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A Dynamic Programming Algorithm for Leveraging Probabilistic Detection of Energy Theft in Smart Home

机译:利用智能家居中能量盗窃概率检测的动态规划算法

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In the modern smart home and community, smart meters have been massively deployed for the replacement of traditional analog meters. Although it significantly reduces the cost of data collection as the meter readings are wireless transmitted, a smart meter is not tamper-resistant. As a consequence, the smart grid infrastructure is under threat of energy theft, by means of attacking a smart meter so that it undercounts the electricity usage. Deployment of feeder remote terminal unit (FRTU) helps narrow the search zone of energy theft in smart home and community. However, due to budgetary limit, utility companies can only afford to insert the minimum number of FRTUs. This imposes a signifcant challenge to deploy the minimum number of FRTUs while each smart meter is still effectively monitored. To the best of our knowledge, the only work addressing this problem is , which uses stochastic optimization methods. Their algorithm is not very practical as it cannot handle large distribution networks because of the scalability issue. Due to the inherent heuristic and non-deterministic nature, there is no guarantee on the solution quality as well. Thus, the high performance energy theft detection is still needed for this energy theft problem. In order to resolve this challenge, we propose a new dynamic programming algorithm that inserts the minimum number of FRTUs satisfying the detection rate constraint. It evaluates every candidate solution in a bottom-up fashion using an innovative pruning technique. As a deterministic polynomial time algorithm, it is able to handle large distribution networks. In contrast to which can only handle small system, our technique can perform FRTU insertion for a large scale power system. Our experimental results demonstrate that the average number of FRTUs required is only 26% of the number of smart meters in the community. Compared with the previous wo- k, the number of FRTUs is reduced by 18.8% while the solution quality in terms of anomaly coverage index metric is still improved.
机译:在现代的智能家居和社区中,智能电表已被广泛部署以取代传统的模拟电表。尽管由于无线抄表,大大降低了数据收集的成本,但智能电表并不具有防篡改功能。结果,通过攻击智能电表,智能电网基础设施受到能源盗窃的威胁,从而低估了用电量。馈线远程终端单元(FRTU)的部署有助于缩小智能家居和社区中能源盗窃的搜索范围。但是,由于预算限制,公用事业公司只能负担插入最少数量的FRTU。在仍然有效监控每个智能电表的同时,部署最小数量的FRTU带来了巨大的挑战。据我们所知,解决此问题的唯一工作是,它使用随机优化方法。他们的算法不是很实用,因为由于可伸缩性问题,它不能处理大型配电网络。由于固有的启发式和不确定性,因此也无法保证解决方案的质量。因此,对于该能量盗窃问题仍然需要高性能的能量盗窃检测。为了解决这一挑战,我们提出了一种新的动态规划算法,该算法插入了满足检测速率约束的最小数量的FRTU。它使用创新的修剪技术以自下而上的方式评估每个候选解决方案。作为确定性多项式时间算法,它能够处理大型配电网络。与只能处理小型系统的情况相反,我们的技术可以对大型电力系统执行FRTU插入。我们的实验结果表明,所需的FRTU的平均数量仅为社区中智能电表数量的26%。与以前的工作相比,FRTU的数量减少了18.8%,而根据异常覆盖率指标衡量的解决方案质量仍得到了改善。

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