Deep Learning Networks for Vectorized Energy Load Forecasting

Kristen Jaskie, Dominique Smith, A. Spanias
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引用次数: 1

Abstract

Smart energy meters allow individual residential, commercial, and industrial energy load usage to be monitored continuously with high granularity. Accurate short-term energy forecasting is essential for improving energy efficiency, reducing blackouts, and enabling smart grid control and analytics. In this paper, we survey commonly used non-linear deep learning timeseries forecasting methods for this task including long short-term memory recurrent neural networks and nonlinear autoregressive models, nonlinear autoregressive exogenous networks that also include weather data, and for completeness, MATLAB’s nonlinear input-output model that only uses weather. These models look at every combination of load sequence data and weather information to identify which factors and methods are most effective at predicting short-term residential load. In this paper, the traditional nonlinear autoregressive model predicted short term load values most accurately using only energy load information with a mean square error of 7.53E-5 and a correlation coefficient of 0.995.
面向矢量化能源负荷预测的深度学习网络
智能电能表允许以高粒度连续监控个人住宅,商业和工业能源负荷使用情况。准确的短期能源预测对于提高能源效率、减少停电以及实现智能电网控制和分析至关重要。在本文中,我们调查了用于该任务的常用非线性深度学习时间序列预测方法,包括长短期记忆递归神经网络和非线性自回归模型,还包括天气数据的非线性自回归外生网络,以及仅使用天气的MATLAB非线性输入输出模型。这些模型着眼于负荷序列数据和天气信息的每一个组合,以确定哪些因素和方法在预测短期住宅负荷方面最有效。传统的非线性自回归模型仅利用能源负荷信息预测短期负荷值最准确,均方误差为7.53E-5,相关系数为0.995。
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