结合电力线故障定位检测的分布式智能微电网方法

Farha Khushi, S. Motakabber, Amit Bhattacharjee, A. Z. Zahirul Alam, Amelia Wong Azman, Fayaz Hussain
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引用次数: 1

摘要

对于每个研究人员来说,与智能电网和配电网相关的不确定性是一个共同的因素。数以千计的能源是可再生能源系统的一部分,它们分布在不同的距离。在适当的时候,某些电源可能会效率低下,或者自然灾害可能会破坏电源而导致供电故障,或者需要进行例行维护以提高业务。这些缺陷有的生长缓慢,有的影响很大。然而,该系统包含安全组件来消除这个问题,但会影响发电并导致智能电网错误。智能微电网应该具有智能故障定位检测和故障排除装置,以避免不必要的负载和不安全。这项研究形成了一个智能电网系统,连同一个有缺陷的技术来有效地识别不确定性。本研究的独创性在于基于孤立小区域的SGC机制和缺陷检测系统建立SMG模型,以有效地管理不确定性。FLD技术主要研究小波触发信号和数学形态学方法。该方法利用数学形态学技术,模拟短时间内等效电流或电压产生的小波激活信号,使其到达两个终端,从而确定故障发生在短支路上。SMG建模系统被划分为FLD系统的几个分支。提出了一种基于混合人机界面(HMI)的SMG性能和FLD监测智能技术。在MATLAB性能验证仿真平台上集成SMG系统建模过程。
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A Smart Microgrid Approach for Distributed Network Combined with Power Line Fault Location Detection
For every researcher, uncertainties connected to the Smart Grid and Distribution Network are a common element. Thousands of sources are part of the renewable energy system and they are situated at varying distances. In due course, certain sources may be inefficient, or a natural disaster can destroy the source causing power supply failures or require routine maintenance to improve service. Some of these defects grow slowly and some have a strong impact. The systems, however, contain safety components to remove the problem, but impact the generation of electricity and conduct intelligent grid errors. An intelligent microgrid should feature an intelligent fault location detection and fault removal device to avoid unwanted loads and insecurities. This research shaped a smart grid system, together with a defective technique to identify uncertainty efficiently. The originality of this research is to model an SMG based on an isolated small area's SGC mechanism in conjunction with a defective detecting system to manage uncertainties in an efficient way. The FLD technique is focused upon wavelet trigger signal and mathematical morphology method. In this approach, the wavelet activator signal created by the equivalent current or voltage for a short period of time is simulated to go to both terminals to determine that the fault takes place in the short branch using the mathematical morphological technique. The SMG modeled system is separated into a few branches for the FLD system. A smart technique is presented via mixed human machine interface (HMI) for SMG performance and FLD monitoring. The integrated process of the SMG system modeling in the MATLAB performance validation simulation platform.
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