Ramakrishna Venkata Mallina
General Electric
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Featured researches published by Ramakrishna Venkata Mallina.
ASME Turbo Expo 2010: Power for Land, Sea, and Air | 2010
Sriram Shankaran; Brian Chandler Barr; Ramakrishna Venkata Mallina; Ravikanth Avancha; Alexander Stein
The ability to quantify the impact of uncertainty on performance is an important facet of engineering design. Computational Fluid Dynamics (CFD) studies during the design cycle typically utilize estimates of boundary conditions, geometry and model constants, all of which have uncertainty that could lead to variations in the estimated performance of the design. Traditionally, engineering environments have relied on Monte-Carlo (MC) simulations to obtain probabilistic estimates. But MC methods have poor convergence rate leading to prohibitive computational requirements when used in conjunction with medium to high fidelity computational tools. In this study, we will use an alternate probabilistic approach. We assume that the uncertainties in our computational system can be modeled as random variables with known/prescribed distributions, use CFD solvers to estimate the performance measures and then use a psuedo-spectral probabilistic collocation technique to determine regression/interpolation fits. The psuedo-spectral discrete expansion uses the orthogonal polynomials from the Askey-Wiener basis and finds the coefficients of the expansion [1]. We will restrict our attention to problems with one random variable and hence can without ambiguity choose the Gauss quadratures as the optimal choice to obtain statistical data (mean, variance, moments etc.) of the performance measures. The computational frame-work will be first validated against Monte-Carlo simulations to assess convergence of pdfs. It will then be used to assess the variability in compressor blade efficiency and turbine vane loss due to uncertainty in inflow conditions. The results will be used to answer the following questions. Do we need new probabilistic algorithms to quantify the impact of uncertainty? What is the optimal basis for standard performance metrics in turbomachinery? What are the computational and accuracy requirements of this probabilistic approach? Are there alternate (more efficient) techniques? We believe that the answers to the above questions will provide a quantitative basis to assess the usefulness of non-intrusive (and possibly intrusive) probabilistic methods to analyze variability in engineering designs.Copyright
Archive | 2008
Richard S. Zhang; Richard Alfred Beaupre; Ramakrishna Venkata Mallina; Arun Virupaksha Gowda; Le Yan; Ljubisa Dragoljub Stevanovic; Peter Morley; Stephen A. Solovitz
Archive | 2008
Satish Sivarama Gunturi; Mahadevan Balasubramaniam; Ramakrishna Venkata Mallina; Richard Alfred Beaupre; Le Yan; Richard S. Zhang; Ljubisa Dragoljub Stevanovic; Adam Gregory Pautsch; Stephen A. Solovitz
Archive | 2014
Sungho Yoon; John David Stampfli; Ramakrishna Venkata Mallina; Vittorio Michelassi; Giridhar Jothiprasad; Ajay Keshava Rao; Rudolf Konrad Selmeier; Davide Giacché; Ivan Malcevic
Volume 9: Oil and Gas Applications; Supercritical CO2 Power Cycles; Wind Energy | 2017
Francisco Moraga; Doug Hofer; Swati Saxena; Ramakrishna Venkata Mallina
Volume 9: Oil and Gas Applications; Supercritical CO2 Power Cycles; Wind Energy | 2017
Swati Saxena; Ramakrishna Venkata Mallina; Francisco Moraga; Douglas Carl Hofer
Archive | 2017
Ramakrishna Venkata Mallina; Sungho Yoon; Vittorio Michelassi; Ivan Malcevic
Archive | 2016
Giridhar Jothiprasad; Ramakrishna Venkata Mallina; John David Stampfli; Rudolf Konrad Selmeier; Davide Giacché
Archive | 2016
John David Stampfli; Ramakrishna Venkata Mallina; Vittorio Michelassi; Giridhar Jothiprasad; Ajay Keshava Rao; Rudolf Konrad Selmeier; Davide Giacché; Ivan Malcevic; Sungho Yoon
Archive | 2016
Giridhar Jothiprasad; Ivan Malcevic; John David Stampfli; Ramakrishna Venkata Mallina; Ajay Keshava Rao; Davide Giacché; Sungho Yoon; Vittorio Michelassi; Rudolf Konrad Selmeier