一种智能管道故障诊断系统

Chaonan Wang, Yiliang Han, Na Ni
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引用次数: 1

摘要

针对历史故障数据不足的问题,提出了一种管道故障诊断方法。首先,研究感知数据与故障类别的对应关系,确定SVM故障分类模型;然后,基于故障诊断训练数据集,形成最匹配的贝叶斯网络结构,并根据故障类别和故障原因确定参数。在故障诊断应用中,基于管道中各节点的实时感知数据,通过训练好的SVM故障分类模型对故障进行分类;然后,根据分类结果,利用贝叶斯网络结构和参数进行推理,确定各节点的故障概率,并将故障概率最高的节点和故障类别作为故障诊断结果。
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An intelligent pipeline fault diagnosis system
A method of pipeline fault diagnosis is proposed in this paper to solve the problem of fault diagnosis with insufficient historical fault data. Firstly, the corresponding relationship between the sensing data and fault category is studied to determine the SVM fault classification model; then, based on the fault diagnosis training data set, the most matching Bayesian network structure is formed and the parameters are determined according to the fault category and fault causes. In the fault diagnosis application, the fault is classified by the trained SVM fault classification model based on the real-time sensing data of each node in the pipeline; Then, according to the classification results, the Bayesian network structure and parameters are used for reasoning to determine the failure probability of each node, and the node with the highest failure probability and the failure category are taken as the fault diagnosis results.
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