def makeRecipe(x, y, dy, A, sig, x0): """Make a FitRecipe for fitting a Gaussian curve to data. """ profile = Profile() profile.setObservedProfile(x, y, dy) contribution = FitContribution("g1") contribution.setProfile(profile, xname="x") contribution.setEquation("A * exp(-0.5*(x-x0)**2/sigma**2)") recipe = FitRecipe() recipe.addContribution(contribution) recipe.addVar(contribution.A, A) recipe.addVar(contribution.x0, x0) recipe.addVar(contribution.sigma, sig) return recipe
def _makeRecipe(self, x, y, dy): '''Make a FitRecipe for fitting a Gaussian curve to data. ''' profile = Profile() profile.setObservedProfile(x, y, dy) contribution = FitContribution("g1") contribution.setProfile(profile, xname="x") contribution.registerStringFunction('1/sqrt(2 * pi * sig**2)', name='gaussnorm') contribution.setEquation( "A * gaussnorm * exp(-0.5 * (x - x0)**2/sig**2)") recipe = FitRecipe() recipe.addContribution(contribution) recipe.addVar(contribution.A) recipe.addVar(contribution.x0) recipe.addVar(contribution.sig) recipe.clearFitHooks() self.recipe = recipe return
def _makeRecipe(self, x, y, dy): '''Make a FitRecipe for fitting a Gaussian curve to data. ''' profile = Profile() profile.setObservedProfile(x, y, dy) contribution = FitContribution("g1") contribution.setProfile(profile, xname="x") contribution.registerStringFunction( '1/sqrt(2 * pi * sig**2)', name='gaussnorm') contribution.setEquation( "A * gaussnorm * exp(-0.5 * (x - x0)**2/sig**2)") recipe = FitRecipe() recipe.addContribution(contribution) recipe.addVar(contribution.A) recipe.addVar(contribution.x0) recipe.addVar(contribution.sig) recipe.clearFitHooks() self.recipe = recipe return
def makeRecipe(): """Make the recipe for the fit. The instructions for what we want to refine, and how to refine it will be defined within a FitRecipe instance. The job of a FitRecipe is to collect and associate all the data, the fitting equations, fitting variables, constraints and restrations. We will demonstrate each of these within the code. Data is held within a Profile object. The Profile is simply a container that holds the data, and the theoretical profile once it has been calculated. Data is associated with a fitting equation within a FitContribution. The FitContribution defines the equation and parameters that will be adjusted to fit the data. The fitting equation can be defined within a function or optionally within the ProfileGenerator class. We won't need the ProfileGenerator class in this example since the signature of the fitting equation (the 'debye' function defined below) is so simple. The FitContribution also defines the residual function to optimize for the data/equation pair. This can be modified, but we won't do that here. """ ## The Profile # Create a Profile to hold the experimental and calculated signal. profile = Profile() # Load data and add it to the profile. It is our responsibility to get our # data into the profile. xydy = numpy.array(map(float, data.split()), dtype=float).reshape(-1,3) x, y, dy = numpy.hsplit(xydy, 3) profile.setObservedProfile(x, y, dy) ## The FitContribution # The FitContribution associates the profile with the Debye function. contribution = FitContribution("pb") # Tell the contribution about the Profile. We will need to use the # independent variable (the temperature) from the data to calculate the # theoretical signal, so give it an informative name ('T') that we can use # later. contribution.setProfile(profile, xname="T") # We now need to create the fitting equation. We tell the FitContribution # to use the 'debye' function defined below. The 'registerFunction' method # will let us do this. Since we haven't told it otherwise, # 'registerFunction' will extract the name of the function ('debye') and # the names of the arguments ('T', 'm', 'thetaD'). These arguments will # become Parameters of the FitContribution. Since we named the x-variable # 'T' above, the 'T' in the 'debye' equation will refer to this x-variable # whenever it is used. contribution.registerFunction(debye) # Now we can create the fitting equation. We want to extend the 'debye' # equation by adding a vertical offset. We could wrap 'debye' in a new # function with an offset, and register that instead of 'debye', but what # we do here is easier. # # When we set the fitting equation, we do not need to specify the # Parameters to the 'debye' function since the FitContribution already # knows what they are. If we choose to specify the arguments, we