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An Efficient Technique-Based Distributed Energy Management for Hybrid MG System: A Hybrid RFCFA Technique

机译:用于混合MG系统的基于高效的技术的分布式能量管理:Hybrid RFCFA技术

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摘要

This paper presents an efficient hybrid approach-based energy management strategy for grid-connected microgrid (MG) system. The proposed hybrid technique is the combination of both random forest (RF) and cuttlefish algorithm (CFA) named as RFCFA. The proposed hybrid technique is utilized to decrease the electricity cost and increase the power flow between the source and load side. The MG system is tracked by the RF technique. The CFA is optimized based on the MG with the predicted load demand. MG employs two energy management strategies to reduce the impact of renewable energy prediction errors. The first strategy seeks at minimizing electricity costs during MG's operation. And the second strategy is aimed at balancing the power flow and reducing forecast error effects. In the grid-connected MG system, the objective function of the proposed technique is characterized with the inclusion of fuel cost, grid power variation, operation and maintenance cost. Battery energy storage systems (BESSs) can stabilize the output power and allow renewable power system units to operate at stable rate of output power. The proposed hybrid technique is executed in the working platform of MATLAB/Simulink, and the execution is evaluated using existing techniques such as GA, CFA and RBFNBBMO.
机译:本文介绍了基于混合方法的电网连接的微电网(MG)系统的能源管理策略。所提出的混合技术是随机森林(RF)和墨鱼算法(CFA)的组合命名为RFCFA。所提出的混合技术用于降低电力成本并增加源和负载侧之间的功率流动。 MG系统由RF技术跟踪。 CFA基于MG优化,具有预测的负载需求。 MG采用两种能源管理策略来减少可再生能源预测误差的影响。第一个策略旨在最大限度地减少MG操作期间的电力成本。第二策略旨在平衡电流和减少预测误差效果。在网格连接的MG系统中,所提出的技术的目标函数具有燃料成本,电网功率变化,操作和维护成本的表征。电池储能系统(BESSS)可以稳定输出功率并允许可再生电力系统单元以稳定的输出功率运行。所提出的混合技术在MATLAB / SIMULINK的工作平台中执行,并且使用现有技术(例如GA,CFA和RBFNBBMO)进行评估。

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