Ejemplo n.º 1
0
    def __init__(self, spins=None, spin_ids=None, sim_index=None, scaling_matrix=None, min_algor=None, min_options=None, func_tol=None, grad_tol=None, max_iterations=None, constraints=False, verbosity=0, lower=None, upper=None, inc=None, fields=None, param_names=None):
        """Initialise the base class, storing all the master data to be sent to the slave processor.

        This method is run on the master processor whereas the run() method is run on the slave processor.


        @keyword spins:             The list of spin data container for the cluster.  If this argument is supplied, then the spin_id argument will be ignored.
        @type spins:                list of SpinContainer instances
        @keyword spin_ids:          The list of spin ID strings corresponding to the spins argument.
        @type spin_ids:             list of str
        @keyword sim_index:         The index of the simulation to optimise.  This should be None if normal optimisation is desired.
        @type sim_index:            None or int
        @keyword scaling_matrix:    The diagonal, square scaling matrix.
        @type scaling_matrix:       numpy diagonal matrix
        @keyword min_algor:         The minimisation algorithm to use.
        @type min_algor:            str
        @keyword min_options:       An array of options to be used by the minimisation algorithm.
        @type min_options:          array of str
        @keyword func_tol:          The function tolerance which, when reached, terminates optimisation.  Setting this to None turns of the check.
        @type func_tol:             None or float
        @keyword grad_tol:          The gradient tolerance which, when reached, terminates optimisation.  Setting this to None turns of the check.
        @type grad_tol:             None or float
        @keyword max_iterations:    The maximum number of iterations for the algorithm.
        @type max_iterations:       int
        @keyword constraints:       If True, constraints are used during optimisation.
        @type constraints:          bool
        @keyword verbosity:         The amount of information to print.  The higher the value, the greater the verbosity.
        @type verbosity:            int
        @keyword lower:             The lower bounds of the grid search which must be equal to the number of parameters in the model.  This optional argument is only used when doing a grid search.
        @type lower:                array of numbers
        @keyword upper:             The upper bounds of the grid search which must be equal to the number of parameters in the model.  This optional argument is only used when doing a grid search.
        @type upper:                array of numbers
        @keyword inc:               The increments for each dimension of the space for the grid search. The number of elements in the array must equal to the number of parameters in the model.  This argument is only used when doing a grid search.
        @type inc:                  array of int
        @keyword fields:            The list of unique of spectrometer field strengths.
        @type fields:               int
        @keyword param_names:       The list of parameter names to use in printouts.
        @type param_names:          str
        """

        # Execute the base class __init__() method.
        super(Disp_minimise_command, self).__init__()

        # Store the arguments needed by the run() method.
        self.spins = spins
        self.spin_ids = spin_ids
        self.sim_index = sim_index
        self.scaling_matrix = scaling_matrix
        self.verbosity = verbosity
        self.min_algor = min_algor
        self.min_options = min_options
        self.func_tol = func_tol
        self.grad_tol = grad_tol
        self.max_iterations = max_iterations
        self.fields = fields
        self.param_names = param_names

        # Create the initial parameter vector.
        self.param_vector = assemble_param_vector(spins=self.spins)
        if len(scaling_matrix):
            self.param_vector = dot(inv(scaling_matrix), self.param_vector)

        # Get the grid search minimisation options.
        self.lower_new, self.upper_new = None, None
        if search('^[Gg]rid', min_algor):
            self.grid_size, self.inc_new, self.lower_new, self.upper_new = grid_search_setup(spins=spins, spin_ids=spin_ids, param_vector=self.param_vector, lower=lower, upper=upper, inc=inc, scaling_matrix=self.scaling_matrix)

        # Linear constraints.
        self.A, self.b = None, None
        if constraints:
            self.A, self.b = linear_constraints(spins=spins, scaling_matrix=scaling_matrix)

        # Test if the spectrometer frequencies have been set.
        if spins[0].model in [MODEL_LM63, MODEL_CR72, MODEL_CR72_FULL, MODEL_M61, MODEL_TP02, MODEL_TAP03, MODEL_MP05] and not hasattr(cdp, 'spectrometer_frq'):
            raise RelaxError("The spectrometer frequency information has not been specified.")

