Non-parametric probabilistic load flow using Gaussian process learning

被引:2
|
作者
Pareek, Parikshit [1 ]
Wang, Chuan [2 ]
Nguyen, Hung D. [1 ]
机构
[1] Nanyang Technol Univ, Sch Elect & Elect Engn, Singapore, Singapore
[2] Tsinghua Univ, Dept Elect Engn, Beijing, Peoples R China
关键词
Probabilistic Power FLow; Gaussian Process Learning; Probabilistic Learning Bound; Non-parametric methods; POWER-FLOW; STABILITY; GENERATION; SYSTEMS;
D O I
10.1016/j.physd.2021.132941
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
The load flow problem is fundamental to characterize the equilibrium behavior of a power system. Uncertain power injections such as those due to demand variations and intermittent renewable resources will change the system's equilibrium unexpectedly, and thus potentially jeopardizing the system's reliability and stability. Understanding load flow solutions under uncertainty becomes imperative to ensure the seamless operation of a power system. In this work, we propose a non-parametric probabilistic load flow (NP-PLF) technique based on the Gaussian Process (GP) learning to understand the power system behavior under uncertainty for better operational decisions. The technique can provide "semi-explicit" form of load flow solutions by implementing the learning and testing steps that map control variables to inputs. The proposed NP-PLF leverages upon GP upper confidence bound (GP-UCB) sampling algorithm. The salient features of this NP-PLF method are: i) applicable for power flow problem having power injection uncertainty with an unknown class of distribution; ii) providing probabilistic learning bound (PLB) which further provides control over the error and convergence; iii) capable of handling intermittent distributed generation as well as load uncertainties. The simulation results performed on the IEEE 30-bus and IEEE 118-bus system show that the proposed method can learn the voltage function over the power injection subspace using a small number of training samples. Further, the testing with different input uncertainty distributions indicates that complete statistical information can be obtained for the probabilistic load flow problem with an average percentage relative error of the order of 10-3% on 50,000 test points. (C) 2021 Published by Elsevier B.V.
引用
收藏
页数:8
相关论文
共 50 条
  • [21] Probabilistic Characterization of the Vegetated Hydrodynamic System Using Non-Parametric Bayesian Networks
    Niazi, Muhammad Hassan Khan
    Morales Napoles, Oswaldo
    van Wesenbeeck, Bregje K.
    WATER, 2021, 13 (04)
  • [22] Bayesian Non-Parametric Parsimonious Gaussian Mixture for Clustering
    Chamroukhi, Faicel
    Bartcus, Marius
    Glotin, Herve
    2014 22ND INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2014, : 1460 - 1465
  • [23] Construction of a probabilistic model for the soil impedance matrix using a non-parametric method
    Cottereau, R.
    Clouteau, D.
    Soize, C.
    STRUCTURAL DYNAMICS - EURODYN 2005, VOLS 1-3, 2005, : 841 - 846
  • [24] Inferring Disease Status by Non-parametric Probabilistic Embedding
    Batmanghelich, Nematollah Kayhan
    Saeedi, Ardavan
    Estepar, Raul San Jose
    Cho, Michael
    Wells, William M., III
    MEDICAL COMPUTER VISION AND BAYESIAN AND GRAPHICAL MODELS FOR BIOMEDICAL IMAGING, 2017, 10081 : 49 - 57
  • [25] A Non-parametric Probabilistic Model for Hepatic Tumor Detection
    Konno, Y.
    Han, X. H.
    Chen, Y. W.
    Wei, X.
    PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON COMPUTER INFORMATION SYSTEMS AND INDUSTRIAL APPLICATIONS (CISIA 2015), 2015, 18 : 581 - 584
  • [26] LEARNING NON-PARAMETRIC MODELS OF PRONUNCIATION
    Hutchinson, Brian
    Droppo, Jasha
    2011 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, 2011, : 4904 - 4907
  • [27] Non-parametric expectation-maximization for Gaussian mixtures
    Sakuma, J
    Kobayashi, S
    ICONIP'02: PROCEEDINGS OF THE 9TH INTERNATIONAL CONFERENCE ON NEURAL INFORMATION PROCESSING: COMPUTATIONAL INTELLIGENCE FOR THE E-AGE, 2002, : 517 - 522
  • [28] Gaussian approximation of general non-parametric posterior distributions
    Shang, Zuofeng
    Cheng, Guang
    INFORMATION AND INFERENCE-A JOURNAL OF THE IMA, 2018, 7 (03) : 509 - 529
  • [29] Using Linking Features in Learning Non-parametric Part Models
    Karlinsky, Leonid
    Ullman, Shimon
    COMPUTER VISION - ECCV 2012, PT III, 2012, 7574 : 326 - 339
  • [30] Bayesian non-parametric inference for stochastic epidemic models using Gaussian Processes
    Xu, Xiaoguang
    Kypraios, Theodore
    O'Neill, Philip D.
    BIOSTATISTICS, 2016, 17 (04) : 619 - 633