Sort by
Refine Your Search
-
Listed
-
Category
-
Country
- United States
- United Kingdom
- Netherlands
- Sweden
- Germany
- France
- Italy
- Norway
- Belgium
- Denmark
- Portugal
- Spain
- Poland
- Czech
- Hong Kong
- Morocco
- Ireland
- Lithuania
- Singapore
- Australia
- Switzerland
- China
- Estonia
- Israel
- Luxembourg
- Malta
- Vietnam
- Austria
- Canada
- Cyprus
- Europe
- Greece
- Japan
- United Arab Emirates
- 24 more »
- « less
-
Program
-
Field
-
conditions can be complex and requires adaptation strategies. To overcome these limitations, the RESIL-AV project aims to improve detection accuracy by leveraging a network of heterogeneous sensors. This will
-
of magnetic field and electric current are members of european calibration networks Co-supervisor: Dr. Renata Styblikova RSDynamics is leading company in the field of portable sensors and instruments
-
/doctoral-networks Direct link to the project: https://cordis.europa.eu/project/id/101227124 Where to apply Website https://www.organ-on-chip.uni-tuebingen.de/phd-msca-visi-on-brain/ Requirements Research
-
of these reusable packaging using IoT sensors and deep learning techniques embedded in the sensors. During the preliminary work, neural network models were developed to perform simple tasks using accelerometer data
-
. The project will address the following key objectives: Advanced Multi-modal Sensing: Integration of lightweight wearable sensors, including inertial measurement units (IMUs), force sensors, and electromyography
-
information on its udder health and metabolic and nutritional status. In this project, an optical sensor prototype will be designed and built based on miniature spectrometers with the aim to measure milk
-
in underground facilities. The project aims to evaluate sensor technologies, design and optimize multi-sensor monitoring networks, and develop advanced detection and localization algorithms adapted
-
2023]. We propose to measure these movements in people's homes using devices developed in the laboratory. They are formed by a network of environmental non-intrusive sensors, such as electrostatic
-
:2405.08111, 2024. https://doi.org/10.48550/arXiv.2405.08111 [4] R. Ketfi, Z. Al Masry, N. Zerhouni, C. Devalland, “MS-DQI: A methodology for data quality assessment in medical sensor networks with a case study
-
environments. Your work will directly advance our leadership in intelligent 6G application orchestration and AI-driven network functions at the Belgian trial sites in EU projects. Where to apply Website https