        # The R2eff/R1rho data.
        self.values, self.errors, self.missing, self.frqs, self.frqs_H, self.exp_types, self.relax_times = return_r2eff_arrays(spins=spins, spin_ids=spin_ids, fields=fields, field_count=len(fields), sim_index=sim_index)

        # The offset and R1 data.
        self.chemical_shifts, self.offsets, self.tilt_angles = return_offset_data(spins=spins, spin_ids=spin_ids, field_count=len(fields))
        self.r1 = return_r1_data(spins=spins, spin_ids=spin_ids, field_count=len(fields), sim_index=sim_index)

        # Parameter number.
        self.param_num = param_num(spins=spins)

        # The dispersion data.
        self.dispersion_points = cdp.dispersion_points
        self.cpmg_frqs = return_cpmg_frqs(ref_flag=False)
        self.spin_lock_nu1 = return_spin_lock_nu1(ref_flag=False)
Ejemplo n.º 2
0
    def __init__(self, spins=None, spin_ids=None, sim_index=None, scaling_matrix=None, min_algor=None, min_options=None, func_tol=None, grad_tol=None, max_iterations=None, constraints=False, verbosity=0, lower=None, upper=None, inc=None, fields=None, param_names=None):
        """Initialise the base class, storing all the master data to be sent to the slave processor.

        This method is run on the master processor whereas the run() method is run on the slave processor.


        @keyword spins:             The list of spin data container for the cluster.  If this argument is supplied, then the spin_id argument will be ignored.
        @type spins:                list of SpinContainer instances
        @keyword spin_ids:          The list of spin ID strings corresponding to the spins argument.
        @type spin_ids:             list of str
        @keyword sim_index:         The index of the simulation to optimise.  This should be None if normal optimisation is desired.
        @type sim_index:            None or int
        @keyword scaling_matrix:    The diagonal, square scaling matrix.
        @type scaling_matrix:       numpy diagonal matrix
        @keyword min_algor:         The minimisation algorithm to use.
        @type min_algor:            str
        @keyword min_options:       An array of options to be used by the minimisation algorithm.
        @type min_options:          array of str
        @keyword func_tol:          The function tolerance which, when reached, terminates optimisation.  Setting this to None turns of the check.
        @type func_tol:             None or float
        @keyword grad_tol:          The gradient tolerance which, when reached, terminates optimisation.  Setting this to None turns of the check.
        @type grad_tol:             None or float
        @keyword max_iterations:    The maximum number of iterations for the algorithm.
        @type max_iterations:       int
        @keyword constraints:       If True, constraints are used during optimisation.
        @type constraints:          bool
        @keyword verbosity:         The amount of information to print.  The higher the value, the greater the verbosity.
        @type verbosity:            int
        @keyword lower:             The lower bounds of the grid search which must be equal to the number of parameters in the model.  This optional argument is only used when doing a grid search.
        @type lower:                array of numbers
        @keyword upper:             The upper bounds of the grid search which must be equal to the number of parameters in the model.  This optional argument is only used when doing a grid search.
        @type upper:                array of numbers
        @keyword inc:               The increments for each dimension of the space for the grid search. The number of elements in the array must equal to the number of parameters in the model.  This argument is only used when doing a grid search.
        @type inc:                  array of int
        @keyword fields:            The list of unique of spectrometer field strengths.
        @type fields:               int
        @keyword param_names:       The list of parameter names to use in printouts.
        @type param_names:          str
        """

        # Execute the base class __init__() method.
        super(Disp_minimise_command, self).__init__()

        # Store the arguments needed by the run() method.
        self.spins = spins
        self.spin_ids = spin_ids
        self.sim_index = sim_index
        self.scaling_matrix = scaling_matrix
        self.verbosity = verbosity
        self.min_algor = min_algor
        self.min_options = min_options
        self.func_tol = func_tol
        self.grad_tol = grad_tol
        self.max_iterations = max_iterations
        self.lower = lower
        self.upper = upper
        self.inc = inc
        self.fields = fields
        self.param_names = param_names

        # Create the initial parameter vector.
        self.param_vector = assemble_param_vector(spins=self.spins)
        if len(scaling_matrix):
            self.param_vector = dot(inv(scaling_matrix), self.param_vector)

        # Linear constraints.
        self.A, self.b = None, None
        if constraints:
            self.A, self.b = linear_constraints(spins=spins, scaling_matrix=scaling_matrix)

        # Test if the spectrometer frequencies have been set.
        if spins[0].model in [MODEL_LM63, MODEL_CR72, MODEL_CR72_FULL, MODEL_M61, MODEL_TP02, MODEL_TAP03, MODEL_MP05] and not hasattr(cdp, 'spectrometer_frq'):
            raise RelaxError("The spectrometer frequency information has not been specified.")

