Time Series Prediction Methodology and Ensemble Model Using Real-World Data

被引:8
作者
Kim, Mintai [1 ]
Lee, Sungju [1 ]
Jeong, Taikyeong [2 ]
机构
[1] Sangmyung Univ, Dept Software, Chunan 330720, South Korea
[2] Hallym Univ, Sch Artificial Intelligence Convergence, Chunchon 24252, South Korea
关键词
time series data analysis; RNN; LSTM; GRU; real-world data; energy consumption pattern; ENERGY MANAGEMENT; INTERNET;
D O I
10.3390/electronics12132811
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Time series data analysis and forecasting have recently received considerable attention, supporting new technology development trends for predicting load fluctuations or uncertainty conditions in many domains. In particular, when the load is small, such as a building, the effect of load fluctuation on the total load is relatively large compared to the power system, except for specific factors, and the amount is very difficult to quantify. Recently, accurate power consumption prediction has become an important issue in the Internet of Things (IoT) environment. In this paper, a traditional time series prediction method was applied and a new model and scientific approach were used for power prediction in IoT and big data environments. To this end, to obtain data used in real life, the power consumption of commercial refrigerators was continuously collected at 15 min intervals, and prediction results were obtained by applying time series prediction methods (e.g., RNN, LSTM, and GRU). At this time, the seasonality and periodicity of electricity use were also analyzed. In this paper, we propose a method to improve the performance of the model by classifying power consumption into three classes: weekday, Saturday, and Sunday. Finally, we propose a method for predicting power consumption using a new type of ensemble model combined with three time series methods. Experimental results confirmed the accuracy of RNN (i.e., 96.1%), LSTM (i.e., 96.9%), and GRU (i.e., 96.4%). In addition, it was confirmed that the ensemble model combining the three time series models showed 98.43% accuracy in predicting power consumption. Through these experiments and approaches, scientific achievements for time series data analysis through real data were accomplished, which provided an opportunity to once again identify the need for continuous real-time power consumption monitoring.
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页数:13
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