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Regular Paper | Open Access

Confidence Estimation Transformer for Long-term Renewable Energy Forecasting in Reinforcement Learning-based Power Grid Dispatching

Xinhang Li1Nan Yang2Zihao Li1Yupeng Huang2Zheng Yuan1Xuri Song2Lei Li1( )Lin Zhang1
Beijing University of Posts and Telecommunications, Beijing 100876, China
Beijing Key Laboratory of Research and System Evaluation of Power Dispatching Automation Technology
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Abstract

Expansion of renewable energy could help realize the goals of peaking carbon dioxide emissions and carbon neutralization. Some existing grid dispatching methods integrating short-term renewable energy prediction and reinforcement learning (RL) have been proven to alleviate the adverse impact of energy fluctuations risk. However, these methods omit long-term output prediction, which leads to stability and security problems on optimal power flow. This paper proposes a confidence estimation Transformer for long-term renewable energy forecasting in reinforcement learning-based power grid dispatching (Conformer-RLpatching). Conformer-RLpatching predicts long-term active output of each renewable energy generator with an enhanced Transformer to ensure stable operation of the hybrid energy grid and improve the utilization rate of renewable energy, thus boosting dispatching performance. Furthermore, a confidence estimation method is proposed to reduce the prediction error of renewable energy. Meanwhile, a dispatching necessity evaluation mechanism is put forward to decide whether the active output of a generator needs to be adjusted. Experiments carried out on the SG-126 power grid simulator show that Conformer-RLpatching achieves great improvement over the second best algorithm DDPG in security score by 25.8% and achieves a better total reward compared with the golden medal team in the power grid dispatching competition sponsored by State Grid Corporation of China under the same simulation environment. Codes are outsourced in https://github.com/BUPT-ANTlab/Conformer-RLpatching.

References

[1]

B. Khorramdel, A. Zare, C. Y. Chung, and P. Gavriliadis, “A generic convex model for a chance-constrained look-ahead economic dispatch problem incorporating an efficient wind power distribution modeling,” IEEE Transactions on Power Systems, vol. 35, no. 2, pp. 873-886, Mar. 2020.

[2]

C. H. Tang, J. Xu, Y. Z. Sun, J. Liu, X. Li, D. P. Ke, J. Yang, and X. T. Peng, “Look-ahead economic dispatch with adjustable confidence interval based on a truncated versatile distribution model for wind power,” IEEE Transactions on Power Systems, vol. 33, no. 2, pp. 1755-1767, Mar. 2018.

[3]

C. Yang, W. Q. Sun, J. N. Yang, and D. Han, “Risk-averse two-stage distributionally robust economic dispatch model under uncertain renewable energy,” CSEE Journal of Power and Energy Systems, doi: 10.17775/CSEEJPES.2020.03430.

[4]

B. Y. Qu, J. J. Liang, Y. S. Zhu, and P. N. Suganthan, “Solving dynamic economic emission dispatch problem considering wind power by multi-objective differential evolution with ensemble of selection method,” Natural Computing, vol. 18, no. 4, pp. 695-703, Dec. 2019.

[5]

H. Y. Huang, M. Zhou, S. Y. Zhang, L. J. Zhang, G. Y. Li, and Y. K. Sun, “Exploiting the operational flexibility of wind integrated hybrid ac/dc power systems,” IEEE Transactions on Power Systems, vol. 36, no. 1, pp. 818-826, Jan. 2021.

[6]

Y. Yang, W. C. Wu, B. Wang, and M. J. Li, “Chance-constrained economic dispatch considering curtailment strategy of renewable energy,” IEEE Transactions on Power Systems, vol. 36, no. 6, pp. 5792-5802, Nov. 2021.

[7]

W. Wang, B. Sun, H. L. Li, Q. Sun, and R. Wennersten, “An improved min-max power dispatching method for integration of variable renewable energy,” Applied Energy, vol. 276, pp. 115430, Oct. 2020.

