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Granular Auto-Regressive Moving Average (grARMA) Model for Predicting a Distribution From Other Distributions. Real-World Applications

机译:用于预测来自其他分布的分布的粒度自动回归移动平均(GRARMA)模型。现实世界应用

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Industrial products are often output in batches at discrete times. A batch gives rise to distributions of measurements, one distribution per variable of interest. There may be a need for modeling to predict a distribution from other distributions. This work represents a distribution by a fuzzy interval number (FIN) interpreted as an information granule. Based on vector lattice theory it is shown that the lattice F{sub}+ of positive FINs is a cone in a non-linearly tunable, metric, linear space. In conclusion, a multivariate granular autoregressive moving average (grARMA) model is proposed for predicting a distribution from other distributions. A recursive neural network implementation is shown. We report preliminary results regarding two real-world applications including, first, industrial fertilizer production and, second, environmental pollution monitoring along seashore in northern Greece. The far-reaching potential of novel techniques is discussed.
机译:工业产品通常在离散时间批量输出。批次产生测量的分布,每个感兴趣的变量的一个分布。可能需要建模以预测来自其他分布的分布。该工作代表了被解释为信息颗粒的模糊间隔数(FIN)的分布。基于向量格子理论,示出了正翅片的晶格F {Sub} +在非线性可调,度量,线性空间中是锥体。总之,提出了一种多变量粒度自回归移动平均(GRARMA)模型,用于预测来自其他分布的分布。显示了递归神经网络实现。我们报告了两个现实世界应用的初步结果,包括在希腊北部的海边的第一,工业肥料生产和,第二,环境污染监测。讨论了新技术的深远潜力。

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