Learning energy consumption profiles from data

J. Andreoli
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引用次数: 2

Abstract

A first step in the optimisation of the power consumption of a device infrastructure is to detect the power consumption signature of the involved devices. In this paper, we are especially interested in devices which spend most of their time waiting for a job to execute, as is often the case of shared devices in a networked infrastructure, like multi-function printing devices in an office or transaction processing terminals in a public service. We formulate the problem as an instance of power disaggregation in non intrusive load monitoring (NILM), with strong prior assumptions on the sources but with specific constraints: in particular, the aggregation is occlusive rather than additive.We use a specific variant of Hidden Semi Markov Models (HSMM) to build a generative model of the data, and adapt the Expectation-Maximisation (EM) algorithm to that model, in order to learn, from daily operation data, the physical characteristics of the device, separated from those linked to the job load or the device configurations. Finally, we show some experimental results on a multifunction printing device.
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从数据中学习能源消耗概况
设备基础设施功耗优化的第一步是检测所涉及设备的功耗签名。在本文中,我们特别感兴趣的是花费大部分时间等待任务执行的设备,就像网络基础设施中共享设备的情况一样,例如办公室中的多功能打印设备或公共服务中的事务处理终端。我们将该问题描述为非侵入式负荷监测(NILM)中的功率分解的一个实例,对源有很强的先验假设,但具有特定的约束:特别是,聚合是闭塞的而不是相加的。我们使用隐藏半马尔可夫模型(HSMM)的特定变体来构建数据的生成模型,并将期望最大化(EM)算法应用于该模型,以便从日常操作数据中学习设备的物理特性,与与工作负载或设备配置相关的物理特性分开。最后,给出了在多功能打印装置上的实验结果。
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