Kiduk Kim’s scientific contributions

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Publications (1)


Study area and observatory locations. Navy crosses indicate the 16 tidal gauges at which the developed artificial neural network model will be applied. Red and orange circles indicate the ASOS stations located on the land and the ocean buoy, respectively.
Structure of ANN model. FC denotes fully connected.
Flowchart of reconstruction for long-term sea-level gaps.
Examples of 72-h model reconstruction during weather events (pressure jumps and typhoons) during 2016–2020. The name of the station is written in the lower left corner of each sub-plots. Gray lines indicate observed sea levels. Red and blue lines represent predicted sea levels from EM and DAM, respectively. Dotted lines with different colors represent predicted sea levels from ten independent ensemble members.
72-h reconstruction validation time series. RMSE and r² are represented by solid and dotted lines, respectively. Additionally, the EM and DAM results are shown in black and orange, respectively. The shading area denotes one standard deviation of the data for the mean RMSE validation of each time.

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Reconstruction of long-term sea-level data gaps of tide gauge records using a neural network operator
  • Article
  • Full-text available

October 2022

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92 Reads

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4 Citations

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Kiduk Kim

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Jae-Hun Park

The coastal sea level is an important factor in understanding and clarifying the physical processes in coastal seas. However, missing values and outliers of the sea level that occur for various reasons often disrupt the continuity of its time series. General-purpose time-series analysis and prediction methods are not tolerant of missing values, which is why researchers have attempted to fill these gaps. The disadvantage of conventional time-series reconstruction techniques is the low accuracy when missed sea-level records are longer than the timescales of coastal processes. To solve this problem, we used an artificial neural network, which is a novel tool for creating multivariate and nonlinear regression equations. The trained neural network weight set was designed to enable long-term reconstruction of sea level by acting as a one-step prediction operator. In addition, a data assimilation technique was developed and adapted to ensure seamless continuity between predicted and observed sea-level records. The application of our newly developed method to 3-day gaps of seal level records at 16 tide gauge stations around the Korean peninsula confirms that it can successfully reconstruct missing values with root-mean-squared errors of 0.5–1.1 cm on average.

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Citations (1)


... The most important step towards broader global datasets is effective communication within scientific networks, which can set standards to define protocols for uniform data processing of specific parameters, resembling recommendations for plankton measurements in the OceanSITES network (Boss et al., 2022). Likewise, optimization of observatory instruments (Guo et al., 2023;Zhang et al., 2023), refurbishment of existing and expansion of observatory infrastructures (Ford et al., 2022;Zielinski et al., 2022), and data mining with methods of transfer functions, for example, artificial neural networks or deep learning can also work towards processing global datasets (Sauzède et al., 2017;Fourrier et al., 2020;Contractor and Roughan, 2021;Lee et al., 2022;Wang et al., 2023). ...

Reference:

Navigating the current landscape of ocean observations: an overview from platform infrastructures to networks related to ocean time series
Reconstruction of long-term sea-level data gaps of tide gauge records using a neural network operator