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Unified Quantile Regression Deep Neural Network with Time-Cognition for Probabilistic Residential Load Forecasting

机译:统一量级回归深神经网络,具有概率住宅负荷预测的时间 - 认知

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Residential load forecasting is important for many entities in the electricity market, but the load profile of single residence shows more volatilities and uncertainties. Due to the difficulty in producing reliable point forecasts, probabilistic load forecasting becomes more popular as a result of catching the volatility and uncertainty by intervals, density, or quantiles. In this paper, we propose a unified quantile regression deep neural network with time-cognition for tackling this challenging issue. At first, a convolutional neural network with multiscale convolution is devised for extracting more behavioral features from the historical load sequence. In addition, a novel periodical coding method marks the model to enhance its ability of capturing regular load pattern. Then, features generated from both subnetworks are fused and fed into the forecasting model with an end-to-end manner. Besides, a globally differentiable quantile loss function constrains the whole network for training. At last, forecasts of multiple quantiles are directly generated in one shot. With ablation experiments, the proposed model achieved the best results in the AQS, AACE, and inversion error, and especially the average of the AACE is grown by 34.71%, 75.22%, and 32.44% compared with QGBRT, QCNN, and QLSTM, respectively, indicating that our method has excellent reliability and robustness rather than the state-of-the-art models obviously. Meanwhile, great performances of efficient time response demonstrate that our proposed work has promising prospects in practical applications.
机译:住宅负荷预测对于电力市场中的许多实体来说很重要,但单个住宅的负载概况显示出更多的波动性和不确定性。由于产生可靠点预测的难度,由于间隔,密度或定量捕获波动和不确定性,概率负荷预测变得更受欢迎。在本文中,我们提出了一个统一的统计量回归深度神经网络,对解决这一具有挑战性的问题的时间认知。首先,设计具有多尺度卷积的卷积神经网络,用于从历史负载序列中提取更多的行为特征。另外,一种新的期刊编码方法标志着模型,以增强其捕获常规负载模式的能力。然后,从两个子网生成的功能都被融合并以端到端的方式进入预测模型。此外,全球可分辨率的定位损失函数限制整个网络进行培训。最后,在一次拍摄中直接生成多个量级的预测。通过消融实验,所提出的模型在AQS,AACE和反演误差中获得了最佳结果,尤其是与QGBRT,QCNN和QLSTM相比增长34.71%,75.22%和32.44%的平均值,表明我们的方法具有优异的可靠性和鲁棒性,而不是明显的最先进的模型。与此同时,有效的时间反应的巨大表现表明我们的拟议工作在实际应用中具有希望的前景。

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