Integrated Energy System Load Forecasting with Spatially Transferable Loads
Abstract
:1. Introduction
2. Analysis of Load Characteristics in Interconnected Park-Level Integrated Energy Systems
2.1. Temporal Characteristics Analysis
2.2. Spatial Characteristics Analysis
2.3. Correlation Analysis of Feature Parameters
3. Load Prediction Method Based on MTL-CNN-LSTM
3.1. Basic Principles
3.2. Selection of Optimal Feature Set
3.3. Evaluation Metrics
4. Case Study Analysis
4.1. Case Data
4.2. Parameter Settings
- The CNN kernel size is 4 × 4;
- The pooling size is 2 × 2;
- The number of LSTM neurons is 96;
- The number of neurons in the fully connected (FC) [Appendix A] layer is 24;
- The number of iterations is 100.
4.3. Comparative Analysis of Prediction Results Using Different Forecasting Method
4.4. Comparative Analysis between Single-Task Learning and Multi-Task Learning
4.5. Analysis of the Impact of Spatial Transfer Characteristics on Prediction Performance
4.6. Analysis of the Impact of the Proportion of Spatially Transferable Loads on Prediction Results
5. Conclusions
- Employing MTL for joint modeling of parks characterizes the energy consumption coupling among different parks, enhancing the prediction accuracy of the overall energy load in interconnected parks;
- Integrating features of spatial transfer characteristics into the feature set of the prediction model enhances the accuracy of predicting load “peaks” and alleviates the “delay” issue associated with peak tracking;
- As the proportion of spatially transferable loads increases, our proposed model and approach yield improved prediction results.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Abbreviation | Full Form | Abbreviations | Full Form |
MTL | multi-task learning | RNN | recurrent neural network |
CNN | convolutional neural network | GRU | gated recurrent unit |
LSTM | data | IDCA | Internet Data Center A |
IDCs | Internet data centers | IDCB | Internet Data Center B |
SVR | support vector regression | FC | fully connected |
TCN | temporal convolutional network | STL | single-task learning |
References
- Lyu, J.; Zhang, S.; Cheng, H.; Han, F.; Yuan, K.; Song, Y.; Fang, S. Review on district-level integrated energy system planning considering interconnection and interaction. Proc. CSEE 2021, 41, 4001–4021. [Google Scholar]
- Lyu, J.; Zhang, S.; Cheng, H.; Han, F.; Yuan, K.; Song, Y.; Fang, S. Review and prospect on coordinated planning of energy flow and workload flow in the integrated energy system containing data centers. Proc. CSEE 2021, 41, 5500–5521. [Google Scholar]
- Wang, J.; Gu, W.; Lu, S.; Zhang, C.; Wang, Z.; Tang, X. Coordinated planning of multi-district integrated energy system combining heating network model. Autom. Electr. Power Syst. 2016, 40, 17–24. [Google Scholar]
- Teng, Y.; Liu, S.; Hui, Q.; Chen, Z. Integrated demand side response model considering collaborative optimization of regional multi-energy system clusters. Proc. CSEE 2020, 40, 7282–7296. [Google Scholar]
- Wei, Z.; Wei, P.; Guo, Y.; Huang, Y.; Lu, B. Distributed dispatch method for multi-region electricity-gas integrated energy systems considering cross-region energy flow interaction plan. Electr. Power Constr. 2020, 41, 66–79. [Google Scholar]
- Sun, Q.; Wang, X.; Zhang, Y.; Zhang, F.; Zhang, P.; Gao, W. Multiple load prediction of integrated energy system based on long short-term memory and multi-task learning. Autom. Electr. Power Syst. 2021, 45, 63–70. [Google Scholar]
- Lyu, Z.; Gu, J.; Meng, L. Short-term load forecasting for integrated energy system based on coupling features and multi-task learning. Autom. Electr. Power Syst. 2022, 46, 58–66. [Google Scholar]
- Chen, J.; Hu, Z.; Chen, W.; Gao, M.; Du, Y.; Lin, M. Load prediction of integrated energy system based on combination of quadratic modal decomposition and deep bidirectional long short-term memory and multiple linear regression. Autom. Electr. Power Syst. 2021, 45, 85–94. [Google Scholar]
- Lu, B.; Huo, Z.; Yu, M. Multi Load Ultra Short-term Forecasting of Integrated Energy System Based on LSTNet-Skip. Proc. CSEE 2023, 43, 2273–2283. [Google Scholar]
