4.7 Article

Mobile Measurement of a Dynamic Field via Compressed Sensing

Journal

IEEE TRANSACTIONS ON MOBILE COMPUTING
Volume 22, Issue 5, Pages 2802-2817

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TMC.2021.3125201

Keywords

Sensors; Time measurement; Aerodynamics; Costs; Sea measurements; Mobile agents; Position measurement; Mobile sensing; dynamics mapping; compressed sensing; simulated annealing optimization; atomic force microscopy

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This paper focuses on the measurement of dynamic signals at points of interest (POIs) using a mobile agent. Existing work in mobile sensing has mainly focused on tracking known or unknown POIs, ignoring signal dynamics. Challenges arise in capturing and recovering the dynamics at each POI using intermittently measured data, resulting in temporal-spatial coupling. A compressed-sensing based approach is proposed to tackle this problem, addressing the trade-off between sensing cost and performance. Simulation studies show the effectiveness of the proposed approach in measuring temperature-dependent nanomechanical variations.
In this paper, measuring dynamic signals at points of interest (POIs) using a mobile agent is considered, where the agent is required to repeatedly measure at and transit between the POIs. Dynamic field sensing is needed in areas ranging from nanomechanical mapping of live sample to crop monitoring. Existing work on mobile sensing, however, has been focused on cooperatively tracking one or few known or unknown POIs, whereas the dynamics of the signals is ignored. Challenges arise from capturing and recovering the dynamics at each POI by using the data intermittently measured by the mobile agent, resulting in temporal-spatial coupling in mobile sensing. Moreover, trade off between the sensing cost and the performance needs to be addressed. We propose a compressed-sensing based approach to tackle this problem. First, a check-and-removal process based on random permutation and partition of the measurement periods is developed to avoid the temporal-spatial coupling under the agent speed constraint. Then a shuffle-and-pair process based on the simulate-annealing is proposed to minimize the transition distance while preserving the performance. It is shown that the distribution of the measurement periods between the POIs converges. The proposed approach is illustrated through a simulation study of measuring the temperature-dependent nanomechanical variations of a polymer sample.

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