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Investigation of Fault Diagnosis Model of Rotary Kiln Based on Improved Algorithm of Bayesian

机译:基于改进贝叶斯算法的回转窑故障诊断模型研究

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Bayesian Network is one of the most efficient and reliable method in data mining, and Bayesian Network structure learning is a key link in the process of Bayesian Network research. Aiming at the problem of the classic Hill-Climbing algorithm is easy to fall into local optimum and low in efficiency, establishing the Most Weight Supported Tree by calculating the mutual information, and combining the Most Weight Supported Tree and the simplified Hill-Climbing algorithm, proposes a new improved Bayesian Network structure learning algorithm. Comparing with the classic Hill-Climbing algorithm and K2 algorithm, the simulation experiments shown that the improved algorithm not only can obtain a high accuracy rate model, but improve the efficiency of building model. Based on the improved algorithm and combined with JiDong cement's cement rotary kiln operating data, we can establish the fault diagnosis model of cement rotary kiln and realize a precise and rapid fault diagnosis.
机译:贝叶斯网络是数据挖掘中最有效,最可靠的方法之一,贝叶斯网络结构学习是贝叶斯网络研究过程中的关键环节。针对经典的爬山算法容易陷入局部最优且效率低下的问题,通过计算互信息来建立最受支持树,并结合了最受支持树和简化的爬山算法,提出了一种新的改进贝叶斯网络结构学习算法。仿真实验表明,与经典的Hill-Climbing算法和K2算法相比,改进后的算法不仅可以得到高精度的速率模型,而且可以提高建筑模型的效率。基于改进算法,结合冀东水泥水泥回转窑运行数据,可以建立水泥回转窑故障诊断模型,实现精确,快速的故障诊断。

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