68ce346d0457f.pdf
DOI:
Mavjud emas
1. Ershov I.A. Ispol'zovanie effektivnykh metodov fil'tratsii signala dlya obrabotki dannykh s optovolokonnogo datchika temperatury [Elektronnyy resurs] // CyberLeninka. 2021. Rezhim dostupa: https://cyberleninka.ru/article/n/ispolzovanieeffektivnyh-metodov-filtratsii-signala-dlya-obrabotkidannyh-s-optovolokonnogo-datchika-temperatury 2. Kim J., Park S. Energy-efficient temperature control using extended Kalman filter in smart heating ELECTRICAL AND COMPUTING ENGINEERING 36 Technical science and innovation. №2/2025 systems // Journal of Energy Efficiency. 2018. Vol. 12. P. 145-158. DOI: https://doi.org/10.1007/s12053-018-9573-2 3. Nguyen T., Zhao X., Chen J. Multi-dimensional signal processing for smart heating systems using EKF and adaptive filters // International Journal of Control. 2020. Vol. 93, No. 3. P. 567-580. DOI:https://doi.org/10.1080/00207179.2019.1655478
3. Nguyen T., Zhao X., Chen J. Multi-dimensional signal processing for smart heating systems using EKF and adaptive filters // International Journal of Control. 2020. Vol. 93, No. 3. P. 567-580. DOI:https://doi.org/10.1080/00207179.2019.1655478 4. Chen H., Wang L. Accuracy comparison of EKF and RLS in signal filtering for smart home applications // IEEE Transactions on Smart Systems. 2021. Vol. 9, No. 4. P. 534-542. DOI: https://doi.org/10.1109/TSS.2021.3097632 5. Tan P., Li H., Zhao X. Hybrid EKF-RLS filtering for balancing accuracy and adaptability in smart home systems // Smart Infrastructure Journal. 2022. Vol. 11. P. 98-115. DOI: https://doi.org/10.1109/SIJ.2022.3112234 6. Akhmedov R. Problems of energy resource management in Uzbekistan and ways to solve them // Economics and Management. 2020. No. 8. P. 45-52.
7. Zaynidinov H.N., Hodjaeva D.F. Approximation by splines and fuzzy logic algorithm in water filling control in a smart home system // International Conference on Adaptive Learning Technologies. 2024. Vol. 5. P. 157-160. 8. Zaynidinov H.N., Hodjaeva D.F. Integration of the spline function and fuzzy logic algorithm in the management of clean water filling in a smart home system // Innovative: International Multidisciplinary Journal of Applied Technology. 2023. Vol. 2, No. 5. P. 181-186. 9. Hodjaeva D.F. Technical and Software Features of a Smart Plug // Artificial Intelligence and Information Technologies. London: CDC Press, 2024. Vol. 1. P. 551- 557. ISBN: 9781032700502
10. Zaynidinov H., Xuramov L., Khodjaeva D. Intelligent algorithms of digital processing of biomedical images in wavelet methods // Artificial Intelligence, Blockchain, Computing and Security: Book Chapter. 2023. Vol. 2. P. 648-653. 11. Nazarov F.M., Yarmatov S. Optimization of Prediction Results Based on Ensemble Methods of Machine Learning // 2023 International Russian Smart Industry Conference (SmartIndustryCon), Sochi, Russian Federation. 2023. P. 181-185. DOI: 10.1109/SmartIndustryCon57312.2023.10110726 12. Makhmadiyarovich N.F., Sherzodjon Y. Methods of increasing data reliability based on distributed and parallel technologies based on blockchain // Artificial Intelligence, Blockchain, Computing and Security. 2023. Vol. 2. P. 637–642. ISBN: 9781032684994
13. Nazarov F.M., Yarmatov S., Xamidov M. Machine Learning Price Prediction on Green Building Prices // 2024 International Russian Smart Industry Conference (SmartIndustryCon), Sochi, Russian Federation. 2024. P. 906-911. DOI:10.1109/SmartIndustryCon61328.2024.10515790 14. Nazarov F.M., Xamidov M.M. Eye State Classification Method for Detecting Physiological Deviations in Drivers Based on CNN Algorithm // 2024 International Russian Automation Conference (RusAutoCon). IEEE. 2024. P. 802-807. 15. Makhmudov F., Turimov D., Xamidov M., Nazarov F., Cho Y.-I. Real-Time Fatigue Detection Algorithms Using Machine Learning for Yawning and Eye State // Sensors. 2024. Vol. 24, No. 23. Article 7810. DOI: https://doi.org/10.3390/s24237810