Research Center for Smart Submerged Floating Tunnel System, Korea Advanced Institute of Science and Technology, Daejeon 34141, Korea.
Department of Civil and Environmental Engineering, Korea Advanced Institute of Science and Technology, Daejeon 34141, Korea.
Sensors (Basel). 2020 Sep 7;20(18):5092. doi: 10.3390/s20185092.
In this paper, we propose a dynamic displacement estimation method for large-scale civil infrastructures based on a two-stage Kalman filter and modified heuristic drift reduction method. When measuring displacement at large-scale infrastructures, a non-contact displacement sensor is placed on a limited number of spots such as foundations of the structures, and the sensor must have a very long measurement distance (typically longer than 100 m). RTK-GNSS, therefore, has been widely used in displacement measurement on civil infrastructures. However, RTK-GNSS has a low sampling frequency of 10-20 Hz and often suffers from its low stability due to the number of satellites and the surrounding environment. The proposed method combines data from an RTK-GNSS receiver and an accelerometer to estimate the dynamic displacement of the structure with higher precision and accuracy than those of RTK-GNSS and 100 Hz sampling frequency. In the proposed method, a heuristic drift reduction method estimates displacement with better accuracy employing a low-pass-filtered acceleration measurement by an accelerometer and a displacement measurement by an RTK-GNSS receiver. Then, the displacement estimated by the heuristic drift reduction method, the velocity measured by a single GNSS receiver, and the acceleration measured by the accelerometer are combined in a two-stage Kalman filter to estimate the dynamic displacement. The effectiveness of the proposed dynamic displacement estimation method was validated through three field application tests at Yeongjong Grand Bridge in Korea, San Francisco-Oakland Bay Bridge in California, and Qingfeng Bridge in China. In the field tests, the root-mean-square error of RTK-GNSS displacement measurement reduces by 55-78 percent after applying the proposed method.
本文提出了一种基于两阶段卡尔曼滤波器和改进启发式漂移减少方法的大型民用基础设施动态位移估计方法。在大规模基础设施的位移测量中,将非接触式位移传感器放置在结构基础等有限数量的点上,并且传感器必须具有非常长的测量距离(通常大于 100 米)。因此,RTK-GNSS 已广泛应用于民用基础设施的位移测量。然而,RTK-GNSS 的采样频率较低,为 10-20 Hz,由于卫星数量和周围环境的原因,其稳定性往往较低。所提出的方法结合了 RTK-GNSS 接收器和加速度计的数据,以比 RTK-GNSS 更高的精度和准确性来估计结构的动态位移,采样频率为 100 Hz。在所提出的方法中,启发式漂移减少方法通过使用加速度计的低通滤波加速度测量和 RTK-GNSS 接收器的位移测量来估计更准确的位移。然后,通过启发式漂移减少方法估计的位移、单个 GNSS 接收器测量的速度和加速度计测量的加速度在两阶段卡尔曼滤波器中组合,以估计动态位移。所提出的动态位移估计方法通过在韩国永宗大桥、加利福尼亚州旧金山-奥克兰海湾大桥和中国青峰大桥的三个现场应用测试得到了验证。在现场测试中,应用所提出的方法后,RTK-GNSS 位移测量的均方根误差降低了 55-78%。