AI-Driven Predictive Maintenance in the Telecommunications Industry

AI-Driven Predictive Maintenance in the Telecommunications Industry

Authors

  • Naveen Vemuri Masters in Computer Science, Silicon Valley University, Bentonville, AR, USA
  • Naresh Thaneeru Masters in Computer Applications, Kakatiya University, Bentonville, AR, USA
  • Venkata Manoj Tatikonda Masters in Computer Science, Silicon Valley University, Bentonville, AR, USA

DOI:

https://doi.org/10.55662/JST.2022.3201

Downloads

Keywords:

Predictive Maintenance, Telecommunications, Artificial Intelligence

Abstract

The rapid evolution of the telecommunications industry has heightened the demand for uninterrupted connectivity and network reliability. In this context, the integration of Artificial Intelligence (AI) in the form of predictive maintenance emerges as a pivotal solution. This research explores the impact of AI-driven predictive maintenance on the telecommunications sector, aiming to enhance network reliability and performance.

The telecommunications industry serves as the backbone of global communication, and the importance of maintaining a robust and reliable network infrastructure cannot be overstated. Traditional methods of reactive maintenance are becoming increasingly inadequate to address the dynamic challenges posed by the modern telecommunications landscape. Hence, the adoption of predictive maintenance, empowered by AI technologies, becomes imperative.

The introductory section sets the stage by providing an overview of the telecommunications industry's significance, emphasizing the critical role of network reliability. The subsequent exploration into predictive maintenance and the integration of AI establishes a foundation for understanding the innovative approach proposed in this research.

A comprehensive literature review delves into existing studies on predictive maintenance in the telecommunications sector, elucidating the historical context and evolution of maintenance practices. Additionally, a focus on AI applications within the industry provides insights into the technological landscape. This section critically analyzes the challenges and opportunities associated with merging AI and predictive maintenance, offering a holistic view of the current state of research in this domain.

The methodology section outlines the AI-driven predictive maintenance model employed in this research. Detailed explanations of data collection methods, tools, and technologies utilized in the study are provided, along with practical examples or case studies showcasing successful implementations. This section serves as a practical guide for organizations seeking to embrace AI-driven predictive maintenance in their telecommunications networks.

A dedicated exploration of AI technologies in predictive maintenance follows, emphasizing machine learning algorithms, neural networks for anomaly detection, natural language processing for fault analysis, and the integration of Internet of Things (IoT) devices. Each technology's role and contribution to enhancing network reliability are dissected, offering a nuanced understanding of the underlying mechanisms.

The benefits and challenges section assesses the outcomes of implementing AI-driven predictive maintenance in telecommunications networks. Improved network reliability, substantial cost savings, and operational efficiency are highlighted as key benefits, while challenges such as data privacy concerns and initial setup costs are addressed.

Incorporating real-world case studies, the research underscores the practical implications of AI-driven predictive maintenance. These case studies showcase successful implementations, providing tangible evidence of reduced downtime, improved performance, and overall enhanced reliability in telecommunications networks.

As the research concludes, it reflects on the key findings and their implications for the telecommunications industry. A call to action is issued for further research and widespread implementation, emphasizing the transformative potential of AI-driven predictive maintenance in ensuring the sustained reliability and performance of telecommunications networks.

In summary, this research article contributes a comprehensive analysis of AI-driven predictive maintenance in the telecommunications industry, bridging the gap between theoretical concepts and practical applications. The findings presented herein underscore the transformative potential of integrating AI technologies, ultimately paving the way for a more resilient and efficient telecommunications infrastructure.

Downloads

Download data is not yet available.

References

Stankovski, D., Radev, D., Fetfov, O., & Ganchev, B. (2023). Agile Automation: Enhancing Telecommunication Management through AI-Driven Strategies.

Ouyang, Y., Wang, L., Yang, A., Shah, M., Belanger, D., Gao, T., ... & Zhang, Y. (2021). The next decade of telecommunications artificial intelligence. arXiv preprint arXiv:2101.09163.

Gizelis, C. A., Nestorakis, K., Misargopoulos, A., Nikolopoulos-Gkamatsis, F., Kefalogiannis, M., Palaiogeorgou, P., ... & Charisis, C. (2023). Decision support using AI: The data exploitation at telecoms in practice. Journal of Decision Systems, 32(3), 634-652.

Wan, J., Li, X., Dai, H. N., Kusiak, A., Martinez-Garcia, M., & Li, D. (2020). Artificial-intelligence-driven customized manufacturing factory: key technologies, applications, and challenges. Proceedings of the IEEE, 109(4), 377-398.

Islam, M. R., Begum, S., & Ahmed, M. U. (2024). Artificial Intelligence in Predictive Maintenance: A Systematic Literature Review on Review Papers. In International Congress and Workshop on Industrial AI (pp. 251-261). Springer, Cham.

