Source code for climada.engine.unsequa.calc_cost_benefit

"""
This file is part of CLIMADA.

Copyright (C) 2017 ETH Zurich, CLIMADA contributors listed in AUTHORS.

CLIMADA is free software: you can redistribute it and/or modify it under the
terms of the GNU General Public License as published by the Free
Software Foundation, version 3.

CLIMADA is distributed in the hope that it will be useful, but WITHOUT ANY
WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A
PARTICULAR PURPOSE.  See the GNU General Public License for more details.

You should have received a copy of the GNU General Public License along
with CLIMADA. If not, see <https://www.gnu.org/licenses/>.

---

Define Uncertainty Cost Benefit class
"""

__all__ = ['CalcCostBenefit']

import logging
import time
import itertools

from typing import Optional, Union
import pandas as pd
import numpy as np
import pathos.multiprocessing as mp
# use pathos.multiprocess fork of multiprocessing for compatibility
# wiht notebooks and other environments https://stackoverflow.com/a/65001152/12454103

from climada.engine.cost_benefit import CostBenefit
from climada.engine.unsequa import Calc, InputVar, UncCostBenefitOutput
from climada.engine.unsequa.calc_base import _sample_parallel_iterator, _multiprocess_chunksize, _transpose_chunked_data
from climada.util import log_level
from climada.hazard import Hazard
from climada.entity import Entity

LOGGER = logging.getLogger(__name__)

