Enhancing Micro Energy Grid (MEG) Performance by Novel D-FACTS based on GA-ANFIS Integration

H. Gabbar, A. Othman, A. Zidan, J. Runge, Owais Muneer, Manir U. Isham, M. Tomal
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Abstract

This paper concerns with enhancing Micro Energy Grid (MEG) performance by Novel Developed Flexible AC Transmission System (D‐FACTS) based on the integration of Genetics algorithm (GA) and Adaptive Neuro‐Fuzzy Inference System (ANFIS). The design and development of MEG, with hardware demonstration, is developed at the Energy Safety and Control Laboratory (ESCL), University of Ontario Institute of Technology. The hardware/software based system includes implementation of control strategies for Distributed Energy Resources (DER) and programmable loads in a laboratory scale; and the appropriate software was developed to monitor all MEG parameters and to control the various components. The interconnection of renewable energy sources, such as wind power, solar PV and others, are implemented, studied and integrated into this MEG. Furthermore, gas based DERs operate as Combined Heat and Power (CHP) to supply both thermal and electrical loads. The design, development, and hardware setup of this MEG has been presented in a planning stage and an operational stage. Firstly, the planning stage optimizes the size and type of DERs for minimum cost and emissions. Then, in the operational stage, there will be the evaluation of the dynamic response to fine tuning the dynamic response. So a novel D‐FACTS device, Green Plug‐Energy Economizer (GP‐EE) with two DC/AC schemes, is proposed and integrated into this MEG. The integrated GA with ANFIS has been applied to control the settings of GP‐EE to fine‐tune the system dynamic response. The proposed controller ensures the adaptation of the global control error of dynamic tri‐loop regulation for GP‐EE. The proposed control strategy leads to get full MEG utilization by increasing the energy efficiency and reliability. Power factor improvement, bus voltage stabilizing, feeder loss minimization and power quality enhancement are realized and achieved. Hardware demonstration with digital simulations have been used to validate the results to show the effectiveness and the improved performance.
基于GA-ANFIS集成的新型D-FACTS增强微电网性能
本文研究了基于遗传算法(GA)和自适应神经模糊推理系统(ANFIS)集成的新型柔性交流输电系统(D‐FACTS)对微电网(MEG)性能的增强。MEG的设计和开发,以及硬件演示,是在安大略理工大学能源安全和控制实验室(ESCL)开发的。基于硬件/软件的系统包括分布式能源(DER)和可编程负载在实验室规模的控制策略的实现;并开发了相应的软件来监测脑磁图的所有参数和控制各组成部分。可再生能源,如风能、太阳能光伏等的互联互通被实施、研究并纳入该MEG。此外,基于天然气的DERs作为热电联产(CHP)运行,以提供热负荷和电负荷。该MEG的设计、开发和硬件设置已经在规划阶段和操作阶段进行了介绍。首先,规划阶段优化分布式发电的规模和类型,以实现成本和排放的最小化。然后,在运行阶段,将有动态响应的评估,以微调动态响应。因此,提出了一种新颖的D - FACTS设备,具有两种DC/AC方案的绿色插头节能器(GP - EE),并将其集成到该MEG中。集成遗传算法与ANFIS被应用于控制GP - EE的设置,以微调系统的动态响应。该控制器保证了GP - EE动态三环调节的全局控制误差的自适应。所提出的控制策略通过提高能量效率和可靠性来实现MEG的充分利用。实现了功率因数的改善、母线电压的稳定、馈线损耗的最小化和电能质量的提高。硬件演示和数字仿真验证了结果的有效性和改进的性能。
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