Alsaroah, A. H., & Al-Turjman, F. (2023). Combining Cloud Computing with Artificial intelligence and Its Impact on Telecom Sector. NEU Journal for Artificial Intelligence and Internet of Things, 2(3).

Khatri, M. R. (2023). Integration of natural language processing, self-service platforms, predictive maintenance, and prescriptive analytics for cost reduction, personalization, and real-time insights customer service and operational efficiency. International Journal of Information and Cybersecurity, 7(9), 1-30.

KUNAL, K., RAMPRAKASH, K., ARUN, C. J., & XAVIER, M. (2023). AN EXPLORATORY STUDY ON THE COMPONENTS OF AI IMPACTING CUSTOMER RETENTION IN TELECOM INDUSTRY. Russian Law Journal, 11(5s).

Koman, M., Djelić, S., Jagodic, A. K., & Petrović, N. TELECOMMUNICATIONS: THE ROLE OF AI AT TELEKOM SLOVENIJE. BEYOND BITS AND ALGORITHMS.

Bakare, B. I., & Ekolama, M. S. (2023). Application of Artificial Intelligence (AI) to GSM Operations. European Journal of Science, Innovation and Technology, 3(6), 482-495.

Crawshaw, J. A. M. E. S., & READING, H. (2018). AI in telecom operations: Opportunities & obstacles. Heavy Reading, Sep.

Javaid, M., Haleem, A., Singh, R. P., & Suman, R. (2022). Artificial intelligence applications for industry 4.0: A literature-based study. Journal of Industrial Integration and Management, 7(01), 83-111.

Ramagundam, S. (2023). Predicting broadband network performance with ai-driven analysis. Journal of Research Administration, 5(2), 11287-11299.

Kirschbaum, L., Roman, D., Singh, G., Bruns, J., Robu, V., & Flynn, D. (2020). AI-driven maintenance support for downhole tools and electronics operated in dynamic drilling environments. IEEE Access, 8, 78683-78701.

Aldoseri, A., Al-Khalifa, K., & Hamouda, A. (2023). A roadmap for integrating automation with process optimization for AI-powered digital transformation.

Serradilla, O., Zugasti, E., Ramirez de Okariz, J., Rodriguez, J., & Zurutuza, U. (2022). Methodology for data-driven predictive maintenance models design, development and implementation on manufacturing guided by domain knowledge. International Journal of Computer Integrated Manufacturing, 35(12), 1310-1334.

Orike, S., Ekolama, S. M., & Adinnu, J. C. (2023). A Pragmatic Investigation of Artificial Intelligence Algorithms Implementation to Signal Processing for Cellular Networks. European Journal of Science, Innovation and Technology, 3(6), 470-481.

Jagatheesaperumal, S. K., Rahouti, M., Ahmad, K., Al-Fuqaha, A., & Guizani, M. (2021). The duo of artificial intelligence and big data for industry 4.0: Applications, techniques, challenges, and future research directions. IEEE Internet of Things Journal, 9(15), 12861-12885.

Pinheiro, H. (2021). How to Implement AI-Driven Businesses in Communication Service Providers (CSPs) (Doctoral dissertation, Universidade Católica Portuguesa).

Huang, Z., Shen, Y., Li, J., Fey, M., & Brecher, C. (2021). A survey on AI-driven digital twins in industry 4.0: Smart manufacturing and advanced robotics. Sensors, 21(19), 6340.

Slimani, K., Khoulji, S., Mortreau, A., & Kerkeb, M. L. (2024). Original Research Article From tradition to innovation: The telecommunications metamorphosis with AI and advanced technologies. Journal of Autonomous Intelligence, 7(1).

Chhaya, K. (2020). Convergence of 5G, AI and IoT holds the promise of industry 4.0. Telecom Business Review, 13(1), 60.

Dixit, S. (2022). Artifical Intelligence and CRM: A Case of Telecom Industry. In Adoption and Implementation of AI in Customer Relationship Management (pp. 92-114). IGI Global.

Palaiogeorgou, P., Gizelis, C. A., Misargopoulos, A., Nikolopoulos-Gkamatsis, F., Kefalogiannis, M., & Christonasis, A. M. (2021, August). AI: Opportunities and challenges-The optimal exploitation of (telecom) corporate data. In Conference on e-Business, e-Services and e-Society (pp. 47-59). Cham: Springer International Publishing.

Edison, G. (2023). Catalyzing Solar, Radio, AI, and Business Synergy. JURIHUM: Jurnal Inovasi dan Humaniora, 1(3), 363-376.

Kumari, S., Lele, V., Singh, D., & Shah, D. 5G and AI-Driven Process Control: Digital Transformation Boosting Agility and Effectiveness in Supply Chains, Manufacturing Systems & Telehealth Delivery.

