Classification of underlying causes of power quality disturbances: Deterministic versus statistical methods

被引:61
作者
Bollen, Math H. J. [1 ]
Gu, Irene Y. H.
Axelberg, Peter G. V.
Styvaktakis, Emmanouil
机构
[1] STRI AB, S-77180 Ludvika, Sweden
[2] Lulea Univ Technol, EMC on Site, S-93187 Skelleftea, Sweden
[3] Chalmers Univ Technol, Dept Signals & Syst, S-41296 Gothenburg, Sweden
[4] Hellen Transmiss Syst Operator, Athens 17122, Greece
来源
EURASIP JOURNAL ON ADVANCES IN SIGNAL PROCESSING | 2007年
关键词
TIME-FREQUENCY REPRESENTATIONS; NEURAL CLASSIFIER; EXPERT-SYSTEM; PART; RECOGNITION; NETWORK;
D O I
10.1155/2007/79747
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
This paper presents the two main types of classification methods for power quality disturbances based on underlying causes: deterministic classification, giving an expert system as an example, and statistical classification, with support vector machines ( a novel method) as an example. An expert system is suitable when one has limited amount of data and sufficient power system expert knowledge; however, its application requires a set of threshold values. Statistical methods are suitable when large amount of data is available for training. Two important issues to guarantee the effectiveness of a classifier, data segmentation, and feature extraction are discussed. Segmentation of a sequence of data recording is preprocessing to partition the data into segments each representing a duration containing either an event or a transition between two events. Extraction of features is applied to each segment individually. Some useful features and their effectiveness are then discussed. Some experimental results are included for demonstrating the effectiveness of both systems. Finally, conclusions are given together with the discussion of some future research directions. Copyright (C) 2007 Hindawi Publishing Corporation. All rights reserved.
引用
收藏
页数:17
相关论文
共 34 条
[21]   Efficient feature vector extraction for automatic classification of power quality disturbances [J].
Lee, CH ;
Nam, SW .
ELECTRONICS LETTERS, 1998, 34 (11) :1059-1061
[22]   Trends in power quality monitoring [J].
McGranaghan, M. .
IEEE Power Engineering Review, 2001, 21 (10) :3-9
[23]   An introduction to kernel-based learning algorithms [J].
Müller, KR ;
Mika, S ;
Rätsch, G ;
Tsuda, K ;
Schölkopf, B .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 2001, 12 (02) :181-201
[24]   Power quality disturbance waveform recognition using wavelet-based neural classifier - Part 1: Theoretical foundation [J].
Santoso, S ;
Powers, EJ ;
Grady, WM ;
Parsons, AC .
IEEE TRANSACTIONS ON POWER DELIVERY, 2000, 15 (01) :222-228
[25]   Power quality disturbance waveform recognition using wavelet-based neural classifier - Part 2: Application [J].
Santoso, S ;
Powers, EJ ;
Grady, WM ;
Parsons, AC .
IEEE TRANSACTIONS ON POWER DELIVERY, 2000, 15 (01) :229-235
[26]  
Santoso S, 2000, 2000 IEEE POWER ENGINEERING SOCIETY SUMMER MEETING, CONFERENCE PROCEEDINGS, VOLS 1-4, P172, DOI 10.1109/PESS.2000.867593
[27]   A scalable PQ event identification system [J].
Santoso, S ;
Lamoree, J ;
Grady, WM ;
Powers, EJ ;
Bhatt, SC .
IEEE TRANSACTIONS ON POWER DELIVERY, 2000, 15 (02) :738-743
[28]  
Shawe-Taylor J., 2004, KERNEL METHODS PATTE, P291
[29]   Expert system for classification and analysis of power system events [J].
Styvaktakis, E ;
Bollen, MHJ ;
Gu, IYH .
IEEE TRANSACTIONS ON POWER DELIVERY, 2002, 17 (02) :423-428
[30]  
Vapnik V, 1999, The Nature of Statistical Learning Theory