Euclid preparation. XVIII. The NISP photometric system
Euclid Collaboration: M. Schirmer (1), K. Jahnke (1), G. Seidel (1),, H. Aussel (2), C. Bodendorf (3), F. Grupp (3,4), F. Hormuth (1), S. Wachter, (5), P.N. Appleton (6), R. Barbier (7), J. Brinchmann (8,9), J.M. Carrasco, (10), F.J. Castander (11,12), J. Coupon (13)

TL;DR
This paper details the precise computation and calibration of Euclid's NISP photometric system, including passband variations, transformations to ground-based systems, and tools for accurate magnitude calculations, ensuring reliable photometry for cosmological studies.
Contribution
It provides the first detailed characterization and calibration of Euclid's NISP photometric passbands, accounting for spatial and angular variations, and offers tools for accurate magnitude computation.
Findings
Passband variations are characterized with 0.8 nm accuracy.
Transformations to ground-based systems are established for different object types.
A Python tool for magnitude computation is provided.
Abstract
Euclid will be the first space mission to survey most of the extragalactic sky in the 0.95-2.02 m range, to a 5 point-source median depth of 24.4 AB mag. This unique photometric data set will find wide use beyond Euclid's core science. In this paper, we present accurate computations of the Euclid Y_E, J_E and H_E passbands used by the Near-Infrared Spectrometer and Photometer (NISP), and the associated photometric system. We pay particular attention to passband variations in the field of view, accounting among others for spatially variable filter transmission, and variations of the angle of incidence on the filter substrate using optical ray tracing. The response curves' cut-on and cut-off wavelengths - and their variation in the field of view - are determined with 0.8 nm accuracy, essential for the photometric redshift accuracy required by Euclid. After computing the…
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