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Packet Size Optimization for Multiple Input Multiple Output Cognitive Radio Sensor Networks aided Internet of Things

机译:多输入多输出认知无线电传感器网络辅助物联网的分组大小优化

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摘要

The determination of Optimal Packet Size (OPS) for Cognitive Radio assisted Sensor Networks (CRSNs) architecture is non-trivial. State of the art in this area describes various complex techniques to determine OPS for CRSNs. However, it is observed that under high interference from the surrounding users, it is not possible to determine a feasible optimal packet size of data transmission under the simple point-to-point CRSN network topology. This is contributed primarily due to the peak transmit power constraint of the cognitive nodes. To address this specific challenge, this paper proposes a Multiple Input Multiple Output based Cognitive Radio Sensor Networks (MIMO-CRSNs) architecture for futuristic technologies like Internet of Things (IoT) and machine-to-machine (M2M) communications. A joint optimization problem is formulated taking into account network constraints like the overall end to end latency, interference duration caused to the non-cognitive users, average BER and transmit power.We propose our Algorithm-1 based on generic exhaustive search technique blue to solve the optimization problem. Furthermore, a low complexity suboptimal Algorithm-2 based on solving classical Karush-Kuhn-Tucker (KKT) conditions is proposed. These algorithms for MIMO-CRSNs are implemented in conjunction with two different channel access schemes. These channel access schemes are Time Slotted Distributed Cognitive Medium Access Control denoted as MIMO-DTS-CMAC and CSMA/CA assisted Centralized Common Control Channel based Cognitive Medium Access Control denoted as MIMO-CC-CMAC. Simulations reveal that the proposed MIMO based CRSN network outperforms the conventional point-to-point CRSN network in terms of overall energy consumption. Moreover, the proposed Algorithm-1 and Algorithm2 shows perfect match and the implementation complexity of Algorithm-2 is much lesser than Algorithm-1. Algorithm-1 takes almost 680 ms to execute and provides OPS value for a given number of users while Algorithm- 2 takes 4 to 5 ms on an average to find the optimal packet size for the proposed MIMO-CRSN framework.
机译:确定认知无线电辅助传感器网络(CRSN)架构的最佳数据包大小(OPS)并非易事。该领域的现有技术描述了确定用于CRSN的OPS的各种复杂技术。但是,观察到在来自周围用户的强烈干扰下,不可能在简单的点对点CRSN网络拓扑下确定可行的最佳数据传输数据包大小。这主要归因于认知节点的峰值发射功率约束。为了解决这一特定挑战,本文提出了一种基于多输入多输出的认知无线电传感器网络(MIMO-CRSN)架构,用于诸如物联网(IoT)和机器对机器(M2M)通信的未来技术。考虑到网络约束,例如整体端到端延迟,对非认知用户造成的干扰持续时间,平均BER和发射功率,提出了一个联合优化问题。我们提出了基于通用穷举搜索技术blue的Algorithm-1来解决优化问题。此外,提出了一种基于求解经典的Karush-Kuhn-Tucker(KKT)条件的低复杂度次优算法-2。结合两个不同的信道访问方案来实现这些用于MIMO-CRSN的算法。这些信道访问方案是表示为MIMO-DTS-CMAC的时隙分布式认知介质访问控制和表示为MIMO-CC-CMAC的基于CSMA / CA辅助基于集中式公共控制信道的认知介质访问控制。仿真表明,基于MIMO的CRSN网络在总体能耗方面优于传统的点对点CRSN网络。此外,提出的算法1和算法2表现出完美的匹配,算法2的实现复杂度比算法1小得多。算法1花费将近680毫秒执行并为给定数量的用户提供OPS值,而算法2平均花费4到5毫秒才能找到建议的MIMO-CRSN框架的最佳数据包大小。

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