An Adaptive Temporal Convolutional Network Autoencoder for Malicious Data Detection in Mobile Crowd Sensing

N. Owoh, Jackie Riley, Moses Ashawa, Salaheddin Hosseinzadeh, Anand Philip, Jude Osamor
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Abstract

Mobile crowdsensing (MCS) systems rely on the collective contribution of sensor data from numerous mobile devices carried by participants. However, the open and participatory nature of MCS renders these systems vulnerable to adversarial attacks or data poisoning attempts where threat actors can inject malicious data into the system. There is a need for a detection system that mitigates malicious sensor data to maintain the integrity and reliability of the collected information. This paper addresses this issue by proposing an adaptive and robust model for detecting malicious data in MCS scenarios involving sensor data from mobile devices. The proposed model incorporates an adaptive learning mechanism that enables the TCN-based model to continually evolve and adapt to new patterns, enhancing its capability to detect novel malicious data as threats evolve. We also present a comprehensive evaluation of the proposed model’s performance using the SherLock datasets, demonstrating its effectiveness in accurately detecting malicious sensor data and mitigating potential threats to the integrity of MCS systems. Comparative analysis with existing models highlights the performance of the proposed TCN-based model in terms of detection accuracy, with an accuracy score of 98%. Through these contributions, the paper aims to advance the state of the art in ensuring the trustworthiness and security of MCS systems, paving the way for the development of more reliable and robust crowdsensing applications.
用于移动人群感知中恶意数据检测的自适应时序卷积网络自动编码器
移动众感应(MCS)系统依赖于参与者携带的众多移动设备对传感器数据的集体贡献。然而,MCS 的开放性和参与性使得这些系统很容易受到恶意攻击或数据中毒企图的影响,威胁者可以向系统中注入恶意数据。因此需要一种检测系统来减少恶意传感器数据,以保持所收集信息的完整性和可靠性。本文针对这一问题,提出了一种自适应的鲁棒模型,用于在涉及来自移动设备传感器数据的 MCS 场景中检测恶意数据。所提出的模型采用了一种自适应学习机制,使基于 TCN 的模型能够不断发展并适应新的模式,从而增强其随着威胁的发展而检测新型恶意数据的能力。我们还利用 SherLock 数据集对所提出模型的性能进行了全面评估,证明了该模型在准确检测恶意传感器数据和减轻对移动控制系统完整性的潜在威胁方面的有效性。与现有模型的对比分析凸显了所提出的基于 TCN 的模型在检测准确性方面的性能,准确率高达 98%。通过这些贡献,本文旨在推动确保 MCS 系统可信性和安全性的技术发展,为开发更可靠、更强大的群感应用铺平道路。
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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