Short‐term commercial load forecasting based on peak‐valley features with the TSA‐ELM model

Commercial buildings are consuming an increasing amount of energy, and accurate load demand forecasting is critical for the reliable operation of power systems and the efficient use of resources. Therefore, in this paper, a short‐term commercial load forecasting model based on tunicate swarm algorit...

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Veröffentlicht in:Energy science & engineering 2022-08, Vol.10 (8), p.2622-2636
Hauptverfasser: Zhou, Mengran, Zhu, Ziwei, Hu, Feng, Bian, Kai, Lai, Wenhao, Hu, Tianyu
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Sprache:eng
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Zusammenfassung:Commercial buildings are consuming an increasing amount of energy, and accurate load demand forecasting is critical for the reliable operation of power systems and the efficient use of resources. Therefore, in this paper, a short‐term commercial load forecasting model based on tunicate swarm algorithm (TSA) combined with an extreme learning machine (ELM) under peak‐valley features is proposed as a research case for a shopping mall in Romania. This paper's overall structure is divided into two steps. In the first step, the 24‐h day is divided into six periods by analyzing the daily load characteristics of the training set, and the peak and valley loads are obtained. The ELM optimized by TSA (TSA‐ELM) algorithm is then used to forecast the peak and valley values of the test set one day ahead. In the second step, the actual load, peak, and valley for the previous week of historical load are chosen using the maximum information coefficient (MIC). Following that, the MIC ≥ 0.8 features are added to the TSA‐ELM to achieve short‐term commercial electricity load forecasting. The results show that the PV (Peak & Valley)‐TSA‐ELM model proposed in this paper has higher prediction accuracy compared with other models. Taking ELM as an example, compared with the traditional ELM, the mean absolute error, root mean square error, and mean absolute percentage error of PV‐TSA‐ELM are reduced by 20.59%, 20.13%, and 19.19% on average in the three commercial data sets. The proposed model is validated with an industrial data set, and ideal results are obtained, which verifies the effectiveness and superiority of the proposed method. In the paper, we predict the peak and trough values of the target day and introduce their hysteresis characteristics into the traditional forecasting model. We choose a new optimization tunicate swarm algorithm (TSA) and extreme learning machine (ELM) combined with a classifier as the prediction model. The PV‐TSA‐ELM model proposed improves the accuracy of power load forecasting.
ISSN:2050-0505
2050-0505
DOI:10.1002/ese3.1203