Alireza Doostan News /aerospace/ en Seminar: Uncertainty Quantification and Data Management in Complex System Modeling: A Multi-fidelity Approach - Nov. 13 /aerospace/2020/11/09/seminar-uncertainty-quantification-and-data-management-complex-system-modeling-multi <span>Seminar: Uncertainty Quantification and Data Management in Complex System Modeling: A Multi-fidelity Approach - Nov. 13</span> <span><span>Anonymous (not verified)</span></span> <span><time datetime="2020-11-09T15:16:05-07:00" title="Monday, November 9, 2020 - 15:16">Mon, 11/09/2020 - 15:16</time> </span> <div> <div class="imageMediaStyle focal_image_wide"> <img loading="lazy" src="/aerospace/sites/default/files/styles/focal_image_wide/public/article-thumbnail/engineering_portrait_alireza_doostan_0015pc.jpg?h=539efa0f&amp;itok=Z2rDKnlF" width="1200" height="600" alt="Alireza Doostan"> </div> </div> <div role="contentinfo" class="container ucb-article-categories" itemprop="about"> <span class="visually-hidden">Categories:</span> <div class="ucb-article-category-icon" aria-hidden="true"> <i class="fa-solid fa-folder-open"></i> </div> <a href="/aerospace/taxonomy/term/179"> Seminar </a> </div> <div role="contentinfo" class="container ucb-article-tags" itemprop="keywords"> <span class="visually-hidden">Tags:</span> <div class="ucb-article-tag-icon" aria-hidden="true"> <i class="fa-solid fa-tags"></i> </div> <a href="/aerospace/taxonomy/term/381" hreflang="en">Alireza Doostan News</a> </div> <div class="ucb-article-content ucb-striped-content"> <div class="container"> <div class="paragraph paragraph--type--article-content paragraph--view-mode--default"> <div class="ucb-article-content-media ucb-article-content-media-above"> <div> <div class="paragraph paragraph--type--media paragraph--view-mode--default"> <div> <div class="imageMediaStyle large_image_style"> <img loading="lazy" src="/aerospace/sites/default/files/styles/large_image_style/public/article-image/engineering_portrait_alireza_doostan_0015pc.jpg?itok=8Q7QVjsc" width="1500" height="2000" alt="Alireza Doostan"> </div> </div> </div> </div> </div> <div class="ucb-article-text d-flex align-items-center" itemprop="articleBody"> <div><p class="lead text-align-center">Alireza Doostan<br> Associate Professor, Smead Aerospace<br> Friday, Nov. 13 | 12:30 P.M. | Zoom Webinar - Registration Required</p> <p><strong>Abstract: </strong>The increasing power of computing platforms and the recent advances in data science techniques have fostered the development of data-driven computational models of engineering systems with considerably improved prediction accuracies. An important feature of these modeling approaches is the reliance on data to develop reduced-order models of physical phenomena involved and/or the characterization of the uncertainty associated with the models or their parameters.&nbsp; In the latter case, the quantification of the impact of such uncertainty on the quantities of interest is key to assess the validity of a given model and, potentially, its refinement. However, for complex engineering systems, such as those featuring multi-physics and multi-scale phenomena, data is often high-dimensional and the simulation models are computationally expensive. These, in turn, pose significant challenges to standard data-driven approaches.&nbsp;</p> <p>I will start this talk with a brief discussion on the challenges associated with uncertainty quantification (UQ) and data management of complex systems and a high-level introduction to recent work performed by my research group to tackle these challenges. I will then focus on model reduction approaches for efficient UQ and data storage. While seemingly different, I will explain how these two problems can be tackled with similar computational strategies. At the core of these techniques is a systematic use of models with different levels of fidelity, e.g., coarse vs. fine discretization of the same problem, that enables the identification of a lower-dimensional, yet accurate, description of the quantities of interest or data. During the talk, I will present application examples to highlight the efficiency of these multi-fidelity model reduction approaches and their wide applicability to a broad range of problems.