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Detection of anomalies in smart meter data: A density-based approach

机译:检测智能电表数据中的异常:一种基于密度的方法

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Smart grid is the next generation of power grid that provides two-way communication, both in sending and receiving information and in power transfer, among its programs, and using advanced technologies and features such as flexibility, ensuring reliability, affordability, reducing carbon footprints, reinforcing global competiveness and etc. Along with such advantages that give the system administrators and electricity customers the convenience and speed to do business, the security of such a system is far more intrusive. One of the important aspects of maintaining security is on the consumption side, because maintaining the privacy of customers is important and neglecting that will cause an irreparable financial and social losses. Hence, in this paper, we tried to use the OPTICS density-based technique to diagnose abnormalities in information and intelligent data of customers instantly and compare the results of different scenarios. To improve the efficiency of the methodology, we use the index called LOF. Which is actually a factor in detecting the unusual nature of the data in the density-based methods, and will do this based on the score given to it. In other words, it is not binary but gives a score based on which the disturbance of the data can be measured. In order to carry out these simulations, we used London's intelligent metering data in January 2013, which was sent to the control center every 30 minutes.
机译:智能电网是下一代电网,它在程序之间提供双向通信,包括发送和接收信息以及电力传输,并使用先进的技术和功能,例如灵活性,确保可靠性,可负担性,减少碳足迹,增强了系统管理员和电力客户的业务便利性和速度,这些系统的安全性远远超出了其侵入性。维护安全性的重要方面之一是在消费方面,因为维护客户的隐私很重要,而忽视它会造成不可挽回的财务和社会损失。因此,在本文中,我们尝试使用基于OPTICS密度的技术来立即诊断客户的信息和智能数据中的异常,并比较不同方案的结果。为了提高方法的效率,我们使用称为LOF的索引。在基于密度的方法中,这实际上是检测数据异常性质的一个因素,并将基于赋予它的分数来执行此操作。换句话说,它不是二进制的,而是给出一个分数,基于该分数可以测量数据的干扰。为了进行这些模拟,我们于2013年1月使用了伦敦的智能计量数据,该数据每30分钟发送到控制中心一次。

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