科技报告详细信息
Structural health monitoring algorithm comparisons using standard data sets
Figueiredo, Eloi ; Park, Gyuhae ; Figueiras, Joaquim ; Farrar, Charles ; Worden, Keith
关键词: ALGORITHMS;    MECHANICAL STRUCTURES;    DAMAGE;    DETECTION;    MONITORING;    PATTERN RECOGNITION;    LABORATORY BUILDINGS;    SIMULATION;   
DOI  :  10.2172/961604
RP-ID  :  LA-14393
PID  :  OSTI ID: 961604
Others  :  TRN: US200920%%193
学科分类:工程和技术(综合)
美国|英语
来源: SciTech Connect
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【 摘 要 】

The real-world structures are subjected to operational and environmental condition changes that impose difficulties in detecting and identifying structural damage. The aim of this report is to detect damage with the presence of such operational and environmental condition changes through the application of the Los Alamos National Laboratory’s statistical pattern recognition paradigm for structural health monitoring (SHM). The test structure is a laboratory three-story building, and the damage is simulated through nonlinear effects introduced by a bumper mechanism that simulates a repetitive impact-type nonlinearity. The report reviews and illustrates various statistical principles that have had wide application in many engineering fields. The intent is to provide the reader with an introduction to feature extraction and statistical modelling for feature classification in the context of SHM. In this process, the strengths and limitations of some actual statistical techniques used to detect damage in the structures are discussed. In the hierarchical structure of damage detection, this report is only concerned with the first step of the damage detection strategy, which is the evaluation of the existence of damage in the structure. The data from this study and a detailed description of the test structure are available for download at: http://institute.lanl.gov/ei/software-and-data/.

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