#!/usr/bin/env python # Wenchang Yang (wenchang@princeton.edu) # Wed Oct 5 11:09:59 EDT 2022 if __name__ == '__main__': import sys from misc.timer import Timer tt = Timer('start ' + ' '.join(sys.argv)) import sys, os.path, os, glob, datetime import xarray as xr, numpy as np, pandas as pd, matplotlib.pyplot as plt #more imports from misc.modelout import get_modelout_data, update_modelout_data import xfilter nwindow, dimlp = 9, 'year' #lowpass = lambda x: x.filter.lowpass(1/nwindow, dim=dimlp, padtype='odd') lowpass = lambda x: x.rolling(year=nwindow, center=False, min_periods=1).mean() import geoxarray # if __name__ == '__main__': tt.check('end import') # #start from here model = 'FLOR' daname = 'netrad_toa'#'t_surf' func = lambda x: x.load().geo.fldmean() funcname = 'glbmean' labels = [] das = [] dass = {} label = 'CTL1860_newdiag' expname = 'CTL1860_newdiag_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da da_ctl = da label = '4xCO2' expname = 'co2x4_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) das.append(da) labels.append(label) dass[label] = da label = '2xCO2' expname = 'co2x2_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '0.5xCO2' expname = 'co2xp5_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '0.25xCO2' expname = 'co2xp25_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '+6% Solar' expname = 'p6p0sol_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '+4% Solar' expname = 'p4p0sol_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '+2% Solar' expname = 'p2p0sol_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '+1% Solar' expname = 'p1p0sol_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '-1% Solar' expname = 'm1p0sol_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '-2% Solar' expname = 'm2p0sol_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '-4% Solar' expname = 'm4p0sol_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '-6% Solar' expname = 'm6p0sol_CTL1860_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '1%to4xCO2' expname = 'CTL1860_newdiag_1pct4xCO2_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '1%to4xCO2back' expname = 'CTL1860_newdiag_1pct4xCO2back_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '-6% Solar: recover251' expname = 'm6p0sol_CTL1860_recover0251_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '-6% Solar: recover501' expname = 'm6p0sol_CTL1860_recover0501_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '-6% Solar: recover591' expname = 'm6p0sol_CTL1860_recover0591_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da label = '4xCO2 from y2001' expname = 'CTL1860_newdiag_ic2001_4xCO2_tigercpu_intelmpi_18_576PE' da = update_modelout_data(daname=daname, model=model, expname=expname, func=func, funcname=funcname) labels.append(label) das.append(da) dass[label] = da def wyplot(da, flip=False, **kws): ax = kws.pop('ax', plt.gca()) #da = da.groupby('time.year').mean('time') - da_ctl.groupby('time.year').mean('time').sel(year=slice(101,200)).mean('year') #anom da = da.groupby('time.year').mean('time') if flip: da = -da da = da.pipe(lowpass) #da = da.assign_coords(year=da.year-100) #shift the year axis to start with 0 (instead of 100) da.plot(**kws) #ax.plot(da.isel(year=-1).year, da.isel(year=-1), marker='o', fillstyle='none', color='gray') #ax.text(da.year.values[-1], da.values[-1], f'{da.year.values[-1]}', color='gray') if __name__ == '__main__': from wyconfig import * #my plot settings fig,ax = plt.subplots(figsize=(8,4)) for label,da in dass.items(): if label=='CTL1860_newdiag': da.pipe(wyplot, label=label, color='k', lw=1) ax.set_prop_cycle(None) else: da.pipe(wyplot, label=label, lw=1, alpha=0.8) ax.legend(ncol=3) ax.set_ylabel('W m$^{-2}$') ax.set_xlim(None, da_ctl.time.dt.year.values[-1]+500*0) ax.set_title(f'{model} netrad_toa, {nwindow}-{dimlp}-lp') #savefig if 'savefig' in sys.argv or 's' in sys.argv: figname = __file__.replace('.py', f'.png') if 'overwritefig' in sys.argv or 'o' in sys.argv: wysavefig(figname, overwritefig=True) else: wysavefig(figname) """ #mirror the negative forcing fig,ax = plt.subplots(figsize=(8,4)) label = 'CTL1860_newdiag' da = dass[label] da.pipe(wyplot, label=label, color='k') label = '2xCO2' da = dass[label] da.pipe(wyplot, label=label, color='C0', ls='-') label = '0.5xCO2' da = dass[label] da.pipe(wyplot, label=label, color='C0', ls='--', flip=True) label = '4xCO2' da = dass[label] da.pipe(wyplot, label=label, color='C1', ls='-') label = '0.25xCO2' da = dass[label] da.pipe(wyplot, label=label, color='C1', ls='--', flip=True) label = '+1% Solar' da = dass[label] da.pipe(wyplot, label=label, color='C2', ls='-') label = '-1% Solar' da = dass[label] da.pipe(wyplot, label=label, color='C2', ls='--', flip=True) label = '+2% Solar' da = dass[label] da.pipe(wyplot, label=label, color='C3', ls='-') label = '-2% Solar' da = dass[label] da.pipe(wyplot, label=label, color='C3', ls='--', flip=True) label = '+4% Solar' da = dass[label] da.pipe(wyplot, label=label, color='C4', ls='-') label = '-4% Solar' da = dass[label] da.pipe(wyplot, label=label, color='C4', ls='--', flip=True) label = '+6% Solar' da = dass[label] da.pipe(wyplot, label=label, color='C5', ls='-') label = '-6% Solar' da = dass[label] da.pipe(wyplot, label=label, color='C5', ls='--', flip=True) label = '1%to4xCO2' da = dass[label] da.pipe(wyplot, label=label, color='C6', ls='-') label = '1%to4xCO2back' da = dass[label] da.pipe(wyplot, label=label, color='C7', ls='-') label = '-6% Solar: recover251' da = dass[label] da.pipe(wyplot, label=label, color='C8', ls='--', flip=True) label = '-6% Solar: recover501' da = dass[label] da.pipe(wyplot, label=label, color='C8', ls='--', flip=True) label = '-6% Solar: recover591' da = dass[label] da.pipe(wyplot, label=label, color='C8', ls='--', flip=True) label = '4xCO2 from y2001' da = dass[label] da.pipe(wyplot, label=label, color='C9', ls='-') ax.legend(ncol=3) ax.set_ylabel(f'K') ax.set_xlim(None, da_ctl.time.dt.year.values[-1]+500*0) ax.set_title(f'{model} GMST anom, {nwindow}-{dimlp}-lp') #savefig if 'savefig' in sys.argv or 's' in sys.argv: figname = __file__.replace('.py', f'__mirror.png') if 'overwritefig' in sys.argv or 'o' in sys.argv: wysavefig(figname, overwritefig=True) else: wysavefig(figname) """ tt.check(f'**Done**') print() if 'notshowfig' in sys.argv: pass else: plt.show()