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Ensemble Influence Nets for Equipment Health Status Classification

机译:Ensemble Impaction Nets用于设备健康状况分类

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As a simplified model of Bayesian Network, Influence Nets (IN) has a wide range of applications in the description and modeling of uncertain causality. However, too many nodes in IN will increase the number of parameters in modeling and limit the applicability of IN model to high-dimensional problems. In this paper, based on the bagging framework, we propose an Ensemble-IN model to overcome this flaw. Firstly, several weak IN models are integrated coherently, each of which only consists of a subset of nodes. Then, difference evaluation algorithm (DE) is introduced to optimize the parameters in weak IN models. Finally, the combination methods is utilized to integrate the analysis results of weak IN models. The rationality and feasibility of the proposed Ensemble-IN model are verified by a practical case of health status classification of engine.
机译:作为贝叶斯网络的简化模型,影响网(IN)具有广泛的应用在不确定因果关系的描述和建模中。然而,IN中的太多节点将增加建模中的参数的数量,并限制模型的适用性到高维问题。在本文中,基于装袋框架,我们提出了一个集合模型来克服这个缺陷。首先,模型中的几种弱弱,每个模型都集成,每个模型仅由节点的子集组成。然后,引入差异评估算法(DE)以优化模型中弱的参数。最后,利用组合方法整合模型中弱的分析结果。通过发动机健康状况分类的实际案例,验证了拟议合并模型的合理性和可行性。

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