Affiliation:
1. School of Business, Universidad Adolfo Ibáñez, Diagonal Las Torres 2640, Peñalolén, Santiago 7550344, Chile
2. Facultad de Ciencias Agronomicas, Universidad de Chile, Santa Rosa 11315, La Pintana, Santiago 8820808, Chile
Abstract
Nanotechnology, nanosensors in particular, has increasingly drawn researchers’ attention in recent years since it has been shown to be a powerful tool for several fields like mining, robotics, medicine and agriculture amongst others. Challenges ahead, such as food availability, climate change and sustainability, have promoted such attention and pushed forward the use of nanosensors in agroindustry and environmental applications. However, issues with noise and confounding signals make the use of these tools a non-trivial technical challenge. Great advances in artificial intelligence, and more particularly machine learning, have provided new tools that have allowed researchers to improve the quality and functionality of nanosensor systems. This short review presents the latest work in the analysis of data from nanosensors using machine learning for agroenvironmental applications. It consists of an introduction to the topics of nanosensors and machine learning and the application of machine learning to the field of nanosensors. The rest of the paper consists of examples of the application of machine learning techniques to the utilisation of electrochemical, luminescent, SERS and colourimetric nanosensor classes. The final section consists of a short discussion and conclusion concerning the relevance of the material discussed in the review to the future of the agroenvironmental sector.
Funder
ANID Chile
Royal Society of Chemistry
Reference219 articles.
1. Calicioglu, O., Flammini, A., Bracco, S., Bellù, L., and Sims, R. (2019). The Future Challenges of Food and Agriculture: An Integrated Analysis of Trends and Solutions. Sustainability, 11.
2. Agriculture and biodiversity: A review;Dudley;Biodiversity,2017
3. Saiz-Rubio, V., and Rovira-Más, F. (2020). From Smart Farming towards Agriculture 5.0: A Review on Crop Data Management. Agronomy, 10.
4. Recent Trends in Internet-of-Things-Enabled Sensor Technologies for Smart Agriculture;Shaikh;IEEE Internet Things J.,2022
5. Nanotechnology—An introduction for the standards;Mansoori;J. ASTM Int.,2005
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献