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Predicting field performance of on-board diagnostics using statistical methods

机译:使用统计方法预测车载诊断的现场性能

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摘要

On-board diagnostics will play a crucial role in the emerging era of the Internet of Things. With billions of devices deployed, traditional manual preventive maintenance approaches will be cost prohibitive. As we make these small autonomous devices intelligent, it is critical that we also give them a very advanced ability to assess and report their own health. Of course, on-board diagnostics are not a new concept. What is new with the Internet of Things is the extreme economic leverage that the on-board diagnostics will have due to the huge number of devices to be developed. If the on-board diagnostics perform poorly, the resulting surge of support costs could be enough to drive the organization deploying the Internet of Things systems out of business. As an organization gets ready to release millions of a certain type of Internet of Things device into the wild, how confident can the organization be that the on-board diagnostics will really perform as expected? As it turns out, we can learn from history. In the 1960s and 1970s, the mainframe and telecommunications industries developed powerful statistical methods for answering this exact question for the large mission-critical systems that they were deploying.
机译:车载诊断将在新兴的物联网时代中发挥关键作用。随着数十亿设备的部署,传统的手动预防性维护方法将使成本过高。当我们使这些小型自主设备变得智能化时,至关重要的是,我们还应使它们具有非常先进的能力来评估和报告其自身的健康状况。当然,车载诊断不是一个新概念。物联网的新功能是由于要开发的设备数量众多,车载诊断将具有极大的经济优势。如果车载诊断程序性能不佳,那么随之而来的支持成本激增可能足以使部署物联网系统的组织停业。当组织准备向野外发布数百万种特定类型的物联网设备时,组织对车载诊断程序将真正按预期执行有多自信?事实证明,我们可以从历史中学习。在1960年代和1970年代,大型机和电信行业开发了强大的统计方法来回答他们正在部署的大型任务关键型系统的确切问题。

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