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Dive into the research topics where Bedartha Goswami is active.

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Featured researches published by Bedartha Goswami.


Scientific Reports | 2017

Tropical rainfall over the last two millennia: evidence for a low-latitude hydrologic seesaw

Franziska A. Lechleitner; Sebastian F.M. Breitenbach; Kira Rehfeld; Harriet E. Ridley; Yemane Asmerom; Keith M. Prufer; Norbert Marwan; Bedartha Goswami; Douglas J. Kennett; Valorie V. Aquino; Victor J. Polyak; Gerald H. Haug; Timothy I. Eglinton; James U.L. Baldini

The presence of a low- to mid-latitude interhemispheric hydrologic seesaw is apparent over orbital and glacial-interglacial timescales, but its existence over the most recent past remains unclear. Here we investigate, based on climate proxy reconstructions from both hemispheres, the inter-hemispherical phasing of the Intertropical Convergence Zone (ITCZ) and the low- to mid-latitude teleconnections in the Northern Hemisphere over the past 2000 years. A clear feature is a persistent southward shift of the ITCZ during the Little Ice Age until the beginning of the 19th Century. Strong covariation between our new composite ITCZ-stack and North Atlantic Oscillation (NAO) records reveals a tight coupling between these two synoptic weather and climate phenomena over decadal-to-centennial timescales. This relationship becomes most apparent when comparing two precisely dated, high-resolution paleorainfall records from Belize and Scotland, indicating that the low- to mid-latitude teleconnection was also active over annual-decadal timescales. It is likely a combination of external forcing, i.e., solar and volcanic, and internal feedbacks, that drives the synchronous ITCZ and NAO shifts via energy flux perturbations in the tropics.


Physical Review E | 2017

Recurrence measure of conditional dependence and applications

Antônio M. T. Ramos; Alejandro Builes-Jaramillo; Germán Poveda; Bedartha Goswami; Elbert E. N. Macau; J. Kurths; Norbert Marwan

Identifying causal relations from observational data sets has posed great challenges in data-driven causality inference studies. One of the successful approaches to detect direct coupling in the information theory framework is transfer entropy. However, the core of entropy-based tools lies on the probability estimation of the underlying variables. Here we propose a data-driven approach for causality inference that incorporates recurrence plot features into the framework of information theory. We define it as the recurrence measure of conditional dependence (RMCD), and we present some applications. The RMCD quantifies the causal dependence between two processes based on joint recurrence patterns between the past of the possible driver and present of the potentially driven, excepting the contribution of the contemporaneous past of the driven variable. Finally, it can unveil the time scale of the influence of the sea-surface temperature of the Pacific Ocean on the precipitation in the Amazonia during recent major droughts.


Climate of The Past Discussions | 2017

A complete representation of uncertainties in layer-counted paleoclimatic archives

Niklas Boers; Bedartha Goswami; Michael Ghil

Accurate time series representation of paleoclimatic proxy records is challenging because such records involve dating errors in addition to proxy measurement errors. Rigorous attention is rarely given to age uncertainties in paleoclimatic research, although the latter can severely bias the results of proxy record analysis. Here, we introduce a Bayesian approach to represent layer-counted proxy records – such as ice cores, sediments, corals, or tree rings – as sequences of probability distributions on absolute, error-free time axes. The method accounts for both proxy measurement errors and uncertainties arising from layer-countingbased dating of the records. An application to oxygen isotope ratios from the North Greenland Ice Core Project (NGRIP) record reveals that the counting errors, although seemingly small, lead to substantial uncertainties in the final representation of the oxygen isotope ratios. In particular, for the older parts of the NGRIP record, our results show that the total uncertainty originating from dating errors has been seriously underestimated. Our method is next applied to deriving the overall uncertainties of the Suigetsu radiocarbon comparison curve, which was recently obtained from varved sediment cores at Lake Suigetsu, Japan. This curve provides the only terrestrial radiocarbon comparison for the time interval 12.5–52.8 kyr BP. The uncertainties derived here can be readily employed to obtain complete error estimates for arbitrary radiometrically dated proxy records of this recent part of the last glacial interval.


Geophysical Research Letters | 2016

The size distribution of spatiotemporal extreme rainfall clusters around the globe

Dominik Traxl; Niklas Boers; Aljoscha Rheinwalt; Bedartha Goswami; J. Kurths

The scaling behavior of rainfall has been extensively studied both in terms of event magnitudes and in terms of spatial extents of the events. Different heavy-tailed distributions have been proposed as candidates for both instances, but statistically rigorous treatments are rare. Here we combine the domains of event magnitudes and event area sizes by a spatiotemporal integration of 3-hourly rain rates corresponding to extreme events derived from the quasi-global high-resolution rainfall product Tropical Rainfall Measuring Mission 3B42. A maximum likelihood evaluation reveals that the distribution of spatiotemporally integrated extreme rainfall cluster sizes over the oceans is best described by a truncated power law, calling into question previous statements about scale-free distributions. The observed subpower law behavior of the distributions tail is evaluated with a simple generative model, which indicates that the exponential truncation of an otherwise scale-free spatiotemporal cluster size distribution over the oceans could be explained by the existence of land masses on the globe.


