基于堆叠集成学习的环境影响下空间网格结构模态参数预测与损伤检测

Qinghua Han, Qian Ma, Dazhi Dang, Jie Xu
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引用次数: 0

摘要

为了预测环境作用下空间网架钢结构的模态参数,建立了一种叠置集成学习模型。通过对预测残差的统计分析来检测潜在的损伤。为此,我们训练了五个独立的异构机器学习模型来预测固有频率;每个模型都使用环境数据的主成分作为输入参数。接下来,使用五个独立模型的输出作为输入,构建了一个堆叠集成学习器。最后,提出了一种结合多阶固有频率预测残差的损伤指标,并对其进行了统计分析,以实现准确的损伤检测。为了验证该方法的有效性,在野外环境中建立了空间网格模型,并进行了一段时间的实测。收集了环境温度、湿度、风速和风向、结构表面温度等动态和环境数据。采用协方差驱动的随机子空间自动识别方法进行了体模识别。分析了固有频率、阻尼比和振型对环境的依赖性。然后,基于基线健康状态和未知未来状态的短期监测数据对该方法进行验证。结果表明,由于环境的影响,空间网架结构的固有频率和阻尼比每天都有明显的波动。堆叠集成学习利用来自多个异构模型的预测来产生更好的预测模型。通过集成学习对预测残差进行统计分析,有效地消除了环境影响,实现了结构损伤的及时检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modal Parameters Prediction and Damage Detection of Space Grid Structure under Environmental Effects Using Stacked Ensemble Learning
A stacked ensemble learning model is developed to predict the modal parameters of space grid steel structures under environmental effects. Potential damage is detected via statistical analysis of the prediction residuals. For this purpose, five standalone heterogeneous machine learning models were trained for predicting natural frequencies; each model used the principal components of the environmental data as input parameters. Next, a stacked ensemble learner was built using the outputs of the five standalone models as its inputs. Finally, a damage indicator combining the predicted residuals of multiple orders of natural frequencies is proposed and statistically analyzed for accurate damage detection. To verify the effectiveness of the proposed method, a space grid model was created in the field environment and measured for a period. Dynamic and environmental data were collected, such as ambient temperature, humidity, wind speed and direction, and structural surface temperature. An automated procedure of the covariance-driven stochastic subspace identification method was conducted to identify bulk mode. The environmental dependence of the natural frequencies, damping ratios, and vibration modes was analyzed. Then, the method was validated based on short-term monitoring data from the baseline health state and unknown future states. The results show that the natural frequencies and damping ratios of space grid structures fluctuate significantly on a daily basis due to environmental influences. Stacked ensemble learning utilizes predictions from multiple heterogeneous models to produce a better predictive model. The statistical analysis of the prediction residuals by ensemble learning effectively removes the environmental influences, allowing for timely structural damage detection.
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