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首页> 外文期刊>Mathematical Problems in Engineering >A Tidal Level Prediction Approach Based on BP Neural Network and Cubic B-Spline Curve with Knot Insertion Algorithm
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A Tidal Level Prediction Approach Based on BP Neural Network and Cubic B-Spline Curve with Knot Insertion Algorithm

机译:基于BP神经网络和三次B样条曲线的节点插入潮位预报方法。

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摘要

Tide levels depend on both long-term astronomical effects that are mainly affected by moon and sun and short-term meteorological effects generated by severe weather conditions like storm surge. Storm surge caused by typhoons will impose serious security risks and threats on the coastal residents' safety in production, property, and life. Due to the challenges of nonperiodic and incontinuous tidal level record data and the influence of multimeteorological factors, the existing methods cannot predict the tide levels affected by typhoons precisely. This paper targets to explore a more advanced method for forecasting the tide levels of storm surge caused by typhoons. First, on the basis of successive five-year tide level and typhoon data at Luchaogang, China, a BP neural network model is developed using six parameters of typhoons as input parameters and the relevant tide level data as output parameters. Then, for an improved forecasting accuracy, cubic B-spline curve with knot insertion algorithm is combined with the BP model to conduct smooth processing of the predicted points and thus the smoothed prediction curve of tidal level has been obtained. By using the data of the fifth year as the testing sample, the predicted results by the two methods are compared. The experimental results have shown that the latter approach has higher accuracy in forecasting tidal level of storm surge caused by typhoons, and the combined prediction approach provides a powerful tool for defending and reducing storm surge disaster.
机译:潮汐水平既取决于主要受月亮和太阳影响的长期天文影响,又取决于风暴潮等恶劣天气条件产生的短期气象影响。台风引起的风暴潮将给沿海居民的生产,财产和生活安全带来严重的安全隐患和威胁。由于非周期性和不连续的潮汐水位记录数据的挑战以及多气象因素的影响,现有方法无法准确预测受台风影响的潮汐水位。本文旨在探索一种更先进的方法来预测台风引起的风暴潮潮位。首先,基于中国芦潮港连续五年的潮位和台风数据,以六个台风参数为输入参数,以相关潮位数据为输出参数,建立了BP神经网络模型。然后,为提高预报精度,将带结插入算法的三次B样条曲线与BP模型相结合,对预测点进行平滑处理,从而获得了潮汐水平的平滑预测曲线。通过使用第五年的数据作为测试样本,比较了两种方法的预测结果。实验结果表明,后一种方法在预报台风引起的风暴潮潮位方面具有较高的准确性,而组合的预测方法为防御和减少风暴潮灾害提供了有力的工具。

著录项

  • 来源
    《Mathematical Problems in Engineering》 |2018年第8期|9835079.1-9835079.9|共9页
  • 作者

    Wang Wenjuan; Yuan Hongchun;

  • 作者单位

    Minist Agr, Key Lab Fisheries Informat, Shanghai, Peoples R China;

    Shanghai Ocean Univ, Coll Informat Technol, Shanghai, Peoples R China;

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  • 正文语种 eng
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