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Title: Low-Cost Efficient Wireless Intelligent Sensor (LEWIS) for Research and Education
Sensors have recently become valuable tools in engineering, providing real-time data for monitoring structures and the environment. They are also emerging as new tools in education and training, offering learners real-time information to reinforce their understanding of engineering concepts. However, sensing technology’s complexity, costs, fabrication and implementation challenges often hinder engineers’ exploration. Simplifying these aspects could make sensors more accessible to engineering students. In this study, the researcher developed, fabricated, and tested an efficient low-cost wireless intelligent sensor aimed at education and research, named LEWIS1. This paper describes the hardware and software architecture of the first prototype and their use, as well as the proposed new versions, LEWIS1-β and LEWIS1-γ, which simplify both hardware and software. The capabilities of the proposed sensor are compared with those of an accurate commercial PCB sensor. This paper also demonstrates examples of outreach efforts and suggests the adoption of the newer versions of LEWIS1 as tools for education and research. The authors also investigated the number of activities and sensor-building workshops that have been conducted since 2015 using the LEWIS sensor, showing an increasing trend in the excitement of people from various professions to participate and learn sensor fabrication.  more » « less
Award ID(s):
2123346
PAR ID:
10540015
Author(s) / Creator(s):
; ;
Publisher / Repository:
Sensors
Date Published:
Journal Name:
Sensors
Volume:
24
Issue:
16
ISSN:
1424-8220
Page Range / eLocation ID:
5308
Subject(s) / Keyword(s):
low-cost sensor data collection real-time monitoring measurement education
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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