| Literature DB >> 28316360 |
Inom Mirzaev1, Erin C Byrne2, David M Bortz1.
Abstract
We investigate the inverse problem of identifying a conditional probability measure in measure-dependent evolution equations arising in size-structured population modeling. We formulate the inverse problem as a least squares problem for the probability measure estimation. Using the Prohorov metric framework, we prove existence and consistency of the least squares estimates and outline a discretization scheme for approximating a conditional probability measure. For this scheme, we prove general method stability. The work is motivated by Partial Differential Equation (PDE) models of flocculation for which the shape of the post-fragmentation conditional probability measure greatly impacts the solution dynamics. To illustrate our methodology, we apply the theory to a particular PDE model that arises in the study of population dynamics for flocculating bacterial aggregates in suspension, and provide numerical evidence for the utility of the approach.Entities:
Keywords: Conditional probability measures; bacterial aggregates; flocculation; fragmentation; inverse problem; measure-dependent evolution equations; size-structured populations
Year: 2016 PMID: 28316360 PMCID: PMC5352987 DOI: 10.1088/0266-5611/32/9/095005
Source DB: PubMed Journal: Inverse Probl ISSN: 0266-5611 Impact factor: 2.407