首页> 外文会议>ASME International Conference on Ocean, Offshore and Arctic Engineering >MAXIMUM DISSIMILARITY-BASED ALGORITHM FOR DISCRETIZATION OF METOCEAN DATA INTO CLUSTERS OF ARBITRARY SIZE AND DIMENSION
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MAXIMUM DISSIMILARITY-BASED ALGORITHM FOR DISCRETIZATION OF METOCEAN DATA INTO CLUSTERS OF ARBITRARY SIZE AND DIMENSION

机译:基于最大不同的基于不同的分离化算法,分离成任意尺寸和尺寸的集群

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In order to accurately estimate the fatigue life a floating structure, it is necessary to have a large set of discrete environmental conditions. If the damage to a structure largely stems from wave-induced forces, then the creation of a set of environmental conditions or 'bins' is trivial. However, when considering a floating platform supporting a wind turbine, it is necessary to consider not only the wave conditions, but also the wind conditions (and perhaps current, if possible). Thus, it is common to have greater than 5 dimensions in the time series (e.g., significant wave height, wave period, wave direction, wind speed, wind direction, etc). The creation of bins in two dimensions is quite easily solved by creating an arbitrary grid and taking the mean of all the observations which fall in a specific cell. In higher dimensions, a p-dimensional cell is not easily visualized and so the resulting set of bins cannot easily be graphically represented. In this paper, an iterative algorithm is developed to convert N observations, each with p-dimensions, into a set with M discrete bins, where M N. The algorithm presented borrows heavily from the maximum dissimilarity algorithm used in a wide array of fields. The benefit of using this algorithm is that there is no 'bias' introduced by an initial grid from the user. That is, given a desired final number of clusters and a certain distance tolerance, a unique set of cluster exists for a given data set. Inherently, the algorithm selects a diverse array of observations, usually including extreme events or outliers, which may have undue impact on the fatigue life of a structure. Although the algorithm is computationally expensive O(N~2M), reductions in computational cost are possible. Most importantly, the algorithm can be written in such a way that memory constraints are not an issue even for N = O(10~5). The clustering algorithm is described in both graphical and logical terms. A case study is presented, using publicly available data from the Netherlands Enterprise Agency. The data is visualized in two dimensions with the final number of bins equaling approximately 50, 100, 200, 500, 1000, and 2000 bins. These bins are compared with a previous algorithm from these authors. Various measures are presented to assess the fidelity of a set of bins with respect to the initial observations. Each set of bins are analyzed and it is clear the MDA-based algorithm outperforms the previous algorithm.
机译:为了准确估计疲劳寿命浮动结构,有必要具有一大组离散的环境条件。如果对结构的损坏很大程度上源于波引起的力,那么一套环境条件或“垃圾箱”的产生是微不足道的。然而,当考虑支撑风力涡轮机的浮动平台时,不仅需要考虑波条件,而且需要风力条件(如果可能的话,也许是电流)。因此,通常序列中具有大于5维度(例如,显着的波浪高度,波段,波方向,风速,风向等)。通过创建任意网格并采取落入特定细胞的所有观察的平均值来建立两个维度的箱的创建。在较高尺寸中,不容易可视化P维单元,因此不能容易地表示所得到的一组箱。在本文中,开发了一种迭代算法来转换N观察,每个观察到P-尺寸,进入带有M个离散箱的集合,其中M N.该算法大量地从广泛阵列中使用的最大不同算法呈现借款领域。使用该算法的好处是,来自用户的初始网格没有引入“偏置”。也就是说,给定期望的最终数量和一定的距离公差,对于给定的数据集,存在一组唯一的集群集。本质上,该算法选择各种观察阵列,通常包括极端事件或异常值,这可能对结构的疲劳寿命产生过度影响。虽然该算法是计算昂贵的O(n〜2m),但计算成本的降低是可能的。最重要的是,可以以这样的方式编写算法,即即使对于n = o(10〜5)也不是一个问题的方式。群集算法以图形和逻辑术语描述。提出了一个案例研究,使用来自荷兰企业代理商的公开可用数据。数据以两个尺寸可视化,其中最终箱数等于约50,100,200,500,000和2000箱。将这些垃圾箱与来自这些作者的先前算法进行了比较。提出了各种措施以评估一组箱相对于初始观察的保真度。分析了每组箱,并清楚基于MDA的算法优于先前的算法。

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