Reservoir computing compensates slow response of chemosensor arrays exposed to fast varying gas concentrations in continuous monitoring

[Display omitted] •We applied reservoir computing (RC) algorithms to chemical gas sensor data.•The RC approach improves the time response of the chemical sensory system.•RC is able to provide accurate predictions in real time.•RC is suitable for continuous monitoring applications and open sampling s...

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Veröffentlicht in:Sensors and actuators. B, Chemical Chemical, 2015-08, Vol.215, p.618-629
Hauptverfasser: Fonollosa, Jordi, Sheik, Sadique, Huerta, Ramón, Marco, Santiago
Format: Artikel
Sprache:eng
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Zusammenfassung:[Display omitted] •We applied reservoir computing (RC) algorithms to chemical gas sensor data.•The RC approach improves the time response of the chemical sensory system.•RC is able to provide accurate predictions in real time.•RC is suitable for continuous monitoring applications and open sampling systems.•Our approach was tested over two public datasets that include dynamic gas mixtures. Metal oxide (MOX) gas sensors arrays are a predominant technological choice to perform fundamental tasks of chemical detection. Yet, their use has been mainly limited to relatively controlled instrument configurations where the sensor array is placed within a closed measurement chamber. Usually, the experimental protocol is defined beforehand and it includes three stages: the array is first exposed to a gas reference, then to the gas sample, and finally to the reference again to recover the initial state. Such sampling procedure requires signal acquisition during the complete experimental protocol and usually delays the output prediction until the predefined measurement duration is complete. Due to the slow time response of chemical sensors, the completion of the measurement typically requires minutes. In this paper we propose the use of reservoir computing (RC) algorithms to overcome the slow temporal dynamics of chemical sensor arrays, allowing identification and quantification of chemicals of interest continuously and reducing measurement delays. We generated two datasets to test the ability of RC algorithms to provide accurate and continuous prediction to fast varying gas concentrations in real time. Both datasets – one generated with synthetic data and the other acquired from actual gas sensors – provide time series of MOX sensors exposed to binary gas mixtures where concentration levels change randomly over time. Our results show that our approach improves the time response of the sensory system and provides accurate predictions in real time, making the system specifically suitable for online monitoring applications. Finally, the collected dataset and developed code are made publicly available to the research community for further studies.
ISSN:0925-4005
1873-3077
DOI:10.1016/j.snb.2015.03.028