PRACA POGLĄDOWA
Optimization of algorithms for effective management of the measurement process in electrical impedance tomography and ultrasonic tomography
 
Więcej
Ukryj
1
WSEI University, Lublin, Poland
 
2
Institute of Philosophy and Sociology of the Polish Academy of Sciences
 
 
Data nadesłania: 28-06-2024
 
 
Data akceptacji: 20-07-2024
 
 
Data publikacji: 20-08-2024
 
 
JoMS 2024;57(Numer specjalny 3):742-756
 
SŁOWA KLUCZOWE
DZIEDZINY
_Inne
 
STRESZCZENIE
The article discusses the design of advanced embedded algorithms that aim to manage and control the measurement process using the Electrical Impedance Tomography and Ultrasonic Tomography methods. The project aims to develop solutions that optimize the performance of embedded devices that must operate on limited resources such as memory, computing power, or bandwidth. Minimizing energy consumption is an important aspect, especially for battery-powered devices. Algorithms must also be adapted to specific hardware constraints, such as low RAM or CPU limitations, which require complex engineering and optimization. Additionally, the project assumes the implementation of algorithms that consider security aspects, which is crucial in protecting data processed and transmitted by the device. It also requires the development of effective communication methods between the embedded device and other systems, including appropriate communication protocols.
Licencja
REFERENCJE (6)
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eISSN:2391-789X
ISSN:1734-2031
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