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Adaptive Online One-Class Support Vector Machines with Applications in Structural Health Monitoring

机译:自适应在线一类支持向量机及其在结构健康监测中的应用

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One-class support vector machine (OCSVM) has been widely used in the area of structural health monitoring, where only data from one class (i.e., healthy) are available. Incremental learning of OCSVM is critical for online applications in which huge data streams continuously arrive and the healthy data distribution may vary over time. This article proposes a novel adaptive self-advised online OCSVM that incrementally tunes the kernel parameter and decides whether a model update is required or not. As opposed to existing methods, this novel online algorithm does not rely on any fixed threshold, but it uses the slack variables in the OCSVM to determine which new data points should be included in the training set and trigger a model update. The algorithm also incrementally tunes the kernel parameter of OCSVM automatically based on the spatial locations of the edge and interior samples in the training data with respect to the constructed hyperplane of OCSVM. This new online OCSVM algorithm was extensively evaluated using synthetic data and real data from case studies in structural health monitoring. The results showed that the proposed method significantly improved the classification error rates, was able to assimilate the changes in the positive data distribution over time, and maintained a high damage detection accuracy in all case studies.
机译:一类支持向量机(OCSVM)已广泛用于结构健康监测领域,其中仅提供一类(即健康)的数据。 OCSVM的增量学习对于在线应用程序至关重要,在在线应用程序中,大量数据流不断到达,并且健康的数据分布可能随时间变化。本文提出了一种新颖的自适应自我建议型在线OCSVM,它可以逐步调整内核参数并确定是否需要更新模型。与现有方法相反,这种新颖的在线算法不依赖任何固定阈值,但是它使用OCSVM中的松弛变量来确定哪些新数据点应包含在训练集中并触发模型更新。该算法还基于训练数据中相对于构造的OCSVM超平面的边缘和内部样本的空间位置,自动增量调整OCSVM的内核参数。使用结构健康监测中案例研究的合成数据和真实数据对这种新的在线OCSVM算法进行了广泛的评估。结果表明,所提出的方法显着提高了分类错误率,能够吸收正数据分布随时间的变化,并且在所有案例研究中均保持了较高的损伤检测精度。

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