After DART: Using the first full-scale test of a kinetic impactor to inform a future planetary defense mission
Thomas S. Statler, Sabina D. Raducan, Olivier S. Barnouin, Mallory E., DeCoster, Steven R. Chesley, Brent Barbee, Harrison F. Agrusa, Saverio, Cambioni, Andrew F. Cheng, Elisabetta Dotto, Siegfried Eggl, Eugene G., Fahnestock, Fabio Ferrari, Dawn Graninger, Alain Herique

TL;DR
This paper analyzes the DART asteroid deflection test to understand how its results can inform future planetary defense missions, emphasizing the importance of physical property constraints and strategic reconnaissance.
Contribution
It introduces a generalized momentum enhancement factor and explores how DART results can constrain impact simulations and guide future asteroid deflection strategies.
Findings
DART's impact constrains the near-surface properties of Dimorphos.
Direction-specific momentum transfer factors can be directly measured.
Strategic reconnaissance improves deflection effectiveness and safety.
Abstract
NASA's Double Asteroid Redirection Test (DART) is the first full-scale test of an asteroid deflection technology. Results from the hypervelocity kinetic impact and Earth-based observations, coupled with LICIACube and the later Hera mission, will result in measurement of the momentum transfer efficiency accurate to ~10% and characterization of the Didymos binary system. But DART is a single experiment; how could these results be used in a future planetary defense necessity involving a different asteroid? We examine what aspects of Dimorphos's response to kinetic impact will be constrained by DART results; how these constraints will help refine knowledge of the physical properties of asteroidal materials and predictive power of impact simulations; what information about a potential Earth impactor could be acquired before a deflection effort; and how design of a deflection mission should…
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