학술논문

Resistive Sensor Array for Selective Zn(II) Ion Detection From a Mixed Solution Using Machine Learning Techniques
Document Type
Periodical
Source
IEEE Sensors Journal IEEE Sensors J. Sensors Journal, IEEE. 24(9):13870-13876 May, 2024
Subject
Signal Processing and Analysis
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Robotics and Control Systems
Sensors
Ions
Nickel
Adsorption
Surface roughness
Rough surfaces
Predictive models
Bisensor array
classification-based selectivity
heavy metal ion detection
metal doping
Ni₂O₃
Zn(II) ion sensor
Language
ISSN
1530-437X
1558-1748
2379-9153
Abstract
Advancing industrialization has led to an exponential degradation of consumable water, and hence, there is a direct need for an efficient monitoring system. In this study, we demonstrated hierarchical, nanostructured Ni2O3- and Cu0.05Ni1.95O3-based resistive bisensor arrays for selective detection of Zn(II) ions in solution. The sensors showed a maximum response of 4.12 times and 6.34 times for Cu(II) and Zn(II) ions individually when exposed to Ni2O3 (device 1) and Cu0.05Ni1.95O3 (device 2) receptor layers, respectively. The limit of detection (LOD) was estimated as ~6 and ~4.6 ppb with the fast response times of 2.4 and 2.8 s, respectively, for the two devices. The devices showed excellent repeatability with a maximum response variation of 7.22% and 8.24% for 160 ppm of the two ions over a period of 180 days. Though the sensors performed well for individual ions, however, both the sensors failed to detect the individual ions when exposed to a mixed solution. Hence, a multimodal fusion approach coupled to random forest algorithm was used to identify and quantify Zn(II) ions from a mixture, which showed an estimation error of ~4% and an ${R}^{{2}}$ score of 0.91. An “adsorption energy-assisted sensing model” has been proposed to explain the unusual behavior of the sensors in the presence of a mixed solution. It supports that the proposed array is significantly more efficient than its conventional market counterparts when it comes to long-term water quality monitoring.