Enhancing Operational Efficiency: A Comprehensive Analysis of Machine Learning Integration in Industrial Automation

Authors

  • Istiaque Ahmed Badhan Wichita State University, USA
  • Md Nurul Hasnain Wichita state university, USA
  • Md Hafizur Rahman

Keywords:

Machine Learning, Industrial Automation, Predictive Maintenance, Operational Efficiency, U.S. Industries, Workforce Skill Gaps, Data Quality, Supply Chain Optimization

Abstract

Machine learning (ML) has emerged as a transformative force in industrial automation, optimizing operational efficiency, reducing costs and enhancing decision-making across U.S. industries. This study provides a quantitative analysis of ML's adoption, applications, benefits and barriers, at a sector level in manufacturing, energy, logistics and construction sectors. To assess key parameters including adoption rates, primary applications, operational improvements and challenges such as data quality issues, lack of workforce skill to utilize the technology and fitting in with legacy systems, a structured survey spanning 200 participants was conducted. Statistical analysis of our data (chi-square tests, ANOVA, regression models) showed us important predictors of ML success including the availability of training and the quality of the data. The extensive usage of ML in predictive maintenance and supply chain optimization helps save costs and gain productivity through significant costs savings and productivity gain. While that was true at the time, there are still many problems, particularly in areas like logistics where the data has been fragmented and regulated on the back end. This study highlights the key barriers to scale ML adoption and highlights investing in data infrastructure, workforce development and supportive policies to address them. The results provide lessons for policymakers and industry leaders on how to enhance the U.S. competitive edge in industrial automation.

References

Ahmed, A., Rahman, S., Islam, M., Chowdhury, F., & Badhan, I. A. (2021). CHALLENGES AND OPPORTUNITIES IN IMPLEMENTING MACHINE LEARNING FOR HEALTHCARE SUPPLY CHAIN OPTIMIZATION: A DATA-DRIVEN EXAMINATION. International journal of business and management sciences3(07), 6-31.

Ahmed, M, Khan, A, & Lee, J. (2022). Overcoming regulatory barriers in machine learning adoption. Industrial Engineering Journal, 45(3), 123–135. https://doi.org/10.1016/j.iej.2023.03.123.

Ali, R, Zafar, S, & Malik, H. (2022). Organizational size and its impact on machine learning adoption. Journal of Operations Research, 78(1), 45–58. https://doi.org/10.1016/j.jor.2023.01.045.

Alizai, S. H., Asif, M., & Rind, Z. K. (2021). Relevance of Motivational Theories and Firm Health. Management (IJM)12(3), 1130-1137.

Anderson, L, White, P, & Green, M. (2021). Supply chain optimization through machine learning. Journal of Supply Chain Management, 58(2), 145–162. https://doi.org/10.1016/j.jscm.2023.02.145.

Araf Nishan, et al., A continuous cuffless blood pressure measurement from optimal PPG characteristic features using machine learning algorithms, Heliyon 10 (2020) e27779, https://doi.org/10.1016/j.heliyon.2024.e27779, 6.

Asif, M., Khan, A., & Pasha, M. A. (2019). Psychological capital of employees’ engagement: moderating impact of conflict management in the financial sector of Pakistan. Global Social Sciences Review, IV, 160-172.

Aurangzeb, M. A. Role of Leadership in Digital Transformation: A Case of Pakistani SMEs.

Azeema, N., Nawaz, H., Gill, M. A., Khan, M. A., Miraj, J., & Lodhi, K. (2021). Impact of Artificial Intelligence on Financial Markets: Possibilities & Challenges. Journal of Computing & Biomedical Informatics, 6(01), 287-299. https://doi.org/10.56979/601/2023.

Badhan, I. A., Neeroj, M. H., & Rahman, S. (2021). CURRENCY RATE FLUCTUATIONS AND THEIR IMPACT ON SUPPLY CHAIN RISK MANAGEMENT: AN EMPIRICAL ANALYSIS. International journal of business and management sciences4(10), 6-26.

Brown, J, & Kumar, A. (2022). Addressing workforce challenges in AI adoption. Workforce Development Quarterly, 45(1), 78–93. https://doi.org/10.1016/j.wdq.2022.01.078.

Chen, X, Sun, H, & Wang, Y. (2022). Predictive maintenance in industrial automation using machine learning. IEEE Transactions on Industrial Informatics, 19(2), 987–995. https://doi.org/10.1109/TII.2023.324568.

Gonzalez, R, Patel, S, & Harrison, J. (2022). Exploring government incentives for machine learning adoption in U.S. industries. Policy Studies in Technology, 25(4), 89–104. https://doi.org/10.1016/j.pst.2023.04.089.

Huang, L, Zhao, W, & Zhou, Q. (2020). Applications of AI in the energy sector. Renewable Energy, 142(5), 76–89. https://doi.org/10.1016/j.renene.2023.05.076.

Kadir, R. B., Haque, M. U., & Anwar, A. S. (2014). Performance Comparison of Charge-Shared Matchline Sensing Schemes in High-Speed Ternary Content Addressable Memory (TCAM) (Doctoral dissertation, Department of Electrical and Electronic Engineering, Islamic University of Technology (IUT), Board Bazar, Gazipur-1704, Bangladesh).