</p> <p><strong>Bio:</strong> Alireza Doostan is an H. Joseph Smead Faculty Fellow and Associate Professor of Aerospace Engineering Sciences Department at the University of Colorado Boulder. He is also the director of the Center for Aerospace Structures (CAS) and an affiliated faculty of the Applied Mathematics Department. Prior to his appointment at CU Boulder in 2010, he was an Engineering Research Associate in the Center for Turbulence Research at Stanford University. Alireza received his PhD in Structural Engineering and M.A. in Applied Mathematics and Statistics from the Johns Hopkins University both in 2007. He is a recipient of a DOE (ASCR) and an NSF (Engineering Design) Early Career awards, as well as multiple teaching awards from CU Boulder and AIAA. His research interests include: Uncertainty quantification, data-driven modeling, optimization under uncertainty, and computational stochastic mechanics.</p></div> </div> </div> </div> </div> <div>Traditional</div> <div>0</div> <div>On</div> <div>White</div> Mon, 09 Nov 2020 22:16:05 +0000 Anonymous 4225 at /aerospace Engineering leads new DOE Predictive Science Academic Alliance Program Center on particulate materials research /aerospace/2020/10/02/engineering-leads-new-doe-predictive-science-academic-alliance-program-center-particulate <span>Engineering leads new DOE Predictive Science Academic Alliance Program Center on particulate materials research</span> <span><span>Anonymous (not verified)</span></span> <span><time datetime="2020-10-02T00:00:00-06:00" title="Friday, October 2, 2020 - 00:00">Fri, 10/02/2020 - 00:00</time> </span> <div> <div class="imageMediaStyle focal_image_wide"> <img loading="lazy" src="/aerospace/sites/default/files/styles/focal_image_wide/public/article-thumbnail/adobestock_162322099_1_6.jpg?h=34e43602&amp;itok=Q3yUYg0r" width="1200" height="600" alt="CU Boulder campus seen from the air"> </div> </div> <div role="contentinfo" class="container ucb-article-categories" itemprop="about"> <span class="visually-hidden">Categories:</span> <div class="ucb-article-category-icon" aria-hidden="true"> <i class="fa-solid fa-folder-open"></i> </div> <a href="/aerospace/taxonomy/term/114"> News </a> </div> <div role="contentinfo" class="container ucb-article-tags" itemprop="keywords"> <span class="visually-hidden">Tags:</span> <div class="ucb-article-tag-icon" aria-hidden="true"> <i class="fa-solid fa-tags"></i> </div> <a href="/aerospace/taxonomy/term/381" hreflang="en">Alireza Doostan News</a> <a href="/aerospace/taxonomy/term/383" hreflang="en">Ken Jansen</a> </div> <div class="ucb-article-content ucb-striped-content"> <div class="container"> <div class="paragraph paragraph--type--article-content paragraph--view-mode--default"> <div class="ucb-article-content-media ucb-article-content-media-above"> <div> <div class="paragraph paragraph--type--media paragraph--view-mode--default"> </div> </div> </div> <div class="ucb-article-text d-flex align-items-center" itemprop="articleBody"> <div><div class="content-wrapper section"> <div class="container"> <div class="row"> <div class="col-lg-12 col-md-12 col-sm-12 col-xs-12"> <div class="region region-content"> <div class="field field-name-body field-type-text-with-summary field-label-hidden"> <div class="field-items"> <div class="field-item even"> <p>CU Boulder’s College of Engineering and Applied Science is leading a new Multi-disciplinary Simulation Center funded by the Department of Energy and the National Nuclear Security Administration’s Advanced Simulation and Computing program to model unbonded and bonded particulate materials in support of the stockpile stewardship program.&nbsp;</p> <p><a href="https://www.energy.gov/nnsa/articles/nnsa-announces-selection-predictive-science-academic-alliance-program-centers" rel="nofollow">The $13 million project exists under the Predictive Science Academic Alliance Program (PSAAP) and in partnership with the NNSA national laboratories.