Smart City Gnosys

Smart city article details

Title Pamlr: A Passive-Active Multi-Arm Bandit-Based Solution For Lora Channel Allocation
ID_Doc 41199
Authors Yun J.; Li C.; Arora A.
Year 2023
Published BuildSys 2023 - Proceedings of the10th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation
DOI http://dx.doi.org/10.1145/3600100.3623725
Abstract Achieving low duty cycle operation in low-power wireless networks in urban environments is complicated by the complex and variable dynamics of external interference and fading. We explore the use of reinforcement learning for achieving low power consumption for the task of optimal selection of channels. The learning relies on a hybrid of passive channel sampling for dealing with external interference and active channel sampling for dealing with fading. Our solution, Passive-Active Multi-armed bandit for LoRa (PAMLR, pronounced "Pamela"), balances the two types of samples to achieve energy-efficient channel selection: active channel measurements are tuned to an appropriately low level to update noise thresholds, and to compensate passive channel measurements are tuned to an appropriately high level for selecting the top-most channels from channel exploration using the noise thresholds. The rates of both types of samples are adapted in response to channel dynamics. Based on extensive testing in multiple environments in different cities, we validate that PAMLR can maintain excellent communication quality, as demonstrated by a low SNR regret compared to the optimal channel allocation policy, while substantially minimizing the energy cost associated with channel measurements. © 2023 ACM.
Author Keywords channel selection; dynamics; external interference; fading; LoRa; low power; LPWAN; multi-armed bandit; reinforcement learning; smart cities


Similar Articles


Id Similarity Authors Title Published
61574 View0.851Kumar S.Weather-Aware Lorawan Channel Selection Using Bandit Algorithms2023 IEEE World Forum on Internet of Things: The Blue Planet: A Marriage of Sea and Space, WF-IoT 2023 (2023)