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@@ -1,6 +1,60 @@
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import pandas as pd
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import numpy as np
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from scipy.interpolate import griddata
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from scipy import optimize
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def cpfit(powerdf):
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# Fit the data to thee parameter CP model
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fitfunc = lambda pars,x: abs(pars[0])/(1+(x/abs(pars[2]))) + abs(pars[1])/(1+(x/abs(pars[3])))
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errfunc = lambda pars,x,y: fitfunc(pars,x)-y
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p0 = [500,350,10,8000]
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p1 = p0
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thesecs = powerdf['Delta']
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theavpower = powerdf['CP']
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if len(thesecs)>=4:
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p1, success = optimize.leastsq(errfunc, p0[:], args = (thesecs,theavpower))
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else:
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factor = fitfunc(p0,thesecs.mean())/theavpower.mean()
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p1 = [p0[0]/factor,p0[1]/factor,p0[2],p0[3]]
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p1 = [abs(p) for p in p1]
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fitt = pd.Series(10**(4*np.arange(100)/100.))
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fitpower = fitfunc(p1,fitt)
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fitpoints = fitfunc(p1,thesecs)
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fitpoints0 = fitpoints.copy()
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dd = fitpoints-theavpower
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ddmin = dd.min()
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frac = abs(ddmin)/fitpoints.mean()
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while frac>0.0001:
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fitpoints = fitpoints*(fitpoints.mean()-ddmin)/(fitpoints.mean())
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dd = fitpoints-theavpower
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ddmin = dd.min()
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frac = abs(ddmin)/fitpoints.mean()
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print ddmin,frac
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ratio = fitpoints.mean()/fitpoints0.mean()
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return p1,fitt,fitpower,ratio
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def getlogarr(maxt):
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maxlog10 = np.log10(maxt-5)
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logarr = np.log10(5.)+np.arange(50)*maxlog10/50.
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logarr = [int(10.**(la)) for la in logarr]
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logarr = pd.Series(logarr)
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logarr.drop_duplicates(keep='first',inplace=True)
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logarr = logarr.values
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return logarr
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def getsinglecp(df):
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thesecs = df['TimeStamp (sec)'].max()-df['TimeStamp (sec)'].min()
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@@ -9,13 +63,7 @@ def getsinglecp(df):
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else:
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maxt = 1000.
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maxlog10 = np.log10(maxt)
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logarr = np.arange(50)*maxlog10/50.
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logarr = [int(10.**(la)) for la in logarr]
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logarr = pd.Series(logarr)
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logarr.drop_duplicates(keep='first',inplace=True)
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logarr = logarr.values
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logarr = getlogarr(maxt)
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dfnew = pd.DataFrame({
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@@ -42,7 +90,7 @@ def getcp(dfgrouped,logarr):
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tmax = tt.max()
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if tmax > 500000:
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newlen = int(tmax/5000.)
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newlen = int(tmax/2000.)
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else:
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newlen = len(tt)
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if newlen < len(tt):
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@@ -55,6 +55,7 @@ import rowers.dataprep as dataprep
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from rowers.metrics import axes,axlabels,yaxminima,yaxmaxima
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from utils import lbstoN
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import datautils
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watermarkurl = "/static/img/logo7.png"
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watermarksource = ColumnDataSource(dict(
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@@ -618,29 +619,11 @@ def interactive_otwcpchart(powerdf,promember=0):
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# there is no Paul's law for OTW
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# Fit the data to thee parameter CP model
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fitfunc = lambda pars,x: abs(pars[0])/(1+(x/abs(pars[2]))) + abs(pars[1])/(1+(x/abs(pars[3])))
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errfunc = lambda pars,x,y: fitfunc(pars,x)-y
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p0 = [500,350,10,8000]
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p1 = p0
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thesecs = powerdf['Delta']
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theavpower = powerdf['CP']
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if len(thesecs)>=4:
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p1, success = optimize.leastsq(errfunc, p0[:], args = (thesecs,theavpower))
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else:
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factor = fitfunc(p0,thesecs.mean())/theavpower.mean()
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p1 = [p0[0]/factor,p0[1]/factor,p0[2],p0[3]]
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p1 = [abs(p) for p in p1]
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fitt = pd.Series(10**(4*np.arange(100)/100.))
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fitpower = fitfunc(p1,fitt)
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p1,fitt,fitpower,ratio = datautils.cpfit(powerdf)
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message = ""
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#if len(fitpower[fitpower<0]) > 0:
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# message = "CP model fit didn't give correct results"
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@@ -652,6 +635,7 @@ def interactive_otwcpchart(powerdf,promember=0):
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sourcecomplex = ColumnDataSource(
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data = dict(
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CP = fitpower,
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CPmax = ratio*fitpower,
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duration = fitt,
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ftime = ftime
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)
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@@ -690,6 +674,7 @@ def interactive_otwcpchart(powerdf,promember=0):
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hover.tooltips = OrderedDict([
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('Duration ','@ftime'),
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('Power (W)','@CP{int}'),
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('Power (W) upper','@CPmax{int}'),
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])
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hover.mode = 'mouse'
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@@ -697,6 +682,9 @@ def interactive_otwcpchart(powerdf,promember=0):
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plot.line('duration','CP',source=sourcecomplex,legend="CP Model",
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color='green')
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plot.line('duration','CPmax',source=sourcecomplex,legend="CP Model",
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color='red')
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script, div = components(plot)
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return [script,div,p1,message]
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@@ -2931,15 +2931,7 @@ def otwrankings_view(request,theuser=0,
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maxt = 1000.
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maxlog10 = np.log10(maxt)
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logarr = np.arange(50)*maxlog10/50.
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logarr = [int(10.**(la)) for la in logarr]
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logarr = pd.Series(logarr)
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logarr.drop_duplicates(keep='first',inplace=True)
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logarr = logarr.values
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logarr = datautils.getlogarr(maxt)
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dfgrouped = df.groupby(['workoutid'])
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delta,cpvalue,avgpower = datautils.getcp(dfgrouped,logarr)
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