Entity

Time filter

Source Type


Banks H.T.,Center for Research in Scientific Computation | Hu S.,Center for Research in Scientific Computation
Mathematical Biosciences and Engineering | Year: 2012

We consider an alternative approach to the use of nonlinear stochastic Markov processes (which have a Fokker-Planck or Forward Kolmogorov representation for density) in modeling uncertainty in populations. These alternate formulations, which involve imposing probabilistic structures on a family of deterministic dynamical systems, are shown to yield pointwise equivalent population densities. Moreover, these alternate formulations lead to fast efficient calculations in inverse problems as well as in forward simulations. Here we derive a class of stochastic formulations for which such an alternate representation is readily found. Source


Thomas Banks H.,Center for Research in Scientific Computation | Robbins D.,Center for Research in Scientific Computation | Sutton K.L.,Center for Research in Scientific Computation
Mathematical Biosciences and Engineering | Year: 2013

In this paper we present new results for differentiability of delay systems with respect to initial conditions and delays. After motivating our results with a wide range of delay examples arising in biology applications, we further note the need for sensitivity functions (both traditional and generalized sensitivity functions), especially in control and estimation problems. We summarize general existence and uniqueness results before turning to our main results on differentiation with respect to delays, etc. Finally we discuss use of our results in the context of estimation problems. Source


Banks H.T.,Center for Research in Scientific Computation | Hu S.,Center for Research in Scientific Computation | Kenz Z.R.,Center for Research in Scientific Computation | Tran H.T.,Center for Research in Scientific Computation
Mathematical Biosciences and Engineering | Year: 2010

In this paper three different filtering methods, the Extended Kalman Filter (EKF), the Gauss-Hermite Filter (GHF), and the Unscented Kalman Filter (UKF), are compared for state-only and coupled state and parameter estimation when used with log state variables of a model of the immunologic response to the human immunodeficiency virus (HIV) in individuals. The filters are implemented to estimate model states as well as model parameters from simulated noisy data, and are compared in terms of estimation accuracy and computational time. Numerical experiments reveal that the GHF is the most computationally expensive algorithm, while the EKF is the least expensive one. In addition, computational experiments suggest that there is little difference in the estimation accuracy between the UKF and GHF. When measurements are taken as frequently as every week to two weeks, the EKF is the superior filter. When measurements are further apart, the UKF is the best choice in the problem under investigation. Source

Discover hidden collaborations