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)

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Advances in Bridge Engineering ›› 2023, Vol. 4 ›› Issue (1) 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): DOI:10.1186/s43251-023-00109-x

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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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