长短期记忆内退出层对家庭负荷预测应用的影响

Sanaullah Soomro, W. Pora
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引用次数: 1

摘要

确保准确的电力负荷预测对于规划电力系统的安全、稳定和经济运行具有重要意义。准确的长期和短期电力负荷预测是电网规划和决策的基础。近年来,机器学习技术在长期和短期电力负荷预测中得到了广泛的应用。具体来说,长短期记忆(LSTM)是为时间序列数据分析定制的。本研究提出了一种LSTM模型,用于预测未来20天内单个包含电器的房屋的电力负荷。我们对使用LSTM模型的负荷预测应用中辍学层的影响进行了比较分析。所提出的模型包括辍学率分别为0.2、0.3、0.4、0.5和0.6。研究了它们对负荷预测的影响。实验结果表明,当改变退出层时,预测结果略有变化。结果表明,drop - out层对预报精度的影响仅为1%左右。然而,具有显著辍学率的模型比具有较低或较高辍学率的模型更为普遍。因此,建议采用退学率为0.4的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of Drop-out Layers Inside an Long Short-Term Memory for Household Load Forecast Application
Ensuring precise power load forecasting is highly important in planning the secure, steady, and cost-effective functioning of the power system. Grid planning and decision-making can be based on accurate long- and short-term power load forecasting. Recently, machine learning techniques have gained wide-spread adoption for both long- and short-term power load forecasting. Specifically, the Long Short-Term Memory (LSTM) is customized for time series data analysis. This research proposes an LSTM model for forecasting the power load of a single house containing electrical appliances over the next 20 days. We conducted a comparative analysis of the impact of dropout layers in load forecasting applications using the LSTM model. The proposed model comprises dropout rates of 0.2, 0.3, 0.4, 0.5, and 0.6, respectively. Their impact on load forecasting is examined. The experimental results demonstrate slight variations in predictions when altering dropout layers. The results show that the effect of dropout layers on the forecast varies the accuracy by only approximately 1%. However, the models with significant dropout rates are more general than those with lower or higher rates. So the model with a dropout rate of 0.4 is suggested.
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