Cloud Enhanced Intelligence Pet Sustenance System

Authors

  • N. Indhumathi Assistant Professor, Dept. of ECE, Mahendra Engineering College, Namakkal, Tamil Nadu, India Author
  • R. Suhana, R.Varuna, K.C.Vikashini, B.Vaishali UG Student, Dept. of ECE, Mahendra Engineering College, Namakkal, Tamil Nadu, India Author

DOI:

https://doi.org/10.15662/IJEETR.2026.0802087

Keywords:

IoT, Smart Pet Feeder, NodeMCU, ESP32-CAM, GSM Module, Blynk

Abstract

The increasing adoption of smart technologies has enabled the development of intelligent systems for efficient pet care and monitoring. This paper presents a cloud enhanced intelligence pet sustenance system designed to ensure the well- being of pets through automated feeding, health monitoring, and remote supervision. The proposed system integrates sensors, microcontroller-based hardware, and cloud computing to collect and analyze real time data related to pet activity, food consumption, and environmental conditions. The system allows pet owners to monitor and control feeding schedules through a mobile or web interface, ensuring timely and adequate nutrition. In addition, the cloud platform stores historical data and applies intelligent analysis to provide insights and alerts regarding pet health and behavior. The implementation of this system improves convenience, reduces manual effort, and enhances the quality of pet care. The results demonstrate that the proposed system is reliable, scalable, and suitable for modern smart home environments.

References

1. IOT Based Smart Pet Feeding System Using ESP 32; B. Vishnu Priya, Ragham Jitesh, Ilindra Krishna Lekha, Ekabathini Chanchu Suresh; 2025; Journal of Atlantis Press.

2. Deep-feed: An Internet of things-enabled smart feeding system for pets powered by deep learning Jameer Kotwal, Amruta Surana, Pallavi Adke, Krunal Pawar, Asma Shaikh, Vajid Khan; IAES International Journal of Robotics and Automation (IJRA); Vol. 14, No. 2, June 2025, pp. 227~236.

3. Design and Implementation of a Mobile-Controlled IoT Smart Pet Feeder for Busy Pet Owners;Ahmad Anwar Zainuddin, Muhammad Nur Badri Mahazir1, Mohamad Aiman Akim Adanan1, Mohd. Izzuddin Mohd. Tamrin1, Mohammad Adam Haikal Zulkfli1, and Muhammad Hazim Amin Samsudin; 2024; Malaysian Journal of Science.

4. Design and Development of a Smart Pet Feeder with IoT and Deep Learning Oscar E. Castillo-Arceo, Raúl U. RenteriaFlores and Pedro C. Santana-Mancilla;2024; Engineering Proceedings, Volume 82, Issue 1.

5. Design and Implementation of a Solar-Based Automatic Pet feeder And Water Dispenser; Electronics and Automation Department, Ipsala Vocational School, Trakya University, Edirne; VI. International Agricultural, Biological & Life Science Conference, Edirne, Turkey, 18-20 September 2024.

6. Enhancing Milk Quality Detection with Machine Learning: A Comparative Analysis of KNN and Distance-Weighted

7. KNN Algorithms; Abdul Samad, Salih TAZE, Muhammed Kürsad UÇAR International Journal of Innovative Science and

8. Research Technology; Volume 9, Issue 3, March – 2024. 46

9. Autonomous Pet Feeding System with Battery Backup and Solar Power; S. Gupta, P. Singh; 2024; Renewable Energy and IoT Journal, Vol. 10, No. 1, pp. 12-20.

10. Pet Feeding System with Voice Recognition and IoT Integration Using ESP32; F. Liu, J. Wang; 2024; IEEE IoT Journal, Vol. 9, No. 10, pp. 1020-1028.

11. IoT-Enabled Pet Feeding System with Cloud Data Storage and Notification System; J. Kim, H. Lee; 2024; Sensors, Vol. 24, No. 8, pp. 2154.

12. Wireless Pet Feeder with Video and Voice Control Using ESP32 and GSM; M. Roy, S. Banerjee; 2024; IEEE Transactions on Consumer Electronics, Vol. 70, No. 2, pp.

123-131.

13. Pet Feeding Automation System with Emergency Alert Using GSM and IoT; A. Das, R. K. Singh; 2023; Journal of IoT and Embedded Systems, Vol. 5, No. 1, pp. 33-41.

14. C.Nagarajan and M.Madheswaran - ‘Stability Analysis of Series Parallel Resonant Converter with Fuzzy Logic Controller Using State Space Techniques’- Taylor &Francis, Electric Power Components and Systems, Vol.39 (8), pp.780-793, May 2011. DOI: 10.1080/15325008.2010.541746

15. C.Nagarajan and M.Madheswaran - ‘Experimental verification and stability state space analysis of CLL-T Series Parallel Resonant Converter’ - Journal of Electrical Engineering, Vol.63 (6), pp.365-372, Dec.2012. DOI: 10.2478/v10187-012-0054-2

16. C.Nagarajan and M.Madheswaran - ‘Performance Analysis of LCL-T Resonant Converter with Fuzzy/PID Using State Space Analysis’- Springer, Electrical Engineering, Vol.93 (3), pp.167-178, September 2011. DOI 10.1007/s00202-011-0203-9

