Design theory-based nanostructured leaf-vein networks for selective VOC sensing
Lead Research Organisation:
UNIVERSITY OF CAMBRIDGE
Department Name: Engineering
Abstract
The importance of indoor air quality monitoring to safeguard the health of children and vulnerable adults in the UK cannot be overstated. A primary source of indoor air pollution is everyday household products and materials. Many emit harmful non-methane volatile organic compounds (VOCs), such as formaldehyde, toluene and phthalates. Even in minute concentrations, these specific compounds can induce a variety of respiratory, neurological, endocrine disorders over prolonged low-level exposures. However, current environmental sensors, including those commercialised by major semiconductor integrated device manufacturers and by specialised gas sensor manufacturers (e.g . Bosch Sensortech, Sensirion, AMS, and others), cannot specifically detect these different toxic gases at an acceptable concentration level and are unable to provide any helpful preventive guidance.
The challenges faced by current-generation low-cost VOC sensors arise from empirically optimised sensing films for common sensor architectures. This approach has strong drawbacks as it does not have an overarching design consideration for the optimum permeation of gases or analytes through the sensing material for a maximised response. Crucially, these sensors are non-specific and can only detect the total concentration of VOCs (TVOCs), i.e. the total concentration of a subset of airborne VOCs present in the air, as an overall measure of indoor air quality. However, different TVOC measurement methods depend on VOCs' mixture and can yield substantially different estimated TVOC concentrations. Notably, the toxicity thresholds of the individual VOCs differ by orders of magnitude; the total concentration, therefore, does not provide any useful measure of total toxicity.
We will design material building blocks engineered to offer a maximum and selective response to target gas molecules to address this challenge. Then, in an ambitious step, through solution-phase additive manufacturing techniques, we will create large-scale self-assembly of these building blocks to obtain a nano- and micro-level structure mimicking the hierarchy of length scales found in xylems and leaf veins in plants. With multiple levels of interconnected channels, this universal structure has evolved over many million years to ensure mass transport (i.e. fluid permeation) with minimum energy expenditure through the preservation of volumetric flow rate. Our approach will therefore allow highly optimum through-flow of gases to the engineered building blocks, providing a fast, highly sensitive and selective response to these toxic gases. The highly repeatable nature of our additively manufactured sensing thin-film with self-assembled blocks will enable unprecedented device-to-device uniformity. We will exploit this to create a new generation of training algorithms to significantly reduce the traditional sensor training time and cost. We envisage that our materials design and manufacturing pathway based on natural laws will offer x10 to x100 times the state-of-the-art toxic VOC sensors' performance, making indoor air quality monitoring affordable and reliable.
The challenges faced by current-generation low-cost VOC sensors arise from empirically optimised sensing films for common sensor architectures. This approach has strong drawbacks as it does not have an overarching design consideration for the optimum permeation of gases or analytes through the sensing material for a maximised response. Crucially, these sensors are non-specific and can only detect the total concentration of VOCs (TVOCs), i.e. the total concentration of a subset of airborne VOCs present in the air, as an overall measure of indoor air quality. However, different TVOC measurement methods depend on VOCs' mixture and can yield substantially different estimated TVOC concentrations. Notably, the toxicity thresholds of the individual VOCs differ by orders of magnitude; the total concentration, therefore, does not provide any useful measure of total toxicity.
We will design material building blocks engineered to offer a maximum and selective response to target gas molecules to address this challenge. Then, in an ambitious step, through solution-phase additive manufacturing techniques, we will create large-scale self-assembly of these building blocks to obtain a nano- and micro-level structure mimicking the hierarchy of length scales found in xylems and leaf veins in plants. With multiple levels of interconnected channels, this universal structure has evolved over many million years to ensure mass transport (i.e. fluid permeation) with minimum energy expenditure through the preservation of volumetric flow rate. Our approach will therefore allow highly optimum through-flow of gases to the engineered building blocks, providing a fast, highly sensitive and selective response to these toxic gases. The highly repeatable nature of our additively manufactured sensing thin-film with self-assembled blocks will enable unprecedented device-to-device uniformity. We will exploit this to create a new generation of training algorithms to significantly reduce the traditional sensor training time and cost. We envisage that our materials design and manufacturing pathway based on natural laws will offer x10 to x100 times the state-of-the-art toxic VOC sensors' performance, making indoor air quality monitoring affordable and reliable.
Organisations
- UNIVERSITY OF CAMBRIDGE (Lead Research Organisation)
- University of Namur (Collaboration)
- Centre for Process Innovation CPI (UK) (Project Partner)
- Sorex Sensors Ltd (Project Partner)
- University of Namur (FUNDP) (Project Partner)
- Flusso Limited (Project Partner)
- Trinity College Dublin (Project Partner)
Publications



Chen Z
(2024)
Real-time, noise and drift resilient formaldehyde sensing at room temperature with aerogel filaments
in Science Advances

Jabri M
(2024)
Flexible thin-film thermoelectric generators for human skin-heat harvesting: A numerical study
in Nano Energy



Tang C
(2024)
A roadmap for the development of human body digital twins
in Nature Reviews Electrical Engineering

Tang C
(2024)
Ultrasensitive textile strain sensors redefine wearable silent speech interfaces with high machine learning efficiency
in npj Flexible Electronics
Description | Collaboration with Prof Bao-Lian Su |
Organisation | University of Namur |
Country | Belgium |
Sector | Academic/University |
PI Contribution | Collaboration with Prof Bao Lian Su from University of Namur in designing porous nanoparticles |
Collaborator Contribution | Help us develop synthesis protocols of new metal oxide porous materials. Two researchers stayed for over a week in Namur to learn new synthesis techniques vital to this project. |
Impact | A manuscript arising from this collaboration is currently under review in Nature Communications. |
Start Year | 2023 |
Description | Interviews by media |
Form Of Engagement Activity | A press release, press conference or response to a media enquiry/interview |
Part Of Official Scheme? | No |
Geographic Reach | International |
Primary Audience | Media (as a channel to the public) |
Results and Impact | Press release published on https://www.science.org/doi/10.1126/sciadv.adk6856 in University webpage for general audience (https://www.cam.ac.uk/research/news/sensors-made-from-frozen-smoke-can-detect-toxic-formaldehyde-in-homes-and-offices). The were followup audio/video/email interviews by several media, including Materials World, Chemistry and Industry magazine, IITM Shaastra Science Magazine, Asharq Al-Awsat news. The article was also picked up by other media (https://scienceadvances.altmetric.com/details/154651112/news), including Aljazeera (arabic). In addition, several Chinese social newsgroups approached us for written interviews. |
Year(s) Of Engagement Activity | 2024 |
URL | https://www.cam.ac.uk/research/news/sensors-made-from-frozen-smoke-can-detect-toxic-formaldehyde-in-... |