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A Novel Robust Smart Energy Management and Demand Reduction for Smart Homes Based on Internet of Energy

机译:基于能量互联网的智能家庭的一种新颖的强大智能能源管理和需求减少

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摘要

In residential energy management (REM), Time of Use (ToU) of devices scheduling based on user-defined preferences is an essential task performed by the home energy management controller. This paper devised a robust REM technique capable of monitoring and controlling residential loads within a smart home. In this paper, a new distributed multi-agent framework based on the cloud layer computing architecture is developed for real-time microgrid economic dispatch and monitoring. In this paper the grey wolf optimizer (GWO), artificial bee colony (ABC) optimization algorithm-based Time of Use (ToU) pricing model is proposed to define the rates for shoulder-peak and on-peak hours. The results illustrate the effectiveness of the proposed the grey wolf optimizer (GWO), artificial bee colony (ABC) optimization algorithm based ToU pricing scheme. A Raspberry Pi3 based model of a well-known test grid topology is modified to support real-time communication with open-source IoE platform Node-Red used for cloud computing. Two levels communication system connects microgrid system, implemented in Raspberry Pi3, to cloud server. The local communication level utilizes IP/TCP and MQTT is used as a protocol for global communication level. The results demonstrate and validate the effectiveness of the proposed technique, as well as the capability to track the changes of load with the interactions in real-time and the fast convergence rate.
机译:在住宅能源管理(REM)中,基于用户定义的偏好的设备调度的使用时间(TOU)是由家庭能源管理控制器执行的基本任务。本文设计了一种强大的REM技术,能够监控和控制智能家庭内的住宅负载。本文开发了一种基于云层计算架构的新分布式多智能框架,用于实时微电网经济调度和监控。在本文中,建议灰狼优化器(GWO),人造群(ABC)优化算法的使用时间(TOU)定价模型,以定义肩峰和高峰时段的速率。结果说明了所提出的灰狼优化器(GWO),人造蜂菌落(ABC)优化算法的灰狼园(GWO)的有效性。修改了众所周知的测试网格拓扑的覆盆子PI3模型,以支持与用于云计算的开源IOE平台节点红色的实时通信。两个级别通信系统连接Microgrid系统,在Raspberry PI3中实现,以云服务器。本地通信级别利用IP / TCP,MQTT用作全局通信级别的协议。结果证明并验证了所提出的技术的有效性,以及跟踪载荷变化的能力,以实时的相互作用和快速收敛速度。

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