Optimized Random Deployment of Energy Harvesting Sensors for Field Reconstruction in Analog and Digital Forwarding Systems
Teng-Cheng Hsu, Y.-W. Peter Hong, and Tsang-Yi Wang

TL;DR
This paper proposes an optimized, energy-aware random deployment strategy for sensors in large-scale fields, improving reconstruction accuracy by balancing sensor distribution based on energy availability and channel conditions.
Contribution
It introduces a novel deployment optimization method considering energy harvesting statistics and sensor transmission policies for both analog and digital systems.
Findings
Optimized sensor deployment reduces reconstruction error.
Energy-aware transmission policies improve data collection efficiency.
Numerical simulations confirm the effectiveness of the proposed approach.
Abstract
This work examines the large-scale deployment of energy harvesting sensors for the purpose of sensing and reconstruction of a spatially correlated Gaussian random field. The sensors are powered solely by energy harvested from the environment and are deployed randomly according to a spatially nonhomogeneous Poisson point process whose density depends on the energy arrival statistics at different locations. Random deployment is suitable for applications that require deployment over a wide and/or hostile area. During an observation period, each sensor takes a local sample of the random field and reports the data to the closest data-gathering node if sufficient energy is available for transmission. The realization of the random field is then reconstructed at the fusion center based on the reported sensor measurements. For the purpose of field reconstruction, the sensors should, on the one…
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