Paolo Mezzanotte, Fabian Lurz
The IEEE Topical Conference on Wireless Sensors and Sensor Networks (WiSNet) originated in 2011 as a branch of the Radio Week Symposium. Now in its 14th edition, WiSNet 2024 will be held in San Antonio from 21 to 24 January, as part of Radio & Wireless Week.
Source: PNGWING (https://www.pngwing.com/en/free-png-pyigx). Image may be used for noncommercial purposes; otherwise (Digital Millennium Copyright Act), contact pngwing.com@gmail.com.
Wireless sensors and wireless sensor networks are crucial components for manufacturing, structural health, condition monitoring, environmental monitoring, smart agriculture, transportation, automotive, commercial applications, localization, tracking systems, and other important and emerging applications. The main challenges for these applications currently relate primarily to the design of sensors and sensor networks that are as energy autonomous as possible, that are even more accurate and reliable, and that are possibly manufactured using easily recyclable or even biodegradable materials. WiSNet 2024 is intended to stimulate discussion and foster innovation on these fundamental issues for humanity, with a program full of excitement and discovery.
In addition to the regular technical sessions, we have planned a very interesting panel session titled “RFID as a Sustainable Route to Digital Twins.” The panel, organized by Valentina Palazzi and Mahmoud Wagih, will discuss how RF identification (RFID) technologies can provide support to artificial intelligence/machine learning algorithms to derive digital twins in many different applications, ranging from logistics to supply chains and structural health monitoring. The expected advantages of RFID-based approaches will be analyzed together with the main bottlenecks and threats with the support of experts from both industry and academia.
We warmly invite you to attend this great event and look forward to meeting you in San Antonio. For more information, please visit https://www.radiowirelessweek.org/conferences/wisnet/.
Digital Object Identifier 10.1109/MMM.2023.3314020