Secure Quantized Sequential Detection in the Internet of Things with Eavesdroppers

Jiangfan Zhang
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Abstract

We consider sequential detection based on one-bit quantized data in the Internet of Things (IoT) with an eavesdropper. A lightweight physical-layer encryption algorithm, called stochastic encryption, is employed as a counter measure that flips the quantization bits at each IoT sensor according to certain probabilities, and the flipping probabilities are only known to the legitimate cloud (LC) but not the eavesdropping cloud (EC). Due to the optimality of the sequential probability ratio test (SPRT), the LC employs the SPRT for sequential detection whereas the EC employs a mismatched SPRT (MSPRT). We characterize the asymptotic performance of the MSPRT in terms of the expected sample size as a function of the vanishing error probabilities. We show that every symmetric stochastic encryption is ineffective in the sense that it leads to the same expected sample size at the LC and EC when the LC and EC have the same detection accuracy. Next, in the asymptotic regime of small detection error probabilities, we show that every stochastic encryption degrades the performance of the EC to a greater extent in the sense that the expected sample size required at the EC is no fewer than that is required at the LC. Moreover, the optimal stochastic encryption is derived in the sense of maximizing the difference between the expected sample sizes required at the EC and LC.
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带窃听器的物联网安全量化顺序检测
我们考虑在具有窃听器的物联网(IoT)中基于一位量化数据的顺序检测。一种轻量级的物理层加密算法被称为随机加密,作为一种对策,它根据一定的概率翻转每个物联网传感器的量化位,翻转概率只有合法云(LC)知道,而窃听云(EC)不知道。由于序列概率比检验(SPRT)的最优性,LC采用SPRT进行序列检测,而EC采用不匹配的SPRT (MSPRT)。我们用期望样本量作为消失误差概率的函数来描述MSPRT的渐近性能。我们证明了每一个对称随机加密是无效的,因为当LC和EC具有相同的检测精度时,它在LC和EC处导致相同的期望样本量。接下来,在小检测误差概率的渐近范围内,我们表明,在EC所需的期望样本量不少于LC所需的样本量的意义上,每个随机加密都在更大程度上降低了EC的性能。此外,最优随机加密是在EC和LC所需的期望样本大小之间的差异最大化的意义上推导出来的。
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