A probabilistic approach to spectral analysis of growth-fragmentation equations

Jean Bertoin, Alexander R. Watson

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    Abstract

    The growth-fragmentation equation describes a system of growing and dividing particles, and arises in models of cell division, protein polymerisation and even telecommunications protocols. Several important questions about the equation concern the asymptotic behaviour of solutions at large times: at what rate do they converge to zero or infinity, and what does the asymp-totic profile of the solutions look like? Does the rescaled solution converge to its asymptotic profile at an exponential speed? These questions have traditionally been studied using analytic techniques such as entropy methods or splitting of operators. In this work, we present a probabilistic approach to the study of this asymptotic behaviour. We use a Feynman--Kac formula to relate the solution of the growth-fragmentation equation to the semigroup of a Markov process, and characterise the rate of decay or growth in terms of this process. We then identify the spectral radius and the asymptotic profile in terms of a related Markov process, and give a spectral interpretation in terms of the growth-fragmentation operator and its dual. In special cases, we obtain exponential convergence.
    Original languageEnglish
    Pages (from-to)2163-2204
    Number of pages42
    JournalJournal of Functional Analysis
    Volume274
    Issue number8
    Early online date5 Feb 2018
    DOIs
    Publication statusPublished - 5 Feb 2018

    Keywords

    • growth-fragmentation equation
    • transport equations
    • cell division equation
    • oneparameter semigroups
    • spectral analysis
    • Malthus exponent
    • Feynman–Kac formula
    • piecewise-deterministic Markov processes
    • Lévy processes

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