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      Optimal feature selection for islanding detection in distributed generation

      research-article
      1 , , 2 , 3 , 2
      IET Smart Grid
      The Institution of Engineering and Technology
      pattern classification, feature extraction, distributed power generation, power distribution faults, learning (artificial intelligence), IEEE standards, invertors, evolutionary computation, power engineering computing, multiobjective differential evolution algorithm, kernel-based extreme learning machine classifier, optimum features, standard objective functions, designed IEEE 13 bus system, IEEE 1547 standards, selected optimal features, islanded condition, distributed generators, optimal feature selection, islanding detection, distributed generation, distributed power generation, distribution system, teething problems, system protection, anti-islanding techniques, feature evaluation, particular detection feature, wrapper feature selection approach

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          Abstract

          The integration of the distributed power generation into a distribution system comes with several system problems. One of the teething problems related to system protection is islanding detection. Various anti-islanding techniques based on feature evaluation were proposed in the recent past. However, they overlook the need for justifying the selection of a particular detection feature among all the possible measures. In this study, a wrapper feature selection approach is proposed where a modified multi-objective differential evolution algorithm is coupled with a kernel-based extreme learning machine classifier. To select the optimum features, five standard objective functions have been considered, such as dependability, security, accuracy, F-measure, and the number of features. About 1864 cases have been generated from the designed IEEE 13 bus system to extract the sensitive features. IEEE 1547 standards have been considered while designing and testing the IEEE 13 bus system against islanding. The selected optimal features detect the islanded condition decisively for both synchronous and inverter-based distributed generators. The features also validate their performance under noisy environment accurately with lesser computational time.

          Most cited references26

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          A Survey on Evolutionary Computation Approaches to Feature Selection

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            Particle swarm optimization for feature selection in classification: a multi-objective approach.

            Classification problems often have a large number of features in the data sets, but not all of them are useful for classification. Irrelevant and redundant features may even reduce the performance. Feature selection aims to choose a small number of relevant features to achieve similar or even better classification performance than using all features. It has two main conflicting objectives of maximizing the classification performance and minimizing the number of features. However, most existing feature selection algorithms treat the task as a single objective problem. This paper presents the first study on multi-objective particle swarm optimization (PSO) for feature selection. The task is to generate a Pareto front of nondominated solutions (feature subsets). We investigate two PSO-based multi-objective feature selection algorithms. The first algorithm introduces the idea of nondominated sorting into PSO to address feature selection problems. The second algorithm applies the ideas of crowding, mutation, and dominance to PSO to search for the Pareto front solutions. The two multi-objective algorithms are compared with two conventional feature selection methods, a single objective feature selection method, a two-stage feature selection algorithm, and three well-known evolutionary multi-objective algorithms on 12 benchmark data sets. The experimental results show that the two PSO-based multi-objective algorithms can automatically evolve a set of nondominated solutions. The first algorithm outperforms the two conventional methods, the single objective method, and the two-stage algorithm. It achieves comparable results with the existing three well-known multi-objective algorithms in most cases. The second algorithm achieves better results than the first algorithm and all other methods mentioned previously.
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              Extreme Learning Machine for Multilayer Perceptron.

              Extreme learning machine (ELM) is an emerging learning algorithm for the generalized single hidden layer feedforward neural networks, of which the hidden node parameters are randomly generated and the output weights are analytically computed. However, due to its shallow architecture, feature learning using ELM may not be effective for natural signals (e.g., images/videos), even with a large number of hidden nodes. To address this issue, in this paper, a new ELM-based hierarchical learning framework is proposed for multilayer perceptron. The proposed architecture is divided into two main components: 1) self-taught feature extraction followed by supervised feature classification and 2) they are bridged by random initialized hidden weights. The novelties of this paper are as follows: 1) unsupervised multilayer encoding is conducted for feature extraction, and an ELM-based sparse autoencoder is developed via l1 constraint. By doing so, it achieves more compact and meaningful feature representations than the original ELM; 2) by exploiting the advantages of ELM random feature mapping, the hierarchically encoded outputs are randomly projected before final decision making, which leads to a better generalization with faster learning speed; and 3) unlike the greedy layerwise training of deep learning (DL), the hidden layers of the proposed framework are trained in a forward manner. Once the previous layer is established, the weights of the current layer are fixed without fine-tuning. Therefore, it has much better learning efficiency than the DL. Extensive experiments on various widely used classification data sets show that the proposed algorithm achieves better and faster convergence than the existing state-of-the-art hierarchical learning methods. Furthermore, multiple applications in computer vision further confirm the generality and capability of the proposed learning scheme.
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                Author and article information

                Contributors
                Journal
                IET-STG
                IET Smart Grid
                IET Smart Grid
                The Institution of Engineering and Technology
                2515-2947
                21 August 2018
                17 September 2018
                October 2018
                : 1
                : 3
                : 85-95
                Affiliations
                [1 ] Electrical Engineering Department, Siksha ‘O’ Anusandhan University , 751030, India
                [2 ] Electrical and Electronics Engineering Department, Siksha ‘O’ Anusandhan University , 751030, India
                [3 ] Computer Science Engineering Department, Siksha ‘O’ Anusandhan University , 751030, India
                Article
                IET-STG.2018.0021 STG.2018.0021.R1
                10.1049/iet-stg.2018.0021
                e272d1b5-243c-425a-8118-c174ca2e91e0

                This is an open access article published by the IET under the Creative Commons Attribution-NonCommercial-NoDerivs License ( http://creativecommons.org/licenses/by-nc-nd/3.0/)

                History
                : 22 February 2018
                : 16 July 2018
                : 21 August 2018
                Page count
                Pages: 0
                Categories
                Research Article

                Computer science,Engineering,Artificial intelligence,Electrical engineering,Mechanical engineering,Renewable energy
                wrapper feature selection approach,IEEE 1547 standards,system protection,evolutionary computation,feature extraction,power engineering computing,pattern classification,teething problems,multiobjective differential evolution algorithm,distribution system,kernel-based extreme learning machine classifier,optimum features,distributed power generation,distributed generation,standard objective functions,islanding detection,designed IEEE 13 bus system,optimal feature selection,selected optimal features,particular detection feature,distributed generators,islanded condition,power distribution faults,feature evaluation,learning (artificial intelligence),IEEE standards,anti-islanding techniques,invertors

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