Tian Changbin, Wang Zhengfang, Sui Qingmei, Wang Jing, Dong Yanan
School of Control Science and Engineering, Shandong University, Jinan 250061, China.
Sensors (Basel). 2019 Aug 30;19(17):3750. doi: 10.3390/s19173750.
The accurate measurement of slope displacement profiles using a fiber Bragg grating flexible sensor is limited due to the influence of accumulative measurement errors. The measurement errors vary with the deformation forms of the sensor, which dramatically affects the measurement accuracy of the slope displacement profiles. To tackle the limitations and improve the measurement precision of displacement profiles, a segmental correction method based on strain increments clustering was proposed. A K-means clustering algorithm was used to automatically identify the deformation segments of a flexible sensor with different bending shapes. Then, the particle swarm optimization method was adopted to determine the correction coefficients corresponding to different deformation segments. Both finite element simulations and experiments were performed to validate the superiority of the proposed method. The experimental results indicated that the mean absolute errors (MAEs) percentages of the reconstructed displacements using the proposed method for six different bending shapes were 1.87%, 5.28%, 6.98%, 7.62%, 4.16% and 8.31%, respectively, which had improved the accuracy by 26.83%, 18.94%, 29.49%, 26.35%, 7.39%, and 19.65%, respectively. Therefore, it was confirmed that the proposed correction method was competent for effectively mitigating the measurement errors and improving the measurement accuracy of slope displacement profiles, and it presented a vital significance and application promotion value.
由于累积测量误差的影响,使用光纤布拉格光栅柔性传感器精确测量边坡位移剖面受到限制。测量误差随传感器的变形形式而变化,这极大地影响了边坡位移剖面的测量精度。为了解决这些限制并提高位移剖面的测量精度,提出了一种基于应变增量聚类的分段校正方法。采用K均值聚类算法自动识别具有不同弯曲形状的柔性传感器的变形段。然后,采用粒子群优化方法确定不同变形段对应的校正系数。通过有限元模拟和实验验证了该方法的优越性。实验结果表明,该方法对六种不同弯曲形状的重构位移的平均绝对误差(MAE)百分比分别为1.87%、5.28%、6.98%、7.62%、4.16%和8.31%,精度分别提高了26.83%、18.94%、29.49%、26.35%、7.39%和19.65%。因此,证实了所提出的校正方法能够有效减轻测量误差,提高边坡位移剖面的测量精度,具有重要的意义和应用推广价值。