Neural network enabled nanoplasmonic hydrogen sensors with 100 ppm limit of detection in humid air.
David TomečekHenrik Klein MobergSara NilssonAthanasios TheodoridisIwan DarmadiDaniel Sundås MidtvedtGiovanni VolpeOlof AnderssonChristoph LanghammerPublished in: Nature communications (2024)
Environmental humidity variations are ubiquitous and high humidity characterizes fuel cell and electrolyzer operation conditions. Since hydrogen-air mixtures are highly flammable, humidity tolerant H 2 sensors are important from safety and process monitoring perspectives. Here, we report an optical nanoplasmonic hydrogen sensor operated at elevated temperature that combined with Deep Dense Neural Network or Transformer data treatment involving the entire spectral response of the sensor enables a 100 ppm H 2 limit of detection in synthetic air at 80% relative humidity. This significantly exceeds the <1000 ppm US Department of Energy performance target. Furthermore, the sensors pass the ISO 26142:2010 stability requirement in 80% relative humidity in air down to 0.06% H 2 and show no signs of performance loss after 140 h continuous operation. Our results thus demonstrate the potential of plasmonic hydrogen sensors for use in high humidity and how neural-network-based data treatment can significantly boost their performance.
Keyphrases
- neural network
- low cost
- loop mediated isothermal amplification
- big data
- high resolution
- computed tomography
- stem cells
- human health
- risk assessment
- machine learning
- optical coherence tomography
- single cell
- magnetic resonance
- ionic liquid
- quantum dots
- climate change
- high speed
- deep learning
- replacement therapy
- sensitive detection