A novel approach to in-field, in-mission reliability monitoring based on Deep Data

Evelyn Landman, Noam Brousard, Tamar Naishlos
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引用次数: 2

Abstract

This paper describes a deep data approach to reliability monitoring in advanced electronics, based on degradation as a precursor for failure. By applying machine learning algorithms and analytics to data created by on-chip monitoring IPs (Agents), IC/system health and performance can be continuously monitored, at all stages of the product lifecycle. Realtime degradation analysis of critical parameters and failure mechanisms, under field conditions and application environments, points to the underlying Physics of Failure, which in turn allows to estimate the time to failure. Users are alerted on faults in advance, via a cloud-based analytics platform, and can take corrective action to prevent failures. The future of reliability physics and engineering is fundamentally shifting from accelerated lifetime tests to in-field failure prediction.
一种基于深度数据的现场任务可靠性监测新方法
本文描述了一种基于退化作为故障前兆的先进电子设备可靠性监测的深度数据方法。通过将机器学习算法和分析应用于片上监控ip(代理)创建的数据,可以在产品生命周期的各个阶段持续监控IC/系统的健康状况和性能。在现场条件和应用环境下,对关键参数和失效机制进行实时退化分析,指出潜在的失效物理,从而可以估计失效时间。用户可以通过基于云的分析平台提前收到故障警报,并可以采取纠正措施来防止故障发生。可靠性物理和工程的未来将从加速寿命测试转向现场故障预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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