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首页> 外文期刊>Iran Journal of Computer Science >Automatic identification and classification of power quality events using a hybrid intelligent approach
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Automatic identification and classification of power quality events using a hybrid intelligent approach

机译:使用混合智能方法自动识别和分类电能质量事件

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This article proposes an implementation of Enhanced-Non-dominated Sorting Genetic Algorithm (E-NSGA III) and Directed Acyclic Graph-Support Vector Machine (DAG-SVM) based combined approach for recognition and classification of power quality events. The function of E-NSGA III is to extract features and DAG-SVM for the purpose of classification of power quality events with minimum error. The non-stationary and non- linear nature of power quality disturbances makes it a suitable choice for E-NSGA III. This technique gives unique Pareto-optimal solutions based on multi-objective optimization. Considering equal priority for all the objectives, a fitness function is used to obtain the best solution set from the first Pareto front. Non-dominated sorting sets a dominated count and assigns domination to each individual. Dominated count means the number of times an individual data point has been dominated by another data point. The obtained unique feature vectors are used for training of DAG-SVM classifier to classify the power quality disturbances. Many power quality events including harmonics, swell, sag, transient, swell with harmonics and sag with harmonics are taken into consideration for investigation of power signal disturbances. Comparative investigation reveals the novelty and efficacy of the proposed hybrid technique in comparison of support vector machine, radial basis feed-forward neural network, probabilistic neural network, support vector machine and type-1 and type-II based fuzzy classifier under serve noise conditions. The simulation results show that the Directed Acyclic Graph Support Vector Machine gives the best classification accuracy of 99.20% and less computation time.
机译:本文提出了基于增强的非统治分类遗传算法(E-NSGA III)和指导基于非循环图 - 支持向量机(DAG-SVM)的组合方法,用于识别和分类电能质量事件。 E-NSGA III的功能是提取特征和DAG-SVM,以便具有最小误差的电能质量事件的分类。 The non-stationary and non- linear nature of power quality disturbances makes it a suitable choice for E-NSGA III.该技术基于多目标优化提供了独特的普通普通解决方案。考虑到所有目标的平等优先级,使用健身功能来获得从第一个Paroto前面设置的最佳解决方案。非主导排序设置主导计数并为每个单独分配统治。主导计数意味着单个数据点被另一个数据点主导的次数。所获得的独特特征向量用于训练DAG-SVM分类器,以分类电能质量扰动。考虑到具有谐波,迅速,瞬态,随着谐波的谐波,悬垂,瞬态,膨胀的许多电力质量事件都考虑了对电力信号扰动的调查。比较调查揭示了拟议的混合技术与支持向量机,径向基础前馈神经网络,概率神经网络,支持向量机和类型-1和类型-I的模糊分类器的新颖性和有效性。仿真结果表明,定向的无环图支持向量机提供了99.20%和较少计算时间的最佳分类精度。

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