论文标题

碎屑转换到地震,风和波数据的时间序列分类的应用

Applications of shapelet transform to time series classification of earthquake, wind and wave data

论文作者

Arul, Monica, Kareem, Ahsan

论文摘要

由于对大量建筑物,桥梁,塔楼和离岸平台的大量工程结构进行了长期健康监测,使用时间序列分类对大型数据库中所需事件的自主检测变得越来越重要。在这种情况下,本文提出了一个名为“ Shapelet Transform”的相对新的时间序列表示形式的应用,该表示基于时间序列子序列形状的局部相似性。考虑到地震,风和海洋工程中时间序列信号的各个属性,这种转换的应用产生了新的基于形状的特征表示。将这种基于形状的表示与标准的机器学习算法相结合,提出了一个真正的“白色盒子”机器学习模型,并具有可理解的功能和透明算法。该模型无需域从业人员干预即可自动事件检测,从而得出了实用的事件检测程序。示例通过例子证明了这种基于形状的自主检测程序的功效,以确定已知和未知的地震事件,从连续记录的接地运动测量值中发现已知的和未知的地震事件,以检测地面运动中脉冲的脉冲,以区分近场和远场的频率测量,从监视数据,并确定对海上结构产生重大影响的破裂波。

Autonomous detection of desired events from large databases using time series classification is becoming increasingly important in civil engineering as a result of continued long-term health monitoring of a large number of engineering structures encompassing buildings, bridges, towers, and offshore platforms. In this context, this paper proposes the application of a relatively new time series representation named "Shapelet transform", which is based on local similarity in the shape of the time series subsequences. In consideration of the individual attributes distinctive to time series signals in earthquake, wind and ocean engineering, the application of this transform yields a new shape-based feature representation. Combining this shape-based representation with a standard machine learning algorithm, a truly "white-box" machine learning model is proposed with understandable features and a transparent algorithm. This model automates event detection without the intervention of domain practitioners, yielding a practical event detection procedure. The efficacy of this proposed shapelet transform-based autonomous detection procedure is demonstrated by examples, to identify known and unknown earthquake events from continuously recorded ground-motion measurements, to detect pulses in the velocity time history of ground motions to distinguish between near-field and far-field ground motions, to identify thunderstorms from continuous wind speed measurements, to detect large-amplitude wind-induced vibrations from the bridge monitoring data, and to identify plunging breaking waves that have a significant impact on offshore structures.

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