Spatial Field Reconstruction and Sensor Selection in Heterogeneous Sensor Networks with Stochastic Energy Harvesting
Pengfei Zhang, Ido Nevat, Gareth W. Peters, Francois Septier and, Michael A. Osborne

TL;DR
This paper develops efficient algorithms for spatial field reconstruction and sensor selection in heterogeneous energy-harvesting sensor networks, accounting for energy variability and sensor quality differences.
Contribution
It introduces a low complexity S-BLUE-based method for spatial reconstruction and a Cross Entropy-based algorithm for sensor selection in energy-harvesting sensor networks.
Findings
Significant performance improvement by combining high- and low-quality sensors.
Effective sensor selection with performance guarantees using the proposed algorithms.
Validation on synthetic and real storm surge data demonstrates practical applicability.
Abstract
We address the two fundamental problems of spatial field reconstruction and sensor selection in het- erogeneous sensor networks. We consider the case where two types of sensors are deployed: the first consists of expensive, high quality sensors; and the second, of cheap low quality sensors, which are activated only if the intensity of the spatial field exceeds a pre-defined activation threshold (eg. wind sensors). In addition, these sensors are powered by means of energy harvesting and their time varying energy status impacts on the accuracy of the measurement that may be obtained. We account for this phenomenon by encoding the energy harvesting process into the second moment properties of the additive noise, resulting in a spatial heteroscedastic process. We then address the following two important problems: (i) how to efficiently perform spatial field reconstruction based on…
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