2020
DOI: 10.3390/s20164577
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Framework for the Simulation of Sensor Networks Aimed at Evaluating In Situ Calibration Algorithms

Abstract: The drastically increasing availability of low-cost sensors for environmental monitoring has fostered a large interest in the literature. One particular challenge for such devices is the fast degradation over time of the quality of their data. Therefore, the instruments require frequent calibrations. Traditionally, this operation is carried out on each sensor in dedicated laboratories. This is not economically sustainable for dense networks of low-cost sensors. An alternative that has been investigated is in s… Show more

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Cited by 6 publications
(2 citation statements)
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“…it does not drift. The instruments of class zero all follow a random gain and offset increase (RGOI) drift model [42]. Gain G(s i , t) and offset O(s i , t) drift of instrument s i are computed at each time step following:…”
Section: Instrumentsmentioning
confidence: 99%
“…it does not drift. The instruments of class zero all follow a random gain and offset increase (RGOI) drift model [42]. Gain G(s i , t) and offset O(s i , t) drift of instrument s i are computed at each time step following:…”
Section: Instrumentsmentioning
confidence: 99%
“…In order to generate and assess such algorithmic approaches for chemiresistive gas sensors, however, simulation data exploring different sensor network scenarios are necessary. For the specific case of sensor drift, such frameworks have already been investigated to evaluate calibration algorithms, e.g., in [3]. Therefore, in order to study other fault types, we want to present a framework based upon a stochastic sensor simulator [4], which can provide sensor network simulations specifically feasible for a number of different sensor defects.…”
Section: Introductionmentioning
confidence: 99%