        # The R2eff/R1rho data.
        self.values, self.errors, self.missing, self.frqs, self.frqs_H, self.exp_types, self.relax_times = return_r2eff_arrays(spins=spins, spin_ids=spin_ids, fields=fields, field_count=len(fields), sim_index=sim_index)

        # The offset and R1 data.
        r1_setup()
        self.offsets, spin_lock_fields_inter, self.chemical_shifts, self.tilt_angles, self.Delta_omega, self.w_eff = return_offset_data(spins=spins, spin_ids=spin_ids, field_count=len(fields))
        self.r1 = return_r1_data(spins=spins, spin_ids=spin_ids, field_count=len(fields), sim_index=sim_index)
        self.r1_fit = is_r1_optimised(spins[0].model)

        # Parameter number.
        self.param_num = param_num(spins=spins)

        # The dispersion data.
        self.dispersion_points = cdp.dispersion_points
        self.cpmg_frqs = return_cpmg_frqs(ref_flag=False)
        self.spin_lock_nu1 = return_spin_lock_nu1(ref_flag=False)
Ejemplo n.º 3
0
def minimise_r2eff(spins=None, spin_ids=None, min_algor=None, min_options=None, func_tol=None, grad_tol=None, max_iterations=None, constraints=False, scaling_matrix=None, verbosity=0, sim_index=None, lower=None, upper=None, inc=None):
    """Optimise the R2eff model by fitting the 2-parameter exponential curves.

    This mimics the R1 and R2 relax_fit analysis.


    @keyword spins:             The list of spins for the cluster.
    @type spins:                list of SpinContainer instances
    @keyword spin_ids:          The list of spin IDs for the cluster.
    @type spin_ids:             list of str
    @keyword min_algor:         The minimisation algorithm to use.
    @type min_algor:            str
    @keyword min_options:       An array of options to be used by the minimisation algorithm.
    @type min_options:          array of str
    @keyword func_tol:          The function tolerance which, when reached, terminates optimisation.  Setting this to None turns of the check.
    @type func_tol:             None or float
    @keyword grad_tol:          The gradient tolerance which, when reached, terminates optimisation.  Setting this to None turns of the check.
    @type grad_tol:             None or float
    @keyword max_iterations:    The maximum number of iterations for the algorithm.
    @type max_iterations:       int
    @keyword constraints:       If True, constraints are used during optimisation.
    @type constraints:          bool
    @keyword scaling_matrix:    The diagonal and square scaling matrix.
    @type scaling_matrix:       numpy rank-2, float64 array or None
    @keyword verbosity:         The amount of information to print.  The higher the value, the greater the verbosity.
    @type verbosity:            int
    @keyword sim_index:         The index of the simulation to optimise.  This should be None if normal optimisation is desired.
    @type sim_index:            None or int
    @keyword lower:             The model specific lower bounds of the grid search which must be equal to the number of parameters in the model.  This optional argument is only used when doing a grid search.
    @type lower:                list of numbers
    @keyword upper:             The model specific upper bounds of the grid search which must be equal to the number of parameters in the model.  This optional argument is only used when doing a grid search.
    @type upper:                list of numbers
    @keyword inc:               The model specific increments for each dimension of the space for the grid search. The number of elements in the array must equal to the number of parameters in the model.  This argument is only used when doing a grid search.
    @type inc:                  list of int
    """

    # Check that the C modules have been compiled.
    if not C_module_exp_fn:
        raise RelaxError("Relaxation curve fitting is not available.  Try compiling the C modules on your platform.")

