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The strong Malthusian behavior of growth-fragmentation processes

Bertoin, Jean; Watson, Alexander R (2020). The strong Malthusian behavior of growth-fragmentation processes. Annales Henri Lebesgue, 3:795-823.

Abstract

Growth-fragmentation processes describe the evolution of systems of cells which grow continuously and fragment suddenly; they are used in models of cell division and protein polymerisation. Typically, we may expect that in the long run, the concentrations of cells with given masses increase at some exponential rate, and that, after compensating for this, they arrive at an asymptotic profile. Up to now, this question has mainly been studied for the average behavior of the system, often by means of a natural partial integro-differential equation and the associated spectral theory. However, the behavior of the system as a whole, rather than only its average, is more delicate. In this work, we show that a criterion found by one of the authors for exponential ergodicity on average is actually sufficient to deduce stronger results about the convergence of the entire collection of cells to a certain asymptotic profile, and we find some improved explicit conditions for this to occur.

Additional indexing

Item Type:Journal Article, refereed, original work
Communities & Collections:07 Faculty of Science > Institute of Mathematics
Dewey Decimal Classification:340 Law
610 Medicine & health
510 Mathematics
Language:English
Date:24 August 2020
Deposited On:15 Dec 2020 15:29
Last Modified:20 Apr 2022 08:46
Publisher:Presses Universitaires de Rennes
ISSN:2644-9463
OA Status:Gold
Publisher DOI:https://doi.org/10.5802/ahl.46
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