Multi-ion-sensing emulator
收藏IEEE2020-12-23 更新2026-04-17 收录
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https://ieee-dataport.org/documents/multi-ion-sensing-emulator
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资源简介:
One paramount challenge in multi-ion-sensing arises from ion interference that degrades theaccuracy of sensor calibration. Machine learning models are here proposed to optimize such multivariatecalibration. However, the acquisition of big experimental data is time and resource consuming in practice,necessitating new paradigms and efficient models for these data-limited frameworks. Therefore, a novelapproach is presented in this work, where a multi-ion-sensing emulator is designed to explain the responseof an ion-sensing array in a mixed-ion environment. A case study is performed emulating the concurrentmonitoring of sodium, potassium, lithium, and lead ions, in a medium representative of sweat samples.These analytes are relevant examples of sweat ion-sensing applications for physiology, therapeutic drugmonitoring, and heavy metal contamination. Synthetic training datasets are generated following a factorial design of experiment in the range of interest of the considered ions in artificial sweat samples, while validation and test sets are generated following a random design of experiment with Weibull probability distribution function. Three datasets of scaled size are generated to assess the performance of the machine leaning models with scarse and large datasets.
提供机构:
Ny Hanitra, Ivan
创建时间:
2020-12-23



