采煤机摇臂传动故障识别分析模型设计研究

    Research on the design and analysis model of shearer rocker transmission fault identification

    • 摘要: 目前在矿井生产过程中,采煤机摇臂故障率高,故障识别慢,给井下生产带来了一定的安全隐患,为了解决此问题,本文以传动系统故障高发的齿轮与轴承为研究对象,从故障的原理出发,构建采煤机摇臂故障识别模型,通过深度迁移学习,确定了卷积层网络的全局参数,测试模型的故障识别准确率达到95%,能够对采煤机安全运行以及矿井安全生产起到一定的保障作用。

       

      Abstract: At present in the process of mine production, the shearer rocker arm high failure rate, slow fault identification, brought certain safety hazard to underground production, in order to solve this problem, this paper to the transmission system fault gear and bearing as the research object, starting from the principle of fault, construction of shearer rocker arm fault identification model, through the depth migration learning, determine the global parameters of the convolution layer network, test the model of fault identification accuracy reached 95%, to the safe operation of shearer and mine safety production play a certain role.

       

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