[8]

E. S. Du, N. Zhang, B. M. Hodge, Q. Wang, Z. X. Lu, C. Q. Kang, B. Kroposki, and Q. Xia, “Operation of a high renewable penetrated power system with CSP plants: a look-ahead stochastic unit commitment model,” IEEE Transactions on Power Systems, vol. 34, no. 1, pp. 140-151, Jan. 2019.

[9]

L. F. Yin, Q. Gao, L. L. Zhao, and T. Wang, “Expandable deep learning for real-time economic generation dispatch and control of three-state energies based future smart grids,” Energy, vol. 191, pp. 116561, Jan. 2020.

[10]

Y. Gao and Q. Ai, “A novel optimal dispatch method for multiple energy sources in regional integrated energy systems considering wind curtailment,” CSEE Journal of Power and Energy Systems, doi: 10.17775/CSEEJPES.2021.01780.

[11]

A. C. do Amaral Burghi, T. Hirsch, and R. Pitz-Paal, “Artificial learning dispatch planning for flexible renewable-energy systems,” Energies, vol. 13, no. 6, pp. 1517, Mar. 2020.

[12]

K. Lv, H. Tang, Y. J. Li, and X. Li, “A learning-based optimization of active power dispatch for a grid-connected microgrid with uncertain multi-type loads,” Journal of Renewable and Sustainable Energy, vol. 9, no. 6, pp. 065901, Nov. 2017.

[13]

Z. X. Hu, Y. J. Xu, M. Korkali, X. Chen, L. Mili, and J. Valinejad, “A Bayesian approach for estimating uncertainty in stochastic economic dispatch considering wind power penetration,” IEEE Transactions on Sustainable Energy, vol. 12, no. 1, pp. 671-681, Jan. 2021.

[14]

W. Dong, Q. Yang, W. Li, and A. Y. Zomaya, “Machine-learning-based real-time economic dispatch in islanding microgrids in a cloud-edge computing environment,” IEEE Internet of Things Journal, vol. 8, no. 17, pp. 13703-13711, Sep. 2021.

[15]

J. Y. Guan, H. Tang, K. Wang, J. G. Yao, and S. C. Yang, “A parallel multi-scenario learning method for near-real-time power dispatch optimization,” Energy, vol. 202, pp. 117708, Jul. 2020.

[16]

L. Lei, Y. Tan, G. Dahlenburg, W. Xiang, and K. Zheng, “Dynamic energy dispatch based on deep reinforcement learning in IoT-driven smart isolated microgrids,” IEEE Internet of Things Journal, vol. 8, no. 10, pp. 7938-7953, May 2021.

[17]

T. Yang, L. Y. Zhao, W. Li, and A. Y. Zomaya, “Dynamic energy dispatch strategy for integrated energy system based on improved deep reinforcement learning,” Energy, vol. 235, pp. 121377, Nov. 2021.

[18]

R. Z. Lu, T. Ding, B. Y. Qin, J. Ma, X. Fang, and Z. Y. Dong, “Multi-stage stochastic programming to joint economic dispatch for energy and reserve with uncertain renewable energy,” IEEE Transactions on Sustainable Energy, vol. 11, no. 3, pp. 1140-1151, Jul. 2020.

[19]

Y. C. Huo, F. Bouffard, and G. Joós, “Decision tree-based optimization for flexibility management for sustainable energy microgrids,” Applied Energy, vol. 290, pp. 116772, May 2021.

[20]

B. Mohandes, M. Wahbah, M. S. El Moursi, and T. H. M. El-Fouly, “Renewable energy management system: optimum design and hourly dispatch,” IEEE Transactions on Sustainable Energy, vol. 12, no. 3, pp. 1615-1628, Jul. 2021.

[21]

M. Kamel, R. C. Dai, Y. W. Wang, F. X. Li, and G. Y. Liu, “Data-driven and model-based hybrid reinforcement learning to reduce stress on power systems branches,” CSEE Journal of Power and Energy Systems, vol. 7, no. 3, pp. 433-442, May 2021.

