一种新的支持向量机微网孤岛检测方法

H. Bitaraf, M. Sheikholeslamzadeh, A. Ranjbar, Babak Mozafari
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引用次数: 6

摘要

被动孤岛检测方案相对于其他方案具有较大的非检测区(NDZ),但由于其成本低、谐波问题少,因此在公用事业中得到了更多的应用。在共耦合点(PCC)的无源系统测量是该方案的基础。在被动技术中,利用基于智能的数据挖掘方法对影响孤岛检测的系统参数进行分类是一种新的方法。因此,通过寻找一种高效且鲁棒的数据挖掘算法,可以最大限度地减少被动方案问题,这是它们相对较大的NDZ。本文通过对IEEE标准配电系统在PSCAD/EMTP环境下的仿真,收集了大量的测量数据。这些指标包括电流、电压、频率、有功功率和超过有功功率的频率。利用MATLAB软件,利用支持向量机(SVM)对这些指标进行分类。结果表明,支持向量机在被动孤岛检测方案中具有较高的效率和速度。同时,本文还研究了两种可用于孤岛检测的最佳指标。支持向量机技术可以很容易地在不同类型和渗透水平的分布式发电微电网中实现。
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A novel SVM approach of islanding detection in micro grid
Passive islanding detection schemes are more used in utilities due to their low costs and less harmonic problems although having larger Non Detection Zones (NDZ) relative to other schemes. Passive system measurements at the point of common coupling (PCC) are the basis of this scheme. A new approach in passive techniques is the use of intelligent based methods in data-mining to classify the system parameters which affect the islanding detection. As a result, by finding an efficient and robust data-mining algorithm, the passive schemes problem, which is their relatively large NDZ, will be minimized. In this paper, massive measurements are collected by simulation of IEEE standard distribution system in PSCAD/EMTP environment. These indices include current, voltage, frequency, active power and frequency over active power. The classifying process of these indices is done by the Support Vector Machine (SVM) using MATLAB software. The results show the efficiency with good speed of SVM in passive islanding detection schemes. Also, this paper studies the best two indices which can be used for islanding detection. SVM technique can be easily implemented in the Micro Grid with different types and penetration levels of Distributed Generation (DG).
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