Investigating the impact of data normalization methods on predicting electricity consumption in a building using different artificial neural network models

被引:0
|
作者
机构
[1] Kim, Yang-Seon
[2] Kim, Moon Keun
[3] Fu, Nuodi
[4] Liu, Jiying
[5] 3,Wang, Junqi
[6] Srebric, Jelena
关键词
Mean square error - Multilayer neural networks - Neural network models;
D O I
10.1016/j.scs.2024.105570
中图分类号
学科分类号
摘要
The study investigates the impact of data normalization on the prediction of electricity consumption in buildings using four multilayer Artificial Neural Networks (ANN) algorithms: Long Short-Term Memory Networks (LSTM), Levenberg–Marquardt Back-propagation (LMBP), Recurrent Neural Networks (RNN), and General Regression Neural Network (GRNN). Four data normalization approaches, Min-Max Scaling, Mean, Z-score, and Gaussian function were assessed on experimental datasets. The LSTM algorithm, when combined with Min-Max normalization, showed the most favorable predictive capabilities, with a low Coefficient of Variation of the Root Mean Square Error (CVRMSE) of 10.3 and Normalized Mean Bias Error (NMBE) of 0.6. The remaining three normalization approaches showed satisfactory concordance with empirical data, but with slight disparities in precision. The LMBP model, when using Z-score normalization, had favorable performance in forecasting electricity consumption, but the discrepancies across the models were not significant. The Recurrent Neural Network (RNN) model, when used with Gaussian normalization, exhibited the most favorable performance, with the lowest Coefficient of Variation of Root Mean Square Error (CVRMSE) at 11.8 and Normalized Mean Biased Error (NMBE) at 0.6. The Generalized Regression Neural Network (GRNN) model, trained on unprocessed data, exhibited superior performance, with the lowest Coefficient of Variation of Root Mean Square Error (CVRMSE) at 19.2 and NMBE at 1.0. In conclusion, the study highlights the significant influence of data normalization on the predictive capabilities of various ANN models, suggesting that careful use of data normalization techniques can significantly improve the accuracy of electricity consumption forecasting in buildings. © 2024
引用
收藏
相关论文
共 50 条
  • [21] An Artificial Neural Network for Predicting Groundnut Yield Using Climatic Data
    Sajindra, Hirushan
    Abekoon, Thilina
    Wimalasiri, Eranga M.
    Mehta, Darshan
    Rathnayake, Upaka
    AGRIENGINEERING, 2023, 5 (04): : 1713 - 1736
  • [22] An artificial neural network approach for predicting hypertension using NHANES data
    Fernando López-Martínez
    Edward Rolando Núñez-Valdez
    Rubén González Crespo
    Vicente García-Díaz
    Scientific Reports, 10
  • [23] Predictive models for building's energy consumption: an Artificial Neural Network (ANN) approach.
    Ferlito, S.
    Atrigna, Mauro
    Graditi, G.
    De Vito, S.
    Salvato, M.
    Buonanno, A.
    Di Francia, G.
    2015 18TH AISEM ANNUAL CONFERENCE, 2015,
  • [24] Explaining household electricity consumption using quantile regression, decision tree and artificial neural network
    Nsangou, Jean Calvin
    Kenfack, Joseph
    Nzotcha, Urbain
    Ekam, Paul Salomon Ngohe
    Voufo, Joseph
    Tamo, Thomas T.
    ENERGY, 2022, 250
  • [25] Building's electricity consumption prediction using optimized artificial neural networks and principal component analysis
    Li, Kangji
    Hu, Chenglei
    Liu, Guohai
    Xue, Wenping
    ENERGY AND BUILDINGS, 2015, 108 : 106 - 113
  • [26] THE INFLUENCE ON CLUSTERING RESULTS OF ELECTRICITY LOAD CURVES USING DIFFERENT CLUSTERING ALGORITHMS WITH DIFFERENT DATA NORMALIZATION METHODS
    Zhang, Tiefeng
    Gu, Mingdi
    Lv, Fei
    Gu, Rong
    DECISION MAKING AND SOFT COMPUTING, 2014, 9 : 394 - 399
  • [27] Modeling of Building Energy Consumption by Integrating Regression Analysis and Artificial Neural Network with Data Classification
    Ridwana, Iffat
    Nassif, Nabil
    Choi, Wonchang
    BUILDINGS, 2020, 10 (11) : 1 - 14
  • [28] Predicting city-scale daily electricity consumption using data-driven models
    Wang, Zhe
    Hong, Tianzhen
    Li, Han
    Piette, Mary Ann
    ADVANCES IN APPLIED ENERGY, 2021, 2
  • [29] Simulation of electricity consumption data using multiple artificial intelligence models and cross validation techniques
    Hosny, Mariam
    Abu Waraga, Omnia
    Abu Talib, Manar
    Abdallah, Mohamed
    DATA IN BRIEF, 2023, 51
  • [30] FORECASTING A MONTHLY ELECTRICITY CONSUMPTION USING AUTO-REGRESSIVE INTEGRATED MOVING AVERAGE (ARIMA) AND ARTIFICIAL NEURAL NETWORK (ANN) MODELS
    Cuarteros, Noel G., Jr.
    ADVANCES AND APPLICATIONS IN STATISTICS, 2022, 79 : 55 - 66