摘要
针对结构健康监测中如何利用在线监测数据进行健康诊断的问题,基于时间序列分析提出了一种新的损伤识别方法。首先,获得结构健康状态的监测数据作为参考状态样本,对各数据样本建立ARMA模型并计算模型残差的方差。然后,将未知状态的监测数据作为待检状态样本,代入已建立的参考状态ARMA模型计算新的残差方差。计算发现,损伤前后两状态模型残差方差存在差异。因而,提出以残差方差之比作为损伤敏感特征,并建立基于F分布的假设检验来辨识结构的状态并预警损伤。最后,以Benchmark结构在环境激励下的试验为例,运用本文方法进行了损伤识别研究。结果表明,基于ARMA模型残差方差的损伤敏感特征可准确地区别结构的健康状态和损伤状态,具备结构在线实时损伤识别的应用价值。
A novel damage identification algorithm using time series analysis is presented for the on-line damage diagnosis in structural health monitoring(SHM).First,the monitoring data obtained from undamaged structure was served as a reference sample and constructed as the ARMA time series models.The residual-error variances of these ARMA models were calculated.Then,a newly obtained monitoring data was substituted in these reference ARMA models to compute its own residual-error variances.It was observed that the variances from pre-and post-damaged structure were different.Thus,a new damage sensitive feature was proposed as a function of variances ratio.A hypothesis test involving the F-distribution was utilized to identify structure conditions and report damage.At last,the proposed algorithm was applied to the ambient excitation tests of the IASC-ASCE Benchmark structure.Result shows that,the time series based damage sensitive future is able to distinguish the normal condition from the damaged condition,and the proposed algorithm can be applied to the on-line damage identification in SHM.
出处
《计算力学学报》
EI
CAS
CSCD
北大核心
2010年第3期500-504,共5页
Chinese Journal of Computational Mechanics
基金
国家高技术研究发展计划(863计划
2006AA04Z416)
国家自然科学基金(50538020)资助项目