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Trustworthiness of Dynamic Moving Sensors for Secure Mobile Edge Computing

机译:用于安全移动边缘计算的动态移动传感器的可信度

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Wireless sensor network is an emerging technology, and the collaboration of wireless sensors becomes one of the active research areas for utilizing sensor data. Various sensors collaborate to recognize the changes of a target environment, to identify, if any radical change occurs. For the accuracy improvement, the calibration of sensors has been discussed, and sensor data analytics are becoming popular in research and development. However, they are not satisfactorily efficient for the situations where sensor devices are dynamically moving, abruptly appearing, or disappearing. If the abrupt appearance of sensors is a zero-day attack, and the disappearance of sensors is an ill-functioning comrade, then sensor data analytics of untrusted sensors will result in an indecisive artifact. The predefined sensor requirements or meta-data-based sensor verification is not adaptive to identify dynamically moving sensors. This paper describes a deep-learning approach to verify the trustworthiness of sensors by considering the sensor data only. The proposed verification on sensors can be done without having to use meta-data about sensors or to request consultation from a cloud server. The contribution of this paper includes (1) quality preservation of sensor data for mining analytics. The sensor data are trained to identify their characteristics of outliers: whether they are attack outliers, or outlier-like abrupt changes in environments; and (2) authenticity verification of dynamically moving sensors, which was possible. Previous unknown sensors are also identified by deep-learning approach.
机译:无线传感器网络是一项新兴技术,无线传感器的协作成为利用传感器数据的活跃研究领域之一。各种传感器协作以识别目标环境的变化,并识别是否发生任何根本性的变化。为了提高准确性,已经讨论了传感器的校准,并且传感器数据分析在研究和开发中变得越来越流行。但是,对于传感器设备动态移动,突然出现或消失的情况,它们的效率不能令人满意。如果传感器的突然出现是零日攻击,并且传感器的消失是一个功能失常的战友,那么对不可信传感器的传感器数据分析将导致优柔寡断。预定义的传感器要求或基于元数据的传感器验证不适用于识别动态移动的传感器。本文介绍了一种仅考虑传感器数据即可验证传感器可信度的深度学习方法。可以完成建议的传感器验证,而不必使用有关传感器的元数据或从云服务器请求咨询。本文的贡献包括(1)保留用于挖掘分析的传感器数据的质量。对传感器数据进行训练以识别其异常值的特征:它们是攻击异常值,还是环境中异常值的突然变化; (2)可以对动态移动的传感器进行真实性验证。深度学习方法还可以识别以前未知的传感器。

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