Over the last few years, employment of the standard silicon microfabrication techniques for the gas sensor technology has allowed for the development of ever-small, low-cost, and low-power consumption devices. Specifically, the development of silicon microheaters (MHs) has become well established to produce MOS gas sensors. Therefore, the development of predictive mod-els that help to define a priori the optimal design and layout of the device have become crucial, in order to achieve both low power consumption and high mechanical stability. In this research da-taset, we present the experimental data collected to develop a specific and useful predictive thermal-mechanical model for high performing silicon MHs. To this aim, three MH layouts over three dif-ferent membrane sizes were developed by using the standard silicon microfabrication process. Thermal and mechanical performances of the produced devices were experimentally evaluated, by using probe stations and mechanical failure analysis, respectively. The measured thermal curves were used to develop the predictive thermal model towards low power consumption. Moreover, a statistical analysis was finally introduced to cross-correlate the mechanical failure results and the thermal predictive model, aiming at MH design optimization for gas sensing applications. All the data collected in this investigation are shown.

Dataset of the optimization of a low power chemoresistive gas sensor: Predictive thermal modelling and mechanical failure analysis / Gaiardo, A.; Novel, D.; Scattolo, E.; Bucciarelli, A.; Bellutti, P.; Pepponi, G.. - In: DATA. - ISSN 2306-5729. - 6:3(2021). [10.3390/data6030030]

Dataset of the optimization of a low power chemoresistive gas sensor: Predictive thermal modelling and mechanical failure analysis

Novel D.
Secondo
;
Bucciarelli A.;Bellutti P.;
2021-01-01

Abstract

Over the last few years, employment of the standard silicon microfabrication techniques for the gas sensor technology has allowed for the development of ever-small, low-cost, and low-power consumption devices. Specifically, the development of silicon microheaters (MHs) has become well established to produce MOS gas sensors. Therefore, the development of predictive mod-els that help to define a priori the optimal design and layout of the device have become crucial, in order to achieve both low power consumption and high mechanical stability. In this research da-taset, we present the experimental data collected to develop a specific and useful predictive thermal-mechanical model for high performing silicon MHs. To this aim, three MH layouts over three dif-ferent membrane sizes were developed by using the standard silicon microfabrication process. Thermal and mechanical performances of the produced devices were experimentally evaluated, by using probe stations and mechanical failure analysis, respectively. The measured thermal curves were used to develop the predictive thermal model towards low power consumption. Moreover, a statistical analysis was finally introduced to cross-correlate the mechanical failure results and the thermal predictive model, aiming at MH design optimization for gas sensing applications. All the data collected in this investigation are shown.
2021
3
Gaiardo, A.; Novel, D.; Scattolo, E.; Bucciarelli, A.; Bellutti, P.; Pepponi, G.
Dataset of the optimization of a low power chemoresistive gas sensor: Predictive thermal modelling and mechanical failure analysis / Gaiardo, A.; Novel, D.; Scattolo, E.; Bucciarelli, A.; Bellutti, P.; Pepponi, G.. - In: DATA. - ISSN 2306-5729. - 6:3(2021). [10.3390/data6030030]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/400076
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