IOT-BASED ENTERPRISE RESOURCE PLANNING: CHALLENGES, OPEN ISSUES, APPLICATIONS, AND ARCHITECTURE ANALYSIS

Authors

  • Mohan Kunkulagunt Research Scholar, Department of Computer Science, B.E.S.T University, Anantapur, Andhra Pradesh, India. Author
  • Mohan Kunkulagunta Research Scholar, Department of Computer Science, B.E.S.T University, Anantapur, Andhra Pradesh, India. Author

Keywords:

Enterprise Resource Planning (ERP), Internet Of Things (IoT), Cloud

Abstract

In today`s competitive markets, companies can gain an advantage by implementing Enterprise Resource Planning (ERP) solutions correctly. ERP works with many different kinds of technology, including the Internet of Things. Authentication, management, and data transmission to end users and databases are all aspects of the Internet of Things (IoT) that depend on a unique Internet protocol. The information is gathered by means of the Internet of Things, hosted in the cloud, and subsequently processed and overseen by enterprise resource planning software. Research on the Internet of Things (IoT) enterprise resource planning (ERP) system focuses on its design, implementation, open issues, and difficulties. To that end, we survey and analyze recent papers about the IoT to present its unique features and then analyze its impact on ERP. The results show that devices and sensors linked to the Internet can manage ERP data processed in the cloud without human intervention. We also discuss the pros and cons of cloud computing with respect to enterprise resource planning and the IoT.

References

Zheng C., Yuan J., Zhu L., Zhang Y., Shao Q. From digital to sustainable: a scientometric review of smart city literature between 1990 and 2019. J. Clean. Prod. 2019;258 Article number 120689

Li J., Feng S., Luo T., Guan Z. What drives the adoption of sustainable production technology? Evidence from the large-scale farming sector in East China. J. Clean. Prod. 2020;257 Article number 120611.

Zeinalnezhad M., Gholamzadeh A., Feybi C., Goni A., Klemeš J.J. Air pollution prediction using semi-experimental regression model and adaptive neuro-fuzzy inference system. J. Clean. Prod. 2020;261:121218.

Zaidan A.A., Zaidan B.B. A review on intelligent process for smart home applications based on IoT: coherent taxonomy, motivation, open challenges, and recommendations. Artif. Intell. Rev. 2020;53(1):141–165.

Farooq M.S., Riaz S., Abid A., Umer T., Zikria Y.B. Role of iot technology in agriculture: A systematic literature review. 2020;9(2) Article number 319.

Salagare S., Prasad R. An overview of internet of dental things: new frontier in advanced dentistry. Wireless Pers. Commun. 2020;110(3):1345–1371

Web source: Techradarpro.techradar.com/news/rise-of-the-internet-of-things-iot, (accessed, March 20, 2020).

Web source: Louis Columbus. Forbes.com/sites/louiscolumbus/2018/06/06/10-charts-that-will-challenge-your-perspective-of-iots-growth/#79c388e3ecce, (accessed, March 21, 2020).

Web source: Pew Research Centre. Pewresearch.org/fact-tank/2019/06/17/worlds-population-is-projected-to-nearly-stop-growing-by-the-end-of-the-century/, (accessed, March 21, 2020).

Web source: Techradarpro.techradar.com/news/rise-of-the-internet-of-things-iot, (accessed, March 20, 2020)

Kakkavas G., Gkatzioura D., Karyotis V., Papavassiliou S. A review of advanced algebraic approaches enabling network tomography for future network infrastructures. Future Internet. 2020;12(2) Article Number 20

Conti M., Kaliyar P., Rabbani M.M., Ranise S. Attestation-enabled secure and scalable routing protocol for IoT networks. Ad Hoc Netw. 2020;98 Article number 102054. [Google Scholar] [Ref list]

Gonaygunta, Hari, Factors Influencing the Adoption of Machine Learning Algorithms to Detect Cyber Threats in the Banking Industry, DAI-A 85/7(E), Dissertation Abstracts International, Ann Arbor, United States, ISBN 9798381387865, 142, 2023.

Nadella, G. S. (2023). Validating the Overall Impact of IS on Educators in U.S. High Schools Using IS-Impact Model – A Quantitative PLS-SEM Approach, DAI-A 85/7(E), Dissertation Abstracts International, Ann Arbor, ISBN 9798381388480, 189, 2023.

