配电网边缘加密货币挖掘的非侵入式监控

Ranyu Shi, Ali Menati, Le Xie
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摘要

随着加密货币活动的增加及其快速增长的全球挖矿需求,电力系统面临着新的机遇和挑战。从电网的角度来看,关键的挑战是如何正确地监控和预测批发和零售层面的加密货币挖矿需求。虽然连接到传输层的大型矿业公司可以直接使用仪器传感器来监控其采矿需求,但如何监控表后的加密货币采矿需求仍然是一个悬而未决的问题。在本文中,我们提出了一种边缘级分布级比特币挖矿检测方案,该方案利用智能电表数据检测矿机的开/关状态,并估计每个房屋挖矿负载的功耗大小。我们研究了我们的算法在不同比特币负载变化下的性能,这些变化代表了广泛的可能的挖矿设备和行为。数值结果表明,对于普通ASIC矿机,该算法可以以94%以上的准确率检测这些负载的开/关状态,并以小于16%的误差计算其负载大小。在此方法的基础上,聚合器可以协调各个家庭的采矿负荷,以参与需求响应计划,从而帮助减少高峰需求并增加社会福利。
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Non-intrusive Monitoring of Edge-level Cryptocurrency Mining in Power Distribution Grids
With increasing activities in cryptocurrencies and their fast-growing global mining demand comes new opportunities and challenges facing the electric energy systems. From the electric grid perspective, the key challenges are how to properly monitor and predict cryptocurrency mining demand at wholesale and retail levels. While large-scale mining companies connected to the transmission level can use directly instrument sensors to monitor their mining demand, how to monitor behind-the-meter cryptocurrency mining demand is still an open question. In this paper, we propose an edge-level distribution level Bitcoin mining detection scheme that utilizes smart meter data to detect the on/off status of the mining machines and estimates the power consumption magnitude of the mining load in each house. We investigate the performance of our algorithm with different Bitcoin load variations representing a wide range of possible mining devices and behaviors. Numerical results suggest that the proposed algorithm can detect both the on/off status of these loads with above 94% accuracy and calculate its load magnitude with less than 16% error for common ASIC miners. Building upon this method, aggregators could coordinate individual household mining loads for participation in demand response programs that help reduce peak demand and increase social welfare.
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