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Faculty Dr Gaanutula Damodar Reddy

Dr Gaanutula Damodar Reddy

Assistant Professor

Department of Mathematics

Contact Details

gaanutuladamodar.r@srmap.edu.in

Office Location

Education

2015
PhD
IISER Thiruvananthapuram
India
2008
MPhil
Pondicherry University
India
2007
MSc
Pondicherry University
India
2004
BSc
Nalgonda Degree College of Arts and Science (Osmania University)
India

Experience

  • January 2020 to July 2020: Assistant Professor, Dept. of Mathematics, IIIT Kottayam.
  • April 2016 to December 2019: Post Doctoral Fellow, Mechanical Aerospace Engg. IIT Hyderabad.
  • April 2015 to October 2015: Research Associate, Dept. of Mathematics, IISER Thiruvananthapuram.
  • July 2010 to December 2010: Ad hoc Faculty, Dept. of MACS, NIT Surathkal Karnataka.

Research Interest

  • Parameter Choice Rules for the Weighted Regularization Methods
  • Reproducing Kernel Banach Space
  • Analytic Continuation
  • Regularization Methods for Statistical Inverse Problem
  • Sparse Regularization

Awards

  • 2015—Post Doctoral Fellowship—NBHM.
  • 2010—215th rank in GATE-2010—GATE.
  • 2008—1st rank in M.Phil. Entrance Exam—Pondicherry University.
  • 2007---1st rank in M.Sc. Entrance Exam—Pondicherry University.

Memberships

No data available

Publications

  • A class of parameter choice rules for fractional Tikhonov regularization scheme in learning theory

    Dr Gaanutula Damodar Reddy, Sreepriya Prakash, Denny K Devasia

    Source Title: Applied Mathematics and Computation, Quartile: Q1, DOI Link

    View abstract ⏷

    Klann and Ramlau [16] hypothesized fractional Tikhonov regularization as an interpolation between generalized inverse and Tikhonov regularization. In fact, fractional schemes can be viewed as a generalization of the Tikhonov scheme. One of the motives of this work is the major pitfall of the a priori parameter choice rule, which primarily relies on source conditions that are often unknown. It necessitates the need for advocating a data-driven approach (a posteriori choice strategy). We briefly overview fractional scheme in learning theory and propose a modified Engl type [9] discrepancy principle, thus integrating supervised learning into the field of inverse problems. In due course of the investigation, we effectively explored the relation between learning from examples and the inverse problems. We demonstrate the regularization properties and establish the convergence rate of this scheme. Finally, the theoretical results are corroborated using two well known examples in learning theory.
  • A class of a posteriori parameter choice rules for filter-based regularization schemes

    Dr Gaanutula Damodar Reddy, Sayana K Jacob

    Source Title: Numerical Algorithms, Quartile: Q1, DOI Link

    View abstract ⏷

    Regularization is a method for providing a stable approximate solution to ill-posed operator equations, and it involves the regularization parameter which plays an important role in the convergence of the method. In this article, we propose a class of a posteriori parameter choice rules for filter-based regularization methods and establish the optimal rate of convergence O(?) from the proposed rules. We study these methods along with the proposed parameter choice rules in the context of pseudo-differential operator equations as well as the analytic continuation problem. The numerical implementation of the pseudo-differential operator equation and analytic continuation problem is discussed.
  • Optimal parameter choice rule for filter-based regularization schemes

    Dr Gaanutula Damodar Reddy, Sayana K Jacob

    Source Title: Applied Mathematics and Computation, Quartile: Q1, DOI Link

    View abstract ⏷

    We explore the further study of filter based schemes along with parameter choice rules and then apply to pseudo-differential operator equations and the analytic continuation problem. As we know that the stability of the regularization schemes depends on the regularization parameter and here we derive an a posteriori parameter choice rule which is best among all other parameter choice rules; and this parameter choice rule minimizes an upper bound of the approximation error ?x?,??x†?. Numerical experiments are also provided to validate the proposed theory. © 2024 Elsevier Inc.
  • A class of parameter choice strategies for the finite dimensional weighted Tikhonov regularization scheme

