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SP2F: A secured privacy-preserving framework for smart agricultural Unmanned Aerial Vehicles

机译:SP2F:智能农业无人航空公司的安全保留框架

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摘要

The current advancement in Unmanned Aerial Vehicles (UAVs) and the proliferation of the Internet of Things (IoT) devices is revolutionizing conventional farming operations into precision agriculture. The agricultural UAVs combined with IoT use an open channel i.e., the Internet to assist cultivators with data collection, processing, monitoring, and making correct decisions on the farm. However, the use of the Internet opens up a wide range of challenges such as security (e.g., performing cyber-attacks), risk of data privacy (e.g., data poisoning and inference attacks), etc. The usage of current conventional centralized security measures has limitations in terms of a single point of failure, verifiability, traceability, and scalability. Motivated from the aforementioned challenges, we propose a Secured Privacy-Preserving Framework (SP2F) for smart agricultural UAVs. The proposed SP2F framework has two main engines, a two-level privacy engine, and a deep learning-based anomaly detection engine. In the two-level privacy engine, a blockchain, and smart contract-based enhanced Proof of Work (ePoW) is designed for data authentication, and to mitigate data poisoning attacks. A Sparse AutoEncoder (SAE) is applied for transforming data into a new encoded format for preventing inference attacks. In the anomaly detection engine, a Stacked Long-Short-Term Memory (SLSTM) is used to train and evaluate the results of the proposed two-level privacy engine using two publicly accessible IoT-based datasets, namely ToN-IoT and IoT Botnet. Finally, based on thorough analysis, and comparison, we identify that the SP2F framework outperforms several state-of-the-art techniques in both non-blockchain and blockchain frameworks.
机译:无人驾驶飞行器(无人机)的目前进步和事物互联网的扩散(IOT)设备正在彻底改变常规农业运营精度。农业无人机与IOT联合使用,使用互联网,互联网,以协助培养人进行数据收集,加工,监控和在农场上做出正确的决策。然而,互联网的使用开辟了广泛的挑战,例如安全性(例如,进行网络攻击),数据隐私风险(例如,数据中毒和推理攻击)等。使用当前传统的集中安全措施的使用在单点故障,可验证,可追溯性和可扩展性方面具有限制。从上述挑战中激励,我们向智能农业无人机提供了一个安全的隐私保留框架(SP2F)。所提出的SP2F框架有两个主要发动机,两级隐私发动机和深度学习的异常检测引擎。在两级隐私引擎中,块链条和基于智能合同的增强工作证明(EPOW)旨在为数据认证而设计,并减轻数据中毒攻击。应用稀疏的AutoEncoder(SAE)用于将数据转换为新的编码格式,以防止推动攻击。在异常检测引擎中,使用两个可访问的基于某种基于物联网的数据集,即ION-IOT和IOT僵尸网络来培训和评估所提出的两级隐私引擎的结果。最后,基于彻底的分析和比较,我们认为SP2F框架在非区块链和区块链框架中优于几种最先进的技术。

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