G. Pfalz, B. Diekmann, J. Freytag, L. Syrykh, D. Subetto, B. Biskaborn
{"title":"Improving age–depth relationships by using the LANDO (“Linked age and depth modeling”) model ensemble","authors":"G. Pfalz, B. Diekmann, J. Freytag, L. Syrykh, D. Subetto, B. Biskaborn","doi":"10.5194/gchron-4-269-2022","DOIUrl":null,"url":null,"abstract":"Abstract. Age–depth relationships are the key elements in paleoenvironmental studies\nto place proxy measurements into a temporal context. However, potential\ninfluencing factors of the available radiocarbon data and the associated\nmodeling process can cause serious divergences of age–depth relationships\nfrom true chronologies, which is particularly challenging for\npaleolimnological studies in Arctic regions. This paper provides\ngeoscientists with a tool-assisted approach to compare outputs from\nage–depth modeling systems and to strengthen the robustness of age–depth\nrelationships. We primarily focused on the development of age determination\ndata from a data collection of high-latitude lake systems (50 to 90∘ N, 55 sediment cores, and a total of 602 dating points).\nOur approach used five age–depth modeling systems (Bacon, Bchron, clam, hamstr, Undatable) that we linked through\na multi-language Jupyter Notebook called LANDO (“Linked age and depth\nmodeling”). Within LANDO we implemented a pipeline from data\nintegration to model comparison to allow users to investigate the outputs of the modeling systems. In this paper, we focused on highlighting three\ndifferent case studies: comparing multiple modeling systems for one sediment\ncore with a continuously deposited succession of dating points (CS1), for\none sediment core with scattered dating points (CS2), and for multiple\nsediment cores (CS3). For the first case study (CS1), we showed how we\nfacilitate the output data from all modeling systems to create an ensemble\nage–depth model. In the special case of scattered dating points (CS2), we\nintroduced an adapted method that uses independent proxy data to assess the\nperformance of each modeling system in representing lithological changes.\nBased on this evaluation, we reproduced the characteristics of an existing\nage–depth model (Lake Ilirney, EN18208) without removing age determination\ndata. For multiple sediment cores (CS3) we found that when considering the\nPleistocene–Holocene transition, the main regime changes in sedimentation\nrates do not occur synchronously for all lakes. We linked this behavior to\nthe uncertainty within the dating and modeling process, as well as the local variability in catchment settings affecting the accumulation rates of the sediment cores within the collection near the glacial–interglacial\ntransition.\n","PeriodicalId":12723,"journal":{"name":"Geochronology","volume":"2 1","pages":""},"PeriodicalIF":2.7000,"publicationDate":"2022-05-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Geochronology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.5194/gchron-4-269-2022","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"GEOCHEMISTRY & GEOPHYSICS","Score":null,"Total":0}
引用次数: 2
Abstract
Abstract. Age–depth relationships are the key elements in paleoenvironmental studies
to place proxy measurements into a temporal context. However, potential
influencing factors of the available radiocarbon data and the associated
modeling process can cause serious divergences of age–depth relationships
from true chronologies, which is particularly challenging for
paleolimnological studies in Arctic regions. This paper provides
geoscientists with a tool-assisted approach to compare outputs from
age–depth modeling systems and to strengthen the robustness of age–depth
relationships. We primarily focused on the development of age determination
data from a data collection of high-latitude lake systems (50 to 90∘ N, 55 sediment cores, and a total of 602 dating points).
Our approach used five age–depth modeling systems (Bacon, Bchron, clam, hamstr, Undatable) that we linked through
a multi-language Jupyter Notebook called LANDO (“Linked age and depth
modeling”). Within LANDO we implemented a pipeline from data
integration to model comparison to allow users to investigate the outputs of the modeling systems. In this paper, we focused on highlighting three
different case studies: comparing multiple modeling systems for one sediment
core with a continuously deposited succession of dating points (CS1), for
one sediment core with scattered dating points (CS2), and for multiple
sediment cores (CS3). For the first case study (CS1), we showed how we
facilitate the output data from all modeling systems to create an ensemble
age–depth model. In the special case of scattered dating points (CS2), we
introduced an adapted method that uses independent proxy data to assess the
performance of each modeling system in representing lithological changes.
Based on this evaluation, we reproduced the characteristics of an existing
age–depth model (Lake Ilirney, EN18208) without removing age determination
data. For multiple sediment cores (CS3) we found that when considering the
Pleistocene–Holocene transition, the main regime changes in sedimentation
rates do not occur synchronously for all lakes. We linked this behavior to
the uncertainty within the dating and modeling process, as well as the local variability in catchment settings affecting the accumulation rates of the sediment cores within the collection near the glacial–interglacial
transition.