Soldani, D., & Illingworth, S. A. (2020). 5G AI-enabled automation. Wiley 5G Ref: The Essential 5G Reference Online.

Jan, Z., Ahamed, F., Mayer, W., Patel, N., Grossmann, G., Stumptner, M., & Kuusk, A. (2023). Artificial intelligence for industry 4.0: Systematic review of applications, challenges, and opportunities. Expert Systems with Applications, 216, 119456.

Abubakar, A. I., Omeke, K. G., Ozturk, M., Hussain, S., & Imran, M. A. (2020). The role of artificial intelligence driven 5G networks in COVID-19 outbreak: Opportunities, challenges, and future outlook. Frontiers in Communications and Networks, 1, 575065.

Chen, H. (2019). Success factors impacting artificial intelligence adoption: Perspective from the Telecom Industry in China (Doctoral dissertation, Old Dominion University).

Angelopoulos, A., Michailidis, E. T., Nomikos, N., Trakadas, P., Hatziefremidis, A., Voliotis, S., & Zahariadis, T. (2019). Tackling faults in the industry 4.0 era—a survey of machine-learning solutions and key aspects. Sensors, 20(1), 109.

Siddiqui, M. A. (2023). The significance of AI enhanced customer feedback for providing insights on customer retention and engagement strategies for mobile companies. International Journal Of Engineering And Management Research, 13(6), 182-206.

Sarker, I. H. (2022). Ai-based modeling: Techniques, applications and research issues towards automation, intelligent and smart systems. SN Computer Science, 3(2), 158.

Esenogho, E., Djouani, K., & Kurien, A. M. (2022). Integrating artificial intelligence Internet of Things and 5G for next-generation smartgrid: A survey of trends challenges and prospect. IEEE Access, 10, 4794-4831.

Onwusinkwue, S., Osasona, F., Ahmad, I. A. I., Anyanwu, A. C., Dawodu, S. O., Obi, O. C., & Hamdan, A. (2024). Artificial intelligence (AI) in renewable energy: A review of predictive maintenance and energy optimization.

Maddox, C., Judah, J., & Khan, M. AI-Powered Network Automation: Unleashing the Potential of Machine Intelligence.

Jayadatta, S. (2023). A Study on Latest Developments in Artificial Intelligence (AI) and Internet of Things (IoT) in Current Context. Journal of Applied Information Science, 11(2), 21-28.

Ahmad, T., Zhang, D., Huang, C., Zhang, H., Dai, N., Song, Y., & Chen, H. (2021). Artificial intelligence in sustainable energy industry: Status Quo, challenges and opportunities. Journal of Cleaner Production, 289, 125834.

Schmitt, M. (2023). Securing the Digital World: Protecting smart infrastructures and digital industries with Artificial Intelligence (AI)-enabled malware and intrusion detection. Journal of Industrial Information Integration, 36, 100520.

Vermesan, O., Coppola, M., Bahr, R., Bellmann, R. O., Martinsen, J. E., Kristoffersen, A., ... & Lindberg, D. (2022). An Intelligent Real-Time Edge Processing Maintenance System for Industrial Manufacturing, Control, and Diagnostic. Frontiers in Chemical Engineering, 4, 900096.

Chiu, Y. C., Cheng, F. T., & Huang, H. C. (2017). Developing a factory-wide intelligent predictive maintenance system based on Industry 4.0. Journal of the Chinese Institute of Engineers, 40(7), 562-571.

Koursioumpas, N., Barmpounakis, S., Stavrakakis, I., & Alonistioti, N. (2021). AI-driven, context-aware profiling for 5G and beyond networks. IEEE Transactions on Network and Service Management, 19(2), 1036-1048.

Rane, N., Choudhary, S., & Rane, J. (2023). Artificial Intelligence (AI) and Internet of Things (IoT)-based sensors for monitoring and controlling in architecture, engineering, and construction: applications, challenges, and opportunities. Available at SSRN 4642197.

Ayvaz, S., & Alpay, K. (2021). Predictive maintenance system for production lines in manufacturing: A machine learning approach using IoT data in real-time. Expert Systems with Applications, 173, 114598.

Alghamdi, N. A., & Al-Baity, H. H. (2022). Augmented Analytics Driven by AI: A Digital Transformation beyond Business Intelligence. Sensors, 22(20), 8071.

Gill, S. S., Xu, M., Ottaviani, C., Patros, P., Bahsoon, R., Shaghaghi, A., ... & Uhlig, S. (2022). AI for next generation computing: Emerging trends and future directions. Internet of Things, 19, 100514.

Wan, J., Chen, B., & Wang, S. (2023). Smart Manufacturing Factory: Artificial-Intelligence-Driven Customized Manufacturing. CRC Press.

Chaturvedi, R., & Verma, S. (2023). Opportunities and challenges of AI-driven customer service. Artificial Intelligence in customer service: The next frontier for personalized engagement, 33-71.

