Abstract

Abstract. Differences between paleoclimatic reconstructions are caused by two factors: the method and the input data. While many studies compare methods, we will focus in this study on the consequences of the input data choice in a state-of-the-art Kalman-filter paleoclimate data assimilation approach. We evaluate reconstruction quality in the 20th century based on three collections of tree-ring records: (1) 54 of the best temperature-sensitive tree-ring chronologies chosen by experts; (2) 415 temperature-sensitive tree-ring records chosen less strictly by regional working groups and statistical screening; (3) 2287 tree-ring series that are not screened for climate sensitivity. The three data sets cover the range from small sample size, small spatial coverage and strict screening for temperature sensitivity to large sample size and spatial coverage but no screening. Additionally, we explore a combination of these data sets plus screening methods to improve the reconstruction quality. A large, unscreened collection generally leads to a poor reconstruction skill. A small expert selection of extratropical Northern Hemisphere records allows for a skillful high-latitude temperature reconstruction but cannot be expected to provide information for other regions and other variables. We achieve the best reconstruction skill across all variables and regions by combining all available input data but rejecting records with insignificant climatic information (p value of regression model >0.05) and removing duplicate records. It is important to use a tree-ring proxy system model that includes both major growth limitations, temperature and moisture.

Highlights

  • In the past 20 years, a lot of effort has been invested in improving climate reconstructions for the last centuries to millennia based on indirect climate information – socalled “proxies”

  • To evaluate the differences between the experiments due to the data assimilation we focus on correlation improvement over the background (i.e., the model simulations, which already correlate with the reference data set mainly due to the specified sea surface temperatures (SSTs) and external forcing)

  • The highest local improvements are reached with the NTREND data set; the largest spatial coverage of improvement is found with the B14 data set

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Summary

Introduction

In the past 20 years, a lot of effort has been invested in improving climate reconstructions for the last centuries to millennia based on indirect climate information – socalled “proxies”. A new study shows good agreement between a wide range of methods if reconstructions are based on the same input data set (Neukom et al, 2019a, b). Another recent study found that temperature-sensitive treering proxies from the PAGES2k database (Emile-Geay et al, 2017) lack multi-centennial trends, which are found in other proxy archives (Klippel et al, 2019). This suggests that the input data play a crucial role for differences between reconstructions.

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