Ion sensing based on frequency-dependent physico-chemical processes at electrode/electrolyte interfaces

Journal Article (2025)
Author(s)

A. Mohseni Armaki (TU Delft - Team Peyman Taheri)

Y. Guo (TU Delft - Team Sid Kumar)

Majid Ahmadi (Rijksuniversiteit Groningen)

Roan Streefland (KWR Water Research Institute)

Patrick Bäuerlein (KWR Water Research Institute)

J.M.C. Mol (TU Delft - Team Arjan Mol)

Siddhant Kumar (TU Delft - Team Sid Kumar)

P. Taheri (TU Delft - Team Peyman Taheri)

Research Group
Team Peyman Taheri
DOI related publication
https://doi.org/10.1038/s41467-025-65918-2
More Info
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Publication Year
2025
Language
English
Research Group
Team Peyman Taheri
Issue number
1
Volume number
16
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Abstract

Ions play a fundamental role in solid-liquid interface processes, whether as essential or undesirable components, highlighting the need for precise and quantitative real-time monitoring. Electrochemical sensors are identified as promising tools, particularly for field-deployable applications. However, conventional electrochemical sensing is inherently restricted to redox-active species and is often single use, constraining its scope. This study presents electrochemical impedance spectroscopy as an alternative for ion detection, utilizing physico-chemical interactions at the electrode-electrolyte interface. We introduce a first-principles model that describes the interfacial impedance behavior and shows how ion specific processes shape the impedance response. Based on this framework, an extensive dataset is compiled, and a machine learning model is trained to predict electrolyte composition with consistent accuracy, demonstrating detection limits at the parts-per-billion level. The findings indicate that this method has considerable potential as a real-time method for ion sensing, providing a perspective on selectivity and sensitivity beyond traditional electrochemical approaches. This work could serve as a foundation for advanced models of impedance behavior, and development of impedance-based sensors with applicability in complex environments, including biological fluids and industrial liquids.