| 能源与动力工程 |
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| 基于改进的插补扩散模型与LSTM的风电数据清洗方法 |
边文远1( ),火久元1,2,*( ),常琛1 |
1. 兰州交通大学 电子与信息工程学院,甘肃 兰州 730070 2. 国家冰川冻土沙漠科学数据中心,甘肃 兰州 730000 |
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| Wind power data cleaning method based on improved imputation diffusion model and LSTM |
Wenyuan BIAN1( ),Jiuyuan HUO1,2,*( ),Chen CHANG1 |
1. School of Electronic and Information Engineering, Lanzhou Jiaotong University, Lanzhou 730070, China 2. National Cryosphere Desert Data Center, Lanzhou 730000, China |
| 1 |
王永生, 关世杰, 刘利民, 等 基于XGBoost扩展金融因子的风电功率预测方法[J]. 浙江大学学报: 工学版, 2023, 57 (5): 1038- 1049 WANG Yongsheng, GUAN Shijie, LIU Limin, et al Wind power prediction method based on XGBoost extended financial factor[J]. Journal of Zhejiang University: Engineering Science, 2023, 57 (5): 1038- 1049
|
| 2 |
YAO Q, ZHU H, XIANG L, et al A novel composed method of cleaning anomy data for improving state prediction of wind turbine[J]. Renewable Energy, 2023, 204: 131- 140
doi: 10.1016/j.renene.2022.12.118
|
| 3 |
PANG G, SHEN C, CAO L, et al Deep learning for anomaly detection: a review[J]. ACM Computing Surveys, 2022, 54 (2): 1- 38
|
| 4 |
魏泰, 贺少雄, 胡子武, 等 基于改进孤立森林算法的风电机组异常数据清洗[J]. 科学技术与工程, 2024, 24 (9): 3691- 3699 WEI Tai, HE Shaoxiong, HU Ziwu, et al Wind turbine abnormal data cleaning based on an improved isolation forest algorithm[J]. Science Technology and Engineering, 2024, 24 (9): 3691- 3699
doi: 10.12404/j.issn.1671-1815.2302642
|
| 5 |
XIANG L, YANG X, HU A, et al Condition monitoring and anomaly detection of wind turbine based on cascaded and bidirectional deep learning networks[J]. Applied Energy, 2022, 305: 117925
doi: 10.1016/j.apenergy.2021.117925
|
| 6 |
刘宇璐. 物理模型与数据驱动融合的风电机组功率数据异常辨识和插补方法 [D]. 北京: 华北电力大学, 2024. LIU Yulu. A physics-guided and data-driven integration of wind turbine power data anomaly identification and interpolation method. [D]. Beijing: North China Electric Power University, 2024.
|
| 7 |
罗朗川, 李汝辉, 曾东, 等 基于RANSAC-DBSCAN的风速功率曲线异常数据清洗方法[J]. 太阳能学报, 2025, 46 (4): 445- 453 LUO Langchuan, LI Ruhui, ZENG Dong, et al Abnormal data cleaning method of wind speed-power curve based on RANSAC-DBSCAN[J]. Acta Energiae Solaris Sinica, 2025, 46 (4): 445- 453
doi: 10.19912/j.0254-0096.tynxb.2023-2072
|
| 8 |
DU W, GUO Z, LI C, et al From anomaly detection to novel fault discrimination for wind turbine gearboxes with a sparse isolation encoding forest[J]. IEEE Transactions on Instrumentation and Measurement, 2022, 71: 2512710
doi: 10.1109/tim.2022.3187737
|
| 9 |
ZHANG S, WANG F. B-LSTM ultra-short-term wind power prediction based on LOF data anomaly detection [C]// Proceedings of the Second International Conference on Physics, Photonics, and Optical Engineering. Kunming: SPIE, 2024: 22.
