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Cluster based modular nonlinear autoregressive neural network to predict daily reservoir inflow

机译:基于聚类的模块化非线性自回归神经网络预测油藏日流量

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Despite the ability of Artificial Neural Network (ANN) to handle nonlinear relationships in data, there are instances where ANNs have not been able to predict accurately in the presence of extremes values or other inherent groupings in the data. Although the ANN modeling expects the data to be evenly distributed over an entire data space, in practical situations data often consist of clusters or extreme values. Thus, instead of modeling the data as it is, appropriate mechanisms should be followed to handle those inconsistancies. This paper presents one such mechanism based on two clustering algorithms, k-means and fuzzy c-means. The base model is Nonlinear Autoregressive Artificial Neural Network (NAR-ANN). Altogether 14 model formulations of NAR-ANN were compared here with varying number of clusters and a trimming mechanism. Results suggest the superiority of cluster based NAR-ANN over the single NAR-ANN. Modular ANN approach with an optimum combination of the 14 models can be used for better results. The proposed cluster based NAR-ANN used in this paper is a novel generalization to NAR-ANN where the cluster effect is incorporated as a binary exogenous variable (NARX).
机译:尽管人工神经网络(ANN)能够处理数据中的非线性关系,但在某些情况下,在数据中存在极值或其他固有分组的情况下,ANN仍无法准确预测。尽管ANN建模期望数据在整个数据空间上均匀分布,但在实际情况下,数据通常由簇或极值组成。因此,应该遵循适当的机制来处理这些不一致之处,而不是对数据进行建模。本文提出了一种基于两种聚类算法(k均值和模糊c均值)的机制。基本模型是非线性自回归人工神经网络(NAR-ANN)。总共比较了NAR-ANN的14种模型公式,以及不同数量的簇和修整机制。结果表明基于群集的NAR-ANN优于单个NAR-ANN。可以将模块化的ANN方法与14个模型的最佳组合一起使用,以获得更好的结果。本文中使用的拟议的基于聚类的NAR-ANN是对NAR-ANN的一种新颖概括,其中的聚类效应被作为二进制外生变量(NARX)合并。

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