Adaptive Power Transformer Lifetime Predictions Through Machine Learning and Uncertainty Modeling in Nuclear Power Plants

被引:109
作者
Aizpurua, Jose Ignacio [1 ]
McArthur, Stephen D. J. [1 ]
Stewart, Brian G. [1 ]
Lambert, Brandon [2 ]
Cross, James G. [3 ]
Catterson, Victoria M. [1 ]
机构
[1] Univ Strathclyde, Inst Energy & Environm, Glasgow G1 1XQ, Lanark, Scotland
[2] Bruce Power, Tiverton, ON N0G 2T0, Canada
[3] Kinectrics Inc, Etobicoke, ON M8Z 5G5, Canada
关键词
Condition assessment; forecasting; prognostics and health management (PHM); sensitivity; transformers; SMART TRANSFORMER; TUTORIAL; GRIDS;
D O I
10.1109/TIE.2018.2860532
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The remaining useful life (RUL) of transformer insulation paper is largely determined by the winding hotspot temperature (HST). Frequently the HST is not directly monitored and it is inferred from other measurements. However, measurement errors affect prediction models and if uncertain variables are not taken into account this can lead to incorrect maintenance decisions. Additionally, existing analytic models for HST calculation are not always accurate because they cannot generalize the properties of transformers operating in different contexts. In this context, this paper presents a novel transformer condition assessment approach integrating uncertainty modeling, data-driven forecasting models, and model-based experimental models to increase the prediction accuracy and handle uncertainty. The proposed approach quantifies the effect of measurement errors on transformer RUL predictions and confirms that temperature and load measurement errors affect the RUL estimation. Forecasting results show that the extreme gradient boosting (XGB) algorithm best captures the nonlinearities of the thermal model and improves the prediction accuracy among a number of forecasting approaches. Accordingly, the XGB model is integrated with experimental models in a particle filtering framework to improve thermal modeling and RUL prediction tasks. Models are tested and validated using a real dataset from a power transformer operating in a nuclear power plant.
引用
收藏
页码:4726 / 4737
页数:12
相关论文
共 35 条
  • [1] Aizpurua J.I., 2017, 10 INT TOP M NUCL PL, V1
  • [2] Lifetime-Based Power Routing in Parallel Converters for Smart Transformer Application
    Andresen, Markus
    Raveendran, Vivek
    Buticchi, Giampaolo
    Liserre, Marco
    [J]. IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2018, 65 (02) : 1675 - 1684
  • [3] [Anonymous], INT J PROGNOSTICS HL
  • [4] [Anonymous], 2013, INTRO FEATURE SELECT
  • [5] A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian tracking
    Arulampalam, MS
    Maskell, S
    Gordon, N
    Clapp, T
    [J]. IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2002, 50 (02) : 174 - 188
  • [6] A Probabilistic Approach for Forecasting the Allowable Current of Oil-Immersed Transformers
    Bracale, Antonio
    Carpinelli, Guido
    Pagano, Mario
    De Falco, Pasquale
    [J]. IEEE TRANSACTIONS ON POWER DELIVERY, 2018, 33 (04) : 1825 - 1834
  • [7] Random forests
    Breiman, L
    [J]. MACHINE LEARNING, 2001, 45 (01) : 5 - 32
  • [8] Prognostics of Transformer Paper Insulation Using Statistical Particle Filtering of On-Line Data
    Catterson, V. M.
    Melone, J.
    Garcia, M. Segovia
    [J]. IEEE ELECTRICAL INSULATION MAGAZINE, 2016, 32 (01) : 28 - 33
  • [9] A Bayesian method for transformer life estimation using Perks' hazard function
    Chen, Qiming
    Egan, David M.
    [J]. IEEE TRANSACTIONS ON POWER SYSTEMS, 2006, 21 (04) : 1954 - 1965
  • [10] Chen T, 2016, P 22 ACM SIGKDD INT