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Bathymetric Prediction from Multi-source Satellite Altimetry Gravity Data

机译:基于多源卫星测高重力数据的测深预测

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摘要

According to the "theoretical admittance " and the " observation admittance" of the actual data, the theoretical value of effective elastic thickness in the study area was 10 km. Combining the gravity anomalies and vertical gravity gradient anomalies, the admittance function is used to construct the 1′×1′ bathymetry model over the Philippine Sea by using the adaptive weighting technique. It is found that the accuracy of the bathymetry model constructed is the highest when the ratio of inversion result of vertical gravity gradient anomalies and inversion result of gravity anomalies is 2 : 3. At the same time, using multi-source gravity data to predict bathymetry could synthesize the superiority of gravity anomalies and vertical gravity gradient anomalies on the different seafloor topography, and the accuracy is better than bathymetry model that only used gravity anomalies or vertical gravity gradient anomalies. Taking the ship test data as the checking condition, the accuracy of predicting model is slightly lower than that of V18.1 model and improved by 27.17% and 39.02% respectively compared with the ETOPO1 model and the DTU10 model. Check points which the absolute value of the relative error of the predicting model is in the range of 5% accounted for 94.25% of the total.
机译:根据实际数据的“理论导纳”和“观察导纳”,研究区域有效弹性厚度的理论值为10 km。结合重力异常和垂直重力梯度异常,利用自适应加权技术,利用导纳函数构造了菲律宾海的1′×1′水深模型。结果表明,当垂直重力梯度反演结果与重力反演结果之比为2:3时,构建的测深模型的精度最高。同时,利用多源重力数据预测测深可以综合利用不同海底地形的重力异常和垂直重力梯度异常的优势,其精度优于仅使用重力异常或垂直重力梯度异常的测深模型。以船舶测试数据为检验条件,预测模型的精度略低于V18.1模型,与ETOPO1模型和DTU10模型相比,分别提高了27.17%和39.02%。预测模型相对误差的绝对值在5%以内的检查点占总数的94.25%。

著录项

  • 来源
    《测绘学报(英文)》 |2019年第001期|49-58|共10页
  • 作者单位

    Information Engineering University, Zhengzhou 450001, China;

    Information Engineering University, Zhengzhou 450001, China;

    Xi ' an Aerors Data Technology Co. Ltd, Xi ' an 710054, China;

    Information Engineering University, Zhengzhou 450001, China;

    Information Engineering University, Zhengzhou 450001, China;

    Information Engineering University, Zhengzhou 450001, China;

    Information Engineering University, Zhengzhou 450001, China;

    Information Engineering University, Zhengzhou 450001, China;

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