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A Two-Stage Household Electricity Demand Estimation Approach Based on Edge Deep Sparse Coding

机译:基于边缘深度稀疏编码的两阶段家庭用电需求估计方法

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The widespread popularity of smart meters enables the collection of an immense amount of fine-grained data, thereby realizing a two-way information flow between the grid and the customer, along with personalized interaction services, such as precise demand response. These services basically rely on the accurate estimation of electricity demand, and the key challenge lies in the high volatility and uncertainty of load profiles and the tremendous communication pressure on the data link or computing center. This study proposed a novel two-stage approach for estimating household electricity demand based on edge deep sparse coding. In the first sparse coding stage, the status of electrical devices was introduced into the deep non-negative k-means-singular value decomposition (K-SVD) sparse algorithm to estimate the behavior of customers. The patterns extracted in the first stage were used to train the long short-term memory (LSTM) network and forecast household electricity demand in the subsequent 30 min. The developed method was implemented on the Python platform and tested on AMPds dataset. The proposed method outperformed the multi-layer perception (MLP) by 51.26%, the autoregressive integrated moving average model (ARIMA) by 36.62%, and LSTM with shallow K-SVD by 16.4% in terms of mean absolute percent error (MAPE). In the field of mean absolute error and root mean squared error, the improvement was 53.95% and 36.73% compared with MLP, 28.47% and 23.36% compared with ARIMA, 11.38% and 18.16% compared with LSTM with shallow K-SVD. The results of the experiments demonstrated that the proposed method can provide considerable and stable improvement in household electricity demand estimation.
机译:智能电表的广泛普及使得能够收集大量的细粒度数据,从而实现了网格和客户之间的双向信息流以及个性化的交互服务,例如精确的需求响应。这些服务基本上依赖于对电力需求的准确估计,关键挑战在于负载曲线的高波动性和不确定性以及数据链路或计算中心上巨大的通信压力。这项研究提出了一种新颖的两阶段方法,基于边缘深度稀疏编码来估算家庭用电。在第一个稀疏编码阶段,将电气设备的状态引入到深度非负k均值奇异值分解(K-SVD)稀疏算法中,以估计客户的行为。在第一阶段提取的模式用于训练长期短期记忆(LSTM)网络,并预测随后30分钟的家庭用电量。开发的方法在Python平台上实现,并在AMPds数据集上进行了测试。相对于平均绝对百分比误差(MAPE),所提出的方法的表现优于多层感知(MLP)的51.26%,自回归综合移动平均模型(ARIMA)的36.62%和具有浅K-SVD的LSTM的16.4%。在平均绝对误差和均方根误差方面,与浅色K-SVD相比,与MLP相比,分别提高了53.95%和36.73%,与ARIMA相比分别提高了28.47%和23.36%,LSTM则提高了11.38%和18.16%。实验结果表明,该方法可以为家庭用电需求估算提供可观且稳定的改进。

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