利用经验模态分解和极限学习机预测某建筑物日、周、月用电负荷

Sajjad Khan, N. Javaid, Annas Chand, R. Abbasi, Abdul Basit Majeed Khan, Hafiz Muhammad Faisal
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引用次数: 8

摘要

建筑能耗预测在现代电力系统的能源管理中起着关键作用。然而,电力负荷数据中的噪声和随机性给准确预测电力负荷带来了困难。本文提出了一种基于经验模态分解的极限学习机(EMD-ELM)的建筑用电负荷预测方法。EMD消除了电力负荷数据的随机性,而ELM用于预测未来一天、一周和一个月的电力负荷。为了说明EMD-ELM的有用性,将其性能与著名的神经网络即卷积神经网络(CNN),长短期记忆(LSTM)和ELM进行比较。仿真结果清楚地表明,EMD-ELM在预测建筑物未来一天、一周和一个月的电力负荷消耗方面优于CNN、LSTM和ELM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting day, week and month ahead electricity load consumption of a building using empirical mode decomposition and extreme learning machine
Forecasting of building energy consumption plays a key role in the energy management of the modern power system. However, the noise and randomness in the electricity load data makes it difficult to forecast accurate electricity load. In this paper, a novel scheme namely Empirical Mode Decomposition based Extreme Learning Machine (EMD-ELM) is proposed to forecast the electricity load consumption of a building. Randomness in the electric load data is removed using EMD, whereas, ELM is used to forecast the day, week and month ahead electricity load. To illustrate the usefulness of EMD-ELM, the performance is compared with the renowned neural networks namely Convolution Neural Network (CNN), Long Short Term Memory (LSTM) and ELM. The simulation results clearly indicate that EMD-ELM outperforms CNN, LSTM and ELM in forecasting the day, week and month ahead electricity load consumption of a building.
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