Hari Gonaygunta (2023) Machine Learning Algorithms for Detection of Cyber Threats using Logistic Regression, 10.47893/ijssan.2023.1229.

Hari Gonaygunta, Pawankumar Sharma, (2021) Role of AI in product management automation and effectiveness, https://doi.org/10.2139/ssrn.4637857

R Pulimamidi, GP Buddha, Applications of Artificial Intelligence Based Technologies in The Healthcare Industry, Tuijin Jishu/Journal of Propulsion Technology 44 (3), 4513-4519.

R Pulimamidi, GP Buddha, AI-Enabled Health Systems: Transforming Personalized Medicine And Wellness, Tuijin Jishu/Journal of Propulsion Technology 44 (3), 4520-4526.

R Pulimamidi, P Ravichandran, Connected Health: Revolutionizing Patient Care Through Artificial Intelligence Innovations, Tuijin Jishu/Journal of Propulsion Technology 44 (3), 3940-3947.

R Pulimamidi, P Ravichandran, Enhancing Healthcare Delivery: AI Applications In Remote Patient Monitoring, Tuijin Jishu/Journal of Propulsion Technology 44 (3), 3948-3954.

P Kanagala, Effective cyber security system to secure optical data based on deep learning approach for healthcare application, Optik 272, 170315.

P Kanagala, Implementing cryptographic-based DH approach for enterprise network, Optik 272, 170252.

P Kanagala, R Jayaraman, FAA-Cloud approach to minimize computation overhead using fuzzy-based crypto security, Soft Computing, 1-11.

P Kanagala, R Jayaraman, Effective encryption approach to improving the secure cloud framework through fuzzy-based encrypted cryptography, Soft Computing, 1-10.

Ramya Manikyam, J. Todd McDonald, William R. Mahoney, Todd R. Andel, and Samuel H. Russ. 2016.Comparing the effectiveness of commercial obfuscators against MATE attacks. In Proceedings of the 6th Workshop on Software Security, Protection, and Reverse Engineering (SSPREW’16)

R. Manikyam. 2019.Program protection using software based hardware abstraction.Ph.D. Dissertation.University of South Alabama.

B. Nagaraj, A. Kalaivani, S. B. R, S. Akila, H. K. Sachdev, and S. K. N, “The Emerging Role of Artificial intelligence in STEM Higher Education: A Critical review,” International Research Journal of Multidisciplinary Technovation, pp. 1–19, Aug. 2023, doi: 10.54392/irjmt2351.

D. Sivabalaselvamani, K. Nanthini, Bharath Kumar Nagaraj, K. H. Gokul Kannan, K. Hariharan, M. Mallingeshwaran, Healthcare Monitoring and Analysis Using ThingSpeak IoT Platform: Capturing and Analyzing Sensor Data for Enhanced Patient Care, IGI Global eEditorial Discovery, Pages: 25, 2024. DOI: 10.4018/979-8-3693-1694-8.ch008

Sri Charan Yarlagadda, Role of Artificial Intelligence, Automation, and Machine Learning in Sustainable Plastics Packaging markets: Progress, Trends, and Directions, International Journal on Recent and Innovation Trends in Computing and Communication, Vol:11, Issue 9s, Pages: 818–828, 2023.

Sri Charan Yarlagadda, The Use of Artificial Intelligence and Machine Learning in Creating a Roadmap Towards a Circular Economy for Plastics, International Journal on Recent and Innovation Trends in Computing and Communication, Vol:11, Issue 9s, Pages: 829-836, 2023.

Amol Kulkarni, Amazon Athena Serverless Architecture and Troubleshooting, International Journal of Computer Trends and Technology, Vol, 71, issue, 5, pages 57-61, 2023.

Amazon Redshift Performance Tuning and Optimization, International Journal of Computer Trends and Technology, vol, 71, issue, 2, pages, 40-44, 2023

Downloads

Published

2024-10-02

How to Cite

IOT-BASED ENTERPRISE RESOURCE PLANNING: CHALLENGES, OPEN ISSUES, APPLICATIONS, AND ARCHITECTURE ANALYSIS. (2024). INTERNATIONAL JOURNAL OF ARTIFICIAL INTELLIGENCE & MACHINE LEARNING (IJAIML), 3(01), 91-101. https://mylib.in/index.php/IJAIML/article/view/IJAIML_03_01_009