Towards Drift Correction in Chemical Sensors Using an Evolutionary Strategy

Author: Stefano Di Carlo, M. Falasconi, E. Sanchez, A. Scionti, Giovanni Squillero, A. Tonda
Publisher: C

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Gas chemical sensors are strongly affected by the so-called drift, i.e., changes in sensors' response caused by poisoning and aging that may significantly spoil the measures gathered. The paper presents a mechanism able to correct drift, that is: delivering a correct unbiased fingerprint to the end user. The proposed system exploits a state-of-the-art evolutionary strategy to iteratively tweak the coefficients of a linear transformation. The system operates continuously. The optimal correction strategy is learnt without a-priori models or other hypothesis on the behavior of physical-chemical sensors. Experimental results demonstrate the efficacy of the approach on a real problem

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