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Combined General Vector Machine for Single Point Electricity Load Forecast

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conference contribution
posted on 2024-11-14, 09:20 authored by Binbin Yong, Yongqiang Wei, Jun ShenJun Shen, Fucun Li, Xuetao Jiang, Qingguo Zhou
General Vector Machine (GVM) is a newly proposed machine learning model, which is applicable to small samples forecast scenarios. In this paper, the GYM is applied into electricity load fore­cast based on single point modeling method. Meanwhile, traditional time series forecast models, including back propagation neural network (BPNN), Support Vector Machine (SVM) and Autoregressive Integrated Moving Average Model ( ARIMA), are also experimented for single point electricity load forecast. Further, the combined model based on GYM, BPNN, SVM and ARIMA are proposed and verified. Results show that GYM performs better than these traditional models, and the combined model outperforms any other single models for single point electricity load forecast.

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Citation

Yong, B., Wei, Y., Shen, J., Li, F., Jiang, X. & Zhou, Q. (2020). Combined General Vector Machine for Single Point Electricity Load Forecast. The 9th International Conference on Frontier Computing (FC2019) Theory, Technologies and Applications (pp. 284-290). LNEE: Springer.

Parent title

Lecture Notes in Electrical Engineering

Volume

551 LNEE

Pagination

283-291

Language

English

RIS ID

134655

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