OpenForecast results in 2020-2021
收藏NIAID Data Ecosystem2026-03-13 收录
下载链接:
https://zenodo.org/record/5801140
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资源简介:
OpenForecast is the first national-scale operational runoff forecasting system in Russia. The presented data supports a research article on a long-term assessment of OpenForecast performance in 2020-2021.
File listing:
calibration_vs_hindcast.npy -- Python dictionary that provides results of efficiency assessment for calibration and evaluation (hindcast) periods in terms of NSE and KGE metrics for individual hydrological models (GR4JNSE, GR4JKGE, HBVNSE, HBVKGE).
hindcast_vs_forecast.npy -- Python dictionary that provides results of efficiency assessment for hindcast, pre-operational hindcast, and forecast periods in terms of NSE and KGE metrics for individual hydrological models (GR4JNSE, GR4JKGE, HBVNSE, HBVKGE), as well as their ensemble mean (ENS).
meteo_forecast.npy -- Python dictionary that reports correlation coefficients between ICON and ERA5 reanalysis for air temperature and precipitation forecasts.
users.csv -- daily numbers of OpenForecast users.
Sample code for data access:
import numpy as np
import pandas as pd
calibration_hindcast = np.load("calibration_vs_hindcast.npy", allow_pickle=True).item()
hindcast_forecast = np.load("hindcast_vs_forecast.npy", allow_pickle=True).item()
meteo_forecasts = np.load("meteo_forecast.npy", allow_pickle=True).item()
users = pd.read_csv("users.csv", index_col=0, parse_dates=True, dayfirst=True)
% pandas dataframe for the GR4J_KGE model efficiency in terms of NSE for calibration and hindcast periods
calibration_hindcast["GR4J_KGE"]["NSE"]
% pandas dataframe for the ensemble mean efficiency in terms of NSE for hindcast and forecast periods
hindcast_forecast["ENS"]["NSE"]
% pandas dataframe for correlation coefficients between ICON and ERA5 for precipitation forecasts
meteo_forecasts["P"]["Correlation"]
% available keys of Python dictionaries could be checked as follows
calibration_hindcast.keys()
创建时间:
2021-12-24



