Hybrid learning algorithm with pairwise scatter plotting features for utility-scale energy systems

被引:1
作者
Wang, Siqi [1 ]
Alonso, David Pedraza [2 ]
Long, Chao [3 ]
机构
[1] Chinese Acad Sci, Inst Elect Engn, Beijing, Peoples R China
[2] Cranfield Univ, Sch Water Energy & Environm, Bedford, England
[3] Univ Liverpool, Sch Elect Engn Elect & Comp Sci, Liverpool, England
关键词
Computational efficiency; Hybrid learning algorithm; Neural Network; Pairwise scatter; Utility-scale energy system; BATTERY STORAGE; MANAGEMENT-SYSTEM; POWER-SYSTEM; PV; OPTIMIZATION; OPERATION; LOAD;
D O I
10.1016/j.egyr.2024.11.022
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Dispatch strategies of utility-scale photovoltaic (PV) battery systems have mostly relied on model-based approaches with forecasting generations and demands, due to their intermittent nature. When using data-driven method, it is a challenging process to identify the most adequate models with limited computational power. An advanced hybrid dispatch algorithm is proposed, which combines a Neural Network (NN) with optimization techniques. A sequential NN with dense hidden layers and RMSprop optimiser are integrated to fine-tune the NN parameters. Pairwise scatter plotting method is used to intuitively and efficiently identify the underlying connections of inputs. The model effectively balances accuracy and computational efficiency. Sensitivity analysis identified that electricity tariffs are the most influential feature in system operations, while time and date have minimal impacts. The method allowed the model to identify key features effectively, reducing model complexity and computational costs. Case studies found that, the hybrid algorithm outperforms the traditional methods even without PV generation and demand forecasts. The proposed method only requires a fraction of computational power compared to conventional model-based optimisation method, and around 60% of that using Long ShortTerm Memory (LSTM) method.
引用
收藏
页码:5623 / 5632
页数:10
相关论文
共 34 条
[11]  
Fu R., 2018, 2018 US utility-scale photovoltaics-plusenergy storage system costs benchmark (No. NREL/TP-6A20-71714
[12]  
Fu R., 2018, U.S. Solar Photovoltaic System Cost Benchmark: Q1 2018, DOI [10.2172/1483475, DOI 10.2172/1483475]
[13]   A Supervised Machine Learning Approach to Control Energy Storage Devices [J].
Henri, Gonzague ;
Lu, Ning .
IEEE TRANSACTIONS ON SMART GRID, 2019, 10 (06) :5910-5919
[14]   Mode-based energy storage control approach for residential photovoltaic systems [J].
Henri, Gonzague ;
Lu, Ning ;
Carrejo, Carlos .
IET SMART GRID, 2019, 2 (01) :69-76
[15]   Deep-Reinforcement-Learning-Based Capacity Scheduling for PV-Battery Storage System [J].
Huang, Bin ;
Wang, Jianhui .
IEEE TRANSACTIONS ON SMART GRID, 2021, 12 (03) :2272-2283
[16]   Modeling for Residential Electricity Optimization in Dynamic Pricing Environments [J].
Hubert, Tanguy ;
Grijalva, Santiago .
IEEE TRANSACTIONS ON SMART GRID, 2012, 3 (04) :2224-2231
[17]  
Jager-Waldau A., 2019, PV status report 2019, P7
[18]  
Keerthisinghe C, 2014, AUSTR UNIV POWER ENG
[19]   Load frequency control for renewable energy sources for isolated power system by introducing large scale PV and storage battery [J].
Liu, Lei ;
Senjyu, Tomonobu ;
Kato, Takeyoshi ;
Howlader, Abdul Motin ;
Mandal, Paras ;
Lotfy, Mohammed Elsayed .
ENERGY REPORTS, 2020, 6 :1597-1603
[20]  
Liu L, 2014, MIDWEST SYMP CIRCUIT, P362, DOI 10.1109/MWSCAS.2014.6908427