学习贝叶斯网络用于系统诊断

V. Ramirez, A. Piqueras
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引用次数: 6

摘要

提出了一种用于工业系统故障诊断的贝叶斯网络的构造方法。我们考虑植物的数学模型来建立这个网络,它包括参数和结构的学习,通过Beta Dirichlet分布。我们通过一个案例研究来体验之前的方法,在案例研究中,我们模拟了用于连接沉积系统的阀门可能发生的一些故障。利用这些故障信息,我们训练网络,通过这种方式我们学习贝叶斯网络的结构和参数。得到网络后,通过多树算法设计诊断概率推理。它会根据入口传感器显示的证据给出阀门失效概率。在这项工作中,我们通过概率和模糊方法来尝试诊断变量中存在的不确定性。由于传感器提供的信息(诊断变量)以模糊逻辑形式表示,因此将其转换为概率区间,将Dempster-Shafer理论推广到模糊集。然后,我们将这些信息以区间形式传播到整个诊断贝叶斯网络中,从而得到我们的诊断结果。在决策时,概率区间比奇异值更可取
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Bayesian Networks for Systems Diagnosis
This paper proposes the construction of a Bayesian network for failure diagnosis in industrial systems. We built this network considering the plant mathematical model and it includes parameters and structure learning through the Beta Dirichlet distributions. We experience the previous methodology by means of a case study, where we simulate some failures that can occurs in the valves used to interconnect a deposits system. With those failures information, we train the network and this way we learn the structure and parameters of the Bayesian network. Once obtained the network, we design the diagnosis probabilistic inference through the poly-trees algorithm. It will give us the valves failure probabilities according to the evidences that show up in our entrance sensors. In this work, we try the existent uncertainty in the diagnosis variables through the probabilistic and fuzzy approach. Since the information provided by our sensors (diagnosis variables) is represented in a fuzzy logic form, for then to be converted to probability intervals, generalizing the Dempster-Shafer theory to fuzzy sets. After that, we spread this information in interval form throughout the diagnosis Bayesian network to get our diagnosis results. The probability interval is more advisable in the taking decisions that a singular value
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