    Dr Gaanutula Damodar Reddy, Pradeep D

    Source Title: Computational and Applied Mathematics, Quartile: Q1, DOI Link

    View abstract ⏷

    Recently, Reddy (2018) has studied a posteriori parameter choice rules for the weighted Tikhonov regularization scheme. In this article, we consider the finite dimensional weighted Tikhonov scheme and discuss the convergence analysis of the scheme. We introduce a class of parameter choice strategies to choose the regularization parameter in the finite dimensional weighted Tikhonov scheme; and derive the optimal rate of convergence O(??+1?+2) for the scheme based on the proposed strategies. Results of numerical experiments are documented to illustrate the performance of the scheme with an efficient finite dimensional approximation of an operator.
  • A generalized regularization scheme for solving singularly perturbed parabolic PDEs

    Dr Gaanutula Damodar Reddy, Rajan M P

    Source Title: Partial Differential Equations in Applied Mathematics, Quartile: Q1, DOI Link

    View abstract ⏷

    Many problems in science and engineering can be modeled as singularly perturbed partial differential equations. Solutions to such problems are not generally continuous with respect to the perturbation parameter(s) and hence developing stable and efficient numerical schemes to singularly perturbed problems are always more interesting and mathematically challenging to researchers. In this paper, we propose a generalized regularization scheme as an alternate numerical scheme for solving singularly perturbed parabolic PDEs with higher-order derivatives multiplied by a small parameter. Since the involved operators are unbounded, first, we propose a general theoretical framework for unbounded operators with an a posteriori parameter choice rule for selecting a regularization parameter, and then we apply it to singularly perturbed problems. We numerically implement the proposed scheme and compare it with other traditional schemes. The study illustrates that the proposed scheme can be considered as an alternate and competent method for solving singularly perturbed parabolic problems.
  • Regularized Lardy Scheme for Solving Singularly Perturbed Elliptic and Parabolic PDEs

    Dr Gaanutula Damodar Reddy, M P Rajan

    Source Title: Mediterranean Journal of Mathematics, Quartile: Q2, DOI Link

    View abstract ⏷

    Singularly perturbed partial differential equations occur in many practical problems. These equations are characterized mathematically by the presence of a small parameter ? multiplying to one or more of the highest derivatives in a partial differential equation. Finding stable approximate solutions to such problems is mathematically challenging and interesting due to the fact that the solution is not stable as ? goes to 0. Many numerical schemes have been explored in the literature for finding approximate solutions to such PDEs. However, in this paper, our attempt is to propose a regularized iterative scheme as an alternative approach for finding stable approximate solutions to singularly perturbed elliptic and parabolic PDEs. We propose a general theoretical frame work for unbounded operators and then apply it for solving both singularly perturbed parabolic and elliptic PDEs. Theoretical results are illustrated through numerical examples and compared with other standard schemes. Numerical investigation assert that the proposed scheme is a very competitive and an alternate approach for solving the singularly perturbed problems.

Patents

Projects

Scholars

Doctoral Scholars

  • Sreepriya Prakash
  • Denny K Devasia
  • Sayana K Jacob

Interests

  • Financial Mathematics
  • Machine Learning
  • Regularization Methods
  • Statistical Inverse Problem

Thought Leaderships

There are no Thought Leaderships associated with this faculty.

Top Achievements

Education
2004
BSc
Nalgonda Degree College of Arts and Science (Osmania University)
India
2007
MSc
Pondicherry University
India
2008
MPhil
Pondicherry University
India
2015
PhD
IISER Thiruvananthapuram
India
Experience
  • January 2020 to July 2020: Assistant Professor, Dept. of Mathematics, IIIT Kottayam.
  • April 2016 to December 2019: Post Doctoral Fellow, Mechanical Aerospace Engg. IIT Hyderabad.
  • April 2015 to October 2015: Research Associate, Dept. of Mathematics, IISER Thiruvananthapuram.
  • July 2010 to December 2010: Ad hoc Faculty, Dept. of MACS, NIT Surathkal Karnataka.
Research Interests
  • Parameter Choice Rules for the Weighted Regularization Methods
  • Reproducing Kernel Banach Space
  • Analytic Continuation
  • Regularization Methods for Statistical Inverse Problem
  • Sparse Regularization
Awards & Fellowships
  • 2015—Post Doctoral Fellowship—NBHM.
  • 2010—215th rank in GATE-2010—GATE.
  • 2008—1st rank in M.Phil. Entrance Exam—Pondicherry University.
  • 2007---1st rank in M.Sc. Entrance Exam—Pondicherry University.
Memberships
No data available
Publications
  • A class of parameter choice rules for fractional Tikhonov regularization scheme in learning theory

