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An improved sliding window prediction-based outlier detection and correction for volatile time-series

机译:基于滑动窗口预测的异常序列检测和校正易失性时序序列

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摘要

Steady-state forecasting is indispensable for power system planning and operation. A forecasting model for inputs considering their historical record is a preliminary step for such type of studies. Since the historical data quality is decisive in edifice an accurate forecasting model, data preprocessing is essential. Primarily, the quality of raw data is affected by the presence of outliers, and preprocessing refers to outlier detection and correction. In this paper, an effort is made to improve the existing sliding window prediction-based preprocessing method. The recommended reforms are the calculation of appropriate window width and a new outlier correction approach. The proposed method denoted as improved sliding window prediction-based preprocessing is applied to the historical data of PV generation, load power, and the ambient temperature of different time-steps collected from various places in the United States and India. Firstly, the method's efficacy through detailed result analysis demonstrating the proposed preprocessing as a better way than its precursor andk-nearest neighbor approach is presented. Later, the improved out-of-sample forecasting accuracy canonizes the proposed method's concert compared to both the above techniques and the case without preprocessing.
机译:电力系统规划和操作不可或缺的稳态预测。考虑其历史记录的投入预测模型是这种研究类型的初步步骤。由于历史数据质量在大厦中具有决定性的准确的预测模型,因此数据预处理是必不可少的。主要是,原始数据的质量受到异常值存在的影响,并且预处理是指异常检测和校正。本文采用努力改善现有的基于滑动窗口预处理的预处理方法。建议的改革是计算适当的窗口宽度和新的异常校正方法。所提出的方法表示为改进的滑动窗口预测的预处理应用于PV生成,负荷功率和来自美国和印度各个地方收集的不同时间步长的环境温度的历史数据。首先,通过详细的结果分析来证明所提出的预处理是比其前体ANDK最近邻近的更好的方法的功效。后来,与上述技术和外壳相比,改进了样本的预测精度,而不是预处理的情况。

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