Characterization of a novel pixelated Silicon Drift Detector (PixDD) for high-throughput X-ray astrophysics
Y. Evangelista, F. Ambrosino, M. Feroci, P. Bellutti, G. Bertuccio, G., Borghi, R. Campana, M. Caselle, D. Cirrincione, F. Ficorella, M. Fiorini, F., Fuschino, M. Gandola, M. Grassi, C. Labanti, P. Malcovati, F. Mele, A., Morbidini, A. Picciotto, A. Rachevski, I. Rashevskaya

TL;DR
This paper introduces a novel pixelated silicon drift detector (PixDD) designed for high-throughput X-ray astrophysics, offering nearly Fano-limited energy resolution and fast photon-by-photon response suitable for space applications.
Contribution
The paper presents the design and laboratory characterization of the first 16-pixel PixDD prototype with ultra low-noise read-out, addressing technological gaps in soft X-ray detection.
Findings
Achieved energy resolution ≤150 eV FWHM at 6 keV
Operates effectively at room temperature or moderate cooling
Demonstrated successful laboratory characterization of the prototype
Abstract
Multi-pixel fast silicon detectors represent the enabling technology for the next generation of space-borne experiments devoted to high-resolution spectral-timing studies of low-flux compact cosmic sources. Several imaging detectors based on frame-integration have been developed as focal plane devices for X-ray space-borne missions but, when coupled to large-area concentrator X-ray optics, these detectors are affected by strong pile-up and dead-time effects, thus limiting the time and energy resolution as well as the overall system sensitivity. The current technological gap in the capability to realize pixelated silicon detectors for soft X-rays with fast, photon-by-photon response and nearly Fano-limited energy resolution therefore translates into the unavailability of sparse read-out sensors suitable for high throughput X-ray astronomy applications. In the framework of the ReDSoX…
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