    Dr Gaanutula Damodar Reddy, Sreepriya Prakash, Denny K Devasia

    Source Title: Applied Mathematics and Computation, Quartile: Q1, DOI Link

    View abstract ⏷

    Klann and Ramlau [16] hypothesized fractional Tikhonov regularization as an interpolation between generalized inverse and Tikhonov regularization. In fact, fractional schemes can be viewed as a generalization of the Tikhonov scheme. One of the motives of this work is the major pitfall of the a priori parameter choice rule, which primarily relies on source conditions that are often unknown. It necessitates the need for advocating a data-driven approach (a posteriori choice strategy). We briefly overview fractional scheme in learning theory and propose a modified Engl type [9] discrepancy principle, thus integrating supervised learning into the field of inverse problems. In due course of the investigation, we effectively explored the relation between learning from examples and the inverse problems. We demonstrate the regularization properties and establish the convergence rate of this scheme. Finally, the theoretical results are corroborated using two well known examples in learning theory.
  • A class of a posteriori parameter choice rules for filter-based regularization schemes

    Dr Gaanutula Damodar Reddy, Sayana K Jacob

    Source Title: Numerical Algorithms, Quartile: Q1, DOI Link

    View abstract ⏷

    Regularization is a method for providing a stable approximate solution to ill-posed operator equations, and it involves the regularization parameter which plays an important role in the convergence of the method. In this article, we propose a class of a posteriori parameter choice rules for filter-based regularization methods and establish the optimal rate of convergence O(?) from the proposed rules. We study these methods along with the proposed parameter choice rules in the context of pseudo-differential operator equations as well as the analytic continuation problem. The numerical implementation of the pseudo-differential operator equation and analytic continuation problem is discussed.
  • Optimal parameter choice rule for filter-based regularization schemes

    Dr Gaanutula Damodar Reddy, Sayana K Jacob

    Source Title: Applied Mathematics and Computation, Quartile: Q1, DOI Link

    View abstract ⏷

    We explore the further study of filter based schemes along with parameter choice rules and then apply to pseudo-differential operator equations and the analytic continuation problem. As we know that the stability of the regularization schemes depends on the regularization parameter and here we derive an a posteriori parameter choice rule which is best among all other parameter choice rules; and this parameter choice rule minimizes an upper bound of the approximation error ?x?,??x†?. Numerical experiments are also provided to validate the proposed theory. © 2024 Elsevier Inc.
  • A class of parameter choice strategies for the finite dimensional weighted Tikhonov regularization scheme

    Dr Gaanutula Damodar Reddy, Pradeep D

    Source Title: Computational and Applied Mathematics, Quartile: Q1, DOI Link

    View abstract ⏷

    Recently, Reddy (2018) has studied a posteriori parameter choice rules for the weighted Tikhonov regularization scheme. In this article, we consider the finite dimensional weighted Tikhonov scheme and discuss the convergence analysis of the scheme. We introduce a class of parameter choice strategies to choose the regularization parameter in the finite dimensional weighted Tikhonov scheme; and derive the optimal rate of convergence O(??+1?+2) for the scheme based on the proposed strategies. Results of numerical experiments are documented to illustrate the performance of the scheme with an efficient finite dimensional approximation of an operator.
  • A generalized regularization scheme for solving singularly perturbed parabolic PDEs

    Dr Gaanutula Damodar Reddy, Rajan M P

    Source Title: Partial Differential Equations in Applied Mathematics, Quartile: Q1, DOI Link

    View abstract ⏷

    Many problems in science and engineering can be modeled as singularly perturbed partial differential equations. Solutions to such problems are not generally continuous with respect to the perturbation parameter(s) and hence developing stable and efficient numerical schemes to singularly perturbed problems are always more interesting and mathematically challenging to researchers. In this paper, we propose a generalized regularization scheme as an alternate numerical scheme for solving singularly perturbed parabolic PDEs with higher-order derivatives multiplied by a small parameter. Since the involved operators are unbounded, first, we propose a general theoretical framework for unbounded operators with an a posteriori parameter choice rule for selecting a regularization parameter, and then we apply it to singularly perturbed problems. We numerically implement the proposed scheme and compare it with other traditional schemes. The study illustrates that the proposed scheme can be considered as an alternate and competent method for solving singularly perturbed parabolic problems.
  • Regularized Lardy Scheme for Solving Singularly Perturbed Elliptic and Parabolic PDEs

