Abstract

Abstract. Analysing palaeoclimate proxy time series using windowed recurrence network analysis (wRNA) has been shown to provide valuable information on past climate variability. In turn, it has also been found that the robustness of the obtained results differs among proxies from different palaeoclimate archives. To systematically test the suitability of wRNA for studying different types of palaeoclimate proxy time series, we use the framework of forward proxy modelling. For this, we create artificial input time series with different properties and compare the areawise significant anomalies detected using wRNA of the input and the model output time series. Also, taking into account results for general filtering of different time series, we find that the variability of the network transitivity is altered for stochastic input time series while being rather robust for deterministic input. In terms of significant anomalies of the network transitivity, we observe that these anomalies may be missed by proxies from tree and lake archives after the non-linear filtering by the corresponding proxy system models. For proxies from speleothems, we additionally observe falsely identified significant anomalies that are not present in the input time series. Finally, for proxies from ice cores, the wRNA results show the best correspondence to those for the input data. Our results contribute to improve the interpretation of windowed recurrence network analysis results obtained from real-world palaeoclimate time series.

Highlights

  • Palaeoclimate proxy time series from archives such as trees, lakes, speleothems, or ice cores play an important role in past climate reconstructions (Bradley, 2015)

  • Before studying the different proxy system models, we note that applying some general filtering techniques such as moving average filtering or exponential smoothing to the described stochastic input time series on the one hand and the deterministic input time series on the other hand changes the results of the windowed recurrence network analysis in different ways

  • We have studied the suitability of windowed recurrence network analysis for detecting dynamical anomalies in time series from different proxy archives

Read more

Summary

Introduction

Palaeoclimate proxy time series from archives such as trees, lakes, speleothems, or ice cores play an important role in past climate reconstructions (Bradley, 2015). Windowed recurrence network analysis (wRNA) has already been successfully used to detect dynamical anomalies in time series from different palaeoclimate archives (Donges et al, 2011a, b; Eroglu et al, 2016; Lekscha and Donner, 2018). V. Donner: Detecting anomalies in proxy time series with wRNA palaeoclimate data from different types of archives by employing proxy system models. We compare the input and the model output with respect to the properties of the time series and the results of wRNA. 4. we show and discuss the results of the wRNA for the different input and model output time series in Sect. Additional information and figures are included in the Supplement accompanying this paper

Phase space reconstruction
Windowed recurrence network analysis
Significance testing and confidence levels
Proxy system models
Tree rings
Lake sediments
Speleothems
Ice cores
Input data
Gaussian white noise
Autoregressive process of order 1
Non-stationary Rössler system
Non-stationary Lorenz system
Last millennium reanalysis data
Results
Discussion and conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call