Affiliation:
1. Bucharest University of Economic Studies , Bucharest , Romania
Abstract
Abstract
The green economy brings major transformations in the traditional business model, by integrating innovative business processes, based on artificial intelligence. These processes are developed in the Enterprise Resource Planning environment, which is an integrated application of flows and activities. This application electronically manages business processes to improve company performance. Specific business objectives are achieved by integrating advanced IT technologies that can identify the digital value of goods and services.
The research questions refer to: a) the number of published articles searched by keywords, to identify if they are an integral part of the innovation process; b) identifying the concepts used in innovative business processes, in the environment of the green economy.
The results in the process of scientific articles identification, by searching for keywords, showed a considerable number of documents compatible with the trends of the integration of innovative processes. Export from Web of Science was done by author, title, source, abstract, citations and for Enterprise Resource Planning, on full record. Loading the search results in the VOSviewer analysis application led to several clusters on fundamental concepts. The identification of the integration environment is based on advanced IT technologies, in the green economy. Creating links maps between Enterprise Resource Planning and innovative processes identified concepts used in preparing the environment of study.
This paper follows whether an artificial intelligence mindset inserted into the innovative business processes of an Enterprise Resource Planning can be achieved. Business processes use digital values and automation integration perspectives to validate the green economy environment.
Reference14 articles.
1. Bandara, F., Jayawickrama, U., Subasinghage, M., Olan, F., Alamoudi, H., Alharthi, M. (2023). Enhancing ERP Responsiveness Through Big Data Technologies: An Empirical Investigation. Information Systems Frontier Journal, Springer, https://doi.org/10.1007/s10796-023-10374-w.
2. Bukar, U. A., Sayeeda, S., Razaka, S. F. A., Yogarayana, S., Amodub, O. A., Mahmoodd, R. A. R. (2023). A method for analyzing text using VOSviewer. MethodsX Journal, 11:102339.
3. Dong, A. (2021). ERP and Artificial Intelligence based Smart Financial Information System Data Analysis Framework. Proceedings of the Sixth International Conference on Inventive Computation Technologies. IEEE Xplore Journal, Part Number: CFP21F70-ART; ISBN: 978-1-7281-8501-9.
4. Farrow, E., (2020). Mindset matters: how mindset affects the ability of staff to anticipate and adapt to Artificial Intelligence (AI) future scenarios in organisational settings, AI & SOCIETY review, 36:895–909.
5. Hyun, Y., Lee, D., Chae, U., Ko, J., Lee, J. (2021). Improvement of Business Productivity by Applying Robotic Process Automation. Applied Sciences Journal, MDPI, 11:10656.