桥梁健康监测的模糊神经系统

L. Meyyappan, M. José, C. Dagli, P. Silva, H. Pottinger
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引用次数: 10

摘要

尽管存在老化和相关的潜在损害累积风险,但许多民用和机械系统仍在持续使用。因此,实时监控这些系统的结构健康状况的能力变得非常重要。本文介绍了一种实用的基于软计算工具的结构健康实时监测系统及其在密苏里州一座钢桥结构健康监测中的应用。对该桥梁的振动数据进行处理,并将其输入模糊逻辑决策系统。模糊逻辑决策系统利用模糊聚类来确定桥梁可能存在的损伤。利用反向传播算法的神经网络预测系统,利用模糊逻辑对预测损伤的构件进行实际损伤量的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy-neuro system for bridge health monitoring
Many civil and mechanical systems are in continuous use despite aging and associated potential risk for damage accumulation. Hence, the ability to monitor the structural health of these systems on a real-time basis is becoming very important. This paper describes a practical real-time structural health monitoring system using soft computing tools and its application to the structural health monitoring of a steel bridge located in Missouri. Vibration data collected from this bridge was processed and fed to the fuzzy logic decision system. The fuzzy logic decision system makes use of fuzzy clustering to determine the possible presence of damage in the bridge. A neural network prediction system which makes use of backpropagation algorithm predicts the amount of actual damage in the members which were predicted damaged by the fuzzy logic.
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