A DEEP LEARNING APPROACH TO ELECTRIC LOAD FORECASTING OF MACHINE TOOLS

被引:2
作者
Dietrich, B. [1 ]
Walther, J. [1 ]
Chen, Y. [1 ]
Weigold, M. [1 ]
机构
[1] Tech Univ Darmstadt, Inst Prod Management Technol & Machine Tools PTW, Otto Berndt Str 2, D-64287 Darmstadt, Germany
来源
MM SCIENCE JOURNAL | 2021年 / 2021卷
关键词
Machine learning; Machine tool; Load forecasting; LEVEL;
D O I
10.17973/MMSJ.2021_11_2021146
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
The ongoing climate change and increasingly strict climate goals of the European Union demand decisive action in all sectors. Especially in manufacturing industry, demand response measures have a high potential to balance the industrial electricity consumption with the increasingly volatile electricity supply from renewable sources. This work aims to develop a method to forecast the electrical energy demand of metal cutting machine tools as a necessary input for implementing demand response measures in factories. Building on the results of a previous study, long short-term memory networks (LSTM) and convolutional neural networks (CNN) are examined in their performance for forecasting the electric load of a machine tool for a 100 second time horizon. The results show that especially the combination of CNN and LSTM in a deep learning approach generates accurate and robust time series forecasts with reduced feature preparation effort. To further improve the forecasting accuracy, different network architectures including an attention mechanism for the LSTMs and different hyperparameter combinations are evaluated. The results are validated on real production data obtained in the ETA Research Factory.
引用
收藏
页码:5283 / 5290
页数:8
相关论文
共 39 条
[1]   An Accurate and Fast Converging Short-Term Load Forecasting Model for Industrial Applications in a Smart Grid [J].
Ahmad, Ashfaq ;
Javaid, Nadeem ;
Guizani, Mohsen ;
Alrajeh, Nabil ;
Khan, Zahoor Ali .
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2017, 13 (05) :2587-2596
[2]  
Beier J, 2017, SUSTAIN PROD LIFE, P1, DOI 10.1007/978-3-319-46639-2
[3]  
Bergstra J, 25 ANN C NEUR INF PR
[4]  
Bracale A, 2017, IEEE PES INNOV SMART
[5]  
Brownlee J., 2020, Deep Learning for Time Series Forecasting
[6]  
Brownlee Jason., 2020, Long Short-Term Memory Networks with Python
[7]  
Buhl H.U, 2019, FASSUNG, V2, DOI [10.15495/EPub_UBT_00004455, DOI 10.15495/EPUB_UBT_00004455]
[8]   Day-ahead building-level load forecasts using deep learning vs. traditional time-series techniques [J].
Cai, Mengmeng ;
Pipattanasomporn, Manisa ;
Rahman, Saifur .
APPLIED ENERGY, 2019, 236 :1078-1088
[9]   A deep residual compensation extreme learning machine and applications [J].
Chen, Yinghao ;
Xie, Xiaoliang ;
Zhang, Tianle ;
Bai, Jiaxian ;
Hou, Muzhou .
JOURNAL OF FORECASTING, 2020, 39 (06) :986-999
[10]  
Clements M. P., FORECASTING EC TIME