S
Satya N. Majumdar
Researcher at Université Paris-Saclay
Publications - 513
Citations - 20487
Satya N. Majumdar is an academic researcher from Université Paris-Saclay. The author has contributed to research in topics: Random walk & Brownian motion. The author has an hindex of 69, co-authored 484 publications receiving 17115 citations. Previous affiliations of Satya N. Majumdar include Isaac Newton Institute & Vienna University of Technology.
Papers
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Journal ArticleDOI
Force Fluctuations in Bead Packs
Chu-heng Liu,Sidney R. Nagel,D. A. Schecter,Susan Coppersmith,Satya N. Majumdar,Onuttom Narayan,Thomas A. Witten +6 more
TL;DR: In this model, the fluctuations in the force distribution arise because of variations in the contact angles and the constraints imposed by the force balance on each bead in the pile.
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Diffusion with stochastic resetting.
TL;DR: In this paper, the authors studied simple diffusion where a particle stochastically resets to its initial position at a constant rate and showed that the mean time to find a stationary target by a diffusive searcher is finite and has a minimum value at an optimal resetting rate.
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Persistence and First-Passage Properties in Non-equilibrium Systems
TL;DR: In this paper, the authors discuss the persistence and related first-passage properties in extended many-body nonequilibrium systems and discuss various generalisations of the local site persistence probability.
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Stochastic Resetting and Applications
TL;DR: In this paper, the authors consider stochastic processes under resetting, which have attracted a lot of attention in recent years, and discuss multiparticle systems as well as extended systems, such as fluctuating interfaces.
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Persistence and first-passage properties in nonequilibrium systems
TL;DR: In this article, the authors discuss the persistence and related first-passage properties in extended many-body nonequilibrium systems and discuss various generalizations of the local site persistence probability.