一种改进的基于Parzen窗的贝叶斯融合算法

G. Wang, De-gan Zhang, Hai Zhao
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引用次数: 2

摘要

本文提出了一种新的基于Parzen窗的贝叶斯融合算法,将分割识别的非参数估计方法引入到传统贝叶斯融合准则中。融合过程是一个重复迭代的过程,利用Parzen窗口法不断修正和学习条件概率密度,在bayes决策准则下在融合中心得到全局决策。在实际应用中,该方法已成功应用于J. Fengman水电站仿真系统的温度故障检测与诊断系统中。数据分析表明,改进后的算法优于传统的贝叶斯准则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved Bayes fusion algorithm with the Parzen window method
In this paper, a new Bayes fusion algorithm with the Parzen window method, which introduces the non-parameter estimation method of partition recognition into traditional Bayes fusion criterion, is propose. During the process of fusion, which is a repetitious and iterative process, conditional probability density is continuously modified and learned using the Parzen window method, and the global decision is obtained at the fusion center under the bayes decision criterion. In the practical application, the method has been successfully applied into the temperature fault detection and diagnosis system of hydroelectric simulation system of J. Fengman. The analysis of data indicates that the improved algorithm takes precedence over the traditional Bayes criterion.
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