Adaptive, integrated sensor processing to compensate for drift and uncertainty: a stochastic 'neural' approach

IEE Proc Nanobiotechnol. 2004 Feb;151(1):28-34. doi: 10.1049/ip-nbt:20040213.

Abstract

An adaptive stochastic classifier based on a simple, novel neural architecture--the Continuous Restricted Boltzmann Machine (CRBM) is demonstrated. Together with sensors and signal conditioning circuits, the classifier is capable of measuring and classifying (with high accuracy) the H+ ion concentration, in the presence of both random noise and sensor drift. Training on-line, the stochastic classifier is able to overcome significant drift of real incomplete sensor data dynamically. As analogue hardware, this signal-level sensor fusion scheme is therefore suitable for real-time analysis in a miniaturised multisensor microsystem such as a Lab-in-a-Pill (LIAP).