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A hybrid real-time tidal prediction mechanism based on harmonic method and variable structure neural network

机译:a hybrid real-time tidal prediction mechanism based on harmonic method and variable structure neural network

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摘要

Accurate real time tidal prediction is essential for human activities in coastal and marine fields. Tidal changes are influenced not only by periodic revolutions of celestial bodies but also by time-varying meteorological factors. For accurate real-time tidal prediction, a hybrid prediction mechanism is constructed by taking both advantages of harmonic analysis and neural network. In the proposed mechanism, conventional harmonic analysis is employed for representing the influences of celestial factors; and neural network is used for representing the nonlinear influences of meteorological factors. Furthermore, to represent time-varying tidal dynamics influenced by meteorological factors, a variable neural network is real-time constructed with the neurons and the connecting parameters are adaptively adjusted based on a sliding data window (SDW). The hybrid prediction method uses only the latest short-period data to generate predictions sequentially. Hourly tidal data measured at four American tidal stations are used to validate the effectiveness of the hybrid sequential tidal prediction model. Simulation results of tidal prediction demonstrate that the proposed model can generate accurate short-term prediction of tidal levels at very low computational cost. (C) 2015 Elsevier Ltd. All rights reserved.
机译:准确的实时潮汐预测对于沿海和海洋领域的人类活动至关重要。潮汐变化不仅受到天体周期性旋转的影响,而且还受到随时间变化的气象因素的影响。为了进行准确的实时潮汐预测,需要充分利用谐波分析和神经网络的优势来构建混合预测机制。在提出的机制中,采用传统的谐波分析来表示天体因素的影响。神经网络用来表示气象因素的非线性影响。此外,为了表示受气象因素影响的时变潮汐动力学,利用神经元实时构建可变神经网络,并基于滑动数据窗口(SDW)自适应地调整连接参数。混合预测方法仅使用最新的短期数据顺序生成预测。在四个美国潮汐站测得的每小时潮汐数据用于验证混合顺序潮汐预测模型的有效性。潮汐预测的仿真结果表明,所提出的模型可以以非常低的计算成本生成准确的潮汐水平短期预测。 (C)2015 Elsevier Ltd.保留所有权利。

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