Tara Raveendran
Indian Institute of Science
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Publication
Featured researches published by Tara Raveendran.
Journal of The Franklin Institute-engineering and Applied Mathematics | 2014
Tara Raveendran; Debasish Roy; Ram Mohan Vasu
Abstract We propose a novel form of nonlinear stochastic filtering based on an iterative evaluation of a Kalman-like gain matrix computed within a Monte Carlo scheme as suggested by the form of the parent equation of nonlinear filtering (Kushner–Stratonovich equation) and retains the simplicity of implementation of an ensemble Kalman filter (EnKF). The numerical results, presently obtained via EnKF-like simulations with or without a reduced-rank unscented transformation, clearly indicate remarkably superior filter convergence and accuracy vis-a-vis most available filtering schemes and eminent applicability of the methods to higher dimensional dynamic system identification problems of engineering interest.
Inverse Problems | 2013
Tara Raveendran; Saikat Sarkar; Debasish Roy; Ram Mohan Vasu
Using a Girsanov change of measures, we propose novel variations within a particle-filtering algorithm, as applied to the inverse problem of state and parameter estimations of nonlinear dynamical systems of engineering interest, toward weakly correcting for the linearization or integration errors that almost invariably occur whilst numerically propagating the process dynamics, typically governed by nonlinear stochastic differential equations (SDEs). Specifically, the correction for linearization, provided by the likelihood or the Radon-Nikodym derivative, is incorporated within the evolving flow in two steps. Once the likelihood, an exponential martingale, is split into a product of two factors, correction owing to the first factor is implemented via rejection sampling in the first step. The second factor, which is directly computable, is accounted for via two different schemes, one employing resampling and the other using a gain-weighted innovation term added to the drift field of the process dynamics thereby overcoming the problem of sample dispersion posed by resampling. The proposed strategies, employed as add-ons to existing particle filters, the bootstrap and auxiliary SIR filters in this work, are found to non-trivially improve the convergence and accuracy of the estimates and also yield reduced mean square errors of such estimates vis-a-vis those obtained through the parent-filtering schemes.
Journal of Applied Mechanics | 2013
Tara Raveendran; Debasish Roy; Ram Mohan Vasu
Medical Physics | 2012
Tara Raveendran; Saurabh Gupta; Ram Mohan Vasu; Debasish Roy
arXiv: Methodology | 2013
Tara Raveendran; Debasish Roy; Ram Mohan Vasu
Probabilistic Engineering Mechanics | 2013
Tara Raveendran; Debasish Roy; Ram Mohan Vasu
Biophotonics Congress: Biomedical Optics Congress 2018 (Microscopy/Translational/Brain/OTS) | 2018
Saurabh Gupta; Tara Raveendran; Ram Mohan Vasu; Debasish Roy
Bio-Optics: Design and Application | 2017
Saurabh Gupta; Tara Raveendran; Ram Mohan Vasu; Debasish Roy
Probabilistic Engineering Mechanics | 2014
Tara Raveendran; Debasish Roy; Ram Mohan Vasu
Archive | 2013
Saikat Sarkar; Tara Raveendran; Debasish Roy; Ram Mohan Vasu