SBIR-STTR Award

A STEM toolkit enabling global air quality experiments
Award last edited on: 12/26/2018

Sponsored Program
SBIR
Awarding Agency
NSF
Total Award Amount
$977,550
Award Phase
2
Solicitation Topic Code
EA
Principal Investigator
Dirk Swart

Company Information

Wicked Device LLC

95 Brown Road Suite 154
Ithaca, NY 14850
   (607) 793-6214
   shop.wickeddevice.com
   www.wickeddevice.com
Location: Single
Congr. District: 23
County: Tompkins

Phase I

Contract Number: 1647974
Start Date: 12/15/2016    Completed: 5/31/2017
Phase I year
2016
Phase I Amount
$225,000
This SBIR Phase I project seeks to address the primary pain point for experiential learning of environmental science: it is nearly impossible to conduct engaging experiments on a limited local basis. The ability to collaborate regionally or globally will enable students to participate in meaningful exploration of the impact of natural and human-based events on air quality. This project teaches environmental science in a way that engages students with real-world problems and allows them to harness their own creativity. These methods have been shown to be especially effective for encouraging young women to pursue science, technology, engineering and mathematics (STEM) educational programs and careers. This is particularly important as both minorities and women are highly underrepresented in these fields. Through successful commercialization and integration of this project?s resulting technology with high school and post-secondary curricula, educators will increase the likelihood of their students to pursue STEM careers. Encouraging further education in these fields, particularly for underrepresented groups, will lead to a more diversified work force promoting greater productivity and advancement of scientific discovery.This project is innovative in the field of Educational Technology, which has yet to adopt web-connected sensors that generate big data on a global scale. This is primarily due to the fact that current technology is prone to inaccuracy and failure, and is often difficult to use. The proposed project will lead to the creation of educational software, a complement existing hardware, to make the product system fun and easy to install and use. The app will facilitate data-sharing in a global network and include: GIS mapping, continuous logging, time averaging, annotation, and integration with compatible software systems. This project seeks to achieve three key objects. First, a user-friendly tool will be built to view and analyze data. This will be assessed using feedback from a focus group. Second, a curriculum will be constructed through educator-researcher collaboration to ensure educational usefulness for both educators and their students. Lastly, usability and feasibility will be tested through prototype development. For this objective students will be recruited to interact with the prototype and evaluate the user-friendliness of the app and effectiveness of the curriculum. The success of the proposed project includes demonstration of usability, feasibly and educational effectiveness of the developed software.

Phase II

Contract Number: 1758625
Start Date: 3/1/2018    Completed: 2/29/2020
Phase II year
2018
Phase II Amount
$752,550
This SBIR Phase II project seeks to develop an internet-of-things (IoT) data collection and analysis platform for collaborative STEM and big data research and education, that enables collaborative, geographically dispersed collection of data from internet enabled scientific instruments. STEM (science, technology, engineering, and math) jobs are on the rise: the U.S. Department of Commerce predicts that occupations in these sectors will grow by 8.9 % from 2014 to 2024. Yet the U.S. currently faces a critical shortage of workers and students who are proficient in math and science subjects. In part, this shortage is due to a lack of interest in STEM-related fields by minorities and women. Engaging, relevant and hands on experiences are needed to encourage interest amongst these populations. This project fulfills the requests of the federal government and leading-edge STEM educators that both secondary and post-secondary institutions teach science in a way that engages students with real-world problems. The expectation is that this project will make big data accessible, while providing rewarding and appealing hands-on learning opportunities that will increase data literacy; increase scientific collaboration in education across geographic and interdisciplinary lines; and increase scientific literacy and interest across demographics, thus increasing the likelihood that students will continue to pursue scientific careers. The proposed technology will be the first collaborative educational IoT STEM platform to be developed, and is innovative in the field of Educational Technology, which has yet to adopt web-connected sensors that generate big data on a global scale. At present, there is no mechanism for schools to collect and share real data between classrooms and schools in an organized way. The proposed innovation allows users to communicate via a global network and is capable of being paired with an unlimited variety of scientific instruments and data sources, to support versatile, engaging, coordinated, multi-school experiments and data sharing. Data science now impacts virtually every profession in some way, and the platform will uniquely expose students to big data analytics in an engaging and relevant way. In Phase 1, feasibility of approach was firmly established. Phase II objectives will be to expand the educational platform developed in Phase I to optimize national/global impact and support applicability to big data research as well as a range of sensors. Goals include to expand tools to view and analyze data, refine and expand curriculum, develop an Application Programming Interface and create software tools to manipulate and share data/curriculum. The platform's ability to promote greater learning will also be evaluated. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.