Sequential detection with feedback information for two‐way cooperative spectrum sensing in cognitive internet of things

Author:

Wu Jun12ORCID,Su Mingkun1,Bao Jianrong1,Qiao Lei12,Xu Xiaorong1,Wang Hao1,Zhu Gefei1,Cao Weiwei3

Affiliation:

1. School of Communication Engineering Hangzhou Dianzi University Hangzhou China

2. State Key Laboratory of Space Weather Chinese Academy of Sciences Beijing China

3. Key Laboratory of Flight Techniques and Flight Safety CAAC, Civil Aviation Flight University of China Guanghua China

Abstract

AbstractWith the rapid growth of internet of thing (IoT) devices, cooperative spectrum sensing (CSS) has emerged as a promising solution to leverage the spatial diversity of multiple secondary IoT sensing nodes (SNs) for spectrum availability. However, the cooperative paradigm also incurs increased cooperative costs between each SN and the fusion center (FC), leading to decreased cooperative efficiency and achievable throughput, especially in large‐scale cognitive IoT (CIoT). To address these challenges, we present a sequential detection with feedback information (SD‐FI) approach in this paper. To achieve this objective, we propose a two‐way CSS model that formulates an optimization problem of Bayes cost in a quickest detection framework with feedback. To solve this optimization problem, we derive the structure of the optimal local decision rule from the local decision function and determine the optimal detection threshold in conjunction with the cost function. Following the optimal threshold pair, we implement the optimal SD‐FI and theoretically demonstrate the uniqueness of the optimal threshold and optimal sensing time. Simulation results demonstrate superiority of SD‐FI in terms of cooperative performance (i.e., detection performance and Bayes cost) and sample size. Notably, even with limited sensing time, our proposed SD‐FI exhibits high throughput, highlighting its effectiveness in enhancing spectrum availability and utilization in CIoT.

Funder

National Natural Science Foundation of China

Publisher

Wiley

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