A de-noising algorithm for bridge cable force monitoring data based on mathematical morphology

Chao Deng, Yi Li, Wei Zou, Yuan Ren, Ying Peng, Zhuo’er Han

Advances in Bridge Engineering ›› 2023, Vol. 4 ›› Issue (1) : 0.

Advances in Bridge Engineering ›› 2023, Vol. 4 ›› Issue (1) : 0. DOI: 10.1186/s43251-023-00109-x
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A de-noising algorithm for bridge cable force monitoring data based on mathematical morphology

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Abstract

A mathematical morphological filter-based de-noising method is developed in this study for bridge cable force monitoring data. Structure elements, one of the most important parameters in the mathematical morphology, dominate de-noising effects. The de-noising effects subject to single structure element and multi-structure element filters are discussed based on the simulation signals. The results indicate that the de-noising effects by using the spherical structure element are better than using the straight line or rhombic structure element. Moreover, the multi-structure element filter outperforms the single one. Through simulation analysis, the de-noising performance of the low-pass filter, wavelet filter and morphological filter is compared. The results show that the performance of the wavelet and morphological filters is better than that of the low-pass filter. For low signal-to-noise signals, the performance of the wavelet filter is superior. With the increase of signal-to-noise ratio, the morphological filters show more advantages. Taking the cable force monitoring data of the 3rd Nanjing Yangtze River Bridge as an example, the de-noising performance of the wavelet and morphological filters is discussed. The results show that both the wavelet filters and morphological filters have satisfactory de-noising effects. The mathematical morphology method can provide an optional and effective de-nosing choice, which enriches the means of de-noising for bridge monitoring data.

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Chao Deng, Yi Li, Wei Zou, Yuan Ren, Ying Peng, Zhuo’er Han. A de-noising algorithm for bridge cable force monitoring data based on mathematical morphology. Advances in Bridge Engineering, 2023, 4(1): 0 https://doi.org/10.1186/s43251-023-00109-x
Funding
Academician Special Science Research Project of CCCC(No. YSZX-03-2021-01-B); National Key Research and Development Program of China(No. 2022YFB3706704)

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