Pollen based annual precipitation for Lake Bayan Nuur

Method for quantitative reconstruction of mean July air temperatures (Tjuly) and the amount of annual precipitation (PANN) The quantitative reconstruction of mean July air temperatures (TJuly) is based on calibration chironomid data sets for lakes from northern Russia (Nazarova et al., 2015). Mean J...

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Main Authors: Rudaya, Natalia, Nazarova, Larisa B, Frolova, Larisa A, Palagushkina, Olga V, Soenov, Vasiliy, Cao, Xianyong, Syrykh, Liudmila, Grekov, Ivan, Otgonbayar, Demberel, Bayarkhuu, Batbayar
Format: Dataset
Language:English
Published: PANGAEA 2023
Subjects:
AGE
air
Online Access:https://doi.pangaea.de/10.1594/PANGAEA.953305
id ftpangaea:oai:pangaea.de:doi:10.1594/PANGAEA.953305
record_format openpolar
spelling ftpangaea:oai:pangaea.de:doi:10.1594/PANGAEA.953305 2023-05-15T15:18:54+02:00 Pollen based annual precipitation for Lake Bayan Nuur Rudaya, Natalia Nazarova, Larisa B Frolova, Larisa A Palagushkina, Olga V Soenov, Vasiliy Cao, Xianyong Syrykh, Liudmila Grekov, Ivan Otgonbayar, Demberel Bayarkhuu, Batbayar LATITUDE: 50.010720 * LONGITUDE: 93.974500 * MINIMUM DEPTH, sediment/rock: 0.036 m * MAXIMUM DEPTH, sediment/rock: 1.128 m 2023-01-04 text/tab-separated-values, 40 data points https://doi.pangaea.de/10.1594/PANGAEA.953305 en eng PANGAEA https://doi.pangaea.de/10.1594/PANGAEA.953309 https://doi.pangaea.de/10.1594/PANGAEA.953305 Access constraints: access rights needed info:eu-repo/semantics/restrictedAccess AGE Bayan Nuur BN2016-1 DEPTH sediment/rock SEDCO Sediment corer see description in data abstract Temperature air July Dataset 2023 ftpangaea 2023-01-06T10:53:47Z Method for quantitative reconstruction of mean July air temperatures (Tjuly) and the amount of annual precipitation (PANN) The quantitative reconstruction of mean July air temperatures (TJuly) is based on calibration chironomid data sets for lakes from northern Russia (Nazarova et al., 2015). Mean July air temperatures were inferred using a North Russian (NR) chironomid-based temperature inference model (WA-PLS, 2 component; r 2 boot = 0.81; RMSEP boot=1.43 °C) based on a modern calibration data set of 193 lakes and 162 taxa from East and West Siberia (61–75°N, 50-140 °E, T July range 1.8 – 18.8 oC). The mean July air temperature of the lakes for the calibration data set was derived from New et al. (2002). The TJuly NR model was previously applied to palaeoclimatic inferences in Europe, arctic Russia, East and West Siberia, and demonstrated a high reliability of the reconstructed parameters (Solovieva et al., 2015; Nazarova et al., 2017a, b; Wetterich et al., 2018). The chironomid-inferred TJuly were corrected to 0 m a.s.l. using a modern July air temperature lapse rate of 6 oC km-1 (Livingstone et al., 1999; Renessen et al., 2009; Heiri et al. 2014). Chironomid-based reconstructions were performed in C2 version 1.7 (Juggins, 2007). The chironomid data was square-rooted to stabilize species variance. To assess the reliability of the chironomid-inferred TJuly reconstruction, we calculated the percentage abundances of the fossil chironomids that are rare or absent in the modern calibration data set. A taxon is considered to be rare in the modern data when it has a Hill N2 below 5. Optima of the taxa that are rare in modern data are likely to be poorly estimated (Brooks and Birks, 2001). Goodness-of-fit statistics derived from a canonical correspondence analysis (CCA) of the modern calibration data and down-core passive samples with TJuly as the sole constraining variables was used to assess the fit of the analyzed down-core assemblages to TJuly (Birks et al., 1990; Birks, 1995, 1998). This method shows how unusual ... Dataset Arctic Siberia PANGAEA - Data Publisher for Earth & Environmental Science Arctic Birks ENVELOPE(-62.163,-62.163,-65.290,-65.290) Livingstone ENVELOPE(-134.337,-134.337,61.333,61.333) Nazarova ENVELOPE(161.250,161.250,-81.917,-81.917) ENVELOPE(93.974500,93.974500,50.010720,50.010720)
institution Open Polar
collection PANGAEA - Data Publisher for Earth & Environmental Science
op_collection_id ftpangaea
language English
topic AGE
Bayan Nuur
BN2016-1
DEPTH
sediment/rock
