Feature importance methods unveiling the cross-sensitive response of an integrated sensor array to quantify major cations in drinking water

2022 IEEE Sensors(2022)

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摘要
A proof-of-concept system comprising a miniaturized sensor array, feature extraction and machine learning pipeline was evaluated for the direct quantification of the concentrations of three major cations, Ca 2+ , Mg 2+ , and Na + , in drinking water. Feature importance methods were applied to discover dependencies between the transient potentiometric responses of sensing materials and the cation concentrations. The proposed framework supports design of cross-sensitive sensor arrays to accelerate water testing, providing a complementary approach to traditional chemical analysis for monitoring water quality.
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关键词
Feature extraction,feature importance,cross-sensitive sensor array,portable sensor,water quality
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