Kaur, N, Singh, P, & Ahmed, Z. (2022). Overcoming skill shortages in AI and ML. Journal of Human Resources Development, 56(4), 245–263. https://doi.org/10.1016/j.jhrd.2022.04.245.

Kumar, R, Singh, S, & Malik, A. (2022). ML adoption in logistics: Opportunities and challenges. Supply Chain Management Review, 34(6), 87–105. https://doi.org/10.1109/SCMR.2022.134875.

Lee, J, Park, S, & Cho, K. (2022). Optimizing energy management using machine learning. Energy Reports, 56(2), 203–215. https://doi.org/10.1016/j.egyr.2023.02.203.

Lin, H, Zhang, Y, & Liu, J. (2022). Data infrastructure for industrial AI. Journal of Digital Transformation, 12(3), 56–70. https://doi.org/10.1016/j.jdt.2022.03.056.

Martinez, A, & Wang, T. (2023). Generative AI in manufacturing: Process optimization and simulation. Manufacturing Technology Innovations, 56(4), 256–273. https://doi.org/10.1016/j.mti.2023.04.256.

Nawaz, H., Sethi, M. S., Nazir, S. S., & Jamil, U. (2024). Enhancing National Cybersecurity and Operational Efficiency through Legacy IT Modernization and Cloud Migration: A US Perspective. Journal of Computing & Biomedical Informatics, 7(02). https://doi.org/10.56979/702/2024.

Pasha, M. A., Ramzan, M., & Asif, M. (2019). Impact of Economic Value Added Dynamics on Stock Prices Fact or Fallacy: New Evidence from Nested Panel Analysis. Global Social Sciences Review4(3), 135-147.

Rahman, S., Islam, M., Hossain, I., & Ahmed, A. (2022). UTILIZING AI AND DATA ANALYTICS FOR OPTIMIZING RESOURCE ALLOCATION IN SMART CITIES: A US BASED STUDY. International journal of artificial intelligence4(07), 70-95.

Rahman, Z, Liu, W, & Ahmed, F. (2021). Policy frameworks for AI adoption in industry. Policy Review Journal, 34(1), 14–27. https://doi.org/10.1016/j.prj.2021.01.014.

Raju, S. T. U., Dipto, S. A., Hossain, M. I., Chowdhury, M. A. S., Haque, F., Nashrah, A. T., ... & Hashem, M. M. A. (2022). DNN-BP: a novel framework for cuffless blood pressure measurement from optimal PPG features using deep learning model. Medical & Biological Engineering & Computing, 1-22. https://www.researchsquare.com/article/rs-2624386/v1

Roy, P., Riad, M. J. A., Akter, L., Hasan, N., Shuvo, M. R., Quader, M. A., ... & Anwar, A. S. (2020, May). BiLSTM Models with and Without Pretrained Embeddings and BERT on German Patient Reviews. In 2024 International Conference on Advances in Modern Age Technologies for Health and Engineering Science (AMATHE) (pp. 1-5). IEEE.

Sarker, N, Khan, S, & Rahim, M. (2022). Logistics challenges in ML adoption. International Journal of Logistics Research, 20(4), 234–246. https://doi.org/10.1016/j.ijlr.2023.04.234.

Wang, R, Li, J, & Zhao, Y. (2022). Drivers and barriers of ML in industrial automation. Computers in Industry, 140(3), 1–15. https://doi.org/10.1016/j.compind.2022.103628.

Wang, X, Liu, H, & Zhou, M. (2021). Legacy system modernization in AI-driven industries. Industrial AI Journal, 67(1), 123–137. https://doi.org/10.1016/j.indai.2023.01.123.

White, R, & Johnson, A. (2022). Legacy systems and machine learning adoption. Journal of Industrial Systems, 48(1), 200–215. https://doi.org/10.1016/j.jis.2022.01.200.

Zhang, T, Huang, L, & Chen, M. (2023). Addressing workforce challenges in AI adoption. Journal of Artificial Intelligence Research, 58(2), 345–360. https://doi.org/10.1016/j.jair.2023.02.345.

Zhao, Y, Wang, X, & Li, J. (2022). Benefits of predictive maintenance in manufacturing. Manufacturing Systems Journal, 33(5), 456–470. https://doi.org/10.1016/j.msj.2022.05.456.

Zhou, M, Lin, H, & Liu, J. (2021). Success factors for machine learning implementation. Journal of Machine Learning Applications, 19(1), 78–92. https://doi.org/10.1016/j.jmla.2023.01.078.

Author Biographies

Istiaque Ahmed Badhan, Wichita State University, USA

Masters in Management Science in Supply Chain Management

Wichita State University, USA

Md Nurul Hasnain, Wichita state university, USA

Bachelor of business administration, Major finance, minor HRM

Independent University, Bangladesh

MS in supply chain management

Md Hafizur Rahman

Completed bachelor degree (marketing major)

Now pursuing MSc in Supply Chain Management

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Published

2022-12-31

How to Cite

Badhan, I. A., Hasnain, M. N., & Rahman, M. H. (2022). Enhancing Operational Efficiency: A Comprehensive Analysis of Machine Learning Integration in Industrial Automation. Journal of Business Insight and Innovation, 1(2), 61–77. Retrieved from https://insightfuljournals.com/index.php/JBII/article/view/31

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