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Ruo-Qian Wang

and 2 more

Recent observation reveals a stunning fact that coastal tides are experiencing rapid change in the last century in the world. High-accuracy tidal-level data is needed to achieve a wide and refined understanding of the phenomenon. In-situ measurements are often sparse and limited to fixed locations, which are insufficient to provide information about the spatiotemporal variability of tidal processes beyond tidal gauges. Satellite altimetry, which measures water level with global coverage and high resolution, provides an unprecedented opportunity to address the issue but two technical challenges prevent such satellite-based tidal harmonic analysis: a) sampling frequency requirement: data sampling/acquisition frequency must be at least two times of the major tidal frequency to avoid the aliasing issue dictated by the Nyquist theorem but satellite revisit frequency is well below the required Nyquist frequency, and b) data length requirement: a minimum length of sampled observation data is required to recognize a sufficient number of tidal constituents according to the Rayleigh criterion theorem. To address these issues, a novel Regularized Least-Square approach is developed to substantially relax the limitation: the prior information on the regional tidal amplitudes is used to support a least-square analysis to obtain the amplitudes and phases of the tidal constituents for water elevation time series of different lengths and time intervals. The proposed method can determine the tidal amplitudes with high accuracy and the sampling interval can be extended to the application level of altimetry satellites. It was validated using the data of the altimetry mission, Jason-3.