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首页> 外文期刊>International journal of green energy >Accuracy improvement of various short-term load forecasting models by a novel and unified statistical data-filtering method
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Accuracy improvement of various short-term load forecasting models by a novel and unified statistical data-filtering method

机译:通过新颖的统一统计数据滤波方法准确改进各种短期负荷预测模型

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摘要

Time-series and machine-learning methods are being strongly exploited to improve the accuracy of short-term load forecasting (STLF) results. In developing countries, power consumption behaviors could be suddenly changed by different customers, e.g. industrial customers, residential customers, so the load-demand dataset is often unstable. Therefore, reliability assessment of the load-demand dataset is obviously necessary for STLF models. Hence, this paper proposes a novel and unified statistical data-filtering method with the best confidence interval to eliminate unexpected noises/outliers of the input dataset before performing various short-term load forecasting models. This proposed novel data-filtering method, so-called the data pre-processing method, is also compared to other existing data-filtering methods (e.g. Kalman filter, Density-Based Spatial Clustering of Applications with Noise, Wavelet transform, and Singular Spectrum Analysis). By using an SCADA system & xfeff;-based database of a typical 22kV distribution network in Vietnam, NYISO database, and PJM-RTO database, case studies of short-term load forecasting have been conducted with a conventional ARIMA model, an ANN forecasting model, an LSTM-RNN model, an LSTM-CNN combined model, a deep auto-encoder (DAE) network, a Wavenet-based model, a Wavenet and LSTM hybrid model, and a Wavelet Neural Network (WNN) model, which are to validate the novel and unified statistical data-filtering method proposed. The achieved numerical results demonstrate which the accuracy of the aforementioned STLF models can be significantly improved due to the proposed statistical data-filtering method with the best confidence interval of the input load dataset. The proposed statistical data-filtering method can considerably outperform the existing data-filtering methods.
机译:正序列和机器学习方法强烈利用以提高短期负荷预测(STLF)结果的准确性。在发展中国家,可以通过不同的客户突然改变权力消耗行为,例如,工业客户,住宅客户,因此负载需求数据集通常不稳定。因此,对于STLF模型,显然需要对负载数据集的可靠性评估。因此,本文提出了一种新颖和统一的统计数据滤波方法,具有最佳置信区间,以消除输入数据集的意外噪声/异常值,然后执行各种短期负载预测模型。这一提出的新型数据滤波方法,所谓的数据预处理方法,也与其他现有的数据过滤方法(例如卡尔曼滤波器,基于密度的空间聚类具有噪声,小波变换和奇异频谱分析)。通过使用SCADA System和XFeff;在越南,Nyiso数据库和PJM-RTO数据库中进行了典型的22kV分配网络数据库,案例研究了短期负荷预测,并进行了传统的ARIMA模型,ANN预测模型进行了,LSTM-RNN模型,LSTM-CNN组合模型,深度自动编码器(DAE)网络,基于WVENET的模型,WAVENET和LSTM混合模型,以及一个小波神经网络(WNN)模型,即验证提出的新颖和统一统计数据过滤方法。所实现的数值结果表明,由于所提出的统计数据滤波方法具有最佳输入负载数据集的置信区间,因此可以显着地改善上述STLF模型的准确性。所提出的统计数据过滤方法可以大大倾向于现有的数据过滤方法。

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