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首页> 外文期刊>Systems, Man and Cybernetics, Part A: Systems and Humans, IEEE Transactions on >Online Updating Belief-Rule-Base Using the RIMER Approach
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Online Updating Belief-Rule-Base Using the RIMER Approach

机译:使用RIMER方法在线更新基于信仰规则

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In order to determine the parameters of belief-rule-base (BRB) accurately, several optimization methods have been proposed for training BRB, on the basis of a generic rule-base inference methodology using the evidential reasoning (RIMER) approach. These optimization methods are implemented offline, and such are not suitable for training BRB in a dynamic fashion. In this paper, two recursive algorithms are proposed to update BRB online that can simulate dynamic systems. The main feature of the proposed algorithms is that only partial input and output information is required, which can be incomplete or vague, numerical or judgmental, or mixed. If the internal structure of a BRB is initially decided using expert judgments, domain-specific knowledge and/or commonsense rules, the proposed algorithms can be used to fine-tune the initial BRB online, once input and output datasets become available. Using the proposed algorithms, there is no need to collect a complete set of data before a BRB can be trained, which is necessary if the BRB is used to simulate a dynamic system. A numerical example and a case study are reported to demonstrate the potential of the algorithms for online fault diagnosis.
机译:为了准确地确定基于信念规则(BRB)的参数,在使用证据推理(RIMER)方法的通用规则库推理方法的基础上,提出了几种优化方法来训练BRB。这些优化方法是离线实现的,因此不适合以动态方式训练BRB。本文提出了两种递归算法来在线更新可模拟动态系统的BRB。所提出算法的主要特征是仅需要部分输入和输出信息,这些信息可以是不完整或模糊的,数字的或判断的或混合的。如果最初使用专家判断,特定领域的知识和/或常识性规则来确定BRB的内部结构,则一旦输入和输出数据集可用,则可以使用提出的算法在线微调初始BRB。使用所提出的算法,在训练BRB之前无需收集完整的数据集,如果将BRB用于模拟动态系统,则这是必需的。报告了一个数值示例和一个案例研究,以证明该算法可用于在线故障诊断。

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