280 one-opposition near-Earth asteroids recovered by the EURONEAR with the Isaac Newton Telescope
O. Vaduvescu, L. Hudin, T. Mocnik, F. Char, A. Sonka, V. Tudor, I., Ordonez-Etxeberria, M. Diaz Alfaro, R. Ashley, R. Errmann, P. Short, A., Moloceniuc, R. Cornea, V. Inceu, D. Zavoianu, M. Popescu, L. Curelaru, S., Mihalea, A.-M. Stoian, A. Boldea, R. Toma, L. Fields

TL;DR
This study successfully recovered 280 one-opposition near-Earth asteroids using the Isaac Newton Telescope, extending orbital arcs, improving orbit accuracy, and discovering new NEAs through a collaborative effort over several years.
Contribution
The paper demonstrates a large-scale recovery campaign of one-opposition NEAs with detailed methodology, involving amateur and student participation, and reports significant improvements in orbital data and new discoveries.
Findings
Recovered 76% of targeted NEAs, including 56 PHAs.
Extended orbital arcs from weeks to years, up to 16 years.
Discovered 4 new NEAs serendipitously.
Abstract
One-opposition near-Earth asteroids (NEAs) are growing in number, and they must be recovered to prevent loss and mismatch risk, and to improve their orbits, as they are likely to be too faint for detection in shallow surveys at future apparitions. We aimed to recover more than half of the one-opposition NEAs recommended for observations by the Minor Planet Center (MPC) using the Isaac Newton Telescope (INT) in soft-override mode and some fractions of available D-nights. During about 130 hours in total between 2013 and 2016, we targeted 368 NEAs, among which 56 potentially hazardous asteroids (PHAs), observing 437 INT Wide Field Camera (WFC) fields and recovering 280 NEAs (76% of all targets). Engaging a core team of about ten students and amateurs, we used the THELI, Astrometrica, and the Find_Orb software to identify all moving objects using the blink and track-and-stack method for the…
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