Probabilistic Individual Load Forecasting Using Pinball Loss Guided LSTM Y Wang, D Gan, M Sun, N Zhang, C Kang, Z Lu Applied Energy, 2018 | 370 | 2018 |
Deep Reinforcement Learning for Strategic Bidding in Electricity Markets Y Ye, D Qiu, M Sun*, D Papadaskalopoulos, G Strbac IEEE Transactions on Smart Grid 11 (2), 1343-1355, 2020 | 227 | 2020 |
Using Bayesian Deep Learning to Capture Uncertainty for Residential Net Load Forecasting M Sun, T Zhang, Y Wang, G Strbac, C Kang IEEE Transactions on Power Systems 35 (1), 188 - 201, 2020 | 210 | 2020 |
An Ensemble Forecasting Method for the Aggregated Load with Sub Profiles Y Wang, Q Chen, M Sun, C Kang, Q Xia IEEE Transactions on Smart Grid, 2018 | 207 | 2018 |
Fusion of the 5G communication and the ubiquitous electric internet of things: application analysis and research prospects Y Wang, QX Chen, N Zhang, C Feng, F Teng, M Sun, CQ Kang Power System Technology 43 (5), 1575-1585, 2019 | 164* | 2019 |
A deep learning-based remaining useful life prediction approach for bearings C Cheng, G Ma, Y Zhang, M Sun, F Teng, H Ding, Y Yuan IEEE/ASME transactions on mechatronics 25 (3), 1243-1254, 2020 | 160 | 2020 |
A Deep Learning-Based Feature Extraction Framework for System Security Assessment M Sun, I Konstantelos, G Strbac IEEE Transactions on Smart Grid 10 (5), 5007-5020, 2019 | 137 | 2019 |
Electricity Consumer Characteristics Identification: A Federated Learning Approach Y Wang, IL Bennani, X Liu, M Sun, Y Zhou IEEE Transactions on Smart Grid, 2021 | 132 | 2021 |
C-vine copula mixture model for clustering of residential electrical load pattern data M Sun, I Konstantelos, G Strbac IEEE Transactions on Power Systems 32 (3), 2382-2393, 2017 | 125 | 2017 |
Clustering-Based Residential Baseline Estimation: A Probabilistic Perspective M Sun, Y Wang, F Teng, Y Ye, G Strbac, C Kang IEEE Transactions on Smart Grid, 2019 | 91 | 2019 |
A novel data-driven scenario generation framework for transmission expansion planning with high renewable energy penetration M Sun, J Cremer, G Strbac Applied energy 228, 546-555, 2018 | 79 | 2018 |
An objective-based scenario selection method for transmission network expansion planning with multivariate stochasticity in load and renewable energy sources M Sun, F Teng, I Konstantelos, G Strbac Energy 145, 871-885, 2018 | 69 | 2018 |
Probabilistic peak load estimation in smart cities using smart meter data M Sun, Y Wang, G Strbac, C Kang IEEE Transactions on Industrial electronics 66 (2), 1608-1618, 2018 | 68 | 2018 |
Data-Driven Representative Day Selection for Investment Decisions: A Cost-Oriented Approach M Sun, F Teng, X Zhang, G Strbac, D Pudjianto IEEE Transactions on Power Systems, 2019 | 67 | 2019 |
Robust and automatic data cleansing method for short-term load forecasting of distribution feeders N Huyghues-Beaufond, S Tindemans, P Falugi, M Sun, G Strbac Applied energy 261, 114405, 2020 | 43 | 2020 |
Using Vine Copulas to Generate Representative System States for Machine Learning I Konstantelos, M Sun*, S Tindemans, S Issad, P PANCIATICI, G Strbac IEEE Transactions on Power Systems, 2018 | 42 | 2018 |
Deep Reinforcement Learning-based Demand Response for Smart Facilities Energy Management R Lu, R Bai, Z Luo, J Jiang, M Sun, HT Zhang IEEE Transactions on Industrial Electronics 69 (8), 8554-8565, 2022 | 41 | 2022 |
Federated Clustering for Electricity Consumption Pattern Extraction Y Wang, M Jia, N Gao, LV Krannichfeldt, M Sun*, H Gabriela IEEE Transactions on Smart Grid, 2022 | 41 | 2022 |
Recurrent Deep Multiagent Q-Learning for Autonomous Brokers in Smart Grid Y Yang, J Hao, M Sun, Z Wang, G Strbac, C Fan IJCAI-ECAI-18, 2018 | 41 | 2018 |
Federated reinforcement learning for smart building joint peer-to-peer energy and carbon allowance trading D Qiu, J Xue, T Zhang, J Wang, M Sun* Applied Energy, 2022 | 39 | 2022 |