[22]

X. S. Peng, Y. Z. Chen, K. Cheng, H. Y. Wang, Y. Z. Zhao, B. Wang, J. F. Che, C. Liu, J. Y. Wen, C. Lu, and W. J. Lee, “Wind power prediction for wind farm clusters based on the multifeature similarity matching method,” IEEE Transactions on Industry Applications, vol. 56, no. 5, pp. 4679-4688, Sep./Oct. 2020.

[23]

M. J. Cui, J. Zhang, Q. Wang, V. Krishnan, and B. M. Hodge, “A data-driven methodology for probabilistic wind power ramp forecasting,” IEEE Transactions on Smart Grid, vol. 10, no. 2, pp. 1326-1338, Mar. 2019.

[24]

S. X. Wang, X. Zhao, H. Wang, and M. Li, “Small-world neural network and its performance for wind power forecasting,” CSEE Journal of Power and Energy Systems, vol. 6, no. 2, pp. 362-373, Jun. 2020.

[25]

L. J. Ge, Y. M. Xian, J. Yan, B. Wang, and Z. G. Wang, “A hybrid model for short-term PV output forecasting based on PCA-GWO-GRNN,” Journal of Modern Power Systems and Clean Energy, vol. 8, no. 6, pp. 1268-1275, Nov. 2020.

[26]

G. Q. Li, S. Xie, B. Z. Wang, J. T. Xin, Y. F. Li, and S. N. Du, “Photovoltaic power forecasting with a hybrid deep learning approach,” IEEE Access, vol. 8, pp. 175871-175880, Jan. 2020.

[27]

C. Wang, Y. Wang, Z. T. Ding, T. Zheng, J. Y. Hu, and K. F. Zhang, “A transformer-based method of multienergy load forecasting in integrated energy system,” IEEE Transactions on Smart Grid, vol. 13, no. 4, pp. 2703-2714, Jul. 2022.

[28]
H. Y. Zhou, S. H. Zhang, J. Q. Peng, S. Zhang, J. X. Li, H. Xiong, and W. C. Zhang, “Informer: Beyond efficient transformer for long sequence time-series forecasting,” in Proceedings of the 35th AAAI Conference on Artificial Intelligence, 2021.
[29]
X. H. Zhan, L. Kou, M. T. Xue, J. L. Zhang, and L. Zhou, “Reliable long-term energy load trend prediction model for smart grid using hierarchical decomposition self-attention network,” IEEE Transactions on Reliability, to be published.
[30]
D. Bahdanau, K. Cho, and Y. Bengio, “Neural machine translation by jointly learning to align and translate,” in Proceedings of the 3rd International Conference on Learning Representations, 2014.
[31]

S. J. Taylor and B. Letham, “Forecasting at scale,” The American Statistician, vol. 72, no. 1, pp. 37-45, Sep. 2018.

[32]
A. Agga, A. Abbou, M. Labbadi, and Y. El Houm, “Convolutional neural network (CNN) extended architectures for photovoltaic power production forecasting,” in Proceedings of the 2021 9th International Conference on Smart Grid and Clean Energy Technologies, 2021, pp. 104-108.
[33]

J. W. Li and T. Yu, “Deep reinforcement learning based multi-objective integrated automatic generation control for multiple continuous power disturbances,” IEEE Access, vol. 8, pp. 156839-156850, Aug. 2020.

[34]
J. Schulman, F. Wolski, P. Dhariwal, A. Radford, and O. Klimov, “Proximal policy optimization algorithms,” arXiv: 1707.06347, 2017.
CSEE Journal of Power and Energy Systems
Pages 1502-1513
Cite this article:
Li X, Yang N, Li Z, et al. Confidence Estimation Transformer for Long-term Renewable Energy Forecasting in Reinforcement Learning-based Power Grid Dispatching. CSEE Journal of Power and Energy Systems, 2024, 10(4): 1502-1513. https://doi.org/10.17775/CSEEJPES.2022.02050

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Received: 31 March 2022
Revised: 01 August 2022
Accepted: 14 October 2022
Published: 09 December 2022
© 2022 CSEE.

This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

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