    # Loop over the spins.
    for si in range(len(spins)):
        # Skip deselected spins.
        if not spins[si].select:
            continue

        # Loop over each spectrometer frequency and dispersion point.
        for exp_type, frq, offset, point in loop_exp_frq_offset_point():
            # The parameter key.
            param_key = return_param_key_from_data(exp_type=exp_type, frq=frq, offset=offset, point=point)

            # The initial parameter vector.
            param_vector = assemble_param_vector(spins=[spins[si]], key=param_key, sim_index=sim_index)

            # Diagonal scaling.
            if scaling_matrix is not None:
                param_vector = dot(inv(scaling_matrix), param_vector)

            # Linear constraints.
            A, b = None, None
            if constraints:
                A, b = linear_constraints(spins=[spins[si]], scaling_matrix=scaling_matrix)

            # Print out.
            if verbosity >= 1:
                # Individual spin section.
                top = 2
                if verbosity >= 2:
                    top += 2
                text = "Fitting to spin %s, frequency %s and dispersion point %s" % (spin_ids[si], frq, point)
                subsection(file=sys.stdout, text=text, prespace=top)

                # Grid search printout.
                if match('^[Gg]rid', min_algor):
                    result = 1
                    for x in inc:
                        result = mul(result, x)
                    print("Unconstrained grid search size: %s (constraints may decrease this size).\n" % result)

            # The peak intensities, errors and times.
            values = []
            errors = []
            times = []
            for time in loop_time(exp_type=exp_type, frq=frq, offset=offset, point=point):
                values.append(average_intensity(spin=spins[si], exp_type=exp_type, frq=frq, offset=offset, point=point, time=time, sim_index=sim_index))
                errors.append(average_intensity(spin=spins[si], exp_type=exp_type, frq=frq, offset=offset, point=point, time=time, error=True))
                times.append(time)

            # Raise errors if number of time points is less than 2.
            if len(times) < 3:
                subsection(file=sys.stdout, text="Exponential curve fitting error for point:", prespace=2)
                point_info = "%s at %3.1f MHz, for offset=%3.3f ppm and dispersion point %-5.1f, with %i time points." % (exp_type, frq/1E6, offset, point, len(times))
                print(point_info)
                raise RelaxError("The data setup points to exponential curve fitting, but only %i time points was found, where 3 time points is minimum.  If calculating R2eff values for fixed relaxation time period data, check that a reference intensity has been specified for each offset value."%(len(times)))

            # The scaling matrix in a diagonalised list form.
            scaling_list = []
            if scaling_matrix is None:
                for i in range(len(param_vector)):
                    scaling_list.append(1.0)
            else:
                for i in range(len(scaling_matrix)):
                    scaling_list.append(scaling_matrix[i, i])

            # Initialise the function to minimise.
            model = Relax_fit_opt(model='exp', num_params=len(param_vector), values=values, errors=errors, relax_times=times, scaling_matrix=scaling_list)

            # Grid search.
            if search('^[Gg]rid', min_algor):
                results = grid(func=model.func, args=(), num_incs=inc, lower=lower, upper=upper, A=A, b=b, verbosity=verbosity)

                # Unpack the results.
                param_vector, chi2, iter_count, warning = results
                f_count = iter_count
                g_count = 0.0
                h_count = 0.0

            # Minimisation.
            else:
                results = generic_minimise(func=model.func, dfunc=model.dfunc, d2func=model.d2func, args=(), x0=param_vector, min_algor=min_algor, min_options=min_options, func_tol=func_tol, grad_tol=grad_tol, maxiter=max_iterations, A=A, b=b, full_output=True, print_flag=verbosity)

                # Unpack the results.
                if results == None:
                    return
                param_vector, chi2, iter_count, f_count, g_count, h_count, warning = results

            # Scaling.
            if scaling_matrix is not None:
                param_vector = dot(scaling_matrix, param_vector)

            # Disassemble the parameter vector.
            disassemble_param_vector(param_vector=param_vector, spins=[spins[si]], key=param_key, sim_index=sim_index)

            # Monte Carlo minimisation statistics.
            if sim_index != None:
                # Chi-squared statistic.
                spins[si].chi2_sim[sim_index] = chi2