- Li, R.; Sun, F.; Ding, X.; Han, Y.; Liu, Y.; Yan, J. Ultra short-term load forecasting method for user-level integrated energy system considering spatio-temporal coupling of multi-energy. Power Syst. Technol. 2020, 44, 4121–4134. [Google Scholar]
- Chen, B.; Wang, Y. Short-Term Electric Load Forecasting of Integrated Energy System Considering Nonlinear Synergy Between Different Loads. IEEE Access 2021, 9, 43562–43573. [Google Scholar] [CrossRef]
- Yu, Q.; Li, Y. Correlated load forecasting in active distribution networks using spatial-temporal synchronous graph convolutional networks. IET Energy Syst. Integr. 2021, 3, 355–366. [Google Scholar] [CrossRef]
- Dong, L.; Chen, Z.; Han, F.; Wang, X.; Pu, T. Short-term Load Forecasting of Residential User Groups Based on Graph Convolutional Neural Network and K-means Clustering. Power Syst. Technol. 2023, 47, 4291–4301. [Google Scholar]
- Ding, Z.; Cao, Y.; Zhang, S.; Wang, P.; Liu, J.; Cheng, M.; Mao, H. Coordinated operation for data center and power system in the context of energy internet: Energy demand management model of data center. Proc. CSEE 2022, 42, 3161–3177. [Google Scholar]
- Chen, M.; Gao, C.; Shahidehpour, M.; Li, Z.; Chen, S.; Li, D. Internet data center load modeling for demand response considering the coupling of multiple regulation methods. IEEE Trans. Smart Grid 2021, 12, 2060–2076. [Google Scholar] [CrossRef]
- Chen, M.; Gao, C.; Guo, Q.; Li, Z. Load modeling and coordinated optimization of spatiotemporally-coupled internet data center: Motivation and architecture. Proc. CSEE 2022, 42, 6945–6958. [Google Scholar]
- Wang, D.; Zhang, S.; Cheng, H.; Han, F.; Song, Y. Coordinated Planning of Multi-regional Energy Stations Considering Spatio-Temporal Adjustment of Energy Consumption in Data Centers. Autom. Electr. Power Syst. 2023, 47, 77–85. [Google Scholar]
- Cao, Y.; Ding, Z.; Wang, P.; Zhang, S.; Liu, J.; Liu, W.; Cheng, M. Coordinated operation for data center and power system in the context of energy internet: Opportunities and challenges. Proc. CSEE 2022, 42, 3512–3527. [Google Scholar]
- Wang, D.; Zhang, S.; Cheng, H.; Han, F.; Song, Y.; Yuan, K. Calculation of Maximum Allowable Access Capacity of Distributed Photovoltaic in Electricity-gas Integrated Energy System Considering Spatio-temporal Adjustability of Energy Consumption by Data Centers. Proc. CSU-EPSA 2023, 35, 121–131. [Google Scholar]
- Gao, C.; Wu, G.; Chen, S. A model aimed at reducing power net loss considering frequency scaling of servers in geo-distributed data centers. Proc. CSEE 2019, 39, 1673–1681. [Google Scholar]
- Wang, S.; Ma, J. A Novel Ensemble Model for Load Forecasting: Integrating Random Forest, XGBoost, and Seasonal Naive Methods. In Proceedings of the 2023 2nd Asian Conference on Frontiers of Power and Energy (ACFPE), Chengdu, China, 20–22 October 2023; pp. 114–118. [Google Scholar]
- Magalhães, B.; Bento, P.; Pombo, J.; Calado, M.D.R.; Mariano, S. Short-Term Load Forecasting Based on Optimized Random Forest and Optimal Feature Selection. Energies 2024, 17, 1926. [Google Scholar] [CrossRef]
- Tan, Z.; Zhang, J.; He, Y.; Zhang, Y.; Xiong, G.; Liu, Y. Short-Term Load Forecasting Based on Integration of SVR and Stacking. IEEE Access 2020, 8, 227719–227728. [Google Scholar] [CrossRef]
- Li, M.W.; Geng, J.; Hong, W.C.; Zhang, Y. Hybridizing Chaotic and Quantum Mechanisms and Fruit Fly Optimization Algorithm with Least Squares Support Vector Regression Model in Electric Load Forecasting. Energies 2024, 17, 2778. [Google Scholar] [CrossRef]
- Bae, D.J.; Kwon, B.S.; Song, K. XGBoost-Based Day-Ahead Load Forecasting Algorithm Considering Behind-the-Meter Solar PV Generation. Energies 2022, 15, 128. [Google Scholar] [CrossRef]
- Song, J.; Jin, L.; Xie, Y.; Wei, C. Optimized XGBoost based sparrow search algorithm for short-term load forecasting. In Proceedings of the 2021 IEEE International Conference on Computer Science, Artificial Intelligence and Electronic Engineering (CSAIEE), Beijing, China, 20–22 August 2021; pp. 213–217. [Google Scholar]