</a> It will significantly expand activities in Computational Science and Engineering for particulate materials at CU Boulder along with multiscale data-driven modeling, machine learning, and uncertainty quantification capabilities. Through it, the university joins a highly select group of Multi-disciplinary Simulation Centers across the country.</p> <p>The PSAAP program aims to engage the U.S. academic community to make significant advances in predictive modeling and simulation tools through partnerships with the NNSA national laboratories. This relationship also helps recruit and train the next wave of graduate students who will explore high impact interdisciplinary research that requires experience in simulation‐based “predictive science” and advanced experimental and analytical methods.&nbsp;</p> <p>For this particular project, CU Boulder researchers and their collaborators will develop computational tools and conduct experiments with cutting-edge in-situ diagnostics at the Advanced Photon Source at Argonne National Laboratory, that strive to predict how particulate materials respond to different temperature, flow, and strain-rate regimes. These studies will focus on the effects of processing on the thermo-mechanical behavior of mock high explosives – bonded particulate materials that are inert and thus do not explode. The research will broadly advance predictive science for unbonded and bonded particulate materials, and all software developed will be open source and contribute to community advances in reliable predictive simulation of composite/particulate materials.</p> <p><a href="/ceae/richard-regueiro" rel="nofollow">Professor Richard Regueiro</a> in the Department of Civil, Environmental and Architectural Engineering, along with four other co-directors, will lead the research. He said a technically diverse team of engineering faculty was a big reason their proposal was selected above others for this prestigious center.</p> <p>"We put together a team that has strength in various areas of interest to the PSAAP program,” he said. “These include exascale computing, community software development, computational multiscale multiphysics, materials experiments with advanced in-situ diagnostics, and – last, but not least – verification, validation and uncertainty quantification.”</p> <p>Associate Dean for Research Massimo Ruzzene said the new project was one of only a handful awarded, leaving the college and university in prestigious company.</p> <p>“One of our college goals is leading on interdisciplinary work and this project certainly fits that,” he said. “This is a great opportunity for us to both contribute to a national need with far ranging implications and provide an unparalleled educational opportunity for our students.”</p> <p>&nbsp;</p> <p>&nbsp;</p> <div class="field field-name-body field-type-text-with-summary field-label-hidden"> <div class="field-items"> <div class="field-item even"> <div class="cu-box margin-bottom box-white float-right filled background-white"> <div class="box-title padding">Leadership</div> <div class="box-content padding clearfix"> <p>Co-Directors:​</p> <ul> <li>Jed Brown, CS</li> <li>Amy Clarke (Colorado School of Mines)</li> <li>Alireza Doostan, AES</li> <li>Richard Regueiro, CEAE</li> <li>Henry Tufo, CS</li> </ul> <p>CU Boulder personnel:</p> <ul> <li>Ken Jansen, AES</li> <li>Shelley Knuth, Research Computing</li> <li>Ron Pak, CEAE</li> <li>Fatemeh Pourahmadian, CEAE</li> <li>JH Song, CEAE</li> <li>Franck Vernerey, ME</li> <li>Yida Zhang, CEAE</li> </ul> <p>Other collaborators on the project include Khalid Alshibli (University of Tennessee, Knoxville), Christian Linder (Stanford University), Hongbing Lu (University of Texas at Dallas), and Steve Sun (Columbia University) as well as the NNSA national laboratories.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div></div> </div> </div> </div> </div> <script> window.location.href = `/engineering/2020/10/01/engineering-leads-new-doe-predictive-science-academic-alliance-program-center-particulate`; </script> <div>Traditional</div> <div>0</div> <div>On</div> <div>White</div> Fri, 02 Oct 2020 06:00:00 +0000 Anonymous 4149 at /aerospace