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Data driven battery anomaly detection based on shape based clustering for the data centers class

机译:基于基于形状的群体的数据驱动电池异常检测

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Batteries are a significant part of data centers, which ensure the uninterrupted working of a data center. Using online measurement to find out odd batteries in data centers is challenging due to lack of training samples since there are only a very few full charging-discharging cycles during the lifetime of batteries. In this paper, a new battery anomaly detection method based on time series clustering is proposed. This method uses only battery operating data and does not depend on offline testing data, thus provides a way to improve the maintenance efficiency and lessen batteries operating risks in data centers. Effectiveness of the proposed method is demonstrated and confirmed by a case study for 40 batteries in an existent data center.
机译:电池是数据中心的重要组成部分,确保了数据中心的不间断工作。由于缺乏训练样本,使用在线测量来查找数据中心中的奇数电池是挑战,因为在电池的寿命期间只有很少的充满充电放电循环。本文提出了一种基于时间序列聚类的新电池异常检测方法。该方法仅使用电池操作数据,并且不依赖于离线测试数据,因此提供了提高维护效率和减少数据中心运行风险的电池的方法。通过在存在的数据中心中的40个电池进行证明和证实了所提出的方法的有效性。

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