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Evaluating the effectiveness of a machine learning approach based on response time and reliability for islanding detection of distributed generation

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posted on 2024-11-15, 08:47 authored by Mollah Alam, Kashem MuttaqiKashem Muttaqi, Abdesselam BouzerdoumAbdesselam Bouzerdoum
Conventional relays, such as vector surge relay, frequency relay and rate-of-change-of-frequency relay, are usually employed for islanding detection; however, these conventional relays fail to detect islanding incidents in the presence of small power imbalance inside the islanded system. This study presents an islanding detection approach for synchronous type distributed generation using multiple features extracted from network variables and a support vector machine (SVM) classifier. Features are extracted from a sliding temporal window, whose width is selected so as to achieve the highest detection rate at a fixed false alarm rate. The SVM classifier is trained with linear, polynomial and Gaussian radial basis function kernels, and the parameters of the kernels are tuned to improve the classification performance. The application of the proposed method is illustrated for islanding cases associated with different power imbalance conditions, including small power imbalance conditions associated with the non-detection zone of conventional relays. Furthermore, variation of detection time as a function of power imbalance scenarios, which involve all probable combinations of deficit of active/reactive and excess of active/reactive power imbalance, is assessed in the testing phase. The performance of the proposed approach is evaluated and compared with those of conventional relays in terms of reliability and response time of islanding detection.

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Citation

M. Rezaul. Alam, K. M. Muttaqi & A. Bouzerdoum, "Evaluating the effectiveness of a machine learning approach based on response time and reliability for islanding detection of distributed generation," IET Renewable Power Generation, vol. 11, (11) pp. 1392-1400, 2017.

Journal title

IET Renewable Power Generation

Volume

11

Issue

11

Pagination

1392-1400

Language

English

RIS ID

116646

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