k-Nearest neighbour based approach for the protection of distribution network with renewable energy integration

被引:12
|
作者
Gangwar, Amit Kumar [1 ]
Shaik, Abdul Gafoor [1 ]
机构
[1] Indian Inst Technol, Dept Elect Engn, Jodhpur 342001, India
关键词
k-medoids clustering; k-Nearest neighbor classifier; Weighted k-Nearest neighbor regression; Fault location; Fault classification; Distribution system; Solar wind penetration; RADIAL-DISTRIBUTION SYSTEMS; FAULT LOCATION ALGORITHM; NEURAL-NETWORK; WAVELET; SCHEME; CLASSIFICATION; TRANSFORM; COMBINATION; LINES;
D O I
10.1016/j.epsr.2023.109301
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 a novel protection algorithm based on K-medoids clustering and weighted k-Nearest neighbor regression. K-medoids clustering is used for fault detection and classification, while weighted k-Nearest neighbor regression is used to locate the fault. The three phase current signals are sampled at substation with frequency of 3.84 kHz and then decomposed with a db1 mother wavelet. Using the moving window of one cycle, k-medoids clustering is applied to wavelet approximate coefficients over a cycle to obtain two medoids. The difference of medoids is defined as fault index, which is compared with threshold to detect and classify the faults. Various statistical features are computed from post fault approximate wavelet coefficients obtained are fed to k-Nearest Neighbor classifier detect the two nearest buses. Followed by this detection the fault location between these two busses is estimated using weighted k-NN regression. The process of detection, classification and location of fault is accomplished within half a cycle. The various case studies used for established the robustness of the algorithm include type of fault, fault impedance and fault incidence angle and fault location. The proposed algorithm is proved to be not affected by DG trip, islanding and noise.
引用
收藏
页数:11
相关论文
共 50 条
  • [41] Dynamic Data Discretization Technique based on Frequency and K-Nearest Neighbour algorithm
    Ahmed, Almahdi Mohammed
    Abu Bakar, Azuraliza
    Hamdan, Abdul Razak
    2009 2ND CONFERENCE ON DATA MINING AND OPTIMIZATION, 2009, : 10 - 14
  • [42] The k-nearest neighbour-based GMDH prediction model and its applications
    Li, Qiumin
    Tian, Yixiang
    Zhang, Gaoxun
    INTERNATIONAL JOURNAL OF SYSTEMS SCIENCE, 2014, 45 (11) : 2301 - 2308
  • [43] Comparative Calibration of Corrosion Measurements Using K-Nearest Neighbour Based Techniques
    Hamed, Yaman
    Shafie, A'fza
    Mustaffa, Zahiraniza Bt
    Idris, Naila Rusma Binti
    2016 INTERNATIONAL CONFERENCE ON DESIGN ENGINEERING AND SCIENCE (ICDES 2016), 2016, 52
  • [44] Efficient fuzzy based K-nearest neighbour technique for web services classification
    Viji, C.
    Raja, J. Beschi
    Ponmagal, R. S.
    Suganthi, S. T.
    Parthasarathi, P.
    Pandiyan, Sanjeevi
    MICROPROCESSORS AND MICROSYSTEMS, 2020, 76
  • [45] A k-Nearest Neighbour Technique for Experience-Based Adaptation of Assembly Stations
    Scrimieri D.
    Ratchev S.M.
    Journal of Control, Automation and Electrical Systems, 2014, 25 (6) : 679 - 688
  • [46] CONTEXT-INDEPENDENT PHONEME RECOGNITION USING A K-NEAREST NEIGHBOUR CLASSIFICATION APPROACH
    Golipour, Ladan
    O'Shaughnessy, Douglas
    2009 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, VOLS 1- 8, PROCEEDINGS, 2009, : 1341 - 1344
  • [47] Segmenting Multiple Sclerosis Lesions Using a Spatially Constrained K-Nearest Neighbour Approach
    Lyksborg, Mark
    Larsen, Rasmus
    Sorensen, Per Soelberg
    Blinkenberg, Morten
    Garde, Ellen
    Siebner, Hartwig R.
    Dyrby, Tim Bjorn
    IMAGE ANALYSIS AND RECOGNITION, PT II, 2012, 7325 : 156 - 163
  • [48] Indoor Tracking with Bluetooth Low Energy Devices Using K-Nearest Neighbour Algorithm
    Kee, Koon Lie
    Shien, Kwok Yeo
    Ngoh, Alvin Kee Ting
    Tze, David Heng Chieng
    IEEE 10TH SYMPOSIUM ON COMPUTER APPLICATIONS AND INDUSTRIAL ELECTRONICS (ISCAIE 2020), 2020, : 155 - 159
  • [49] Architecture reduction of a probabilistic neural network by merging k-means and k-nearest neighbour algorithms
    Kusy, Maciej
    Kowalski, Piotr A.
    APPLIED SOFT COMPUTING, 2022, 128
  • [50] A fast fuzzy K-nearest neighbour algorithm for pattern classification
    Boutalis, Yiannis S.
    Andreadis, Ioannis T.
    Tambakis, George D.
    Intelligent Data Analysis, 2000, 4 (3-4) : 275 - 288