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An efficient resource allocation scheme in a dense RFID network based on cellular learning automata

机译:基于蜂窝学习自动机的密集RFID网络中一种有效的资源分配方案。

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摘要

Radio-frequency identification (RFID) is a wireless communication technology. Radio frequencies can cause interference in a dense RFID system, thus decreasing efficiency. In recent years, many protocols have been proposed to reduce reader collisions based on multiple-access techniques. The main weakness of Time Division Multiple Access (TDMA)-based schemes is the random selection of resources. Additionally, they do not consider the distance between the interfering readers. Therefore, the likelihood of interference in an RFID system will be increased. To address this problem, we propose a new scheme for allocating resources to readers using a learning technique. The proposed scheme takes into account the distance between interfering readers, and these readers acquire the necessary knowledge to select new resources based on the results of the previous selection of neighboring readers using cellular learning automata. This approach leads to reduced interference in an RFID system. The proposed scheme is fully distributed and operates without hardware redundancy. In this scheme, the readers select new resources without exchanging information with each other. The simulation results show that the percentage of kicked readers decreased by more than 20%, and the proposed scheme also provides higher throughput than do state-of-the-art schemes for dense reader environments and leads to further recognition of tags.
机译:射频识别(RFID)是一种无线通信技术。射频会在密集的RFID系统中造成干扰,从而降低效率。近年来,已经提出了许多协议来减少基于多址技术的读取器冲突。基于时分多址(TDMA)方案的主要缺点是资源的随机选择。此外,他们不考虑干扰阅读器之间的距离。因此,RFID系统中发生干扰的可能性将增加。为了解决这个问题,我们提出了一种使用学习技术为读者分配资源的新方案。所提出的方案考虑了干扰阅读器之间的距离,并且这些阅读器基于使用蜂窝学习自动机对相邻阅读器的先前选择的结果,获得了选择新资源的必要知识。这种方法可以减少RFID系统中的干扰。所提出的方案是完全分布式的,并且在运行时没有硬件冗余。在这种方案中,读者无需彼此交换信息即可选择新资源。仿真结果表明,被踢开的阅读器的百分比降低了20%以上,并且与密集型阅读器环境中的最新技术相比,该方案还提供了更高的吞吐量,并导致了标签的进一步识别。

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