Machine learning with parallel neural networks for analyzing and forecasting electricity demand

被引:7
作者
Chen, Yi-Ting [1 ]
Sun, Edward W. [2 ]
Lin, Yi-Bing [1 ]
机构
[1] Natl Chiao Tung Univ, Coll Comp Sci, Hsinchu, Taiwan
[2] KEDGE Business Sch, 680 Cours Liberat, F-33405 Talence, France
关键词
Big data; Energy; Forecasting; Machine learning; Neural networks (PNNs); ALGORITHM; ENGINE; MODEL;
D O I
10.1007/s10614-019-09960-5
中图分类号
F [经济];
学科分类号
02 ;
摘要
Traditional methods applied in electricity demand forecasting have been challenged by the course of dimensionality arisen with a growing number of distributed or decentralized energy systems are employing. Without manually operated data preprocessing, classic models are not well-calibrated for their robustness when dealing with the disruptive elements (e.g., demand changes in holidays and extreme weather). Based on the application of big data driven analytics, we propose a novel machine learning method originating from the parallel neural networks for robust monitoring and forecasting power demand to enhance supervisory control and data acquisition for new industrial tendency such as Industry 4.0 and Energy IoT. Through our approach, we generalize the implementation of machine learning by using classic feed-forward neural networks, for parallelization in order to let the proposed method achieve superior performance when dealing with high dimensionality and disruptiveness. With the high-frequency data of consumption in Australia from January 2009 to December 2015, the overall empirical results confirm that our proposed method performs significantly better for dynamic monitoring and forecasting of power demand comparing with the classic methods.
引用
收藏
页码:569 / 597
页数:29
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共 31 条
  • [1] Optimal offering and bidding strategies of renewable energy based large consumer using a novel hybrid robust-stochastic approach
    Abedinia, Oveis
    Zareinejad, Mohsen
    Doranehgard, Mohammad Hossein
    Fathi, Gholamreza
    Ghadimi, Noradin
    [J]. JOURNAL OF CLEANER PRODUCTION, 2019, 215 : 878 - 889
  • [2] Rule-based autoregressive moving average models for forecasting load on special days: A case study for France
    Arora, Siddharth
    Taylor, James W.
    [J]. EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 2018, 266 (01) : 259 - 268
  • [3] Using neural network rule extraction and decision tables for credit-risk evaluation
    Baesens, B
    Setiono, R
    Mues, C
    Vanthienen, J
    [J]. MANAGEMENT SCIENCE, 2003, 49 (03) : 312 - 329
  • [4] Invariant Probabilistic Sensitivity Analysis
    Baucells, Manel
    Borgonovo, Emanuele
    [J]. MANAGEMENT SCIENCE, 2013, 59 (11) : 2536 - 2549
  • [5] Solving Dynamic Programming Problems on a Computational Grid
    Cai, Yongyang
    Judd, Kenneth L.
    Thain, Greg
    Wright, Stephen J.
    [J]. COMPUTATIONAL ECONOMICS, 2015, 45 (02) : 261 - 284
  • [6] Coherent quality management for big data systems: a dynamic approach for stochastic time consistency
    Chen, Yi-Ting
    Sun, Edward W.
    Lin, Yi-Bing
    [J]. ANNALS OF OPERATIONS RESEARCH, 2019, 277 (01) : 3 - 32
  • [7] Risk Assessment with Wavelet Feature Engineering for High-Frequency Portfolio Trading
    Chen, Yi-Ting
    Sun, Edward W.
    Yu, Min-Teh
    [J]. COMPUTATIONAL ECONOMICS, 2018, 52 (02) : 653 - 684
  • [8] Short-Term Load Forecasting: Similar Day-Based Wavelet Neural Networks
    Chen, Ying
    Luh, Peter B.
    Guan, Che
    Zhao, Yige
    Michel, Laurent D.
    Coolbeth, Matthew A.
    Friedland, Peter B.
    Rourke, Stephen J.
    [J]. IEEE TRANSACTIONS ON POWER SYSTEMS, 2010, 25 (01) : 322 - 330
  • [9] Using Parallelization to Solve a Macroeconomic Model: A Parallel Parameterized Expectations Algorithm
    Creel, Michael
    [J]. COMPUTATIONAL ECONOMICS, 2008, 32 (04) : 343 - 352
  • [10] A Note on Julia and MPI, with Code Examples
    Creel, Michael
    [J]. COMPUTATIONAL ECONOMICS, 2016, 48 (03) : 535 - 546