Abstract
While revolutionary to the geomorphic community, the application of terrestrial cosmogenic nuclide (TCN) dating is complicated by geological uncertainties, which often lead to skewed or poorly clustered TCN age distributions. Although a range of statistical approaches are typically used to detect and remove outliers, few are optimized for analysis of TCN datasets. Many are mean- or median-based and therefore explicitly assume a single probability distribution (e.g., Mean Squared Weighted Deviates, Chauvenet's Criterion, etc.). Given the ubiquity of pre- and post-depositional modification of rock surfaces, which occur at different rates in different geomorphic settings, these approaches struggle with multimodal distributions which often characterize TCN datasets. In addition, most statistical approaches do not propagate measurement or production rate uncertainties, which become increasingly important as dataset size or clustering increases. Finally, most approaches provide arithmetic single solutions, irrespective of geologic context. To address these limitations, we present the Probabilistic Cosmogenic Age Analysis Tool (P-CAAT), a new approach for outlier detection and landform age analysis. This tool incorporates both sample age and geologic uncertainties and uses Monte Carlo simulations to eliminate dataset skewness by isolating component normal distributions from a cumulative probability density estimate for datasets with three or more samples. This approach allows geologic context to inform post-analysis interpretations, as researchers can assign landform ages based upon statistically distinct subpopulations, informed by the characteristics of geomorphic systems (e.g., exhumation of boulders as moraines degrade through time). To evaluate the effectiveness of P-CAAT, we analyzed a range of synthetic TCN datasets and compared the results to commonly used statistical approaches for outlier detection. Irrespective of dataset size or clustering, P-CAAT outperformed other approaches and returned accurate solutions that improve in precision as sample size increases. To enable more comprehensive utilization of our approach, P-CAAT is packaged with a GUI interface and is available for download at kgs. uky.edu/anorthite/PCAAT.
Original language | English |
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Article number | 101323 |
Journal | Quaternary Geochronology |
Volume | 71 |
DOIs | |
State | Published - Aug 2022 |
Bibliographical note
Funding Information:This paper is dedicated to Jason's cat, Anorthite “Rooget” Waldrop-Dortch, who passed away in June 2019. Anorthite inspired Jason to routinely ponder Dr. Schrödinger's ideas and probabilistic approaches to both science and life. The current version of P-CAAT (2.2) and future versions will be documented and archived through the Kentucky Geologic survey [kgs.uky.edu/anorthite/PCAAT] along with all datasets generated and analyzed during this study. M.K. Murari is supported by Ministry of Earth Science [MoES/P.O. (Seismic) 8(09)-Geochron/2012]. We would like to thank the three anonymous reviewers and Dr. Blard for their constructive comments that made this a more complete manuscript, and Prof. Brent Goehring for kindly sharing a MATLAB implementation of the Press method. Thank to Dr. Applegate for insightful conversations and datasets when P-CAAT was a nascent project.
Funding Information:
This paper is dedicated to Jason's cat, Anorthite “Rooget” Waldrop-Dortch, who passed away in June 2019. Anorthite inspired Jason to routinely ponder Dr. Schrödinger's ideas and probabilistic approaches to both science and life. The current version of P-CAAT (2.2) and future versions will be documented and archived through the Kentucky Geologic survey [kgs.uky.edu/anorthite/PCAAT] along with all datasets generated and analyzed during this study. M.K. Murari is supported by Ministry of Earth Science [ MoES /P.O. (Seismic) 8(09)-Geochron/2012 ]. We would like to thank the three anonymous reviewers and Dr. Blard for their constructive comments that made this a more complete manuscript, and Prof. Brent Goehring for kindly sharing a MATLAB implementation of the Press method. Thank to Dr. Applegate for insightful conversations and datasets when P-CAAT was a nascent project.
Publisher Copyright:
© 2022
Keywords
- Clustering
- Landform ages
- Outlier detection
- Probability density estimate
- Terrestrial cosmogenic nuclide dating
- Uncertainty
ASJC Scopus subject areas
- Geology
- Stratigraphy
- Earth and Planetary Sciences (miscellaneous)