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基于信念规则库的专家系统的鲁棒性研究

On the Robustness of Belief-Rule-Based Expert Systems

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2023
被引 62 · 同刊同年前 4%
ABS 3

中文导读

本文从输入变换、匹配度计算、归一化和规则聚合四个方面分析了信念规则库专家系统的鲁棒性,并提出了五个构建指南,通过继电器健康状态评估案例验证了方法的有效性。

Abstract

Belief rule base (BRB) expert system has been widely used in complex system modeling. Robustness is crucial to the modeling performance and safety of BRB. For a better understanding and utility of BRB, there is thereby an urgent need to know what kind of influence each part of BRB may have when the disturbance occurs. Aiming at this, a more comprehensive analysis of BRB robustness is conducted in this article. First, the Lipschitz condition for BRB is defined. With the definitions, a new robustness analysis method of BRB is proposed, which is conducted from four aspects: 1) the input transformation; 2) the matching degree calculation; 3) the matching degree normalization; and 4) the rule aggregation. Moreover, five guidelines for BRB construction are proposed by analyzing its robustness, which can offer a practical guide for users to establish, adjust, and improve the BRB model for specific applications. The robustness analysis of the BRB expert system for the relay health-state evaluation is conducted to verify the effectiveness of the proposed method.

专家系统鲁棒性分析复杂系统建模信念规则库