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When Optimal Filtering Isnt

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 Added by Joseph Fowler
 Publication date 2016
  fields Physics
and research's language is English




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The so-called optimal filter analysis of a microcalorimeters x-ray pulses is statistically optimal only if all pulses have the same shape, regardless of energy. The shapes of pulses from a nonlinear detector can and do depend on the pulse energy, however. A pulse-fitting procedure that we call tangent filtering accounts for the energy dependence of the shape and should therefore achieve superior energy resolution. We take a geometric view of the pulse-fitting problem and give expressions to predict how much the energy resolution stands to benefit from such a procedure. We also demonstrate the method with a case study of K-line fluorescence from several 3d transition metals. The method improves the resolution from 4.9 eV to 4.2 eV at the Cu K$alpha$ line (8.0keV).



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