Disk Failure Early Warning Based on the Characteristics of Customized SMART

Jian Zhao, Yongzhan He, Hongmei Liu, Jiajun Zhang, B. Liu, Jun Zhang, Wenqing Lv, Alex Zhou, Feng Jiang, Jing Liu, Ahujia Nishi
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引用次数: 4

Abstract

Today, with the deep popularization of the Internet, continuous development of 5G, cloud and artificial intelligence, the total global data volume is increasing explosively. With more and more data stored in the data center, traditional hard drives are still hosting large amounts of data, and the single-drive capacity is increasing with an average annual rate of more than 10%, so the availability of hard drives is increasingly impacting data security. According to statistics, hard disk failure rate is more than 50% in the whole server failure accounted, the data center has to sacrifice disk performance and time to recover data continuously. There are huge problems with traditional SMART-based fault monitoring in the fault alarm aging, coverage, accuracy, it can not be avoided in advance. Disk failure early warning systems based on disk customized SMART features are designed to solve these problems. It customized the status information, error statistics, environmental information, reliability information, etc. for the basic components related to disk, disc, motor, etc., and trained the hard disk characteristics of fault classes and normal classes by analyzing the statistics and clustering of various factors, and using the machine learning method strains related to the decision tree. Gradually establish a fault prediction model. The fault prediction model can handle the failed hard drive in advance, data backup and migration timely, so as to avoid failure and data loss, to protect the data security in the data center. The results show there is strong correlation with hard disk failure for the error rate of hard disk, reallocate sector, command timeout and so on, and the accuracy of the model in disk failure prediction can reach more than 98%.
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基于定制SMART特性的硬盘故障预警
今天,随着互联网的深度普及,5G、云和人工智能的不断发展,全球数据总量呈爆发式增长。随着数据中心存储的数据越来越多,传统硬盘仍然承载着大量的数据,单盘容量以年均10%以上的速度增长,因此硬盘的可用性对数据安全的影响越来越大。据统计,硬盘故障率占整个服务器故障的50%以上,数据中心不得不牺牲硬盘性能和时间来持续恢复数据。传统的基于智能的故障监测在故障报警老化、覆盖范围、准确性等方面存在着巨大的问题,无法避免提前报警。基于硬盘定制SMART功能的硬盘故障预警系统就是为了解决这些问题而设计的。针对磁盘、磁盘、电机等相关的基本部件定制状态信息、误差统计、环境信息、可靠性信息等,通过分析各种因素的统计和聚类,利用与决策树相关的机器学习方法应变,训练出故障类和正常类的硬盘特征。逐步建立故障预测模型。故障预测模型可以提前处理故障硬盘,及时备份和迁移数据,避免故障和数据丢失,保护数据中心的数据安全。结果表明,硬盘错误率、扇区再分配、命令超时等与硬盘故障有较强的相关性,该模型在硬盘故障预测中的准确率可达98%以上。
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