    Dr Gaanutula Damodar Reddy, M P Rajan

    Source Title: Mediterranean Journal of Mathematics, Quartile: Q2, DOI Link

    View abstract ⏷

    Singularly perturbed partial differential equations occur in many practical problems. These equations are characterized mathematically by the presence of a small parameter ? multiplying to one or more of the highest derivatives in a partial differential equation. Finding stable approximate solutions to such problems is mathematically challenging and interesting due to the fact that the solution is not stable as ? goes to 0. Many numerical schemes have been explored in the literature for finding approximate solutions to such PDEs. However, in this paper, our attempt is to propose a regularized iterative scheme as an alternative approach for finding stable approximate solutions to singularly perturbed elliptic and parabolic PDEs. We propose a general theoretical frame work for unbounded operators and then apply it for solving both singularly perturbed parabolic and elliptic PDEs. Theoretical results are illustrated through numerical examples and compared with other standard schemes. Numerical investigation assert that the proposed scheme is a very competitive and an alternate approach for solving the singularly perturbed problems.
Contact Details

gaanutuladamodar.r@srmap.edu.in

Scholars

Doctoral Scholars

  • Sreepriya Prakash
  • Denny K Devasia
  • Sayana K Jacob

Interests

  • Financial Mathematics
  • Machine Learning
  • Regularization Methods
  • Statistical Inverse Problem

Education
2004
BSc
Nalgonda Degree College of Arts and Science (Osmania University)
India
2007
MSc
Pondicherry University
India
2008
MPhil
Pondicherry University
India
2015
PhD
IISER Thiruvananthapuram
India
Experience
  • January 2020 to July 2020: Assistant Professor, Dept. of Mathematics, IIIT Kottayam.
  • April 2016 to December 2019: Post Doctoral Fellow, Mechanical Aerospace Engg. IIT Hyderabad.
  • April 2015 to October 2015: Research Associate, Dept. of Mathematics, IISER Thiruvananthapuram.
  • July 2010 to December 2010: Ad hoc Faculty, Dept. of MACS, NIT Surathkal Karnataka.
Research Interests
  • Parameter Choice Rules for the Weighted Regularization Methods
  • Reproducing Kernel Banach Space
  • Analytic Continuation
  • Regularization Methods for Statistical Inverse Problem
  • Sparse Regularization
Awards & Fellowships
  • 2015—Post Doctoral Fellowship—NBHM.
  • 2010—215th rank in GATE-2010—GATE.
  • 2008—1st rank in M.Phil. Entrance Exam—Pondicherry University.
  • 2007---1st rank in M.Sc. Entrance Exam—Pondicherry University.
Memberships
No data available
Publications
  • A class of parameter choice rules for fractional Tikhonov regularization scheme in learning theory

    Dr Gaanutula Damodar Reddy, Sreepriya Prakash, Denny K Devasia

    Source Title: Applied Mathematics and Computation, Quartile: Q1, DOI Link

    View abstract ⏷

    Klann and Ramlau [16] hypothesized fractional Tikhonov regularization as an interpolation between generalized inverse and Tikhonov regularization. In fact, fractional schemes can be viewed as a generalization of the Tikhonov scheme. One of the motives of this work is the major pitfall of the a priori parameter choice rule, which primarily relies on source conditions that are often unknown. It necessitates the need for advocating a data-driven approach (a posteriori choice strategy). We briefly overview fractional scheme in learning theory and propose a modified Engl type [9] discrepancy principle, thus integrating supervised learning into the field of inverse problems. In due course of the investigation, we effectively explored the relation between learning from examples and the inverse problems. We demonstrate the regularization properties and establish the convergence rate of this scheme. Finally, the theoretical results are corroborated using two well known examples in learning theory.
  • A class of a posteriori parameter choice rules for filter-based regularization schemes

