Data-driven Missing Data Imputation for Wind Farms Using Context Encoder

被引:0
作者
Wenlong Liao [1 ]
Birgitte Bak-Jensen [1 ]
Jayakrishnan Radhakrishna Pillai [1 ]
Dechang Yang [2 ]
Yusen Wang [3 ]
机构
[1] Department of Energy Technology, Aalborg University
[2] the College of Information and Electrical Engineering, China Agricultural University
[3] the School of Electrical Engineering and Computer Science, KTH Royal Institute of Technology
关键词
D O I
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中图分类号
TM614 [风能发电]; TP18 [人工智能理论];
学科分类号
0807 ; 081104 ; 0812 ; 0835 ; 1405 ;
摘要
High-quality datasets are of paramount importance for the operation and planning of wind farms. However, the datasets collected by the supervisory control and data acquisition(SCADA) system may contain missing data due to various factors such as sensor failure and communication congestion. In this paper, a data-driven approach is proposed to fill the missing data of wind farms based on a context encoder(CE), which consists of an encoder, a decoder, and a discriminator. Through deep convolutional neural networks, the proposed method is able to automatically explore the complex nonlinear characteristics of the datasets that are difficult to be modeled explicitly.The proposed method can not only fully use the surrounding context information by the reconstructed loss, but also make filling data look real by the adversarial loss. In addition, the correlation among multiple missing attributes is taken into account by adjusting the format of input data. The simulation results show that CE performs better than traditional methods for the attributes of wind farms with hallmark characteristics such as large peaks, large valleys, and fast ramps. Moreover,the CE shows stronger generalization ability than traditional methods such as auto-encoder, K-means, k-nearest neighbor,back propagation neural network, cubic interpolation, and conditional generative adversarial network for different missing data scales.
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页码:964 / 976
页数:13
相关论文
共 18 条
  • [1] Automatic Discontinuity Classification of Wind-turbine Blades Using A-scan-based Convolutional Neural Network[J]. Jiyeon Choung,Sun Lim,Seung Hwan Lim,Su Chung Chi,Mun Ho Nam.Journal of Modern Power Systems and Clean Energy. 2021(01)
  • [2] Robust Voltage Control Considering Uncertainties of Renewable Energies and Loads via Improved Generative Adversarial Network[J]. Qianyu Zhao,Wenlong Liao,Shouxiang Wang,Jayakrishnan Radhakrishna Pillai.Journal of Modern Power Systems and Clean Energy. 2020(06)
  • [3] Fully Distributed State Estimation for Power System with Information Propagation Algorithm[J]. Qiao Li,Lin Cheng,Wei Gao,David Wenzhong Gao.Journal of Modern Power Systems and Clean Energy. 2020(04)
  • [4] 基于深度信念网络的短期负荷预测方法
    孔祥玉
    郑锋
    鄂志君
    曹旌
    王鑫
    [J]. 电力系统自动化, 2018, 42 (05) : 133 - 139
  • [5] Probabilistic multi-objective state estimation-based PMU placement in the presence of bad data and missing measurements
    Zargar, Saman Farhang
    Farsangi, Malihe Maghfoori
    Zare, Mohsen
    [J]. IET GENERATION TRANSMISSION & DISTRIBUTION, 2020, 14 (15) : 3042 - 3051
  • [6] Denoising Autoencoder-Based Missing Value Imputation for Smart Meters
    Ryu, Seunghyoung
    Kim, Minsoo
    Kim, Hongseok
    [J]. IEEE ACCESS, 2020, 8 : 40656 - 40666
  • [7] Modeling Daily Load Profiles of Distribution Network for Scenario Generation Using Flow-Based Generative Network[J] . Leijiao Ge,Wenlong Liao,Shouxiang Wang,Birgitte Bak Jensen,Jayakrishnan Radhakrishna Pillai.IEEE Access . 2020
  • [8] Missing Data Problem in the Monitoring System: A Review[J] . Jinghan Du,Minghua Hu,Weining Zhang.IEEE Sensors Journal . 2020 (99)
  • [9] A Context Encoder For Audio Inpainting
    Marafioti, Andres
    Perraudin, Nathanael
    Holighaus, Nicki
    Majdak, Piotr
    [J]. IEEE-ACM TRANSACTIONS ON AUDIO SPEECH AND LANGUAGE PROCESSING, 2019, 27 (12) : 2362 - 2372
  • [10] Natural Language Statistical Features of LSTM-Generated Texts
    Lippi, Marco
    Montemurro, Marcelo A.
    Degli Esposti, Mirko
    Cristadoro, Giampaolo
    [J]. IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2019, 30 (11) : 3326 - 3337