Napolitano, E. V. (2023, August). Intelligent technologies for urban progress: exploring the role of ai and advanced telecommunications in smart city evolution. In European Conference on Advances in Databases and Information Systems (pp. 676-683). Cham: Springer Nature Switzerland.

Tseng, M. L., Tran, T. P. T., Ha, H. M., Bui, T. D., & Lim, M. K. (2021). Sustainable industrial and operation engineering trends and challenges Toward Industry 4.0: A data driven analysis. Journal of Industrial and Production Engineering, 38(8), 581-598.

Soori, M., Arezoo, B., & Dastres, R. (2023). Artificial intelligence, machine learning and deep learning in advanced robotics, A review. Cognitive Robotics.

Pradhan, B., Das, S., Roy, D. S., Routray, S., Benedetto, F., & Jhaveri, R. H. (2023). An AI-Assisted Smart Healthcare System Using 5G Communication. IEEE Access.

Bharadiya, J. P. (2023). Machine learning and AI in business intelligence: Trends and opportunities. International Journal of Computer (IJC), 48(1), 123-134.

Anyonyi, Y. I., & Katambi, J. (2023). The Role of AI in IoT Systems: A Semi-Systematic Literature Review.

Lal, B., Kumar, M. A., Chinthamu, N., & Pokhriyal, S. (2023, August). Development of Product Quality with Enhanced Productivity in Industry 4.0 with AI Driven Automation and Robotic Technology. In 2023 Second International Conference on Augmented Intelligence and Sustainable Systems (ICAISS) (pp. 184-189). IEEE.

Lee, J., Davari, H., Singh, J., & Pandhare, V. (2018). Industrial Artificial Intelligence for industry 4.0-based manufacturing systems. Manufacturing letters, 18, 20-23.

Yendluri, D. K., Ponnala, J., Tatikonda, R., Kempanna, M., Thatikonda, R., & Bhuvanesh, A. (2023, November). Role of RPA & AI in Optimizing Network Field Services. In 2023 7th International Conference on Computation System and Information Technology for Sustainable Solutions (CSITSS) (pp. 1-6). IEEE.

Huang*, R., Xi, L., Lee, J., & Liu, C. R. (2005). The framework, impact and commercial prospects of a new predictive maintenance system: intelligent maintenance system. Production Planning & Control, 16(7), 652-664.

Mou, X. (2019). Artificial intelligence: Investment trends and selected industry uses. International Finance Corporation, 8.

Vyas, Bhuman. "Java-Powered AI: Implementing Intelligent Systems with Code." Journal of Science & Technology 4.6 (2023): 1-12.

Vyas, Bhuman. "Java in Action: AI for Fraud Detection and Prevention." International Journal of Scientific Research in Computer Science, Engineering and Information Technology (2023): 58-69.

Downloads

Published

10-03-2022 — Updated on 11-03-2022

Versions

Citation Metrics
DOI: 10.55662/JST.2022.3201
Published: 11-03-2022

How to Cite

Vemuri, N., N. Thaneeru, and V. Manoj Tatikonda. “AI-Driven Predictive Maintenance in the Telecommunications Industry”. 2022. Journal of Science & Technology, vol. 3, no. 2, Mar. 2022, pp. 21-45, doi:10.55662/JST.2022.3201.
PlumX Metrics

Plaudit

License Terms

Ownership and Licensing:

Authors of this research paper submitted to the Journal of Science & Technology retain the copyright of their work while granting the journal certain rights. Authors maintain ownership of the copyright and have granted the journal a right of first publication. Simultaneously, authors agreed to license their research papers under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International (CC BY-NC-SA 4.0) License.

License Permissions:

Under the CC BY-NC-SA 4.0 License, others are permitted to share and adapt the work, as long as proper attribution is given to the authors and acknowledgement is made of the initial publication in the Journal of Science & Technology. This license allows for the broad dissemination and utilization of research papers.

Additional Distribution Arrangements:

Authors are free to enter into separate contractual arrangements for the non-exclusive distribution of the journal's published version of the work. This may include posting the work to institutional repositories, publishing it in journals or books, or other forms of dissemination. In such cases, authors are requested to acknowledge the initial publication of the work in the Journal of Science & Technology.

Online Posting:

Authors are encouraged to share their work online, including in institutional repositories, disciplinary repositories, or on their personal websites. This permission applies both prior to and during the submission process to the Journal of Science & Technology. Online sharing enhances the visibility and accessibility of the research papers.

Responsibility and Liability:

Authors are responsible for ensuring that their research papers do not infringe upon the copyright, privacy, or other rights of any third party. The Journal of Science & Technology and The Science Brigade Publishers disclaim any liability or responsibility for any copyright infringement or violation of third-party rights in the research papers.

Loading...