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Application of prediction models using fuzzy sets: A Bayesian inspired approach

机译:使用模糊集的预测模型的应用:贝叶斯启发方法

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摘要

A fuzzy inference framework based on fuzzy relations is developed, adapted and applied to temperature and humidity measurements from a specific coffee crop site in Brazil. This framework consists of fuzzy relations over possibility distributions, resulting in a model analogous to a Bayesian inference process. The application of this fuzzy model to a data set of experimental measurements and its correspondent forecasts of temperature and humidity resulted in a set of revised forecasts, that incorporate information from a historical record of the problem. Each set of revised forecasts was compared with the correspondent set of experimental data using two different statistical measures, MAPE (Mean Absolute Percentage Error) and Willmott's D. This comparison showed that the sets of forecasts revised by the fuzzy model exhibited better results than the original forecasts on both statistical measures for more than two thirds of the evaluated cases. (C) 2016 Elsevier B.V. All rights reserved.
机译:开发了一种基于模糊关系的模糊推理框架,并将其应用于巴西特定咖啡种植地的温度和湿度测量。该框架由可能性分布之间的模糊关系组成,从而形成类似于贝叶斯推理过程的模型。将此模糊模型应用于实验测量数据集及其对温度和湿度的相应预测,得出了一组修订的预测,这些预测合并了问题历史记录中的信息。使用两种不同的统计量度(MAPE(平均绝对百分比误差)和Willmott的D)将每组经过修订的预测与相应的实验数据进行比较。此比较表明,通过模糊模型进行修订的一组预测比原始模型具有更好的结果。对超过三分之二的评估案例的两种统计量进行了预测。 (C)2016 Elsevier B.V.保留所有权利。

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