Add function to extract the forecasted storm impacts

master^2
Chris Leaman 6 years ago
parent 36bbb8390f
commit 995b01172f

@ -0,0 +1,73 @@
"""
Estimates the forecasted storm impacts based on the forecasted water level and dune crest/toe.
"""
import logging.config
import os
import pandas as pd
logging.config.fileConfig('./src/logging.conf', disable_existing_loggers=False)
logger = logging.getLogger(__name__)
def forecasted_impacts(df_profile_features, df_forecasted_twl):
"""
Combines our profile features (containing dune toes and crests) with water levels, to get the forecasted storm
impacts.
:param df_profile_features:
:param df_forecasted_twl:
:return:
"""
logger.info('Getting forecasted storm regimes')
df_forecasted_impacts = pd.DataFrame(index=df_profile_features.index)
# For each site, find the maximum R_high value and the corresponding R_low value.
idx = df_forecasted_twl.groupby(level=['site_id'])['R_high'].idxmax().dropna()
df_r_vals = df_forecasted_twl.loc[idx, ['R_high', 'R_low']].reset_index(['datetime'])
df_forecasted_impacts = df_forecasted_impacts.merge(df_r_vals, how='left', left_index=True, right_index=True)
# Join with df_profile features to find dune toe and crest elevations
df_forecasted_impacts = df_forecasted_impacts.merge(df_profile_features[['dune_toe_z', 'dune_crest_z']],
how='left',
left_index=True,
right_index=True)
# Compare R_high and R_low wirth dune crest and toe elevations
df_forecasted_impacts = storm_regime(df_forecasted_impacts)
return df_forecasted_impacts
def storm_regime(df_forecasted_impacts):
"""
Returns the dataframe with an additional column of storm impacts based on the Storm Impact Scale. Refer to
Sallenger (2000) for details.
:param df_forecasted_impacts:
:return:
"""
logger.info('Getting forecasted storm regimes')
df_forecasted_impacts.loc[
df_forecasted_impacts.R_high <= df_forecasted_impacts.dune_toe_z, 'storm_regime'] = 'swash'
df_forecasted_impacts.loc[
df_forecasted_impacts.dune_toe_z <= df_forecasted_impacts.R_high, 'storm_regime'] = 'collision'
df_forecasted_impacts.loc[(df_forecasted_impacts.dune_crest_z <= df_forecasted_impacts.R_high) &
(df_forecasted_impacts.R_low <= df_forecasted_impacts.dune_crest_z),
'storm_regime'] = 'overwash'
df_forecasted_impacts.loc[(df_forecasted_impacts.dune_crest_z <= df_forecasted_impacts.R_low) &
(df_forecasted_impacts.dune_crest_z <= df_forecasted_impacts.R_high),
'storm_regime'] = 'inundation'
return df_forecasted_impacts
if __name__ == '__main__':
logger.info('Importing existing data')
data_folder = './data/interim'
df_profiles = pd.read_csv(os.path.join(data_folder, 'profiles.csv'), index_col=[0, 1, 2])
df_profile_features = pd.read_csv(os.path.join(data_folder, 'profile_features.csv'), index_col=[0])
df_forecasted_twl = pd.read_csv(os.path.join(data_folder, 'twl_mean_slope_sto06.csv'), index_col=[0, 1])
df_forecasted_impacts = forecasted_impacts(df_profile_features, df_forecasted_twl)
df_forecasted_impacts.to_csv(os.path.join(data_folder, 'impacts_forecasted_mean_slope_sto06.csv'))
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