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Analysis of coastal wind speed retrieval from CYGNSS mission using artificial neural network

机译:利用人工神经网络分析Cygnss任务的沿海风速检索

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摘要

This paper demonstrates the capability and performance of sea surface wind speed retrieval in coastal regions (within 200 km away from the coastline) using spaceborne Global Navigation Satellite System Reflectometry (GNSS-R) data from NASA's Cyclone GNSS (CYGNSS) mission. The wind speed retrieval is based on the Artificial Neural Network (ANN). A feedforward neural network is trained with the collocated CYGNSS Level 1B (version 2.1) observables and the wind speed from European Centre for Medium-range Weather Forecast Reanalysis 5th Generation (ECMWF ERA5) data in coastal regions. An ANN model with five hidden layers and 200 neurons in each layer has been constructed and applied to the validation set for wind speed retrieval. The proposed ANN model achieves good wind speed retrieval performance in coastal regions with a bias of -0.03 m/s and a RMSE of 1.58 m/s, corresponding to an improvement of 24.4% compared to the CYGNSS Level 2 (version 2.1) wind speed product. The ANN based retrievals are also compared to the ground truth measurements from the National Data Buoy Center (NDBC) buoys, which shows a bias of -0.44 m/s and a RMSE of 1.86 m/s. Moreover, the sensitivities of the wind speed retrieval performance to different input parameters have been analyzed. Among others, the geolocation of the specular point and the swell height can provide significant contribution to the wind speed retrieval, which can provide useful reference for more generic GNSS-R wind speed retrieval algorithms in coastal regions.
机译:本文展示了沿海地区海面风速检索的能力和性能(距离海岸线而非海岸线)使用来自美国国家航空航天局的飓风GNSS(Cygnss)任务的星球全球导航卫星系统反射仪(GNSS-R)数据。风速检索基于人工神经网络(ANN)。前馈神经网络接受了由沿海地区中欧洲中距离预测排雷分析第五代(ECMWF ERA5)数据的欧洲中距离的Cygnss级别1B(版本2.1)观察到和风速。已经构建了具有五个隐藏层和200个神经元的ANN模型,并应用于用于风速检索的验证集。拟议的ANN模型在沿海地区实现了良好的风速检索性能,偏差为-0.03米/秒,RMSE为1.58米/秒,与CYGNSS级别2(版本2.1)风速相比为24.4%的提高产品。基于ANN的检索也与国家数据浮标中心(NDBC)浮标的地面真理测量相比,这表明-0.44 m / s的偏差和1.86米/秒的RMSE。此外,已经分析了对不同输入参数的风速检索性能的敏感性。其中,镜面点和膨胀高度的地理位置可以为风速检索提供显着贡献,这可以为沿海地区的更多通用GNSS-R风速检索算法提供有用的参考。

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  • 来源
    《Oceanographic Literature Review》 |2021年第6期|1387-1387|共1页
  • 作者

    X. Li; D. Yang; J. Yang;

  • 作者单位

    Institute of Space Sciences (ICE CSIC) Barcelona 08193 Spain;

    Institute of Space Sciences (ICE CSIC) Barcelona 08193 Spain;

    Institute of Space Sciences (ICE CSIC) Barcelona 08193 Spain;

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  • 原文格式 PDF
  • 正文语种 eng
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