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Research on Automatic Fault Diagnosis System of Coal Mine Drilling Rigs based on Drilling Parameters

机译:基于钻井参数的煤矿钻机自动故障诊断系统研究

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Aiming at the problem that the underground fully hydraulic drilling rigs mainly relies on manual experience to diagnose faults, which requires high professional skills of the operators and can not accurately and reasonably judge the fault types, this paper puts forward a method to identify faults by using the sensitive drilling parameters in the drilling rigs construction. Firstly, principal component analysis(PCA) algorithm is used to extract features from drilling sensitive data sets, which eliminates the correlation between drilling data sets. Then, the self-organizing maps(SOM) neural network clustering algorithm is performed on the trained samples, and the cluster centers are obtained. By calculating the Euclidean distance between each sample in the test sample set and the cluster center in the high-dimensional feature space, the Bayesian discriminant method is used to judge the test samples, and the final fault diagnosis result is obtained. The diagnostic accuracy rate is up to 90%. This method provides a new and reliable fault warning method for the fully hydraulic drilling rigs in coal mine.
机译:针对目前地下全液压钻机主要依靠人工经验来诊断故障,这就要求运营商高的专业技能并不能准确合理地判断故障类型的问题,本文提出了一种通过使用来识别故障的方法,在钻井敏感钻井参数钻井平台建设。首先,主成分分析(PCA)算法用于提取从钻井敏感的数据集,从而消除了钻井数据集之间的相关性的特征。然后,自组织映射(SOM)神经网络聚类算法在训练样本执行,并且得到的聚类中心。通过计算在所述测试样品组中的每个样本,并在高维特征空间上的簇中心之间的欧几里得距离,贝叶斯判别方法用于判断测试样品,并且获得最终的故障诊断结果。诊断准确率高达90%。这种方法提供了在煤矿的全液压钻机新的和可靠的故障预警方法。

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