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Deep sequence to sequence Bi-LSTM neural networks for day-ahead peak load forecasting

机译:深度序列序列Bi-LSTM神经网络,用于日前峰值峰值负荷预测

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The power industry is currently facing the problem of an electricity supply & ndash;demand imbalance. The most inexpensive and efficient solution to alleviate this imbalance is to decrease electricity demand. Local electrical utilities should deploy demand response programs (DRP), and short-term peak demand forecasting (STPDF) plays a crucial role in their successful deployment. In residential sectors, peak demand forecasting is also critical because the energy policies, technological growth, and changing climate are further increasing the peak demand. Therefore, an accurate peak demand forecasting will help utility companies in avoiding blackouts and secure a continuous power supply by implementing subsidy schemes such as DRP. However, daily peak load is volatile, nonstationary, and nonlinear in nature, and hence it is hard to predict it accurately. This research work for the first time has attempted to design, implement, and test deep bidirectional long short-term memory based sequence to sequence (Bi-LSTM S2S) regression approach for & ldquo;day-ahead & rdquo; peak demand forecasting and has accomplished preliminary success. The day-ahead peak electricity demand forecasting model is designed and tested using the MATLAB software. For performance comparison, shallow Bi-LSTM S2S, shallow LSTM S2S, deep LSTM S2S, Levenberg-Marquardt backpropagation artificial neural networks (LMBP-ANN), and medium Gaussian support vector regression (MG-SVR) forecasting models are also developed and tested. Mean absolute percentage error (MAPE) and Root Mean Squared Error (RMSE) are used as performance metrics. It has been found out that in terms of both performance metrics, the proposed deep Bi-LSTM S2S day-ahead & ldquo;peak & rdquo; forecasting model has outperformed all the other models on both public holidays and normal days. The load pattern on public holidays is always different than on normal days, and there is always less data available in contrast to the normal days. Therefore, it is hard to accurately forecast their load.
机译:电力行业目前面临电力供应和Ndash的问题;需求不平衡。缓解这种不平衡的最便宜和有效的解决方案是降低电力需求。本地电气实用程序应部署需求响应计划(DRP),短期峰值需求预测(STPDF)在成功部署中发挥着至关重要的作用。在居住部门,峰值需求预测也是至关重要的,因为能源政策,技术生长和不断变化的气候进一步提高了峰值需求。因此,准确的峰值需求预测将有助于公用公司通过实施DRP等补贴方案来帮助避免停电并确保连续电源。然而,每日峰值负荷是挥发性的,非营养和非线性,因此很难准确地预测它。这项研究工作首次尝试设计,实施和测试深双向短期内存基于序列的序列(Bi-LSTM S2S)回归方法“日前和rdquo;峰值需求预测和实现初步成功。使用MATLAB软件设计和测试了一天的峰值电力需求预测模型。对于性能比较,浅Bi-LSTM S2S,浅LSTM S2S,深LSTM S2S,Levenberg-Marquardt BackProjagation人工神经网络(LMBP-ANN)以及媒体高斯支持向量回归(MG-SVR)预测模型也是开发和测试的。平均绝对百分比误差(MAPE)和根均方误差(RMSE)用作性能度量。已经发现,就绩效指标而言,建议的深层Bi-LSTM S2S日“ Peak&Rdquo;预测模型优于公共假期和正常日的所有其他模型。公众假期上的负载模式总是与正常日子不同,并且与正常天相比,总有没有可用的数据。因此,很难准确地预测他们的负荷。

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