five

Melting ice with high-frequency vertical motion

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NIAID Data Ecosystem2026-05-02 收录
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https://zenodo.org/record/14874524
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Tabulated data: Tabulated file containing all relevant information regarding the experiments (parameters and measurements). The melting rate results presented in the research article are contained in this file.  Parameters Frequency: Name: 'omega_radPs' Units: rad/s Amplitude: Name: 'A_mmPs' Units: mm/s Oscillation speed (maximum): Name: 'Umag_mPs' Units: mm/s Basic measurements (physically measured) Elapsed time (final): Name: 't_hr' Units: hours Ambient density (initial / final): Name: 'rho0_kgPm3', 'rhof_kgPm3' Units: kg/m^3 Mass (initial / final): Name: 'm0_kg', 'mf_kg' Units: kg Ambient temperature (initial / final): Name: 'T0_degC', 'Tf_degC' Units: degrees Celsius Maximum ice width (W; x-axis; initial / final): Name: 'x0_mm', 'xf_mm' Units: mm Maximum ice thickness (L; y-axis; initial / final): Name: 'y0_mm', 'yf_mm' Units: mm  Basic measurements (acquired from edge-detection / cuboid assumption) Average ice height (H; z-axis; initial / final): Name: 'H0_m', 'Hf_m' Units: m Average ice width (W; x-axis; initial / final): Name: 'W0_m', 'Wf_m' Units: m Average ice thickness (L; y-axis; initial / final): Name: 'L0_m', 'Lf_m' Units: m Detailed measurements (acquired from edge-detection) Ice frontal area (x-z plane; initial / final): Name: 'F0_m2', 'Ff_m2'  Units: m^2 Ice frontal perimeter (x-z plane; initial / final): Name: 'P0_m', 'Pf_m' Units: m Ice surface area (cuboid assumption; initial / final): Name: 'SA0_m2', 'SAf_m2' Units: m^2 Important measurements: Face melting rates (one-sided; from average ice width): Name: 'm1_height_mPd', 'm1_width_mPd' Units: m/day Face melting rates uncertainty (one-sided; from average ice height): Name: 'm1_height_mPd_pm', 'm1_width_mPd_pm' Units: m/day Volumetric melting rate (from mass and time-mean cuboid surface area): Name: 'm3_V_mPd' Units: m^3/day Melting data: Edge-detection data Each file is a netCDF containing: Raw images of the ice (backlit & shadowgraph experiments during an experiment) Variable: 'raw' Datatype: 'double' Units: '' Dimensions: [z x t] Edge-detection masks Variable: 'mask' Datatype: 'logical' Units: '' Dimensions: [z x t] Edge-detection aligned and summed mask (time c-axis) Variable: 'mask_sum' Datatype: 'double' Units: 'days' Dimensions: [z x] Associated vectors (time, space) Variables: 't', 'z', 'x' Datatype: 'double' Units: 'days', 'm', 'm' Experiment parameters (frequency, amplitude, initial ice mass, and initial ambient density and temperature) Variables: 'omega', 'amp', 'rho', 'mass', 'temp' Datatype: 'double" Units: 'rad/s', 'mm', 'kg/m^3', 'kg', 'degrees Celsius' The ice perimeters presented in the supporting information of the research article are contained in these files. Velocity data: Optical-flow data Each file is a netCDF containing: Processed velocity fields (1 second or 1 period): Variable: 'u', 'v' Datatype: 'double' Units: 'm/s' Dimensions: [z x t] Note: the sign of 'v' is flipped (by mistake - has been corrected in gifs) Associated vectors (time, space) Variables: 't', 'z', 'x' Datatype: 'double' Units: 'seconds', 'm', 'm' Experiment parameters (frequency, amplitude, initial ice mass, and initial ambient density and temperature) Variables: 'omega', 'amp', 'rho' Datatype: 'double" Units: 'rad/s', 'mm', 'kg/m^3' The velocity fields presented in the research article are contained in these files. Gifs Raw image data Time series of the raw images of the ice during an experiment. Each gif shows a single figure with: Image: 'raw' Position: 'x' (cm), depth 'z' (cm) Time: 't' (hh:mm:ss.SSS) Optical flow data Time series of the velocity fields during an experiment.  Each gif shows a three figures: Images: 'u', 'v', 'U' Position: 'x' (cm), depth 'z' (cm) Colorbars: 'cmocean:balance' (mm/s), 'cmocean:balance' (mm/s), 'gray' (log10 mm/s) Time: 't' (mm:ss.SSS) Where 'U' is the velocity magnitude.
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2025-02-18
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