Maximizing Sampling Data Upload in Ambient Backscatter Assisted Wireless Powered Networks

This paper studies a novel proble that aims to maximize the number of uploaded samples by devices in wireless powered IoT networks. To do so, it takes advantage of ambient backscatter communications (AmBC) to help sensor devicees conserve energy and thus leaving them with more energy to collect samples. We outline a Mixed Integer Linear Program (MILP) that aims to determine the operation mode of each device in each time slot in order to maximize the total amount of uploaded samples. We also present a heuristic approach to set the operation mode of devices based on their residual energy and data. Our results show that as compared to the case without AmBC, the total data uploaded by devices increases by 48% and 45% for MILP and heuristic, respectively -- both of which exploit AmBC.