Abstract
Optimal resource allocation is crucial for successful deployment of energy harvesting wireless sensor networks (EHWSN) such as Internet-of-Things (IoT) devices. Non-orthogonal multiple-access (NOMA) can significantly improve the network throughput compared to orthogonal multiple-access (OMA). This paper considers optimal power management and data scheduling in multi-hop EH-WSN using NOMA. The EH-WSN consists of M sensor nodes aiming to transmit their data to a sink node. Assuming network connectivity, the multi-hop EH-WSN is represented by a directed graph. The resource allocation problem is formulated to efficiently utilize the available harvested energy to send the available data to the sink node with minimum cost. The resource allocation problem given the system dynamics is non-convex due to the non-convex constraints. Assuming high signal-to-interference and noise ratio (SINR), the non-convex constraints are lower bounded by convex constraints. With the aid
of variable transformation, the constrained non-convex problem is approximated with a convex problem. The convex problem is solved using finite horizon dynamic programming considering offline and online operations. The offline problem is formulated assuming non-causal information of the harvested energy and data arrival. Model predictive control (MPC) framework is used to obtain the solution of the online operation of the EHWSN. A distributed MPC (DMPC) is proposed to overcome the computational complexity of solving the centralized MPC problem, assuming each sensor node is allowed to exchange
information with its neighboring nodes. In the simulations, we use energy efficiency and average data transmitted to compare the performance of the EH-WSN using NOMA and OMA. Simulation results confirm that NOMA in multi-hop EH-WSN results in higher throughput compared to OMA.
of variable transformation, the constrained non-convex problem is approximated with a convex problem. The convex problem is solved using finite horizon dynamic programming considering offline and online operations. The offline problem is formulated assuming non-causal information of the harvested energy and data arrival. Model predictive control (MPC) framework is used to obtain the solution of the online operation of the EHWSN. A distributed MPC (DMPC) is proposed to overcome the computational complexity of solving the centralized MPC problem, assuming each sensor node is allowed to exchange
information with its neighboring nodes. In the simulations, we use energy efficiency and average data transmitted to compare the performance of the EH-WSN using NOMA and OMA. Simulation results confirm that NOMA in multi-hop EH-WSN results in higher throughput compared to OMA.
Original language | English |
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Pages (from-to) | 4907-4916 |
Number of pages | 11 |
Journal | IEEE Internet of Things Journal |
Volume | 9 |
Issue number | 7 |
Early online date | 22 Sept 2021 |
DOIs | |
Publication status | Published - 1 Apr 2022 |
MoE publication type | A1 Journal article-refereed |