修改加权模糊时间序列的比率区间-频率密度

Etna Vianita
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引用次数: 0

摘要

提高种植园预报的准确性,特别是咖啡产量的预报准确性,是地球观测的一个重要方面,目的是为种植园管理提供信息。这些决策包括供应链运作的战略和战术决策以及财务决策。许多研究计划都采用了各种方法来预测种植区和咖啡生产等相关产业。其中一种方法被称为模糊时间序列(FTS)技术。本研究将比值间隔和频率密度相结合,以获得话语范围和分区,然后采用加权和修改加权。第一步是使用比值区间算法确定话语范围。第二步是使用比值-区间算法对话语范围进行分区,然后进行频率密度分区。第三步是模糊化。第四步是建立模糊逻辑关系(FLR)和模糊逻辑关系组(FLRG)。第五步是修改加权。最后一步是去模糊化。通过平均预测误差率(AFER)对模型进行评估,并与现有方法进行比较。 建议方法的 AFER 值为 1.24%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ratio Interval-Frequency Density with Modifications to the Weighted Fuzzy Time Series
The improvement of plantation forecasting accuracy, particularly with regard to coffee production, was an essential aspect of earth observations for the purpose of informing plantation management alternatives. These decisions included strategic and tactical decisions on supply chain operations and financial decisions. Many research initiatives have used a variety of methodologies to the forecasting of plantation areas and related industries, such as coffee production. One of these methods was known as the fuzzy time series (FTS) technique. This  study combined ratio-interval and frequency density to get universe of discourse and partition followed by adopted weighted and modified that weighted. The first step was defined universe of discourse using ratio-interval algorithm. The second step was partition the universe of discourse using ratio-interval algorithm followed by frequency density partitioning. The third step was fuzzyfication. The fourth step built fuzzy logic relationship (FLR) and fuzzy logic relationship group (FLRG). The fifth step was adopted the modification weighted. The last step was defuzzyfication. The  models evaluated  by  average  forecasting  error  rate  (AFER)  and  compared  with  existing methods.  AFER  value  1.24%  for  proposed method.
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