SEDCO
Sediment corer
see description in data abstract
Temperature
air
July
spellingShingle AGE
Bayan Nuur
BN2016-1
DEPTH
sediment/rock
SEDCO
Sediment corer
see description in data abstract
Temperature
air
July
Rudaya, Natalia
Nazarova, Larisa B
Frolova, Larisa A
Palagushkina, Olga V
Soenov, Vasiliy
Cao, Xianyong
Syrykh, Liudmila
Grekov, Ivan
Otgonbayar, Demberel
Bayarkhuu, Batbayar
Pollen based annual precipitation for Lake Bayan Nuur
topic_facet AGE
Bayan Nuur
BN2016-1
DEPTH
sediment/rock
SEDCO
Sediment corer
see description in data abstract
Temperature
air
July
description Method for quantitative reconstruction of mean July air temperatures (Tjuly) and the amount of annual precipitation (PANN) The quantitative reconstruction of mean July air temperatures (TJuly) is based on calibration chironomid data sets for lakes from northern Russia (Nazarova et al., 2015). Mean July air temperatures were inferred using a North Russian (NR) chironomid-based temperature inference model (WA-PLS, 2 component; r 2 boot = 0.81; RMSEP boot=1.43 °C) based on a modern calibration data set of 193 lakes and 162 taxa from East and West Siberia (61–75°N, 50-140 °E, T July range 1.8 – 18.8 oC). The mean July air temperature of the lakes for the calibration data set was derived from New et al. (2002). The TJuly NR model was previously applied to palaeoclimatic inferences in Europe, arctic Russia, East and West Siberia, and demonstrated a high reliability of the reconstructed parameters (Solovieva et al., 2015; Nazarova et al., 2017a, b; Wetterich et al., 2018). The chironomid-inferred TJuly were corrected to 0 m a.s.l. using a modern July air temperature lapse rate of 6 oC km-1 (Livingstone et al., 1999; Renessen et al., 2009; Heiri et al. 2014). Chironomid-based reconstructions were performed in C2 version 1.7 (Juggins, 2007). The chironomid data was square-rooted to stabilize species variance. To assess the reliability of the chironomid-inferred TJuly reconstruction, we calculated the percentage abundances of the fossil chironomids that are rare or absent in the modern calibration data set. A taxon is considered to be rare in the modern data when it has a Hill N2 below 5. Optima of the taxa that are rare in modern data are likely to be poorly estimated (Brooks and Birks, 2001). Goodness-of-fit statistics derived from a canonical correspondence analysis (CCA) of the modern calibration data and down-core passive samples with TJuly as the sole constraining variables was used to assess the fit of the analyzed down-core assemblages to TJuly (Birks et al., 1990; Birks, 1995, 1998). This method shows how unusual ...
format Dataset
author Rudaya, Natalia
Nazarova, Larisa B
Frolova, Larisa A
Palagushkina, Olga V
Soenov, Vasiliy
Cao, Xianyong
Syrykh, Liudmila
Grekov, Ivan
Otgonbayar, Demberel
Bayarkhuu, Batbayar
author_facet Rudaya, Natalia
Nazarova, Larisa B
Frolova, Larisa A
Palagushkina, Olga V
Soenov, Vasiliy
Cao, Xianyong
Syrykh, Liudmila
Grekov, Ivan
Otgonbayar, Demberel
Bayarkhuu, Batbayar
author_sort Rudaya, Natalia
title Pollen based annual precipitation for Lake Bayan Nuur
title_short Pollen based annual precipitation for Lake Bayan Nuur
title_full Pollen based annual precipitation for Lake Bayan Nuur
title_fullStr Pollen based annual precipitation for Lake Bayan Nuur
title_full_unstemmed Pollen based annual precipitation for Lake Bayan Nuur
title_sort pollen based annual precipitation for lake bayan nuur
publisher PANGAEA
publishDate 2023
url https://doi.pangaea.de/10.1594/PANGAEA.953305
op_coverage LATITUDE: 50.010720 * LONGITUDE: 93.974500 * MINIMUM DEPTH, sediment/rock: 0.036 m * MAXIMUM DEPTH, sediment/rock: 1.128 m
long_lat ENVELOPE(-62.163,-62.163,-65.290,-65.290)
ENVELOPE(-134.337,-134.337,61.333,61.333)
ENVELOPE(161.250,161.250,-81.917,-81.917)
ENVELOPE(93.974500,93.974500,50.010720,50.010720)
geographic Arctic
Birks
Livingstone
Nazarova
geographic_facet Arctic
Birks
Livingstone
Nazarova
genre Arctic
Siberia
genre_facet Arctic
Siberia
op_relation https://doi.pangaea.de/10.1594/PANGAEA.953309
https://doi.pangaea.de/10.1594/PANGAEA.953305
op_rights Access constraints: access rights needed
info:eu-repo/semantics/restrictedAccess
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