AsiaIPEX is a one-stop-shop for players in the IP industry, facilitating IP trade and connection to the IP world. Whether you are a patent owner interested in selling your IP, or a manufacturer looking to buy technologies to upgrade your operation, you will find the portal a useful resource.

Air Quality Monitoring Using Mobile Microscopy And Machine Learning

Technology Benefits
Field-portable/ mobile solution  Cost-effective platform   High-throughput quantification of particulate matter (air)  Uses computational lens-free microscopy and machine-learning  High accuracy Easy to use
Technology Application
Field particulate matter/air monitoring
Detailed Technology Description
Field-portable cost-effective platform for high-throughput quantification of particulate matter (PM) using computational lens-free microscopy and machine-learning
Others

State Of Development

The invention was demonstrated on 2/1/2015


Background

Air quality is an increasing concern in the industrialized world. Particulate matter (PM) is a mixture of solid and liquid particles in air and forms a significant form of air pollution. PM comes in a range of sizes which can cause serious health problems by entering the lings and bloodstream. Some PM has even been linked to be carcinogenic. Monitoring PM air quality as a function of space and time is critical for understanding the effects of industrial activities, studying atmospheric models, and providing regulatory and advisory guidelines for transportation, residents, and industries. There is a need for a low-cost, accurate, easy to use, mobile method to sample and analyze particulate matter in the field. Current solutions, such as conventional microscope-based screening of aerosols, cannot be conducted in the field and are cumbersome, heavy, expensive, and require specialized skills to operate.


Related Materials

Y. Wu, A. Shiledar, Y. Li, J. Wong, S. Feng, X. Chen, C. Chen, K. Jin, S. Janamian, Z. Yang, Z.S. Ballard, Z. Göröcs, A. Feizi, and A. Ozcan. Air Quality Monitoring Using Mobile Microscopy and Machine Learning. Light: Science & Applications (Nature Publishing Group). 2017.


Additional Technologies by these Inventors


Tech ID/UC Case

29262/2017-513-0


Related Cases

2017-513-0

*Abstract
UCLA researchers have developed a novel method to monitor air quality using mobile microscopy and machine learning.
*Principal Investigator

Name: Steve Feng

Department:


Name: Aydogan Ozcan

Department:


Name: Yichen Wu

Department:

Country/Region
USA

For more information, please click Here
Mobile Device