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Publikační činnost
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stať ve sborníku (D)
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Katedra informatiky a počítačů (31400)
Title:
Use Case of Implementation Backpropagation for Arduino and ESP32 Microcontrollers into Smart Home
Citace
Sladčík, T. a Habiballa, H. Use Case of Implementation Backpropagation for Arduino and ESP32 Microcontrollers into Smart Home.
In:
CSOC 2025: Computer Science On-line Conference: Software Engineering: Emerging Trends and Practices in System Development 2025-04-01 online.
Cham: Springer, 2025. s. 142-151. ISBN 978-3-032-03406-9.
Subtitle
Publication year:
2025
Obor:
Number of pages:
10
Page from:
142
Page to:
151
Form of publication:
Elektronická verze
ISBN code:
978-3-032-03406-9
ISSN code:
Proceedings title:
Software Engineering: Emerging Trends and Practices in System Development
Proceedings:
Mezinárodní
Publisher name:
Springer
Place of publishing:
Cham
Country of Publication:
Sborník vydaný v zahraničí
Název konference:
CSOC 2025: Computer Science On-line Conference
Conference venue:
online
Datum zahájení konference:
Typ akce podle státní
příslušnosti účastníků:
Celosvětová akce
WoS code:
EID:
Key words in English:
Arduino; Backpropagation; ESP32; Smart Home
Annotation in original language:
This paper presents a novel approach for integrating artificial intelligence into smart homes. The main goal is to design and implement a standalone unit that will be able to process inputs from sensors, specifically the BH1750 light sensor and the motion sensor, and based on them, autonomously control the intensity of the integrated RGB LED. The resulting model can automatically regulate the brightness of the LED from these data, which is a step towards more energy-efficient and user-friendly technologies. The final part of the article discusses the potential of this solution within decentralized smart homes, where individual autonomous units could function as separate elements of a larger system. This approach suggests new possibilities for implementing intelligent systems that increase self-sufficiency and efficiency of modern home applications.
Annotation in english language:
This paper presents a novel approach for integrating artificial intelligence into smart homes. The main goal is to design and implement a standalone unit that will be able to process inputs from sensors, specifically the BH1750 light sensor and the motion sensor, and based on them, autonomously control the intensity of the integrated RGB LED. The resulting model can automatically regulate the brightness of the LED from these data, which is a step towards more energy-efficient and user-friendly technologies. The final part of the article discusses the potential of this solution within decentralized smart homes, where individual autonomous units could function as separate elements of a larger system. This approach suggests new possibilities for implementing intelligent systems that increase self-sufficiency and efficiency of modern home applications.
References
Reference
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