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Filling Up Gaps In Wave Data With Genetic Programming

机译:用遗传编程填补波浪数据中的空白

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A given time series of significant wave heights invariably contains smaller or larger gaps or missing values due to a variety of reasons ranging from instrument failures to loss of recorders following human interference.In-filling of missing information is widely reported and well documented for variables like rainfall and river flow, but not for the wave height observations made by rider buoys.This paper attempts to tackle this problem through one of the latest soft computing tools, namely, genetic programming (GP).The missing information in hourly significant wave height observations at one of the data buoy stations maintained by the US National Data Buoy Center is filled up by developing GP models through spatial correlations.The gap lengths of different orders are artificially created and filled up by appropriate GP programs.The results are also compared with those derived using artificial neural networks (ANN).In general, it is found that the in-filling done by GP rivals that by ANN and many times becomes more satisfactory, especially when the gap lengths are smaller.Although the accuracy involved reduces as the amount of gap increases, the missing values for a long duration of a month or so can be filled up with a maximum average error up to 0.21 m in the high seas.
机译:由于各种原因,从仪器故障到人为干扰后记录仪的丢失,给定的重要波高的时间序列总是包含较小或较大的间隙或缺失值。对于诸如此类的变量,缺失信息的填充得到了广泛报道并被充分证明降雨和河流流量,但不适用于骑乘浮标的波高观测值。本文尝试通过一种最新的软计算工具(即遗传程序设计(GP))解决此问题。每小时重要波高观测值中缺少信息在美国国家数据浮标中心维护的一个数据浮标站上,通过空间相关性开发GP模型来填充该模型,并通过适当的GP程序人为地创建并填充了不同阶的间隙长度,并将结果与​​之进行了比较总的来说,发现GP的填充与A的填充可匹敌NN和很多时候都变得更令人满意,尤其是当缝隙长度较小时。尽管所涉及的精度会随着缝隙数量的增加而降低,但一个月左右的持续时间中的缺失值可以被最大平均误差填补在公海中达到0.21 m

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