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Deep Learning-Based Real-Time Failure Detection of Storage Devices

机译:基于深度学习的存储设备的实时故障检测

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With the rapid development of cloud technologies, evaluating cloud-based services has emerged as a critical consideration for data center storage system reliability, and ensuring such reliability is the primary priority for such centers. Therefore, a mechanism by which data centers can automatically monitor and perform predictive maintenance to prevent hard disk failures can effectively improve the reliability of cloud services. This study develops an alarm system for self-monitoring hard drives that provides fault prediction for hard disk failure. Combined with big data analysis and deep learning technologies, machine fault pre-diagnosis technology is used as the starting point for fault warning. Finally, a predictive model is constructed using Long and Short Term Memory (LSTM) Neural Networks for Recurrent Neural Networks (RNN). The resulting monitoring process provides condition monitoring and fault diagnosis for equipment which can diagnose abnormalities before failure, thus ensuring optimal equipment operation.
机译:随着云技术的快速发展,评估基于云的服务作为数据中心存储系统可靠性的批判性考虑,并且确保这种可靠性是此类中心的主要优先级。因此,数据中心可以自动监视并执行预测维护以防止硬盘故障的机制可以有效地提高云服务的可靠性。本研究开发了一种用于自我监控硬盘驱动器的警报系统,为硬盘故障提供故障预测。结合大数据分析和深度学习技术,机器故障预诊断技术用作故障警告的起点。最后,使用用于经常性神经网络(RNN)的长期和短期存储器(LSTM)神经网络来构建预测模型。由此产生的监控过程为能够在失败前诊断异常的设备提供条件监测和故障诊断,从而确保了最佳的设备运行。

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