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STLF-Net: Two-stream deep network for short-term load forecasting in residential buildings
被引:33
作者:
Abdel-Basset, Mohamed
[1
]
Hawash, Hossam
[1
]
Sallam, Karam
[1
]
Askar, S. S.
[2
]
Abouhawwash, Mohamed
[3
,4
]
机构:
[1] Zagazig Univ, Fac Comp & Informat, Zagazig 44519, Ash Shargia Gov, Egypt
[2] King Saud Univ, Coll Sci, Dept Stat & Operat Res, Riyadh 11451, Saudi Arabia
[3] Mansoura Univ, Fac Sci, Dept Math, Mansoura 35516, Egypt
[4] Michigan State Univ, Coll Engn, Dept Computat Math Sci & Engn CMSE, E Lansing, MI 48824 USA
关键词:
Deep learning;
Residential energy consumption;
Load forecasting;
Temporal convolutions;
Gated recurrent units;
NEURAL-NETWORK;
CNN;
DECOMPOSITION;
MANAGEMENT;
REGRESSION;
MODEL;
D O I:
10.1016/j.jksuci.2022.04.016
中图分类号:
TP [自动化技术、计算机技术];
学科分类号:
0812 ;
摘要:
Developing an appropriate model for accurate prediction of energy consumption is very essential for developing an effective energy management system for residential buildings. In view of this, the Short-term Load Forecasting (STLF) of household appliances has been performing an important role in supervising and managing energy in the residential community. In the domain of big data analytics, data-driven load forecasting approaches have realized an amazing performance in the recognition of patterns of residential electric loads and forecasting energy consumption. Nevertheless, current research emphasizes the use of powerful feature-engineering methods, which are ineffective and result in low generalization performance. Further, considering the differences in the consumption behavior of various home appliances, it is unfeasible to discover energy consumption characteristics physically in the power system. Thus, this study addresses the problems of STLF using a novel two-stream deep learning (DL) model called STLF-Net. The first stream is designed with Gated Recurrent Units (GRUs) to learn and capture the long-term temporal representations of the energy utilization data. Simultaneously, in the second stream, the short-term information and positional representations are modeled using a stack of temporal convolutional (TC) modules. The TC module is designated using dilated causal convolutions and residual connection to enable efficient feature extraction while alleviating the gradient vanishing issues. The learned representations from the two streams are fused and subsequently passed to several dense layers to generate the final hour-ahead load forecasts. Experimental assessments on two public energy consumption predictions datasets (IHEPC and AEP) demonstrated the superior performance of the STLFNet over the recent cutting-edge data-driven approaches. (C) 2022 Published by Elsevier B.V. on behalf of King Saud University.
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页码:4296 / 4311
页数:16
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