예제 #1
0
/** Calls Gaussian1D as a child algorithm to fit the offset peak in a spectrum
 *
 *  @param s :: The Workspace Index to fit
 *  @param isAbsolbute :: Whether to calculate an absolute offset
 *  @return The calculated offset value
 */
double GetDetectorOffsets::fitSpectra(const int64_t s, bool isAbsolbute) {
  // Find point of peak centre
  const auto &yValues = inputW->y(s);
  auto it = std::max_element(yValues.cbegin(), yValues.cend());
  const double peakHeight = *it;
  const double peakLoc = inputW->x(s)[it - yValues.begin()];
  // Return if peak of Cross Correlation is nan (Happens when spectra is zero)
  // Pixel with large offset will be masked
  if (std::isnan(peakHeight))
    return (1000.);

  IAlgorithm_sptr fit_alg;
  try {
    // set the ChildAlgorithm no to log as this will be run once per spectra
    fit_alg = createChildAlgorithm("Fit", -1, -1, false);
  } catch (Exception::NotFoundError &) {
    g_log.error("Can't locate Fit algorithm");
    throw;
  }
  auto fun = createFunction(peakHeight, peakLoc);
  fit_alg->setProperty("Function", fun);

  fit_alg->setProperty("InputWorkspace", inputW);
  fit_alg->setProperty<int>(
      "WorkspaceIndex",
      static_cast<int>(s)); // TODO what is the right thing to do here?
  fit_alg->setProperty("StartX", m_Xmin);
  fit_alg->setProperty("EndX", m_Xmax);
  fit_alg->setProperty("MaxIterations", 100);

  IFunction_sptr fun_ptr = createFunction(peakHeight, peakLoc);

  fit_alg->setProperty("Function", fun_ptr);
  fit_alg->executeAsChildAlg();
  std::string fitStatus = fit_alg->getProperty("OutputStatus");
  // Pixel with large offset will be masked
  if (fitStatus != "success")
    return (1000.);

  // std::vector<double> params = fit_alg->getProperty("Parameters");
  API::IFunction_sptr function = fit_alg->getProperty("Function");
  double offset = function->getParameter(3); // params[3]; // f1.PeakCentre
  offset = -1. * offset * m_step / (m_dreference + offset * m_step);
  // factor := factor * (1+offset) for d-spacemap conversion so factor cannot be
  // negative

  if (isAbsolbute) {
    // translated from(DIdeal - FittedPeakCentre)/(FittedPeakCentre)
    // given by Matt Tucker in ticket #10642
    offset += (m_dideal - m_dreference) / m_dreference;
  }
  return offset;
}
예제 #2
0
/** Fit background function
  */
void ProcessBackground::fitBackgroundFunction(std::string bkgdfunctiontype) {
  // Get background type and create bakground function
  BackgroundFunction_sptr bkgdfunction =
      createBackgroundFunction(bkgdfunctiontype);

  int bkgdorder = getProperty("OutputBackgroundOrder");
  bkgdfunction->setAttributeValue("n", bkgdorder);

  if (bkgdfunctiontype == "Chebyshev") {
    double xmin = m_outputWS->readX(0).front();
    double xmax = m_outputWS->readX(0).back();
    g_log.information() << "Chebyshev Fit range: " << xmin << ", " << xmax
                        << "\n";
    bkgdfunction->setAttributeValue("StartX", xmin);
    bkgdfunction->setAttributeValue("EndX", xmax);
  }

  g_log.information() << "Fit selected background " << bkgdfunctiontype
                      << " to data workspace with "
                      << m_outputWS->getNumberHistograms() << " spectra."
                      << "\n";

  // Fit input (a few) background pionts to get initial guess
  API::IAlgorithm_sptr fit;
  try {
    fit = this->createChildAlgorithm("Fit", 0.9, 1.0, true);
  } catch (Exception::NotFoundError &) {
    g_log.error() << "Requires CurveFitting library." << std::endl;
    throw;
  }

  g_log.information() << "Fitting background function: "
                      << bkgdfunction->asString() << "\n";

  double startx = m_lowerBound;
  double endx = m_upperBound;
  fit->setProperty("Function",
                   boost::dynamic_pointer_cast<API::IFunction>(bkgdfunction));
  fit->setProperty("InputWorkspace", m_outputWS);
  fit->setProperty("WorkspaceIndex", 0);
  fit->setProperty("MaxIterations", 500);
  fit->setProperty("StartX", startx);
  fit->setProperty("EndX", endx);
  fit->setProperty("Minimizer", "Levenberg-MarquardtMD");
  fit->setProperty("CostFunction", "Least squares");

  fit->executeAsChildAlg();

  // Get fit status and chi^2
  std::string fitStatus = fit->getProperty("OutputStatus");
  bool allowedfailure = (fitStatus.find("cannot") < fitStatus.size()) &&
                        (fitStatus.find("tolerance") < fitStatus.size());
  if (fitStatus.compare("success") != 0 && !allowedfailure) {
    g_log.error() << "ProcessBackground: Fit Status = " << fitStatus
                  << ".  Not to update fit result" << std::endl;
    throw std::runtime_error("Bad Fit");
  }

  const double chi2 = fit->getProperty("OutputChi2overDoF");
  g_log.information() << "Fit background: Fit Status = " << fitStatus
                      << ", chi2 = " << chi2 << "\n";

  // Get out the parameter names
  API::IFunction_sptr funcout = fit->getProperty("Function");
  TableWorkspace_sptr outbkgdparws = boost::make_shared<TableWorkspace>();
  outbkgdparws->addColumn("str", "Name");
  outbkgdparws->addColumn("double", "Value");

  TableRow typerow = outbkgdparws->appendRow();
  typerow << bkgdfunctiontype << 0.;

  vector<string> parnames = funcout->getParameterNames();
  size_t nparam = funcout->nParams();
  for (size_t i = 0; i < nparam; ++i) {
    TableRow newrow = outbkgdparws->appendRow();
    newrow << parnames[i] << funcout->getParameter(i);
  }

  TableRow chi2row = outbkgdparws->appendRow();
  chi2row << "Chi-square" << chi2;

  g_log.information() << "Set table workspace (#row = "
                      << outbkgdparws->rowCount()
                      << ") to OutputBackgroundParameterTable. "
                      << "\n";
  setProperty("OutputBackgroundParameterWorkspace", outbkgdparws);

  // Set output workspace
  const MantidVec &vecX = m_outputWS->readX(0);
  const MantidVec &vecY = m_outputWS->readY(0);
  FunctionDomain1DVector domain(vecX);
  FunctionValues values(domain);

  funcout->function(domain, values);

  MantidVec &dataModel = m_outputWS->dataY(1);
  MantidVec &dataDiff = m_outputWS->dataY(2);
  for (size_t i = 0; i < dataModel.size(); ++i) {
    dataModel[i] = values[i];
    dataDiff[i] = vecY[i] - dataModel[i];
  }

  return;
}