- Ge, Q.; Guo, C.; Jiang, H.Y.; Lu, Z.Y.; Yao, G.; Zhang, J.M.; Hua, Q. Industrial Power Load Forecasting Method Based on Reinforcement Learning and PSO-LSSVM. IEEE Trans. Cybern. 2022, 52, 1112–1124. [Google Scholar] [CrossRef]
- Shohan, M.J.A.; Faruque, M.O.; Foo, S.Y. Forecasting of Electric Load Using a Hybrid LSTM-Neural Prophet Model. Energies 2022, 15, 2158. [Google Scholar] [CrossRef]
- Ajit, A.M.; Chirag, N.M.; Madhu, G.M.; Chintamani, V. Designing a Robust and Accurate Model for Consumer-Centric Short-Term Load Forecasting in Microgrid Environment. IEEE Syst. J. 2022, 16, 2448–2459. [Google Scholar]
- You, Y.W.; Wang, Z.H.; Liu, Z.H.; Guo, C.M.; Yang, B. Load Prediction of Regional Heat Exchange Station Based on Fuzzy Clustering Based on Fourier Distance and Convolutional Neural Network–Bidirectional Long Short-Term Memory Network. Energies 2024, 17, 4190. [Google Scholar] [CrossRef]
- Liu, M.X.; Mo, C.G.; Wang, H.L. Short-term Power Load Forecasting Model Based on CNN-GRU and Dual Attention Mechanism Hybrid Neural Network Model. In Proceedings of the 2023 8th Asia Conference on Power and Electrical Engineering (ACPEE), Tianjin, China, 14–16 April 2023; pp. 1769–1773. [Google Scholar]
- Ahmed, Z.; Jamil, M.; Khan, A.A. Short-Term Campus Load Forecasting Using CNN-Based Encoder–Decoder Network with Attention. Energies 2024, 17, 4457. [Google Scholar] [CrossRef]
- Cen, S.F.; Chang, G.L. Multi-Task Learning of the PatchTCN-TST Model for Short-Term Multi-Load Energy Forecasting Considering Indoor Environments in a Smart Building. IEEE Access 2024, 12, 19553–19568. [Google Scholar] [CrossRef]
- Xiang, X.J.; Yuan, T.S.; Cao, G.K.; Zheng, Y.P. Short-Term Electric Load Forecasting Based on Signal Decomposition and Improved TCN Algorithm. Energies 2024, 17, 1815. [Google Scholar] [CrossRef]
- Ehsan, R.; Ali, A.; David, S.; Gerard, L. Privacy-Preserved Framework for Short-Term Probabilistic Net Energy Forecasting. IEEE Trans. Ind. Inform. 2023, 6, 7613–7623. [Google Scholar]
- Mobarak, A.; Amani, Y.O.; Majdi, O. Electrical Load Forecasting Using LSTM, GRU, and RNN Algorithms. Energies 2023, 15, 2283. [Google Scholar]
- Wang, X.T.; Wu, B.B.; Wu, D.; Wang, W.; Ma, X.T. Enhanced ES-adRNNe Load Forecasting With Contextual Augmentation on Similar Load Days. IEEE Access 2023, 11, 93727–93738. [Google Scholar] [CrossRef]
- Fatma, M.A.M.; Yomma, S.; Rania, A.A.S. Forecasting of Solar Power Using GRU–Temporal Fusion Transformer Model and DILATE Loss Function. Energies 2023, 16, 8105. [Google Scholar] [CrossRef]
- Zhu, J.; Dong, H.; Li, S.; Chen, Z.; Luo, T. Review of data-driven load forecasting for integrated energy system. Proc. CSEE 2021, 41, 7905–7924. [Google Scholar]
- Zhang, Y.; Liu, J.; Zuo, X. Survey of multi- task learning. Chin. J. Comput. 2020, 43, 1340–1378. [Google Scholar] [CrossRef]
- Cluster-trace-gpu-v2020. Available online: https://github.com/alibaba/clusterdata/tree/master/cluster-trace-gpu-v2020 (accessed on 1 January 2022).
Prediction Errors | |||||||
---|---|---|---|---|---|---|---|
STL | 1.479 | 6.033 | 1.950 | 2.578 | 2.294 | 4.255 | 3.275 |
MTL | 1.177 | 5.396 | 1.593 | 2.187 | 1.674 | 3.039 | 2.357 |
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Ding, Z.; Qing, H.; Zhou, K.; Huang, J.; Liang, C.; Liang, L.; Qin, N.; Li, L. Integrated Energy System Load Forecasting with Spatially Transferable Loads. Energies 2024, 17, 4843. https://doi.org/10.3390/en17194843
Ding Z, Qing H, Zhou K, Huang J, Liang C, Liang L, Qin N, Li L. Integrated Energy System Load Forecasting with Spatially Transferable Loads. Energies. 2024; 17(19):4843. https://doi.org/10.3390/en17194843
Chicago/Turabian StyleDing, Zhenwei, Hepeng Qing, Kaifeng Zhou, Jinle Huang, Chengtian Liang, Le Liang, Ningsheng Qin, and Ling Li. 2024. "Integrated Energy System Load Forecasting with Spatially Transferable Loads" Energies 17, no. 19: 4843. https://doi.org/10.3390/en17194843
APA StyleDing, Z., Qing, H., Zhou, K., Huang, J., Liang, C., Liang, L., Qin, N., & Li, L. (2024). Integrated Energy System Load Forecasting with Spatially Transferable Loads. Energies, 17(19), 4843. https://doi.org/10.3390/en17194843