Perturbers: SPHERE detection limits to planetary-mass companions in protoplanetary disks
R. Asensio-Torres, Th. Henning, F. Cantalloube, P. Pinilla, D. Mesa,, A. Garufi, S. Jorquera, R. Gratton, G. Chauvin, J. Szulagyi, R. van Boekel,, R. Dong, G.-D. Marleau, M. Benisty, M. Villenave, C. Bergez-Casalou, C., Desgrange, M. Janson, M. Keppler, M. Langlois, F. Menard

TL;DR
This study assesses the detection limits of planetary-mass companions in protoplanetary disks with substructures, using SPHERE imaging data to estimate perturber masses and evaluate the potential for current instruments to detect these planets.
Contribution
It provides a homogeneous analysis of detection limits for planets in 15 protoplanetary disks with substructures, linking observed features to possible planetary perturbers and their masses.
Findings
Detection limits of 3-10 Mjup in cavities.
SPHERE can potentially detect hot-start planets in certain disk features.
Gaps in PDS 66 and HD 97048 are promising for planet searches.
Abstract
The detection of a wide range of substructures such as rings, cavities and spirals has become a common outcome of high spatial resolution imaging of protoplanetary disks, both in the near-infrared scattered light and in the thermal millimetre continuum emission. The most frequent interpretation of their origin is the presence of planetary-mass companions perturbing the gas and dust distribution in the disk (perturbers), but so far the only bona-fide detection has been the two giant planets around PDS 70. Here, we collect a sample of 15 protoplanetary disks showing substructures in SPHERE scattered light images and present a homogeneous derivation of planet detection limits in these systems. We also estimate the mass of these perturbers through a Hill radius prescription and a comparison to ALMA data. Assuming that one single planet carves each substructure in scattered light, we find…
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