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

被引:5
|
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.
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Synthesis and quality assessment of combined time-series and static medical data using a real-world time-series generative adversarial network
    Kim, Jaewon
    Choo, Hyunwoo
    Shin, Soo-Yong
    Song, Kyoung Doo
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [22] Credit Default Prediction on Time-Series Behavioral Data Using Ensemble Models
    Guo, Kangshuai
    Luo, Shichao
    Liang, Ming
    Zhang, Zhongjian
    Yang, Huabin
    Wang, Yan
    Zhou, Yingjie
    2023 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, IJCNN, 2023,
  • [23] ACCURACY OF BGL PREDICTION FROM A PERSONALIZABLE PHYSIOLOGICAL MODEL OF BLOOD GLUCOSE DYNAMICS USING REAL-WORLD DATA
    Rodrigues, E.
    Saddi-Rosa, P.
    Costa, M.
    Neto, C.
    Teles, M.
    Matsumoto, Y.
    Foss-Freitas, M.
    DIABETES TECHNOLOGY & THERAPEUTICS, 2022, 24 : A55 - A56
  • [24] Ensemble prediction of RRC session duration in real-world NR/ LTE networks
    Polaganga, Roopesh Kumar
    Liang, Qilian
    MACHINE LEARNING WITH APPLICATIONS, 2024, 17
  • [25] Drug repurposing using real-world data
    Tan, George S. Q.
    Sloan, Erica K.
    Lambert, Pete
    Kirkpatrick, Carl M. J.
    Ilomaki, Jenni
    DRUG DISCOVERY TODAY, 2023, 28 (01) : 10 - 13
  • [26] A Novel Methodology for Assessing Response to Lymphoma Treatment using Real World Data-The Real-World Lugano (rwLugano) Study
    Swain, Richard Scott
    Savill, Kristin
    Klink, Andrew
    Asgarisabet, Parisa
    Kalesan, Bindu
    Balanean, Alexandrina
    Hays, Harlen
    Kaufman, Jill
    McAllister, Lindsay
    Omary, Courtney
    Yu, Hsing-Ting
    Laney, Jalyna
    Richardson, Nicholas
    Lerro, Catherine C.
    Rizvi, Fatima
    Vallejo, Jonathon
    Wang, Kun
    Theoret, Marc
    Rivera, Donna R.
    Feinberg, Bruce
    PHARMACOEPIDEMIOLOGY AND DRUG SAFETY, 2024, 33 : 337 - 338
  • [27] REAL-WORLD DATA
    STROCK, JM
    POLICY REVIEW, 1993, 63 : 96 - 96
  • [28] Using real-world data for coverage and payment decisions: The ISPOR real-world data task force report
    Garrison, Louis P., Jr.
    Neumann, Peter J.
    Erickson, Pennifer
    Marshall, Deborah
    Mullins, Daniel
    VALUE IN HEALTH, 2007, 10 (05) : 326 - 335
  • [29] The Hierarchical Ensemble Model for Network Intrusion Detection in the Real-world Dataset
    Chen, Lei
    Weng, Shao-En
    Peng, Chu-Jun
    Li, Yin-Chi
    Shuai, Hong-Han
    Cheng, Wen-Huang
    2022 IEEE INTERNATIONAL SYMPOSIUM ON CIRCUITS AND SYSTEMS (ISCAS 22), 2022, : 2983 - 2987
  • [30] Time for real-world health data to become routine
    Abernethy, Amy
    NATURE MEDICINE, 2023, 29 (06) : 1317 - 1317