Details

Title

Grid Search of Convolutional Neural Network model in the case of load forecasting

Journal title

Archives of Electrical Engineering

Yearbook

2021

Volume

vol. 70

Issue

No 1

Affiliation

Tran, Thanh Ngoc : Faculty of Electrical Engineering Technology, Industrial University of Ho Chi Minh City, 12 Nguyen Van Bao, Ward 4, Go Vap District, Ho Chi Minh City, Vietnam

Authors

Keywords

load forecasting ; Grid Search ; Convolutional Neural Network

Divisions of PAS

Nauki Techniczne

Coverage

25-30

Publisher

Polish Academy of Sciences

Bibliography

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Date

2021.03.25

Type

Article

Identifier

DOI: 10.24425/aee.2021.136050

Source

Archives of Electrical Engineering; 2021; vol. 70; No 1; 25-30
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