Revised recommended methods for analyzing crater size‐frequency distributions

Impact crater populations help us to understand solar system dynamics, planetary surface histories, and surface modification processes. A single previous effort to standardize how crater data are displayed in graphs, tables, and archives was in a 1978 NASA report by the Crater Analysis Techniques Wo...

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Veröffentlicht in:Meteoritics & planetary science 2018-04, Vol.53 (4), p.891-931
Hauptverfasser: Robbins, Stuart J., Riggs, Jamie D., Weaver, Brian P., Bierhaus, Edward B., Chapman, Clark R., Kirchoff, Michelle R., Singer, Kelsi N., Gaddis, Lisa R.
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Sprache:eng
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Zusammenfassung:Impact crater populations help us to understand solar system dynamics, planetary surface histories, and surface modification processes. A single previous effort to standardize how crater data are displayed in graphs, tables, and archives was in a 1978 NASA report by the Crater Analysis Techniques Working Group, published in 1979 in Icarus. The report had a significant lasting effect, but later decades brought major advances in statistical and computer sciences while the crater field has remained fairly stagnant. In this new work, we revisit the fundamental techniques for displaying and analyzing crater population data and demonstrate better statistical methods that can be used. Specifically, we address (1) how crater size‐frequency distributions (SFDs) are constructed, (2) how error bars are assigned to SFDs, and (3) how SFDs are fit to power‐laws and other models. We show how the new methods yield results similar to those of previous techniques in that the SFDs have familiar shapes but better account for multiple sources of uncertainty. We also recommend graphic, display, and archiving methods that reflect computers’ capabilities and fulfill NASA's current requirements for Data Management Plans.
ISSN:1086-9379
1945-5100
DOI:10.1111/maps.12990