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An Integrated Platform for Validated Prediction of Collapse of Structures

$280,000FY2010ENGNSF

University Of Illinois At Urbana-Champaign, Urbana IL

Investigators

Abstract

This research aims to establish a robust procedure for accurate assessment of the collapse of steel frame structures. Understanding the causes and effects of structural collapse is critical to develop key documents such as national building codes, regional emergency response plans, and risk management strategies. This project will develop a cohesive-zone method for detailed assessment of structural collapse, and a compact plasticity-based macro beam element method for global collapse assessment of a complete frame structure. Together, these two methods will provide a systematic approach for evolution of collapse, including strength degradation and topology changes. The approach will be validated using representative testbed examples. Stochastic algorithms including Bayesian parameter estimation methods and pattern classification methods will then be developed for validating some simple nonlinear methods that are currently used to predict collapse. The research will help in identifying the key parameters and damage measures that govern the collapse capacity of a structure. The numerical and analytical tools developed in this project will help in the development of better building code provisions that seek to prevent disproportionate collapse and in regional loss assessments that rely on accurate assessment of building collapse in a region. The research will identify new collapse resistant structural designs to enhance public safety under extreme loads. The research results will be incorporated in the graduate level courses on the topics of structural designs for extreme loads and risk assessment. Active efforts will be made to recruit students from the groups that are underrepresented in science and technology fields using the well-established institutional fellowship programs. Through their involvement in the research project, two graduate students and two undergraduate research assistants will be provided advanced training to join the Nation's highly trained workforce.

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