    Dr Gaanutula Damodar Reddy, Sayana K Jacob

    Source Title: Numerical Algorithms, Quartile: Q1, DOI Link

    View abstract ⏷

    Regularization is a method for providing a stable approximate solution to ill-posed operator equations, and it involves the regularization parameter which plays an important role in the convergence of the method. In this article, we propose a class of a posteriori parameter choice rules for filter-based regularization methods and establish the optimal rate of convergence O(?) from the proposed rules. We study these methods along with the proposed parameter choice rules in the context of pseudo-differential operator equations as well as the analytic continuation problem. The numerical implementation of the pseudo-differential operator equation and analytic continuation problem is discussed.
  • Optimal parameter choice rule for filter-based regularization schemes

    Dr Gaanutula Damodar Reddy, Sayana K Jacob

    Source Title: Applied Mathematics and Computation, Quartile: Q1, DOI Link

    View abstract ⏷

    We explore the further study of filter based schemes along with parameter choice rules and then apply to pseudo-differential operator equations and the analytic continuation problem. As we know that the stability of the regularization schemes depends on the regularization parameter and here we derive an a posteriori parameter choice rule which is best among all other parameter choice rules; and this parameter choice rule minimizes an upper bound of the approximation error ?x?,??x†?. Numerical experiments are also provided to validate the proposed theory. © 2024 Elsevier Inc.
  • A class of parameter choice strategies for the finite dimensional weighted Tikhonov regularization scheme

    Dr Gaanutula Damodar Reddy, Pradeep D

    Source Title: Computational and Applied Mathematics, Quartile: Q1, DOI Link

    View abstract ⏷

    Recently, Reddy (2018) has studied a posteriori parameter choice rules for the weighted Tikhonov regularization scheme. In this article, we consider the finite dimensional weighted Tikhonov scheme and discuss the convergence analysis of the scheme. We introduce a class of parameter choice strategies to choose the regularization parameter in the finite dimensional weighted Tikhonov scheme; and derive the optimal rate of convergence O(??+1?+2) for the scheme based on the proposed strategies. Results of numerical experiments are documented to illustrate the performance of the scheme with an efficient finite dimensional approximation of an operator.
  • A generalized regularization scheme for solving singularly perturbed parabolic PDEs

    Dr Gaanutula Damodar Reddy, Rajan M P

    Source Title: Partial Differential Equations in Applied Mathematics, Quartile: Q1, DOI Link

    View abstract ⏷

    Many problems in science and engineering can be modeled as singularly perturbed partial differential equations. Solutions to such problems are not generally continuous with respect to the perturbation parameter(s) and hence developing stable and efficient numerical schemes to singularly perturbed problems are always more interesting and mathematically challenging to researchers. In this paper, we propose a generalized regularization scheme as an alternate numerical scheme for solving singularly perturbed parabolic PDEs with higher-order derivatives multiplied by a small parameter. Since the involved operators are unbounded, first, we propose a general theoretical framework for unbounded operators with an a posteriori parameter choice rule for selecting a regularization parameter, and then we apply it to singularly perturbed problems. We numerically implement the proposed scheme and compare it with other traditional schemes. The study illustrates that the proposed scheme can be considered as an alternate and competent method for solving singularly perturbed parabolic problems.
  • Regularized Lardy Scheme for Solving Singularly Perturbed Elliptic and Parabolic PDEs

    Dr Gaanutula Damodar Reddy, M P Rajan

    Source Title: Mediterranean Journal of Mathematics, Quartile: Q2, DOI Link

    View abstract ⏷

    Singularly perturbed partial differential equations occur in many practical problems. These equations are characterized mathematically by the presence of a small parameter ? multiplying to one or more of the highest derivatives in a partial differential equation. Finding stable approximate solutions to such problems is mathematically challenging and interesting due to the fact that the solution is not stable as ? goes to 0. Many numerical schemes have been explored in the literature for finding approximate solutions to such PDEs. However, in this paper, our attempt is to propose a regularized iterative scheme as an alternative approach for finding stable approximate solutions to singularly perturbed elliptic and parabolic PDEs. We propose a general theoretical frame work for unbounded operators and then apply it for solving both singularly perturbed parabolic and elliptic PDEs. Theoretical results are illustrated through numerical examples and compared with other standard schemes. Numerical investigation assert that the proposed scheme is a very competitive and an alternate approach for solving the singularly perturbed problems.
Contact Details

gaanutuladamodar.r@srmap.edu.in

Scholars

Doctoral Scholars

  • Sreepriya Prakash
  • Denny K Devasia
  • Sayana K Jacob