Anomaly Detection Algorithms for Smart Metering using Swarm Intelligence

Pradeep Subhash Paikrao, R. Bose
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引用次数: 2

Abstract

Advancement in the information and communication technology has introduced Advanced Metering Infrastructure (AMI) in the electricity metering system, which has replaced old mechanical meters with smart electric meters. This modernization also introduced a lot of scope for the different anomalies and attacks on smart meters. Hence to tackle these challenges, we have proposed three anomaly detection algorithms (VBA, HBA, KBA) which are truly based on the principles of Swarm Intelligence (SI). The swarm intelligence is the emerging subbranch of artificial intelligence which studies the collective intelligence of groups of simple agents. The theory is corroborated by its performance in terms of probability of detection and probability of false alarm. The proposed algorithms entrust the probability of detection and probability of false alarm close to 1.00 and 0.17 respectively.
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基于群体智能的智能电表异常检测算法
随着信息通信技术的进步,在电力计量系统中引入了先进计量基础设施(AMI),用智能电表取代了旧的机械电表。这种现代化还为智能电表的不同异常和攻击提供了很大的空间。因此,为了应对这些挑战,我们提出了三种真正基于群体智能(SI)原理的异常检测算法(VBA, HBA, KBA)。群体智能是人工智能的一个新兴分支,主要研究简单智能体群体的集体智能。从检测概率和虚警概率两方面验证了该理论的有效性。提出的算法使检测概率和虚警概率分别接近1.00和0.17。
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