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An Improved Weighted Moving Average Methods Based on Transferring Weights for an Analytical Process Data

机译:基于传递权重的分析过程数据加权改进移动平均法

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Time series forecasting is an active research area that has drawn considerable attention for applications in a varietyof areas. Moving Average is one of widely known technical indicator used to predict the future data in time seriesanalysis. During its' development, many variation and implementation have been made by researchers. One of its' widelyused variation is Weighted Moving Average that gives a special weighting to more recent data than the older data, whichcould not be found in Simple Moving Average method. This paper aims to introduce a new approach of moving averagemethod in time series analysis. The approach will propose transferring weights mothod as the new weighting factor inview of the lagging and incomplete problems of the weighted moving average method. Both theoretical and empiricalfindings have suggested that the proposed method can be an effective method of improving upon their predictive performance,especially when the models in improving the lagging and Outburst value. In this paper, the models are implementedin order to overcome data limitations of weighted moving average models, thus obtaining more accurate results. Experimentalresults of Water Injection in oil field indicate that the models exhibit effectively improved forecasting accuracy sothat the model proposed can be used as an alternative to forecasting tools. The result of the proposed method shows apromising result in this preliminary work.
机译:时间序列预测是一个活跃的研究领域,在各个领域的应用都引起了极大的关注。移动平均线是用于在时间序列分析中预测未来数据的广为人知的技术指标之一。在其开发过程中,研究人员进行了许多修改和实施。它的一种广泛使用的变体是“加权移动平均”,它对较新的数据进行了特殊的加权,而不是较旧的数据,这在“简单移动平均”方法中找不到。本文旨在介绍时间序列分析中的移动平均法的一种新方法。考虑到加权移动平均法的滞后和不完全问题,该方法将提出权重方法作为新的加权因子。理论和实证研究都表明,所提出的方法可以作为一种改进其预测性能的有效方法,尤其是当模型用于改进滞后和突出值时。本文中的模型是为了克服加权移动平均模型的数据局限性而实现的,从而获得更准确的结果。油田注水实验结果表明,该模型有效提高了预测精度,因此该模型可作为预测工具的替代方案。所提出的方法的结果在该初步工作中显示出令人满意的结果。

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