基于无线传感器网络的智能电网和本地发电机混合动力系统选择优化决策

Yousef E. M. Hamouda
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摘要

智能家居中的家庭能源管理系统(HEMS)侧重于智能管理和不同能源供应和世代之间的切换。无线传感器网络(wsn)在HEMS中用于感知、处理和通信不同的电气参数,如电压、电流和频率。本文考虑的电能来源是公用事业智能电网和本地发电机。本文提出了混合电力系统选择(HPSS),利用无线传感器网络将电力需求在公用事业智能电网和本地发电机之间进行无所不在的分配,从而降低能源成本和污染物排放。因此,HPSS的主要目标是与本地发电机(UGR)的电力漂移相比,获得来自智能电网公用事业的最优电力漂移百分比。在每个时间步长,HPSS首先测量负载功率和电网频率等电气参数。然后,求解能源成本与排放污染相结合的成本函数,得到最优解。采用模拟退火优化方法得到功率分配的最优/近最优解。仿真结果表明,该方法能够以最小的能源成本和污染物排放,在本地发电机和公用事业智能电网之间实现负荷的最优分配。此外,通过对预先设定的权重参数进行调整,实现了能源成本和排放污染的控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Decision Making for Hybrid Power Systems Selection with Smart Grid and Local Generator Using Wireless Sensor Networks
Home Energy Management System (HEMS) at smart homes focuses on smart management and switching among different sources of energy supply and generations. Wireless Sensor Networks (WSNs) are employed in HEMS to sense, process, and communicate the different electrical parameters, such as electrical voltage, current, and frequency. The sources of electrical energy considered in this paper are the utility smart grid and the local power generator. In this paper, Hybrid Power Systems Selection (HPSS) is developed to ubiquitously distribute the demands of the electrical power between the utility smart grid and the local generator using WSNs, so that the energy cost and pollutant emission are reduced. Therefore, the main goal of HPSS is to get the optimal percentage of electrical power drifted from the smart grid utility, compared with the electrical power drifted from the local generator (UGR). At each time step, HPSS firstly measures the electrical parameters, such as the load power, and the grid frequency. After that, the cost function that combines the energy cost and emission pollution is solved to get the optimal solution. Simulated annealing optimization method is used to get the optimal/near-optimal solution of power distribution. Simulation results show that the proposed HPSS can optimally distribute the load power between the local generator and the utility smart grid with minimum energy cost and pollutant emission. In addition, the energy cost and emission pollution are controlled according to tuning of predefined weighting parameter.
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