skills/domains/geoscience/climate-science-guide/SKILL.md
Climate data analysis, modeling workflows, and carbon neutrality research met...
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A research skill for analyzing climate data, working with climate model outputs, and conducting carbon-related studies. Covers data sources, standard analytical workflows, and visualization techniques used in climate science publications.
| Dataset | Variables | Resolution | Period | Source | |---------|-----------|-----------|--------|--------| | ERA5 | Temperature, precipitation, wind, etc. | 0.25 deg, hourly | 1940-present | ECMWF/Copernicus | | GPCP | Precipitation | 2.5 deg, monthly | 1979-present | NASA | | HadCRUT5 | Surface temperature anomaly | 5 deg, monthly | 1850-present | Met Office | | NOAA GHCN | Station temperature, precipitation | Point data | 1850-present | NOAA | | CRU TS | Temperature, precipitation, vapor pressure | 0.5 deg, monthly | 1901-present | UEA CRU |
import xarray as xr
def load_cmip6_data(model: str, experiment: str, variable: str,
member: str = 'r1i1p1f1') -> xr.Dataset:
"""
Load CMIP6 model output from a local or cloud archive.
Args:
model: Model name (e.g., 'CESM2', 'UKESM1-0-LL')
experiment: SSP scenario (e.g., 'ssp245', 'ssp585', 'historical')
variable: Variable name (e.g., 'tas', 'pr', 'tos')
member: Ensemble member ID
"""
# Using Pangeo cloud catalog
import intake
catalog = intake.open_esm_datastore(
"https://storage.googleapis.com/cmip6/pangeo-cmip6.json"
)
query = catalog.search(
source_id=model,
experiment_id=experiment,
variable_id=variable,
member_id=member,
table_id='Amon' # Monthly atmospheric data
)
ds = query.to_dataset_dict(zarr_kwargs={'consolidated': True})
key = list(ds.keys())[0]
return ds[key]
import numpy as np
def compute_global_mean_anomaly(ds: xr.Dataset, var: str = 'tas',
baseline: tuple = (1850, 1900)) -> xr.DataArray:
"""
Compute area-weighted global mean temperature anomaly
relative to a baseline period.
"""
# Area weighting by latitude
weights = np.cos(np.deg2rad(ds.lat))
weights = weights / weights.sum()
# Global mean
global_mean = ds[var].weighted(weights).mean(dim=['lat', 'lon'])
# Baseline climatology
baseline_mean = global_mean.sel(
time=slice(str(baseline[0]), str(baseline[1]))
).mean('time')
anomaly = global_mean - baseline_mean
return anomaly
# Usage
# anomaly = compute_global_mean_anomaly(historical_ds)
# anomaly.plot() # produces a time series of temperature anomaly
Track cumulative CO2 emissions against the remaining carbon budget for temperature targets:
def carbon_budget_tracker(cumulative_emissions_gtco2: float,
target_warming: float = 1.5) -> dict:
"""
Estimate remaining carbon budget.
Based on IPCC AR6 estimates.
"""
# IPCC AR6 remaining budget from 2020 (GtCO2)
budgets = {
1.5: {'50pct': 500, '67pct': 400, '83pct': 300},
2.0: {'50pct': 1350, '67pct': 1150, '83pct': 900}
}
budget = budgets[target_warming]
remaining = {prob: val - cumulative_emissions_gtco2
for prob, val in budget.items()}
# At ~40 GtCO2/year current rate
years_left = {prob: max(0, val / 40) for prob, val in remaining.items()}
return {'remaining_budget_GtCO2': remaining, 'years_at_current_rate': years_left}
result = carbon_budget_tracker(cumulative_emissions_gtco2=200, target_warming=1.5)
print(result)
import matplotlib.pyplot as plt
import cartopy.crs as ccrs
def plot_climate_map(data: xr.DataArray, title: str,
cmap: str = 'RdBu_r', vmin: float = None,
vmax: float = None):
"""Publication-quality climate map."""
fig = plt.figure(figsize=(12, 6))
ax = fig.add_subplot(1, 1, 1, projection=ccrs.Robinson())
ax.coastlines(linewidth=0.5)
ax.gridlines(draw_labels=True, linewidth=0.3, alpha=0.5)
im = data.plot(ax=ax, transform=ccrs.PlateCarree(),
cmap=cmap, vmin=vmin, vmax=vmax,
add_colorbar=False)
cbar = plt.colorbar(im, ax=ax, orientation='horizontal',
pad=0.05, shrink=0.7)
cbar.set_label(data.attrs.get('units', ''))
ax.set_title(title, fontsize=14)
plt.tight_layout()
return fig
cftime) for model outputs with non-standard calendarstools
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