4.8 Article

Failure Prediction of Hard Disk Drives Based on Adaptive Raox2013;Blackwellized Particle Filter Error Tracking Method

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 17, Issue 2, Pages 913-921

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2020.3016121

Keywords

Degradation; Adaptation models; Hard disks; Particle filters; Feature extraction; Support vector machines; Recurrent neural networks; Adaptive error tracking; failure prediction; hard disk drive (HDD); switchable model

Funding

  1. National Natural Science Foundation of China [61633001, 51875437]
  2. Key Laboratory of E&M (Zhejiang University of Technology), Ministry of Education and Zhejiang Province [EM2019120104]

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An adaptive error tracking method is proposed for HDD failure prediction, which is validated through model estimation and accelerated degradation testing, demonstrating better performance in failure prediction and alarm distance compared to previous methods.
Active failure prediction of hard disk drives (HDDs) is critical to prevent data loss and spare parts replacement decisions. Existing methods for failure predictions of HDDs always used a binary classifier to distinguish the healthy or failed HDDs and cannot address the problem of variable degradation states. In this article, an adaptive error tracking method is proposed for the HDD failure prediction. This method regards the extracted degradation feature as time serials and uses a state filter to estimate the real-time HDDx0027;s health status. Then, the HDD failure online prediction is achieved according to the alarm threshold determined by the adaptive error tracking. The degradation of an HDD is described by a first-order Markov hybrid jump degradation model, and the advanced Raox2013;Blackwellized particle filter algorithm, together with the expectation-maximization (EM) algorithm, is derived to estimate the model parameters adaptively. Finally, to verify the effectiveness of the proposed method, an accelerated degradation test (ADT) based on the vibration was carried out. And the data from ADT and real data center show that the proposed method performs much better than the previous methods, such as Kalman filter, SVM, MD, and recurrent neural network (RNN) based methods, with respect to failure prediction and the alarm distance, which helps to backup data and optimize maintenance decision costs for users.

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