Unbiased Grey Verhulst Model and Its Application

Zheng-xin Wang, Yao-guo Dang, Si-feng Liu
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引用次数: 51

Abstract

As to the inherent simulant error of grey Verhulst model, this article presents unbiased grey Verhulst model. Recursive solutions are given under two initial conditions of the unbiased model. The results show the complete coincidence of the prediction and simulation to the original data of S-shaped curve generated form has achieved. The unbiased grey Verhulst model presented in this article has not only completely eliminated the inherent simulant error of the traditional model, but also avoided the jumping errors from the differential equation to differential equation in traditional grey modeling. Case analysis shows that the simulation and prediction accuracy in traditional modeling has been significantly improved by unbiased grey Verhulst model.

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无偏灰色Verhulst模型及其应用
针对灰色Verhulst模型固有的模拟误差,本文提出了无偏灰色Verhulst模型。给出了无偏模型的两种初始条件下的递推解。结果表明,预测和模拟结果与原始数据完全吻合,生成的s形曲线形式。本文提出的无偏灰色Verhulst模型不仅完全消除了传统模型固有的模拟误差,而且避免了传统灰色建模中从微分方程到微分方程的跳跃误差。实例分析表明,无偏灰色Verhulst模型显著提高了传统模型的仿真和预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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