Articles | Open Access | DOI: https://doi.org/10.37547/tajet/Volume06Issue11-06

METHODS OF TRAINING AND ADAPTATION OF AI AGENTS IN COMPLEX PROCESS CONTROL SYSTEMS

Oleksandr Khodorkovskyi , CEO, Quantum Core, Kyiv, Ukraine

Abstract

The article presents a study of modern methods of training and adaptation of artificial agents used in managing complex processes, which are characterized by a high level of uncertainty and the need for prompt response to changes. Key methodological approaches such as machine learning and neuroevolution are discussed. These approaches allow AI agents to accumulate knowledge about the behavior of systems continuously, analyze external changes, and adjust the management strategy depending on environmental conditions, which significantly increases their ability to predict and prevent possible failures in management.

In the course of the study, models were considered that allow automating the execution of complex, multitasking processes, minimizing human intervention, and reducing the likelihood of errors. In addition, the presented methods provide high flexibility and scalability of systems, which is especially important in industrial and technological industries, where stability and reliability are critical. The results showed that AI agents with adaptive learning capabilities can increase operational efficiency while reducing costs and optimizing resource use. The conclusion highlights the prospects of using artificial intelligence to build highly autonomous control systems capable of responding to dynamic challenges, which opens up new horizons for automation and intellectual support in industrial production, logistics, and other key areas.

Thus, the article makes a significant contribution to understanding the role of AI in management modernization, offering practical recommendations on the implementation of intelligent agents in real-world scenarios to increase productivity and sustainability.

ZENODO DOI :- https://doi.org/10.5281/zenodo.14272177

Keywords

Artificial intelligence, AI agents, complex processes

References

Thon C. et al. Artificial intelligence in process engineering //Advanced Intelligent Systems. – 2021. – Vol. 3. – No. 6. – p. 2000261.

Schöbel S. et al. Charting the evolution and future of conversational agents: A research agenda along five waves and new frontiers //Information Systems Frontiers. – 2024. – vol. 26. – No. 2. – pp. 729-754.

De Togni G. et al. What makes AI ‘intelligent’and ‘caring’? Exploring affect and relationality across three sites of intelligence and care //Social Science & Medicine. – 2021. – vol. 277. – p. 113874.

Moradbakhti L., Schreibelmayr S., Mara M. Do men not need “feminist” artificial intelligence? Agentic and gendered voice assistants in the light of basic psychological needs //Frontiers in psychology. – 2022. – vol. 13. – p. 855091.

Galván E., Mooney P. Neuroevolution in deep neural networks: Current trends and future challenges //IEEE Transactions on Artificial Intelligence. – 2021. – Vol. 2. – No. 6. – pp. 476-493.

Heuillet A., Couthouis F., Díaz-Rodríguez N. Explainability in deep reinforcement learning //Knowledge-Based Systems. – 2021. – Vol. 214. – p. 106685.

Soori M., Arezoo B., Dastres R. Artificial intelligence, machine learning and deep learning in advanced robotics, a review //Cognitive Robotics. – 2023. – Vol. 3. – pp. 54-70.

Leite D. et al. An automated machine learning approach for real-time fault detection and diagnosis //Sensors. – 2022. – vol. 22. – no. 16. – p. 6138.

Azeem M. et al. Big data applications to take up major challenges across manufacturing industries: A brief review //Materials Today: Proceedings. – 2022. – Vol. 49. – pp. 339-348.

The Volkswagen Group on AWS. [Electronic resource] Access mode: https://aws.amazon.com/ru/solutions/case-studies/innovators/volkswagen-group / (accessed 10/23/2024).

The Top 6 Technologies for Improving Aircraft Fuel Efficiency. [Electronic resource] Access mode: https://www.prescouter.com/2018/01/technologies-improving-aircraft-fuel-efficiency / (accessed 10/23/2024).

How Artificial Intelligence is Revolutionizing the World of Tesla. [Electronic resource] Access mode: https://aiforsocialgood.ca/blog/how-artificial-intelligence-is-revolutionizing-the-world-of-tesla (accessed 10/23/2024).

AI-Powered Platform from IBM Watson Health to Personalize Cancer Treatment. [Electronic resource] Access mode: https://medium.com/@AIadvice/ai-powered-platform-from-ibm-watson-health-to-personalize-cancer-treatment-57116b973398 (accessed 10/23/2024).

Article Statistics

Copyright License

Download Citations

How to Cite

Oleksandr Khodorkovskyi. (2024). METHODS OF TRAINING AND ADAPTATION OF AI AGENTS IN COMPLEX PROCESS CONTROL SYSTEMS. The American Journal of Engineering and Technology, 6(11), 46–53. https://doi.org/10.37547/tajet/Volume06Issue11-06