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引用次数: 42

摘要

正在进行的可再生能源的整合可能会增加电力生产和消费比例的波动。几种类型的需求响应(DR)计划已被提出,以应对日益增加的电力生产和消费的波动性。其中许多,如实时定价(RTP),需要对消费者的电力消耗进行密集的监控。这就是智能电表目前被许多公用事业公司采用的原因之一。智能电表在消费者和公用事业公司之间提供双向通信通道,从而通过复杂的大规模通信基础设施扩展电网。随着智能电表的日益普及,电力公司面临着处理和存储传入数据的问题,以支持实时定价等对延迟敏感的应用。在本文中,我们提出了一组公用事业端IT基础设施的需求,以处理传入的智能电表数据流。我们建议使用基础设施即服务云和框架来实现云中的并行流处理,以满足这些需求。基于Nephele云计算框架,我们通过100万个模拟智能电表和部署在我们自己的私有云上的原型实时定价应用程序的实验证明了这种方法的实用性。
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Processing smart meter data streams in the cloud
The ongoing integration of renewable energy sources is likely to increase the fluctuations in the ratio of produced and consumed power. Several types of Demand Response (DR) programs have been proposed to deal with the increasing volatility of power production and consumption. Many of these, such as Real Time Pricing (RTP), require intensive monitoring of the consumers' power consumption. This is one of the reasons why smart meters are currently being deployed by many utilities. Smart meters offer a two-way communication channel between the consumer and the utility, thus extending the power grid by a complex, large scale communication infrastructure. With the growing deployment of smart meters, power utilities face the problem of processing and storing the incoming data to support latency-sensitive applications such as Real-Time Pricing. In this paper we present a set of requirements for a utility-side IT infrastructure to process incoming smart meter data streams. We propose the use of Infrastructure-as-a-Service clouds and frameworks for parallel stream processing in clouds to address these requirements. Based on the Nephele cloud computing framework we demonstrate the practicality of this approach based on experiments with one million simulated smart meters and a prototypical Real-Time Pricing application deployed in our own private cloud.
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