17. S.Tamilselvi, R.Prakash, C.Nagarajan,“Solar System Integrated Smart Grid Utilizing Hybrid Coot-Genetic Algorithm Optimized ANN Controller” Iranian Journal Of Science And Technology-Transactions Of Electrical Engineering, DOI10.1007/s40998-025-00917-z,2025

18. S.Tamilselvi, R.Prakash, C.Nagarajan,“ Adaptive sliding mode control of multilevel grid-connected inverters using reinforcement learning for enhanced LVRT performance” Electric Power Systems Research 253 (2026) 112428, doi.org/10.1016/j.epsr.2025.112428

19. S.Thirunavukkarasu, C. Nagarajan, 2024, “Performance Investigation on OCF and SCF study in BLDC machine using FTANN Controller," Journal of Electrical Engineering And Technology, Volume 20, pages 2675–2688, (2025), doi.org/10.1007/s42835-024-02126-w

20. C. Nagarajan, M.Madheswaran and D.Ramasubramanian- ‘Development of DSP based Robust Control Method for General Resonant Converter Topologies using Transfer Function Model’- Acta Electrotechnica et Informatica Journal , Vol.13 (2), pp.18-31,April-June.2013, DOI: 10.2478/aeei-2013-0025.

21. C.Nagarajan and M.Madheswaran - ‘DSP Based Fuzzy Controller for Series Parallel Resonant converter’- Springer, Frontiers of Electrical and Electronic Engineering, Vol. 7(4), pp. 438-446, Dec.12. DOI 10.1007/s11460-012-0212-0.

22. C.Nagarajan and M.Madheswaran - ‘Experimental Study and steady state stability analysis of CLL-T Series Parallel Resonant Converter with Fuzzy controller using State Space Analysis’- Iranian Journal of Electrical & Electronic Engineering, Vol.8 (3), pp.259-267, September 2012.

23. C.Nagarajan and M.Madheswaran, “Analysis and Simulation of LCL Series Resonant Full Bridge Converter Using PWM Technique with Load Independent Operation” has been presented in ICTES’08, a IEEE / IET International Conference organized by M.G.R.University, Chennai.Vol.no.1, pp.190-195, Dec.2007

24. Suganthi Mullainathan, Ramesh Natarajan, “An SPSS and CNN modelling based quality assessment using ceramic materials and membrane filtration techniques”, Revista Materia (Rio J.) Vol. 30, 2025, DOI: https://doi.org/10.1590/1517-7076-RMAT-2024-0721

25. M Suganthi, N Ramesh, “Treatment of water using natural zeolite as membrane filter”, Journal of Environmental Protection and Ecology, Volume 23, Issue 2, pp: 520-530,2022

26. AI-Integrated Pet Feeding System with Behavioural Monitoring and Automated Control; K. Patel, N. Joshi; 2023; Journal of Artificial Intelligence in IoT, Vol. 3, No. 2, pp. 4554.

27. Design and Implementation of IoT-Based Pet Feeding System with Automatic Scheduling; S. Ahmed, T. Malik; 2022; International Journal of IoT and Cloud Computing, Vol.

28. 8, No. 2, pp. 78-86.

29. Smart Pet Feeding System with Real-Time Video Monitoring Using ESP32-CAM and IoT; L. Zhang, M. Chen; 2021; IEEE Access, Vol. 9, pp. 98234-98242.

30. An IoT-Based Automated Pet Feeding System Using NodeMCU and GSM Communication; R. Sharma, P. Verma; 2020; International Journal of Embedded Systems, Vol. 12, No. 4, pp. 245-251.

31. Sugumar, R. (2025). Designing Resilient and Scalable Cloud-Native Frameworks for Generative AI Content Production. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 8(6), 13268-13279.

32. Soundappan, S. J. (2020). Big Data Analytics in Healthcare: Applications for Pandemic Forecastin. International Journal of Advanced Research in Computer Science & Technology (IJARCST), 3(1), 2248-2253.

33. Aarthi, K., Thirumoorthy, P., Tamizharasu, K., Manoja, R., Kalyanasundaram, P., & Rajasekar, M. (2025, September). Improved Network lifetime using Cluster based Power-Aware Balanced Routing Protocol for Device to Device Communication. In 2025 6th International Conference on Electronics and Sustainable Communication Systems (ICESC) (pp. 1005-1010). IEEE.

34. Anbazhagan, K. (2025). AI Driven Zero Trust Security Model for Enterprise Data Protection and Intelligent Infrastructure Management. International Journal of Technology, Management and Humanities, 11(03), 101-107.

35. Prabha, P. S., & Rengarajan, A. (2025). ENHANCING CLOUD RESOURCE ALLOCATION WITH VISION TRANSFORMER, DEEP REINFORCEMENT LEARNING, AND IMPROVED SHRIKE OPTIMIZATION ALGORITHM. Corrosion Management ISSN: 1355-5243, 35(2), 233-245.

36. Vimal, V. R., & Banerjee, J. S. (2025). Integrating PSO, GA, and ACO for Optimized ECG Feature Selection and Classification of Cardiac Disorders. SGS-Engineering & Sciences, 1(5).

Downloads

Published

2026-03-28

How to Cite

Cloud Enhanced Intelligence Pet Sustenance System. (2026). International Journal of Engineering & Extended Technologies Research (IJEETR), 8(2), 1284-1295. https://doi.org/10.15662/IJEETR.2026.0802087