Handling Coexistence of LoRa with Other Networks through Embedded Reinforcement Learning

被引:3
|
作者
Fahmida, Sezana [1 ]
Modekurthy, Venkata Prashant [2 ]
Rahman, Mahbubur [3 ]
Saifullah, Abusayeed [1 ]
机构
[1] Wayne State Univ, Detroit, MI 48201 USA
[2] Univ Nevada Las Vegas, Las Vegas, NV USA
[3] CUNY Queens Coll, New York, NY USA
来源
PROCEEDINGS 8TH ACM/IEEE CONFERENCE ON INTERNET OF THINGS DESIGN AND IMPLEMENTATION, IOTDI 2023 | 2023年
关键词
Internet-of-Things; IoT; Low Power Wide-Area Networks; LoRa; Reinforcement Learning; Q-learning;
D O I
10.1145/3576842.3582383
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The rapid growth of various Low-Power Wide-Area Network (LPWAN) technologies in the limited spectrum brings forth the challenge of their coexistence. Today, LPWANs are not equipped to handle this impending challenge. It is difficult to employ sophisticated media access control protocol for low-power nodes. Coexistence handling for WiFi or traditional short-range wireless network will not work for LPWANs. Due to long range, their nodes can be subject to an unprecedented number of hidden nodes, requiring highly energy-efficient techniques to handle such coexistence. In this paper, we address the coexistence problem for LoRa, a leading LPWAN technology. To improve the performance of a LoRa network under coexistence with many independent networks, we propose the design of a novel embedded learning agent based on a lightweight reinforcement learning at LoRa nodes. This is done by developing a Q-learning framework while ensuring minimal memory and computation overhead at LoRa nodes. The framework exploits transmission acknowledgments as feedback from the network based on what a node makes transmission decisions. To our knowledge, this is the first Q-learning approach for handling coexistence of low-power networks. Considering various coexistence scenarios of a LoRa network, we evaluate our approach through experiments indoors and outdoors. The outdoor results show that our Q-learning approach on average achieves an improvement of 46% in packet reception rate while reducing energy consumption by 66% in a LoRa network. In indoor experiments, we have observed some coexistence scenarios where a current LoRa network loses all the packets while our approach enables 99% packet reception rate with up to 90% improvement in energy consumption.
引用
收藏
页码:410 / 423
页数:14
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