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dc.contributor.authorBakhoday Paskyabi, Mostafa
dc.PublishedBakhoday Paskyabi M. A wavelet-entropy based segmentation of turbulence measurements from a moored shear probe near the wavy sea surface. SN Applied Sciences. 2, 102 (2020)eng
dc.description.abstractIn this study, we explore the applicability of a wavelet-entropy based segmentation technique in reduction of motion-induced contaminations in time-domain from subsurface turbulence measurements made by a moving shear probe. After the quality screening of data, the Shannon entropy procedure is combined with a time-dependent adaptive wavelet thresholding method to split each 60-s long shear segment into a number of motion-reduced subblocks. The wavelet-entropy strategy leads to preventing the false detection effect caused by applying either wavelet de-noising or Shannon entropy alone for conditions where the turbulence (strongly) overlap with scales induced by waves or platform motions. The longest stationary subblock, with a size greater than 16-s, is then used to extract the Turbulent Kinetic Energy (TKE) dissipation rate, ε. Efficiency of the proposed method is verified by comparing with ε measurements made by a nearby free-falling microstructure profiler. While the quality of observations is constrained by a number of factors such as sensors’ angle of attack, and the wave kinematical and dynamical effects, results demonstrate significant improvements, by approximately a factor of 5–10, compared with ε measurements from each 60-s segment using the Goodman et al. [13] method. Furthermore, the magnitudes of the motion-corrected ε using the proposed method is largely consistent with the scaling suggested by Terray et al. [30].en_US
dc.publisherSpringer Natureen_US
dc.rightsAttribution CC BYeng
dc.subjectSurface gravity waveseng
dc.subjectShear probeeng
dc.subjectDissipation rates of TKEeng
dc.titleA wavelet-entropy based segmentation of turbulence measurements from a moored shear probe near the wavy sea surfaceen_US
dc.typePeer reviewed
dc.typeJournal article
dc.rights.holderCopyright 2019 The Author(s)en_US
dc.source.journalSN Applied Sciences

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