2019-10-02T15:39:28Z
2019-10-02T15:39:28Z
2019-09-18
2019-10-02T15:39:29Z
Metal oxide (MOX) sensors are widely used for chemical sensing due to their low cost, miniaturization, low power consumption and durability. Yet, getting instantaneous measurements of fluctuating gas concentration in turbulent plumes is not possible due to their slow response time. In this paper, we show that the slow response of MOX sensors can be compensated by deconvolution, provided that an invertible, parametrized, sensor model is available. We consider a nonlinear, first-order dynamic model that is mathematically tractable for MOX identification and deconvolution. By transforming the sensor signal in the log-domain, the system becomes linear in the parameters and these can be estimated by the least-squares techniques. Moreover, we use the MOX diversity in a sensor array to avoid training with a supervised signal. The information provided by two (or more) sensors, exposed to the same flow but responding with different dynamics, is exploited to recover the ground truth signal (gas input). This approach is known as blind deconvolution. We demonstrate its efficiency on MOX sensors recorded in turbulent plumes. The reconstructed signal is similar to the one obtained with a fast photo-ionization detector (PID). The technique is thus relevant to track a fast-changing gas concentration with MOX sensors, resulting in a compensated response time comparable to that of a PID.
Article
Published version
English
Metall-òxid-semiconductors; Detectors de gasos; Metal oxide semiconductors; Gas detectors
MDPI
Reproducció del document publicat a: https://doi.org/10.3390/s19184029
Sensors, 2019, vol. 19, num. 18, p. 4029-4044
https://doi.org/10.3390/s19184029
cc-by (c) Martínez, Dominique et al., 2019
http://creativecommons.org/licenses/by/3.0/es