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首页> 外文期刊>Polish maritime research >Outlier Detection in Ocean Wave Measurements by Using Unsupervised Data Mining Methods
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Outlier Detection in Ocean Wave Measurements by Using Unsupervised Data Mining Methods

机译:使用无监督数据挖掘方法进行海浪测量中的异常检测

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Outliers are considerably inconsistent and exceptional objects in the data set that do not adapt to expected normal condition. An outlier in wave measurements may be due to experimental and configuration errors, technical defects in equipment, variability in the measurement conditions, rare or unknown conditions such as tsunami, windstorm and etc. To improve the accuracy and reliability of an built ocean wave model, or to extract important and valuable information from collected wave data, detecting of outlying observations in wave measurements is very important. In this study, three typical outlier detection algorithms:Box-plot (BP), Local Distance-based Outlier Factor (LDOF), and Local Outlier Factor (LOF) methods are used to detect outliers in significant wave height (Hs) records. The historical wave data are taken from National Data Buoy Center (NDBC). Finally, those data points are considered as outlier identified by at least two methods which are presented and discussed. Then, Hs prediction has been modelled with and without the presence of outliers by using Regression trees (RTs).
机译:异常值是数据集中的不一致和异常对象,无法适应预期的正常情况。波浪测量中的异常可能是由于实验和配置错误,设备的技术缺陷,测量条件的可变性,罕见或未知的条件(例如海啸,暴风雨等)造成的。为提高已建立的海浪模型的准确性和可靠性,或从收集的波浪数据中提取重要和有价值的信息,检测波浪测量中的外围观测值非常重要。在这项研究中,使用三种典型的离群值检测算法:箱线图(BP),基于局部距离的离群因子(LDOF)和局部离群因子(LOF)方法来检测重要波高(Hs)记录中的离群值。历史海浪数据来自国家数据浮标中心(NDBC)。最后,这些数据点被认为是通过提出和讨论的至少两种方法识别的异常值。然后,通过使用回归树(RT),在有或没有异常值的情况下对Hs预测进行建模。

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