The interaction of a gas particle with a metal-oxide based gas sensor changes
the sensor irreversibly. The compounded changes, referred to as sensor drift,
are unstable, but adaptive algorithms can sustain the accuracy of odor sensor
systems. This paper shows how such a system can be defined without additional
data acquisition by transfering knowledge from one time window to a subsequent
one after drift has occurred. A context-based neural network model is used to
form a latent representation of sensor state, thus making it possible to
generalize across a sequence of states. When tested on samples from unseen
subsequent time windows, the approach performed better than drift-naive and
ensemble methods on a gas sensor array drift dataset. By reducing the effect
that sensor drift has on classification accuracy, context-based models may be
used to extend the effective lifetime of gas identification systems in
practical settings