsets are accompanied with the SQL expression used to generate the result.
创建时间:
2024-08-01