can make # adjustments to their input values. We wish to have the thetaD value in # the debye equation to be positive, so we specify the input as abs(thetaD) # in the equation below. Furthermore, we know 'm', the mass of lead, so we # can specify that as well. contribution.setEquation("debye(T, 207.2, abs(thetaD)) + offset") ## The FitRecipe # The FitRecipe lets us define what we want to fit. It is where we can # create variables, constraints and restraints. If we had multiple profiles # to fit simultaneously, the contribution from each could be added to the # recipe. recipe = FitRecipe() recipe.addContribution(contribution) # Specify which Parameters we want to refine. # Vary the offset recipe.addVar(contribution.offset, 0) # We also vary the Debye temperature. recipe.addVar(contribution.thetaD, 100) # We would like to 'suggest' that the offset should remain positive. This # is somethine that we know about the system that might help the refinement # converge to a physically reasonable result. We will do this with a soft # contraint, or restraint. Here we restrain the offset variable to between # 0 and infinity. We tell the recipe that we want to scale the penalty for # breaking the restraint by the point-average chi^2 value so that the # restraint is roughly as significant as any other data point throughout # the fit. recipe.restrain(recipe.offset, lb = 0, scaled = True) # We're done setting up the recipe. We can now do other things with it. return recipe
import matplotlib.pyplot as plt plt.ion() plt.clf() plt.hold(False) plt.plot(xobs, yobs, 'x') plt.title('y = 0.5*x + 3 generated with a normal noise at sigma=0.3') plt.show() # <demo> --- stop --- # We are going to define a line fitting regression using SrFit. # At first we create a SrFit Profile object that holds the observed data. from diffpy.srfit.fitbase import Profile linedata = Profile() linedata.setObservedProfile(xobs, yobs, dyobs) # The second step is to create a FitContribution object, which associates # observed profile with a mathematical model for the dependent variable. from diffpy.srfit.fitbase import FitContribution linefit = FitContribution('linefit') linefit.setProfile(linedata) linefit.setEquation("A * x + B") # SrFit objects can be examined by calling their show() function. SrFit # parses the model equation and finds two parameters A, B at independent # variable x. The values of parameters A, B are at this stage undefined. linefit.show()
# Plot the generated "observed" data (xobs, yobs). import matplotlib.pyplot as plt plt.ion(); plt.clf(); plt.hold(False) plt.plot(xobs, yobs, 'x') plt.title('y = 0.5*x + 3 generated with a normal noise at sigma=0.3') plt.show() # <demo> --- stop --- # We are going to define a line fitting regression using SrFit. # At first we create a SrFit Profile object that holds the observed data. from diffpy.srfit.fitbase import Profile linedata = Profile() linedata.setObservedProfile(xobs, yobs, dyobs) # The second step is to create a FitContribution object, which associates # observed profile with a mathematical model for the dependent variable. from diffpy.srfit.fitbase import FitContribution linefit = FitContribution('linefit') linefit.setProfile(linedata) linefit.setEquation("A * x + B") # SrFit objects can be examined by calling their show() function. SrFit # parses the model equation and finds two parameters A, B at independent # variable x. The values of parameters A, B are at this stage undefined. linefit.show()
import matplotlib.pyplot as plt plt.ion() plt.clf() plt.hold(False) plt.plot(xobs, yobs, 'x') plt.title('Two peaks simulated') plt.show() # <demo> --- stop --- # We are going to define a line fitting regression using SrFit. # At first we create a SrFit Profile object that holds the observed data. from diffpy.srfit.fitbase import Profile profile = Profile() profile.setObservedProfile(xobs, yobs) # The second step is to create a FitContribution object, which associates # observed profile with a mathematical model for the dependent variable. from diffpy.srfit.fitbase import FitContribution large_gaussian = FitContribution("g1") large_gaussian.setProfile(profile, xname="x") large_gaussian.registerStringFunction('1/sqrt(2 * pi * lgsig**2)', name='gaussnorm') large_gaussian.setEquation( "lgA * gaussnorm * exp(-0.5 * (x - lgx0)**2/lgsig**2)") small_gaussian = FitContribution("g2") small_gaussian.setProfile(profile, xname="x") small_gaussian.registerStringFunction('1/sqrt(2 * pi * sgsig**2)',