# Future planed features:
# - Add 'efc' (frequency curve) to UncCostBenenfit

[docs] class CalcCostBenefit(Calc): """ Cost Benefit uncertainty analysis class This is the base class to perform uncertainty analysis on the outputs of climada.engine.costbenefit.CostBenefit(). Attributes ---------- value_unit : str Unit of the exposures value haz_input_var : InputVar or Hazard Present Hazard uncertainty variable ent_input_var : InputVar or Entity Present Entity uncertainty variable haz_unc_fut_Var: InputVar or Hazard Future Hazard uncertainty variable ent_fut_input_var : InputVar or Entity Future Entity uncertainty variable _input_var_names : tuple(str) Names of the required uncertainty variables ('haz_input_var', 'ent_input_var', 'haz_fut_input_var', 'ent_fut_input_var') _metric_names : tuple(str) Names of the cost benefit output metrics ('tot_climate_risk', 'benefit', 'cost_ben_ratio', 'imp_meas_present', 'imp_meas_future') """ _input_var_names = ( 'haz_input_var', 'ent_input_var', 'haz_fut_input_var', 'ent_fut_input_var', ) """Names of the required uncertainty variables""" _metric_names = ( 'tot_climate_risk', 'benefit', 'cost_ben_ratio', 'imp_meas_present', 'imp_meas_future', ) """Names of the cost benefit output metrics"""
[docs] def __init__( self, haz_input_var: Union[InputVar, Hazard], ent_input_var: Union[InputVar, Entity], haz_fut_input_var: Optional[Union[InputVar, Hazard]] = None, ent_fut_input_var: Optional[Union[InputVar, Entity]] = None, ): """Initialize UncCalcCostBenefit Sets the uncertainty input variables, the cost benefit metric_names, and the units. Parameters ---------- haz_input_var : climada.engine.uncertainty.input_var.InputVar or climada.hazard.Hazard Hazard uncertainty variable or Hazard for the present Hazard in climada.engine.CostBenefit.calc ent_input_var : climada.engine.uncertainty.input_var.InputVar or climada.entity.Entity Entity uncertainty variable or Entity for the present Entity in climada.engine.CostBenefit.calc haz_fut_input_var: climada.engine.uncertainty.input_var.InputVar or climada.hazard.Hazard, optional Hazard uncertainty variable or Hazard for the future Hazard The Default is None. ent_fut_input_var : climada.engine.uncertainty.input_var.InputVar or climada.entity.Entity, optional Entity uncertainty variable or Entity for the future Entity in climada.engine.CostBenefit.calc """ Calc.__init__(self) self.haz_input_var = InputVar.var_to_inputvar(haz_input_var) self.ent_input_var = InputVar.var_to_inputvar(ent_input_var) self.haz_fut_input_var = InputVar.var_to_inputvar(haz_fut_input_var) self.ent_fut_input_var = InputVar.var_to_inputvar(ent_fut_input_var) self.value_unit = self.ent_input_var.evaluate().exposures.value_unit self.check_distr()
[docs] def uncertainty(self, unc_sample, processes=1, chunksize=None, **cost_benefit_kwargs): """ Computes the cost benefit for each sample in unc_output.sample_df. By default, imp_meas_present, imp_meas_future, tot_climate_risk, benefit, cost_ben_ratio are computed. This sets the attributes: unc_output.imp_meas_present_unc_df, unc_output.imp_meas_future_unc_df unc_output.tot_climate_risk_unc_df unc_output.benefit_unc_df unc_output.cost_ben_ratio_unc_df unc_output.unit unc_output.cost_benefit_kwargs Parameters ---------- unc_sample : climada.engine.uncertainty.unc_output.UncOutput Uncertainty data object with the input parameters samples processes : int, optional Number of CPUs to use for parralel computations. The default is 1 (not parallel) cost_benefit_kwargs : keyword arguments Keyword arguments passed on to climada.engine.CostBenefit.calc() chunksize: int, optional Size of the sample chunks for parallel processing. Default is equal to the number of samples divided by the number of processes. Returns ------- unc_output : climada.engine.uncertainty.unc_output.UncCostBenefitOutput Uncertainty data object in with the cost benefit outputs for each sample and all the sample data copied over from unc_sample. Raises ------ ValueError: If no sampling parameters defined, the uncertainty distribution cannot be computed. Notes ----- Parallelization logic is described in the base class here :py:class:`~climada.engine.unsequa.calc_base.Calc` See Also -------- climada.engine.cost_benefit: compute risk and adptation option cost benefits. """ if unc_sample.samples_df.empty: raise ValueError("No sample was found. Please create one first" + "using UncImpact.make_sample(N)") # copy may not be needed, but is kept to prevent potential # data corruption issues. The computational cost should be # minimal as only a list of floats is copied. samples_df = unc_sample.samples_df.copy(deep=True) if chunksize is None: chunksize = _multiprocess_chunksize(samples_df, processes) unit = self.value_unit LOGGER.info("The freq_curve is not saved. Please " "change the risk_func (see climada.engine.cost_benefit) " "if return period information is needed") one_sample = samples_df.iloc[0:1] start = time.time() self._compute_cb_metrics(one_sample, cost_benefit_kwargs, chunksize=1, processes=1) elapsed_time = (time.time() - start) self.est_comp_time(unc_sample.n_samples, elapsed_time, processes) #Compute impact distributions [ imp_meas_present, imp_meas_future, tot_climate_risk, benefit, cost_ben_ratio ] = self._compute_cb_metrics(samples_df, cost_benefit_kwargs, chunksize, processes) # Assign computed impact distribution data to self tot_climate_risk_unc_df = \ pd.DataFrame(tot_climate_risk, columns = ['tot_climate_risk']) benefit_unc_df = pd.DataFrame(benefit) benefit_unc_df.columns = [ column + ' Benef' for column in benefit_unc_df.columns] cost_ben_ratio_unc_df = pd.DataFrame(cost_ben_ratio) cost_ben_ratio_unc_df.columns = [ column + ' CostBen' for column in cost_ben_ratio_unc_df.columns] imp_metric_names = ['risk', 'risk_transf', 'cost_meas', 'cost_ins'] im_periods = dict() for imp_meas, period in zip([imp_meas_present, imp_meas_future], ['present', 'future']): df_imp_meas = pd.DataFrame() name = 'imp_meas_' + period if imp_meas[0]: for imp in imp_meas: met_dic = {} for meas, imp_dic in imp.items(): metrics = [imp_dic['risk'], imp_dic['risk_transf'], *imp_dic['cost']] dic_tmp = {meas + ' - ' + m_name + ' - ' + period: [m_value] for m_name, m_value in zip(imp_metric_names, metrics) } met_dic.update(dic_tmp) df_imp_meas = pd.concat( [df_imp_meas, pd.DataFrame(met_dic)], ignore_index=True, sort=False ) im_periods[name + '_unc_df'] = df_imp_meas cost_benefit_kwargs = { key: str(val) for key, val in cost_benefit_kwargs.items()} cost_benefit_kwargs = tuple(cost_benefit_kwargs.items()) return UncCostBenefitOutput(samples_df=samples_df, imp_meas_present_unc_df=im_periods['imp_meas_present_unc_df'], imp_meas_future_unc_df=im_periods['imp_meas_future_unc_df'], tot_climate_risk_unc_df=tot_climate_risk_unc_df, cost_ben_ratio_unc_df=cost_ben_ratio_unc_df, benefit_unc_df=benefit_unc_df, unit=unit, cost_benefit_kwargs=cost_benefit_kwargs)
def _compute_cb_metrics( self, samples_df, cost_benefit_kwargs, chunksize, processes ): """Compute the uncertainty metrics Parameters ---------- samples_df : pd.DataFrame dataframe of input parameter samples cost_benefit_kwargs: kwargs arguments to be passed to the cost_benefit.calc method chunksize : int size of the samples chunks processes : int number of processes to use Returns ------- list values of impact metrics per sample """ with log_level(level='ERROR', name_prefix='climada'): p_iterator = _sample_parallel_iterator( samples=samples_df, chunksize=chunksize, ent_input_var=self.ent_input_var, haz_input_var=self.haz_input_var, ent_fut_input_var=self.ent_fut_input_var, haz_fut_input_var=self.haz_fut_input_var, cost_benefit_kwargs=cost_benefit_kwargs ) if processes>1: with mp.Pool(processes=processes) as pool: LOGGER.info('Using %s CPUs.', processes) cb_metrics = pool.starmap( _map_costben_calc, p_iterator ) else: cb_metrics = itertools.starmap( _map_costben_calc, p_iterator ) #Perform the actual computation with log_level(level='ERROR', name_prefix='climada'): return _transpose_chunked_data(cb_metrics)
def _map_costben_calc( sample_chunks, ent_input_var, haz_input_var, ent_fut_input_var, haz_fut_input_var, cost_benefit_kwargs ): """ Map to compute cost benefit for all parameter samples in parallel Parameters ---------- sample_chunks : pd.DataFrame Dataframe of the parameter samples haz_input_var : InputVar Hazard uncertainty variable or Hazard for the present Hazard in climada.engine.CostBenefit.calc ent_input_var : InputVar Entity uncertainty variable or Entity for the present Entity in climada.engine.CostBenefit.calc haz_fut_input_var: InputVar Hazard uncertainty variable or Hazard for the future Hazard ent_fut_input_var : InputVar Entity uncertainty variable or Entity for the future Entity in climada.engine.CostBenefit.calc cost_benefit_kwargs : Keyword arguments passed on to climada.engine.CostBenefit.calc() Returns ------- list icost benefit metrics list for all samples containing imp_meas_present, imp_meas_future, tot_climate_risk, benefit, cost_ben_ratio """ uncertainty_values = [] for _, sample in sample_chunks.iterrows(): haz_samples = sample[haz_input_var.labels].to_dict() ent_samples = sample[ent_input_var.labels].to_dict() haz_fut_samples = sample[haz_fut_input_var.labels].to_dict() ent_fut_samples = sample[ent_fut_input_var.labels].to_dict() haz = haz_input_var.evaluate(**haz_samples) ent = ent_input_var.evaluate(**ent_samples) haz_fut = haz_fut_input_var.evaluate(**haz_fut_samples) ent_fut = ent_fut_input_var.evaluate(**ent_fut_samples) cb = CostBenefit() ent.exposures.assign_centroids(haz, overwrite=False) if ent_fut: ent_fut.exposures.assign_centroids(haz_fut if haz_fut else haz, overwrite=False) cb.calc(hazard=haz, entity=ent, haz_future=haz_fut, ent_future=ent_fut, save_imp=False, assign_centroids=False, **cost_benefit_kwargs) # Extract from climada.impact the chosen metrics uncertainty_values.append([ cb.imp_meas_present, cb.imp_meas_future, cb.tot_climate_risk, cb.benefit, cb.cost_ben_ratio ]) # Transpose list return list(zip(*uncertainty_values))