                # Iterations.
                spins[si].iter_sim[sim_index] = iter_count

                # Function evaluations.
                spins[si].f_count_sim[sim_index] = f_count

                # Gradient evaluations.
                spins[si].g_count_sim[sim_index] = g_count

                # Hessian evaluations.
                spins[si].h_count_sim[sim_index] = h_count

                # Warning.
                spins[si].warning_sim[sim_index] = warning

            # Normal statistics.
            else:
                # Chi-squared statistic.
                spins[si].chi2 = chi2

                # Iterations.
                spins[si].iter = iter_count

                # Function evaluations.
                spins[si].f_count = f_count

                # Gradient evaluations.
                spins[si].g_count = g_count

                # Hessian evaluations.
                spins[si].h_count = h_count

                # Warning.
                spins[si].warning = warning
Ejemplo n.º 4
0
def minimise_r2eff(spins=None, spin_ids=None, min_algor=None, min_options=None, func_tol=None, grad_tol=None, max_iterations=None, constraints=False, scaling_matrix=None, verbosity=0, sim_index=None, lower=None, upper=None, inc=None):
    """Optimise the R2eff model by fitting the 2-parameter exponential curves.

    This mimics the R1 and R2 relax_fit analysis.


    @keyword spins:             The list of spins for the cluster.
    @type spins:                list of SpinContainer instances
    @keyword spin_ids:          The list of spin IDs for the cluster.
    @type spin_ids:             list of str
    @keyword min_algor:         The minimisation algorithm to use.
    @type min_algor:            str
    @keyword min_options:       An array of options to be used by the minimisation algorithm.
    @type min_options:          array of str
    @keyword func_tol:          The function tolerance which, when reached, terminates optimisation.  Setting this to None turns of the check.
    @type func_tol:             None or float
    @keyword grad_tol:          The gradient tolerance which, when reached, terminates optimisation.  Setting this to None turns of the check.
    @type grad_tol:             None or float
    @keyword max_iterations:    The maximum number of iterations for the algorithm.
    @type max_iterations:       int
    @keyword constraints:       If True, constraints are used during optimisation.
    @type constraints:          bool
    @keyword scaling_matrix:    The diagonal and square scaling matrix.
    @type scaling_matrix:       numpy rank-2, float64 array or None
    @keyword verbosity:         The amount of information to print.  The higher the value, the greater the verbosity.
    @type verbosity:            int
    @keyword sim_index:         The index of the simulation to optimise.  This should be None if normal optimisation is desired.
    @type sim_index:            None or int
    @keyword lower:             The model specific lower bounds of the grid search which must be equal to the number of parameters in the model.  This optional argument is only used when doing a grid search.
    @type lower:                list of numbers
    @keyword upper:             The model specific upper bounds of the grid search which must be equal to the number of parameters in the model.  This optional argument is only used when doing a grid search.
    @type upper:                list of numbers
    @keyword inc:               The model specific increments for each dimension of the space for the grid search. The number of elements in the array must equal to the number of parameters in the model.  This argument is only used when doing a grid search.
    @type inc:                  list of int
    """

    # Check that the C modules have been compiled.
    if not C_module_exp_fn:
        raise RelaxError("Relaxation curve fitting is not available.  Try compiling the C modules on your platform.")

    # Loop over the spins.
    for si in range(len(spins)):
        # Skip deselected spins.
        if not spins[si].select:
            continue

        # Loop over each spectrometer frequency and dispersion point.
        for exp_type, frq, offset, point in loop_exp_frq_offset_point():
            # The parameter key.
            param_key = return_param_key_from_data(exp_type=exp_type, frq=frq, offset=offset, point=point)

            # The initial parameter vector.
            param_vector = assemble_param_vector(spins=[spins[si]], key=param_key, sim_index=sim_index)

            # Diagonal scaling.
            if scaling_matrix is not None:
                param_vector = dot(inv(scaling_matrix), param_vector)

            # Linear constraints.
            A, b = None, None
            if constraints:
                A, b = linear_constraints(spins=[spins[si]], scaling_matrix=scaling_matrix)

            # Print out.
            if verbosity >= 1:
                # Individual spin section.
                top = 2
                if verbosity >= 2:
                    top += 2
                text = "Fitting to spin %s, frequency %s and dispersion point %s" % (spin_ids[si], frq, point)
                subsection(file=sys.stdout, text=text, prespace=top)

                # Grid search printout.
                if match('^[Gg]rid', min_algor):
                    result = 1
                    for x in inc:
                        result = mul(result, x)
                    print("Unconstrained grid search size: %s (constraints may decrease this size).\n" % result)

