Deeper H.E.S.S. observations of Vela Junior (RX J0852.0$-$4622): Morphology studies and resolved spectroscopy
H.E.S.S. Collaboration, H. Abdalla, A. Abramowski, F. Aharonian, F., Ait Benkhali, A.G. Akhperjanian, T. Andersson, E.O. Ang\"uner, M. Arakawa, M., Arrieta, P. Aubert, M. Backes, A. Balzer, M. Barnard, Y. Becherini, J. Becker, Tjus, D. Berge, S. Bernhard, K. Bernl\"ohr

TL;DR
This study uses extensive H.E.S.S. gamma-ray observations combined with Fermi-LAT data to analyze the morphology and spectrum of the Vela Junior supernova remnant, revealing a curved spectrum with an exponential cutoff and exploring leptonic and hadronic emission models.
Contribution
It provides the first detailed spatially resolved spectroscopy of Vela Junior at very high energies and combines multi-wavelength data to constrain particle acceleration mechanisms.
Findings
Spectrum connects smoothly with Fermi-LAT data.
Spectrum deviates from a simple power law, fitting a curved power law or exponential cutoff.
Evidence suggests a pulsar wind nebula contributes to shell emission.
Abstract
Aims. We study gamma-ray emission from the shell-type supernova remnant (SNR) RX J0852.04622 to better characterize its spectral properties and its distribution over the SNR. Methods. The analysis of an extended High Energy Spectroscopic System (H.E.S.S.) data set at very high energies (E > 100 GeV) permits detailed studies, as well as spatially resolved spectroscopy, of the morphology and spectrum of the whole RX J0852.04622 region. The H.E.S.S. data are combined with archival data from other wavebands and interpreted in the framework of leptonic and hadronic models. The joint Fermi-LAT-H.E.S.S. spectrum allows the direct determination of the spectral characteristics of the parent particle population in leptonic and hadronic scenarios using only GeV-TeV data. Results. An updated analysis of the H.E.S.S. data shows that the spectrum of the entire SNR connects smoothly to the…
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