Energy forecasting in smart grid systems: recent advancements in probabilistic deep learning

被引:11
作者
Kaur, Devinder [1 ]
Islam, Shama Naz [1 ]
Mahmud, Md Apel [2 ]
Haque, Md Enamul [1 ]
Dong, Zhao Yang [3 ]
机构
[1] Deakin Univ, Sch Engn, Waum Ponds, Australia
[2] Notthumbria Univ, Fac Engn & Environm, Newcastle Upon Tyne NE1 8ST, Tyne & Wear, England
[3] Univ New South Wales, Sch Elect Engn & Telecommun, Sydney, NSW, Australia
关键词
REGRESSION NEURAL-NETWORK; TIME-SERIES; PREDICTION INTERVALS; ELECTRICITY DEMAND; WAVELET; MODEL; PRICE; UNCERTAINTY; MARKET; FRAMEWORK;
D O I
10.1049/gtd2.12603
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Energy forecasting plays a vital role in mitigating challenges in data rich smart grid (SG) systems involving various applications such as demand-side management, load shedding, and optimum dispatch. Managing efficient forecasting while ensuring the least possible prediction error is one of the main challenges posed in the grid today, considering the uncertainty in SG data. This paper presents a comprehensive and application-oriented review of state-of-the-art forecasting methods for SG systems along with recent developments in probabilistic deep learning (PDL). Traditional point forecasting methods including statistical, machine learning (ML), and deep learning (DL) are extensively investigated in terms of their applicability to energy forecasting. In addition, the significance of hybrid and data pre-processing techniques to support forecasting performance is also studied. A comparative case study using the Victorian electricity consumption in Australia and American electric power (AEP) datasets is conducted to analyze the performance of deterministic and probabilistic forecasting methods. The analysis demonstrates higher efficacy of DL methods with appropriate hyper-parameter tuning when sample sizes are larger and involve nonlinear patterns. Furthermore, PDL methods are found to achieve at least 60% lower prediction errors in comparison to other benchmark DL methods. However, the execution time increases significantly for PDL methods due to large sample space and a tradeoff between computational performance and forecasting accuracy needs to be maintained.
引用
收藏
页码:4461 / 4479
页数:19
相关论文
共 153 条
  • [1] Short-Term Spatio-Temporal Forecasting of Photovoltaic Power Production
    Agoua, Xwegnon Ghislain
    Girard, Robin
    Kariniotakis, George
    [J]. IEEE TRANSACTIONS ON SUSTAINABLE ENERGY, 2018, 9 (02) : 538 - 546
  • [2] Data-driven probabilistic machine learning in sustainable smart energy/smart energy systems: Key developments, challenges, and future research opportunities in the context of smart grid paradigm
    Ahmad, Tanveer
    Madonski, Rafal
    Zhang, Dongdong
    Huang, Chao
    Mujeeb, Asad
    [J]. RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2022, 160
  • [3] Review on forecasting of photovoltaic power generation based on machine learning and metaheuristic techniques
    Akhter, Muhammad Naveed
    Mekhilef, Saad
    Mokhlis, Hazlie
    Shah, Noraisyah Mohamed
    [J]. IET RENEWABLE POWER GENERATION, 2019, 13 (07) : 1009 - 1023
  • [4] Probabilistic forecasting for energy time series considering uncertainties based on deep learning algorithms
    Al-Gabalawy, Mostafa
    Hosny, Nesreen S.
    Adly, Ahmed R.
    [J]. ELECTRIC POWER SYSTEMS RESEARCH, 2021, 196
  • [5] Genetic Optimal Regression of Relevance Vector Machines for Electricity Pricing Signal Forecasting in Smart Grids
    Alamaniotis, Miltiadis
    Bargiotas, Dimitrios
    Bourbakis, Nikolaos G.
    Tsoukalas, Lefteri H.
    [J]. IEEE TRANSACTIONS ON SMART GRID, 2015, 6 (06) : 2997 - 3005
  • [6] Efficient Energy Optimization Day-Ahead Energy Forecasting in Smart Grid Considering Demand Response and Microgrids
    Albogamy, Fahad R.
    Hafeez, Ghulam
    Khan, Imran
    Khan, Sheraz
    Alkhammash, Hend, I
    Ali, Faheem
    Rukh, Gul
    [J]. SUSTAINABILITY, 2021, 13 (20)
  • [7] Ali M., 2020, SCI PRCD SER, V2, P22, DOI [DOI 10.31580/SPS.V2I1.1232, 10.31580/sps.v2i1.1232]
  • [8] A Review of Deep Learning Methods Applied on Load Forecasting
    Almalaq, Abdulaziz
    Edwards, George
    [J]. 2017 16TH IEEE INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS (ICMLA), 2017, : 511 - 516
  • [9] Amini M. H., 2015, 2015 IEEE Power & Energy Society General Meeting, P1, DOI 10.1109/PESGM.2015.7286050
  • [10] Amirhosseini D.Z., 2018, 2018 9 IEEE INT S PO, P1