首页> 外文会议>ASME(American Society of Mechanical Engineers)/JSME Pressure Vessels and Piping Conference: Seismic Engineering v.2; 20040725-20040729; San Diego,CA; US >STRUCTURAL ASSESSMENT SYSTEM FOR DAMAGE AND DEGRADATION (TWO-STAGE DAMAGE IDENTIFICATION BASED ON NEURAL NETWORKS AND IMPROVED MDLAC METHOD)
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STRUCTURAL ASSESSMENT SYSTEM FOR DAMAGE AND DEGRADATION (TWO-STAGE DAMAGE IDENTIFICATION BASED ON NEURAL NETWORKS AND IMPROVED MDLAC METHOD)

机译:损伤和退化的结构评估系统(基于神经网络和改进的MDLAC方法的两阶段损伤识别)

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摘要

A "smart" structure has many functions, including monitoring, repairing, shape formation, and learning. Recently, interest in applying a monitoring system to structures for quality assurance and for evaluating seismic risk has been strong. Monitoring system is useful to diagnose the structural condition, and detect structural damage and degradation. In this study, we developed a monitoring system to assess the structural integrity. This system includes a diagnostic system for structural damage and degradation based on neural networks and improved MDLAC method, say, to detect the damage sites globally by applying neural networks and then to narrow the damage sites by using improved MDLAC method. To validate this system, we then use the 5-story structure in which the beams are fixed at both ends in order to confirm the performance of our proposal damage detection methods. As a result, it is pointed out that there are some possibilities to confirm the diagnostic system by utilizing these two methods.
机译:“智能”结构具有许多功能,包括监视,修复,形状形成和学习。最近,人们强烈希望将监视系统应用于结构以保证质量并评估地震风险。监控系统可用于诊断结构状况,并检测结构损坏和退化。在这项研究中,我们开发了一种监测系统来评估结构完整性。该系统包括基于神经网络和改进的MDLAC方法的结构损坏和退化诊断系统,例如,通过应用神经网络来全局检测损坏位置,然后使用改进的MDLAC方法缩小损坏位置。为了验证该系统,我们然后使用5层结构,将梁的两端固定,以确认建议的损伤检测方法的性能。结果,指出了利用这两种方法来确认诊断系统的可能性。

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