            # The peak intensities, errors and times.
            values = []
            errors = []
            times = []
            data_flag = True
            for time in loop_time(exp_type=exp_type, frq=frq, offset=offset, point=point):
                # Check the peak intensity keys.
                int_keys = find_intensity_keys(exp_type=exp_type, frq=frq, offset=offset, point=point, time=time)
                peak_intensities = spins[si].peak_intensity
                if sim_index != None:
                    peak_intensities = spins[si].peak_intensity_sim
                for i in range(len(int_keys)):
                    if int_keys[i] not in peak_intensities:
                        if verbosity:
                            warn(RelaxWarning("The spin %s peak intensity key '%s' is not present, skipping the optimisation." % (spin_ids[si], int_keys[i])))
                        data_flag = False
                        break

                if data_flag:
                    values.append(average_intensity(spin=spins[si], exp_type=exp_type, frq=frq, offset=offset, point=point, time=time, sim_index=sim_index))
                    errors.append(average_intensity(spin=spins[si], exp_type=exp_type, frq=frq, offset=offset, point=point, time=time, error=True))
                    times.append(time)
            if not data_flag:
                continue

            # Raise errors if number of time points is less than 2.
            if len(times) < 3:
                subsection(file=sys.stdout, text="Exponential curve fitting error for point:", prespace=2)
                point_info = "%s at %3.1f MHz, for offset=%3.3f ppm and dispersion point %-5.1f, with %i time points." % (exp_type, frq/1E6, offset, point, len(times))
                raise RelaxError("The data setup points to exponential curve fitting, but only %i time points was found, where 3 time points is minimum.  If calculating R2eff values for fixed relaxation time period data, check that a reference intensity has been specified for each offset value."%(len(times)))

            # The scaling matrix in a diagonalised list form.
            scaling_list = []
            if scaling_matrix is None:
                for i in range(len(param_vector)):
                    scaling_list.append(1.0)
            else:
                for i in range(len(scaling_matrix)):
                    scaling_list.append(scaling_matrix[i, i])

            # Initialise the function to minimise.
            model = Relax_fit_opt(model='exp', num_params=len(param_vector), values=values, errors=errors, relax_times=times, scaling_matrix=scaling_list)

            # Grid search.
            if search('^[Gg]rid', min_algor):
                results = grid(func=model.func, args=(), num_incs=inc, lower=lower, upper=upper, A=A, b=b, verbosity=verbosity)

                # Unpack the results.
                param_vector, chi2, iter_count, warning = results
                f_count = iter_count
                g_count = 0.0
                h_count = 0.0

            # Minimisation.
            else:
                results = generic_minimise(func=model.func, dfunc=model.dfunc, d2func=model.d2func, args=(), x0=param_vector, min_algor=min_algor, min_options=min_options, func_tol=func_tol, grad_tol=grad_tol, maxiter=max_iterations, A=A, b=b, full_output=True, print_flag=verbosity)

                # Unpack the results.
                if results == None:
                    return
                param_vector, chi2, iter_count, f_count, g_count, h_count, warning = results

            # Scaling.
            if scaling_matrix is not None:
                param_vector = dot(scaling_matrix, param_vector)

            # Disassemble the parameter vector.
            disassemble_param_vector(param_vector=param_vector, spins=[spins[si]], key=param_key, sim_index=sim_index)

            # Monte Carlo minimisation statistics.
            if sim_index != None:
                # Chi-squared statistic.
                spins[si].chi2_sim[sim_index] = chi2

                # Iterations.
                spins[si].iter_sim[sim_index] = iter_count

                # Function evaluations.
                spins[si].f_count_sim[sim_index] = f_count

                # Gradient evaluations.
                spins[si].g_count_sim[sim_index] = g_count

                # Hessian evaluations.
                spins[si].h_count_sim[sim_index] = h_count

                # Warning.
                spins[si].warning_sim[sim_index] = warning

            # Normal statistics.
            else:
                # Chi-squared statistic.
                spins[si].chi2 = chi2

                # Iterations.
                spins[si].iter = iter_count

                # Function evaluations.
                spins[si].f_count = f_count

                # Gradient evaluations.
                spins[si].g_count = g_count

                # Hessian evaluations.
                spins[si].h_count = h_count

                # Warning.
                spins[si].warning = warning