daymetpy attempts to fill the need for easy, integrated access to gridded daily Daymet weather data. The data are hosted by the Oak Ridge National Laboratories DAAC and accessed from their web service.
Install the package using pip and the following command:
pip install daymetpy
Example code to calculate the temperature difference between Denver and Miami is given below. This gives an idea of code functionality and use. A worked example in an ipython notebook format can be found in the 'example' subdirectory.
import sys
import daymetpy
import pandas as pd
import seaborn as sns
import matplotlib.pyplot as plt
denver_loc = (-104.9903, 39.7392)
miami_loc = (-80.2089, 25.7753)
denver = daymetpy.daymet_timeseries(lon=denver_loc[0], lat=denver_loc[1], start_year=2012, end_year=2014)
miami = daymetpy.daymet_timeseries(lon=miami_loc[0], lat=miami_loc[1], start_year=2012, end_year=2014)
fig, ax1 = plt.subplots(1, figsize=(18, 10))
rolling3day = denver.rolling(15).mean()
ax1.fill_between(rolling3day.index, rolling3day.tmin, rolling3day.tmax,
alpha=0.4, lw=0, label='Denver', color=sns.xkcd_palette(['faded green'])[0])
ax1.set_title('Denver vs Miami temps (15 day mean)', fontsize=20)
rolling3day = miami.rolling(15).mean()
ax1.fill_between(rolling3day.index, rolling3day.tmin, rolling3day.tmax,
alpha=0.4, lw=0, label='Miami', color=sns.xkcd_palette(['dusty purple'])[0])
ax1.set_ylabel(u'Temp. (°C)', fontsize=20)
fig.tight_layout()
plt.legend(fontsize=20)
Pandas / seaborn are required.
- Koen Hufkens: [email protected]
- Colin Talbert