|
| 10 |
柳源, 李忠虎, 王金明, 等 风电机组SCADA“风速-功率”数据处理方法研究[J]. 太阳能学报, 2025, 46 (7): 353- 360 LIU Yuan, LI Zhonghu, WANG Jinming, et al Research on data processing methods for “wind speed-power” in wind turbine scada systems[J]. Acta Energiae Solaris Sinica, 2025, 46 (7): 353- 360
doi: 10.19912/j.0254-0096.tynxb.2024-0383
|
| 11 |
CHEN H, LIU H, CHU X, et al Anomaly detection and critical SCADA parameters identification for wind turbines based on LSTM-AE neural network[J]. Renewable Energy, 2021, 172: 829- 840
doi: 10.1016/j.renene.2021.03.078
|
| 12 |
SUI J, YU J, SONG Y, et al Anomaly detection for telemetry time series using a denoising diffusion probabilistic model[J]. IEEE Sensors Journal, 2024, 24 (10): 16429- 16439
doi: 10.1109/JSEN.2024.3383416
|
| 13 |
HU R, YUAN X, QIAO Y, et al. Unsupervised anomaly detection for multivariate time series using diffusion model [C]// 2024 IEEE International Conference on Acoustics, Speech and Signal Processing. Seoul: IEEE, 2024: 9606–9610.
|
| 14 |
CHEN Y, ZHANG C, MA M, et al ImDiffusion: imputed diffusion models for multivariate time series anomaly detection[J]. Proceedings of the VLDB Endowment, 2023, 17 (3): 359- 372
doi: 10.14778/3632093.3632101
|
| 15 |
苗长新, 周志伟, 杨千禧, 等 基于分布特征的风电异常数据检测方法[J]. 太阳能学报, 2025, 46 (7): 395- 402 MIAO Changxin, ZHOU Zhiwei, YANG Qianxi, et al Anomaly detection method for wind power based on distribution characteristics[J]. Acta Energiae Solaris Sinica, 2025, 46 (7): 395- 402
doi: 10.19912/j.0254-0096.tynxb.2024-0443
|
| 16 |
王圣举, 张赞 基于加速扩散模型的缺失值插补算法[J]. 浙江大学学报: 工学版, 2025, 59 (7): 1471- 1480 WANG Shengju, ZHANG Zan Missing value imputation algorithm based on accelerated diffusion model[J]. Journal of Zhejiang University: Engineering Science, 2025, 59 (7): 1471- 1480
doi: 10.3785/j.issn.1008-973X.2025.07.015
|
| 17 |
FENG C, LIU C, JIANG D Unsupervised anomaly detection using graph neural networks integrated with physical-statistical feature fusion and local-global learning[J]. Renewable Energy, 2023, 206: 309- 323
doi: 10.1016/j.renene.2023.02.053
|
| 18 |
LIU Y, HU T, ZHANG H, et al. iTransformer: inverted transformers are effective for time series forecasting [EB/OL]. (2024–05–14)[2025–05–30]. https://arxiv.org/pdf/2310.06625.
|
| 19 |
LI X, XIAO C, FENG Z, et al Controlled graph neural networks with denoising diffusion for anomaly detection[J]. Expert Systems with Applications, 2024, 237: 121533
doi: 10.1016/j.eswa.2023.121533
|
| 20 |
缑泽华. 基于扩散模型的时间序列数据填充与检测方法 [D]. 开封: 河南大学, 2024. GOU Zehua. Time-series data imputation and detection method based on diffusion model [D]. Kaifeng: Henan University, 2024.
|
| 21 |
ZHANG Y, CHEN Y, WANG J, et al Unsupervised deep anomaly detection for multi-sensor time-series signals[J]. IEEE Transactions on Knowledge and Data Engineering, 2023, 35 (2): 2118- 2132
doi: 10.1109/tkde.2021.3102110
|
| 22 |
姚禹, 张志厚, 石泽玉, 等 基于支持向量回归的一维频率域航空电磁反演[J]. 浙江大学学报: 工学版, 2022, 56 (1): 202- 212 YAO Yu, ZHANG Zhihou, SHI Zeyu, et al Airborne electromagnetic inversion in one-dimensional frequency-domain based on support vector regression[J]. Journal of Zhejiang University: Engineering Science, 2022, 56 (1): 202- 212
doi: 10.3785/j.issn.1008-973X.2022.01.023
|
| 23 |
TULI S, CASALE G, JENNINGS N R TranAD: deep transformer networks for anomaly detection in multivariate time series data[J]. Proceedings of the VLDB Endowment, 2022, 15 (6): 1201- 1214
doi: 10.14778/3514061.3514067
|
| 24 |
林立栋. 基于概率统计方法的风电机组异常数据识别方法研究 [D]. 北京: 华北电力大学, 2023. LIN Lidong. Research on wind turbine abnormal data identification method based on probability and statisties method [D]. Beijing: North China Electric Power University, 2023.
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