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Processing of X-ray Microcalorimeter Data with Pulse Shape Variation using Principal Component Analysis (1601.01651v1)
Published 7 Jan 2016 in physics.ins-det, astro-ph.IM, and physics.data-an
Abstract: We present a method using principal component analysis (PCA) to process x-ray pulses with severe shape variation where traditional optimal filter methods fail. We demonstrate that PCA is able to noise-filter and extract energy information from x-ray pulses despite their different shapes. We apply this method to a dataset from an x-ray thermal kinetic inductance detector which has severe pulse shape variation arising from position-dependent absorption.
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