Evaluating the EEMD-LSTM model for short-term forecasting of industrial power load: A case study in Vietnam

Nam Nguyen Vuu Nhat, Duc Nguyen Huu, Thu Nguyen Thi Hoai
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引用次数: 1

Abstract

This paper presents the effectiveness of the ensemble empirical mode decomposition-long short-term memory (EEMD-LSTM) model for short term load prediction. The prediction performance of the proposed model is compared to that of three other models (LR, ANN, LSTM). The contribution of this research lay in developing a novel approach that combined the EEMD-LSTM model to enhance the capability of industrial load forecasting. This was a field where there had been limited proposals for improvement, as these hybrid models had primarily been developed for other industries such as solar power, wind power, CO2 emissions, and had not been widely applied in industrial load forecasting before. First, the raw data was preprocessed using the IQR method, serving as the input for all four models. Second, the processed data was then used to train the four models. The performance of each model was evaluated using regression-based metrics such as mean absolute error (MAE) and mean squared error (MSE) to assess their respective output. The effectiveness of the EEMD-LSTM model was evaluated using Seojin industrial load data in Vietnam, and the results showed that it outperformed other models in terms of RMSE, n-RMSE, and MAPE errors for both 1-step and 24-step forecasting. This highlighted the model's capability to capture intricate and nonlinear patterns in electricity load data. The study underscored the significance of selecting a suitable model for electricity load forecasting and concluded that the EEMD-LSTM model was a dependable and precise approach for predicting future electricity assets. The model's robust performance and accurate forecasts showcased its potential in assisting decision-making processes in the energy sector.
评估EEMD-LSTM模型对工业电力负荷的短期预测:以越南为例
本文研究了集成经验模态分解-长短期记忆(EEMD-LSTM)模型在短期负荷预测中的有效性。将该模型的预测性能与其他三种模型(LR、ANN、LSTM)进行了比较。本研究的贡献在于开发了一种结合EEMD-LSTM模型的新方法,以提高工业负荷预测的能力。这是一个改进建议有限的领域,因为这些混合模型主要是为太阳能、风能、二氧化碳排放等其他行业开发的,以前没有广泛应用于工业负荷预测。首先,使用IQR方法对原始数据进行预处理,作为所有四个模型的输入。然后利用处理后的数据对四个模型进行训练。使用基于回归的指标(如平均绝对误差(MAE)和均方误差(MSE))评估每个模型的性能,以评估各自的输出。利用越南Seojin工业负荷数据对EEMD-LSTM模型的有效性进行了评估,结果表明,对于1步和24步预测,EEMD-LSTM模型在RMSE、n-RMSE和MAPE误差方面都优于其他模型。这突出了该模型在电力负荷数据中捕捉复杂和非线性模式的能力。该研究强调了选择合适的电力负荷预测模型的重要性,并得出结论,EEMD-LSTM模型是预测未来电力资产的可靠和精确的方法。该模型的强大性能和准确预测显示了其在协助能源部门决策过程中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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