首页> 外文会议>World Congress of International Federation of Automatic Control >A GMDH NEURAL NETWORK BASED APPROACH TO PASSIVE ROBUST FAULT DETECTION USING A CONSTRAINTS SATISFACTION BACKWARD TEST
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A GMDH NEURAL NETWORK BASED APPROACH TO PASSIVE ROBUST FAULT DETECTION USING A CONSTRAINTS SATISFACTION BACKWARD TEST

机译:基于GMDH神经网络的基于方法对无源鲁棒故障检测的方法使用约束满足落后测试

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This paper focus on the problem of passive robust fault detection using nonlinear models that include parameter uncertainty. The non-linear model considered here is described by a Group Method of Data Handling Neural Network (GMDHNN). The problem of passive robust fault detection using models including parameter uncertainty has been mainly addressed checking if the measured behaviour is inside the region of possible behaviours following what will be called in the following a forward test. In this paper, a backward test based on checking if there exists a parameter in the uncertain parameter set that is consistent with the measured behaviour is introduced. This test is implemented using interval constraint satisfaction algorithms which can perform efficiently in deciding if the measured state is consistent with the GMDHNN model and its associated uncertainty. Finally, this approach is tested on the servoactuator proposed as a FDI benchmark in the European Project DAMADICS.
机译:本文侧重于使用包括参数不确定性的非线性模型的被动鲁棒故障检测问题。这里考虑的非线性模型由数据处理神经网络(GMDHNN)的组方法描述。使用包括参数不确定性的模型的被动鲁棒故障检测问题已经主要解决了测量的行为在可能在以下前进试验中所谓的可能行为所在的行为区域内。在本文中,基于检查的反向测试如果引入了与测量行为一致的不确定参数集中存在的参数。使用间隔约束满足算法来实现该测试,该算法可以在决定是否与GMDHN模型及其相关的不确定性一致时有效地执行。最后,在欧洲项目DAPADICS中被提出的伺服术者测试了这种方法。

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