A denoising method for high-pile wharf monitoring big data based on mean filtering-wavelet decomposition time-frequency joint method
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    Abstract:

    nder the context of rapid development in intelligent water transport,the safety status monitoring of the entire life-cycle of high-pile wharves has become a core issue in ensuring the reliability of port infrastructure.However,abnormal monitoring data caused by complex environmental conditions severely constrain accurate assessment and prediction of the status of high-pile wharves.To address the frequent occurrence of high-frequency noise and transient distortion in monitoring data from high-pile wharves,as well as the incompatibility of conventional denoising methods with non-stationary signal characteristics,a time-frequency joint denoising method integrating mean filtering and wavelet decomposition is proposed.A multi-indicator evaluation model prioritizing correlation coefficient and signal-to-noise ratio is established.Through comparative method analysis and feature parameter optimization,the optimal parameter combination is selected and validated from two dimensions:data quality improvement and prediction accuracy enhancement.Research shows that the time-frequency joint denoising method based on mean filtering wavelet decomposition effectively balances signal detail preservation and trend smoothing requirements while suppressing random noise and improving signal-to-noise ratio.The correlation between the denoised data and the original signal is significantly better than that of a single filtering method.The research results provide a solution that balances efficiency and accuracy for the processing and prediction of monitoring data for high-pile wharves.

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ZHANG Gefan, SU Jingbo, WU Feng, et al. A denoising method for high-pile wharf monitoring big data based on mean filtering-wavelet decomposition time-frequency joint method[J]. Port & Waterway Engineering,2026(1):78-87.

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  • Received:
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  • Online: January 19,2026
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