虚拟电厂中储能技术的应用与研究
Electrical Equipment and Economy(2019)
Abstract
随着可再生能源成为未来全球能源发展的主要方向,虚拟电厂成为一种实现可再生能源发电大规模接入电网的区域性多能源聚合模式.从运行上来看,虚拟电厂的本质是利用先进的通信技术实现分布式电源、储能装置、可控负荷等资源的广泛连接,并基于一定的控制策略进行资源的聚合和管理,形成的系统具备与电网能量互动的能力.储能在虚拟电厂中发挥的作用日益关键,目前在全球已建成的项目中,可控负荷的需求响应和分布式能源还是唱主流的.虚拟电厂起源于配电网中的分布式电源大规模应用,当大规模的分布式电源给大电网的负荷带来不确定性的时候,通过虚拟电厂的储能装置,可以把分散的分布式电源组织起来打造类似电厂的组织.可见,储能技术的存在为虚拟电厂的实现提供了重要动力.为此,文章在阐述虚拟电厂和储能技术内涵和类型的基础上,结合实际具体分析虚拟电厂中储能技术的应用.
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