Nature Communications | 2018

Abrupt transitions in time series with uncertainties

Bedartha Goswami; Niklas Boers; Aljoscha Rheinwalt; Norbert Marwan; Jobst Heitzig; Sebastian F.M. Breitenbach; Jürgen Kurths

Identifying abrupt transitions is a key question in various disciplines. Existing transition detection methods, however, do not rigorously account for time series uncertainties, often neglecting them altogether or assuming them to be independent and qualitatively similar. Here, we introduce a novel approach suited to handle uncertainties by representing the time series as a time-ordered sequence of probability density functions. We show how to detect abrupt transitions in such a sequence using the community structure of networks representing probabilities of recurrence. Using our approach, we detect transitions in global stock indices related to well-known periods of politico-economic volatility. We further uncover transitions in the El Niño-Southern Oscillation which coincide with periods of phase locking with the Pacific Decadal Oscillation. Finally, we provide for the first time an ‘uncertainty-aware’ framework which validates the hypothesis that ice-rafting events in the North Atlantic during the Holocene were synchronous with a weakened Asian summer monsoon.Most time series techniques tend to ignore data uncertainties, which results in inaccurate conclusions. Here, Goswami et al. represent time series as a sequence of probability density functions, and reliably detect abrupt transitions by identifying communities in probabilistic recurrence networks.


Archive | 2015

Teleconnections in Climate Networks: A Network-of-Networks Approach to Investigate the Influence of Sea Surface Temperature Variability on Monsoon Systems

Aljoscha Rheinwalt; Bedartha Goswami; Niklas Boers; Jobst Heitzig; Norbert Marwan; R. Krishnan; Jürgen Kurths

We analyze large-scale interdependencies between sea surface temperature (SST) and rainfall variability. We propose a novel climate network construction scheme which we call teleconnection climate networks (TCN). On account of this analysis, gridded SST and rainfall data sets are coarse grained by merging grid points that are dynamically similar to each other. The resulting clusters of time series are taken as the nodes of the TCN. The SST and rainfall systems are investigated as two separate climate networks, and teleconnections within the individual climate networks are studied with special focus on dipolar patterns. Our analysis reveals a pronounced rainfall dipole between Southeast Asia and the Afghanistan-Pakistan region, and we discuss the influences of Pacific SST anomalies on this dipole.


Scientific Reports | 2016

A random interacting network model for complex networks

Bedartha Goswami; Snehal M. Shekatkar; Aljoscha Rheinwalt; G. Ambika; J. Kurths

We propose a RAndom Interacting Network (RAIN) model to study the interactions between a pair of complex networks. The model involves two major steps: (i) the selection of a pair of nodes, one from each network, based on intra-network node-based characteristics, and (ii) the placement of a link between selected nodes based on the similarity of their relative importance in their respective networks. Node selection is based on a selection fitness function and node linkage is based on a linkage probability defined on the linkage scores of nodes. The model allows us to relate within-network characteristics to between-network structure. We apply the model to the interaction between the USA and Schengen airline transportation networks (ATNs). Our results indicate that two mechanisms: degree-based preferential node selection and degree-assortative link placement are necessary to replicate the observed inter-network degree distributions as well as the observed inter-network assortativity. The RAIN model offers the possibility to test multiple hypotheses regarding the mechanisms underlying network interactions. It can also incorporate complex interaction topologies. Furthermore, the framework of the RAIN model is general and can be potentially adapted to various real-world complex systems.


Climate of The Past | 2012

COnstructing Proxy Records from Age models (COPRA)

Sebastian F.M. Breitenbach; Kira Rehfeld; Bedartha Goswami; James U.L. Baldini; Harriet E. Ridley; Douglas J. Kennett; Keith M. Prufer; Valorie V. Aquino; Yemane Asmerom; Victor J. Polyak; Hai Cheng; J. Kurths; Norbert Marwan


European Physical Journal-special Topics | 2013

How do global temperature drivers influence each other

Bedartha Goswami; Norbert Marwan; Georg Feulner; Jürgen Kurths


Geochimica et Cosmochimica Acta | 2016

Hydrological and climatological controls on radiocarbon concentrations in a tropical stalagmite

Franziska A. Lechleitner; James U.L. Baldini; Sebastian F.M. Breitenbach; Jens Fohlmeister; Cameron McIntyre; Bedartha Goswami; Robert A. Jamieson; Tessa S. van der Voort; Keith M. Prufer; Norbert Marwan; Brendan J. Culleton; Douglas J. Kennett; Yemane Asmerom; Victor J. Polyak; Timothy I. Eglinton

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Norbert Marwan

Potsdam Institute for Climate Impact Research

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Kira Rehfeld

Potsdam Institute for Climate Impact Research

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Aljoscha Rheinwalt

Potsdam Institute for Climate Impact Research

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Niklas Boers

École Normale Supérieure

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Hai Cheng

Xi'an Jiaotong University

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Jürgen Kurths

Potsdam Institute for Climate Impact Research

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Douglas J. Kennett

Pennsylvania State University

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