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Nova · Professor Researcher · re-ranking top 20…

Ling Zhu

Verified

Northeastern University · Environmental Engineering

Active 1990–2024

h-index27
Citations2.5k
Papers21789 last 5y
Funding
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Research topics

  • Geology
  • Oceanography
  • Machine Learning
  • Computer Science
  • Physics
  • Mathematics
  • Statistics
  • Meteorology

Selected publications

  • Integration of data-driven and physics-based modeling of wind waves in a shallow estuary

    Ocean Modelling · 2022 · 32 citations

    • Machine Learning
    • Computer Science
    • Meteorology

    Numerical models solving the wave action balance equation have been widely used to simulate wind waves. In-situ measurements, albeit sparse, are crucial to the calibration and validation of numerical wave models. In this study, a novel hybrid approach was developed by integrating a physics-based Simulating WAves Nearshore (SWAN) model with machine learning algorithms to predict wind waves in a shallow estuary. Two machine learning methods, bagged regression tree (BRT) and artificial neural network (ANN), were employed. It was found that the hybrid approach (BRT–SWAN) could be an efficient tool for modelers to identify sources of error and calibrate parameters in physics-based models. In this study, the wind direction and bottom friction coefficient were determined as the main factors causing errors in SWAN-simulated significant wave height and peak wave period, respectively. Furthermore, it turned out that BRT–SWAN-ANN (ANN trained with BRT–SWAN results) could achieve a similar level of accuracy to OBS-ANN (ANN trained with field observations of wind waves). Thus, the hybrid approach can be applied to estimate wave parameters, removing the limitation of using scarce observations in developing a predictive ANN model.

  • Field Observations of Wind Waves in Upper Delaware Bay with Living Shorelines

    Estuaries and Coasts · 2020 · 41 citations

    1st authorCorresponding
    • Oceanography
    • Geology

Frequent coauthors

  • Tongxi Yu

    92 shared
  • Mingsheng Chen

    35 shared
  • Qin Chen

    China Metallurgical Geology Bureau

    34 shared
  • Yinggang Li

    31 shared
  • Kailing Guo

    Wuhan University of Technology

    22 shared
  • Preben Terndrup Pedersen

    Technical University of Denmark

    21 shared
  • Wei Cai

    Wenzhou Medical University

    19 shared
  • Hongqing Wang

    U.S. Geological Survey, Wetland and Aquatic Research Center

    17 shared
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