Deep neural network with empirical mode decomposition and Bayesian optimisation for residential load forecasting

被引:25
作者
Lotfipoor, Ashkan [1 ]
Patidar, Sandhya [1 ]
Jenkins, David P. [1 ]
机构
[1] Heriot Watt Univ, Inst Infrastruct & Environm, Edinburgh EH14 4AS, Scotland
关键词
Energy; Electricity consumption; Deep Learning; Forecasting; Bayesian optimisation; Decomposition; SHORT-TERM-MEMORY; ENERGY-CONSUMPTION; DEMAND; BIAS; PREDICTION; MACHINE; SYSTEM;
D O I
10.1016/j.eswa.2023.121355
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In the context of a resilient energy system, accurate residential load forecasting has become a non-trivial requirement for ensuring effective management and planning strategy/policy development. Due to the highly stochastic nature of energy load profiles, it is difficult to predict accurately, and usually, predictions are error-prone. This paper explores the potential of Empirical Mode Decomposition (EMD) in simplifying the dynamics of complex demand profiles. The simplified components are then embedded within a deep learning model, specifically Convolution Neural Network (CNN) and Long Short-Term Memory (LSTM), to forecast short-term residential loads. The novel modelling framework integrates Bayesian optimisation strategy, feature decomposition technique, feature engineering phase, and percentile-based bias correction algorithm to enhance model accuracy. The model is developed using a case-study residential dwelling located in Fintry (Scotland), and the model performance is assessed over four forecast horizons. The overall efficiency of framework is also investigated for three algorithms: random forest, gradient boosting decision trees (GBDT), and an LSTM network. While EMD and feature engineering were found to greatly improve prediction accuracy, the number of IMFs used was shown to significantly impact the model's performance and computational complexity. The model was tested on two further case studies from Fintry.
引用
收藏
页数:15
相关论文
共 87 条
  • [1] EMD-Based Predictive Deep Belief Network for Time Series Prediction: An Application to Drought Forecasting
    Agana, Norbert A.
    Homaifar, Abdollah
    [J]. HYDROLOGY, 2018, 5 (01)
  • [2] New double decomposition deep learning methods for river water level forecasting
    Ahmed, A. A. Masrur
    Deo, Ravinesh C.
    Ghahramani, Afshin
    Feng, Qi
    Raj, Nawin
    Yin, Zhenliang
    Yang, Linshan
    [J]. SCIENCE OF THE TOTAL ENVIRONMENT, 2022, 831
  • [3] Al-Hamadi HM, 2005, ELECTR POW SYST RES, V74, P353, DOI 10.1016/j.epsr.2004.10.015
  • [4] A Brief Review of Acoustic and Vibration Signal-Based Fault Detection for Belt Conveyor Idlers Using Machine Learning Models
    Alharbi, Fahad
    Luo, Suhuai
    Zhang, Hongyu
    Shaukat, Kamran
    Yang, Guang
    Wheeler, Craig A.
    Chen, Zhiyong
    [J]. SENSORS, 2023, 23 (04)
  • [5] Amarasinghe K, 2017, PROC IEEE INT SYMP, P1483, DOI 10.1109/ISIE.2017.8001465
  • [6] Using multi-output feedforward neural network with empirical mode decomposition based signal filtering for electricity demand forecasting
    An, Ning
    Zhao, Weigang
    Wang, Jianzhou
    Shang, Duo
    Zhao, Erdong
    [J]. ENERGY, 2013, 49 : 279 - 288
  • [7] Ayub N., 2019, P INT C ADV INFORM N, P1
  • [8] Estimation of tourism-induced electricity consumption: The case study of Balearics Islands, Spain
    Bakhat, Mohcine
    Rossello, Jaume
    [J]. ENERGY ECONOMICS, 2011, 33 (03) : 437 - 444
  • [9] CORRECTIONS FOR BIAS IN REGRESSION ESTIMATES AFTER LOGARITHMIC TRANSFORMATION
    BEAUCHAMP, JJ
    OLSON, JS
    [J]. ECOLOGY, 1973, 54 (06) : 1403 - 1407
  • [10] Multiple-output modeling for multi-step-ahead time series forecasting
    Ben Taieb, Souhaib
    Sorjamaa, Antti
    Bontempi, Gianluca
    [J]. NEUROCOMPUTING, 2010, 73 (10-12) : 1950 - 1957