Jooyoung Park, Wonkyu Kim, Kyo-Young Jeon, Seunghee Park
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The temperature effect on the signal could be removed by subtracting the tension from the signal using the thermistor data, reducing the error by 91.99% when considering permeability. Additionally, linear regression (LR) and machine learning (ML) algorithms were adopted to predict the tension. Furthermore, the performances of both algorithms were compared using mean absolute error (MAE) and R2. For the prediction using each feature in magnetic hysteresis, LR surpassed ML and the permeability exhibited the highest prediction performance. Meanwhile, predictions using multiple features were attempted to investigate the applicability of ML. Two cases of prediction were performed using ML: on using all the features and the other using three features excluding coercivity, which showed poor relevance to tension. As a result, the performance of the tension prediction was improved significantly compared to the results obtained by LR. 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Temperature-sensitive sensors require special considerations as they may misinterpret the signal and tension. Moreover, the unnecessary and inappropriate use of features obtained from the sensor signal can deteriorate the efficiency of the signal and, therefore, tension analysis. This study proposes a tension estimation method using an embedded elastomagnetic (EM) sensor with a temperature-compensation technique. Changes in the signal due to the tension in the temporary steel rods were analyzed using a full-scale test, and the sensor data were acquired for 15 months via the field application. The temperature effect on the signal could be removed by subtracting the tension from the signal using the thermistor data, reducing the error by 91.99% when considering permeability. Additionally, linear regression (LR) and machine learning (ML) algorithms were adopted to predict the tension. Furthermore, the performances of both algorithms were compared using mean absolute error (MAE) and R2. 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引用次数: 0
摘要
使用自由悬臂法(FCM)对在建桥梁的预应力构件进行连续监测,对于确保桥梁安全至关重要。对温度敏感的传感器可能会误读信号和张力,因此需要特别考虑。此外,不必要和不适当地使用从传感器信号中获得的特征会降低信号的效率,从而影响张力分析。本研究提出了一种使用嵌入式弹性电磁(EM)传感器和温度补偿技术的张力估算方法。通过全尺寸试验分析了临时钢棒张力引起的信号变化,并通过现场应用获取了传感器 15 个月的数据。通过使用热敏电阻数据从信号中减去拉力,可以消除温度对信号的影响,在考虑渗透率的情况下,误差减少了 91.99%。此外,还采用了线性回归(LR)和机器学习(ML)算法来预测张力。此外,还使用平均绝对误差(MAE)和 R2 比较了两种算法的性能。在使用磁滞中的每个特征进行预测时,LR 超过了 ML,磁导率的预测性能最高。同时,为了研究 ML 的适用性,尝试了使用多个特征进行预测。使用 ML 进行了两种预测:一种是使用所有特征,另一种是使用除矫顽力之外的三个特征,后者与张力的相关性较差。因此,与 LR 预测结果相比,张力预测的性能有了显著提高。总之,所获得的结果表明,利用温度补偿技术选择性地使用数据特征可以提高预测能力。
Elastomagnetic Sensor-Based Long-Term Tension Monitoring of Prestressed Bridge Member with Temperature Compensation
Continuous monitoring of the prestressed members of a bridge under construction using the free cantilever method (FCM) is crucial for ensuring bridge safety. Temperature-sensitive sensors require special considerations as they may misinterpret the signal and tension. Moreover, the unnecessary and inappropriate use of features obtained from the sensor signal can deteriorate the efficiency of the signal and, therefore, tension analysis. This study proposes a tension estimation method using an embedded elastomagnetic (EM) sensor with a temperature-compensation technique. Changes in the signal due to the tension in the temporary steel rods were analyzed using a full-scale test, and the sensor data were acquired for 15 months via the field application. The temperature effect on the signal could be removed by subtracting the tension from the signal using the thermistor data, reducing the error by 91.99% when considering permeability. Additionally, linear regression (LR) and machine learning (ML) algorithms were adopted to predict the tension. Furthermore, the performances of both algorithms were compared using mean absolute error (MAE) and R2. For the prediction using each feature in magnetic hysteresis, LR surpassed ML and the permeability exhibited the highest prediction performance. Meanwhile, predictions using multiple features were attempted to investigate the applicability of ML. Two cases of prediction were performed using ML: on using all the features and the other using three features excluding coercivity, which showed poor relevance to tension. As a result, the performance of the tension prediction was improved significantly compared to the results obtained by LR. In summary, the obtained results have demonstrated that the utilization of selective features of data with temperature compensation techniques could enhance predictive power.