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Detecting changes at the sensor level in cyber-physical systems: Methodology and technological implementation

机译:在网络物理系统中检测传感器级别的变化:方法和技术实施

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Self-adaptive Cyber-Physical Systems (CPSs) enrich CPSs functionalities by introducing self-configuration, self-management, and self-healing skills. Such skills, which are crucial to support adaptation mechanisms, take advantage of the ability to detect changes in the acquired datastreams, e.g., induced by faults affecting sensors/actuators or time-variant environments. In turn, change detection permits CPSs to enable adaptive mechanisms such as reconfiguration of some functionalities to track or mitigate the effect of the change. This paper introduces a novel methodology together with a technological implementation specifically designed for detecting changes affecting the sensor acquisitions in units of CPSs. The methodology requires: 1) learning the signal model; 2) design a model-free change detection test; 3) design a change-point method to validate the detected change. A technological implementation of the proposed methodology encompassing linear predictive models, the ICI-based change detection test and the Mann-Whitney change-point method is introduced and tested on the ST STM32 Nucleo platform. The high detection accuracy altogether with the low computational load and memory occupation make the proposed methodology (and its technological implementation) well suited for self-adaptive CPSs.
机译:自适应网络物理系统(CPS)通过引入自我配置,自我管理和自我修复技能,丰富了CPS的功能。对于支持适应机制至关重要的这些技能利用了检测所获取的数据流中的变化的能力,例如由影响传感器/执行器或时变环境的故障引起的变化。反过来,变更检测允许CPS启用自适应机制,例如重新配置某些功能以跟踪或减轻变更的影响。本文介绍了一种新颖的方法以及专门用于检测影响以CPS为单位的传感器采集的变化的技术实现。该方法要求:1)学习信号模型; 2)设计无模型变化检测测试; 3)设计变更点方法以验证检测到的变更。在ST STM32 Nucleo平台上介绍并测试了所提出方法的技术实现,该方法包括线性预测模型,基于ICI的变化检测测试和Mann-Whitney变化点方法。较高的检测精度以及较低的计算量和内存占用使所提出的方法(及其技术实现)非常适合于自适应CPS。

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