Integrating IoT with AI-Driven Real-Time Analytics for Enhanced Supply Chain Management in Manufacturing

Authors

  • Priya Ranjan Parida Universal Music Group, USA Author
  • Anil Kumar Ratnala Albertsons Companies Inc, USA Author
  • Dharmeesh Kondaveeti Conglomerate IT Services Inc, USA Author

Keywords:

Internet of Things, artificial intelligence, real-time analytics, supply chain management, predictive analytics, prescriptive analytics

Abstract

This research paper delves into the integration of the Internet of Things (IoT) with Artificial Intelligence (AI)-driven real-time analytics to enhance supply chain management (SCM) in manufacturing. As manufacturing processes become increasingly complex and globalized, the need for real-time visibility and decision-making has become paramount for optimizing operations. The advent of IoT technology, characterized by a network of interconnected devices, sensors, and machinery, has made it possible to collect vast amounts of data across various touchpoints in the supply chain. However, the sheer volume, velocity, and variety of this data present significant challenges for conventional data processing methods. This is where the role of AI-driven analytics becomes critical, offering advanced algorithms capable of processing large-scale, real-time data to generate actionable insights.

The paper provides a comprehensive analysis of how IoT-enabled devices can capture data in real-time from multiple sources such as machinery, inventory systems, logistics, and transportation fleets. By incorporating AI-driven algorithms, such as machine learning (ML) and deep learning (DL), these data streams are continuously analyzed to predict trends, detect anomalies, and optimize decision-making processes. The paper explores the use of predictive analytics for forecasting demand, inventory levels, and production schedules, as well as the application of prescriptive analytics to suggest optimal courses of action in response to potential disruptions or inefficiencies. Furthermore, it examines how AI-driven analytics, when combined with IoT data, can provide enhanced visibility across the entire supply chain, enabling manufacturers to make more informed decisions in real-time, thereby reducing lead times, improving asset utilization, and minimizing costs.

In addition to real-time data collection and analytics, the paper investigates the role of IoT and AI in enhancing transparency and traceability within the supply chain. With manufacturers under increasing pressure to ensure the ethical sourcing of materials, regulatory compliance, and sustainability, the integration of IoT sensors and AI-driven analytics enables a more granular level of monitoring and reporting. The paper discusses how AI algorithms can sift through vast amounts of data collected from IoT devices to trace the origin of materials, monitor production conditions, and ensure compliance with regulatory standards in real-time. This level of transparency is critical not only for operational efficiency but also for maintaining the integrity of the supply chain, particularly in industries where compliance and quality control are paramount.

The research also highlights the potential of integrating blockchain technology with IoT and AI to further strengthen supply chain transparency and security. Blockchain, with its immutable and decentralized nature, can provide a secure platform for recording transactions and data exchanges in real-time. The integration of IoT devices ensures the authenticity of the data being captured, while AI algorithms analyze this data to detect fraud, inefficiencies, or potential security breaches within the supply chain. By combining these technologies, manufacturers can create a robust system for supply chain management that is not only efficient but also secure and transparent.

Another key aspect of the paper is the examination of the technical challenges associated with implementing IoT and AI-driven analytics in supply chain management. The paper discusses issues such as data security, privacy concerns, integration complexities, and the need for robust network infrastructure to handle the enormous volumes of data generated by IoT devices. Additionally, it explores the computational challenges of applying AI algorithms to real-time data, particularly in environments with high variability and unpredictability, such as global supply chains. Solutions for overcoming these challenges, including edge computing, cloud-based analytics platforms, and the development of more efficient AI algorithms, are also explored in depth.

Furthermore, the paper presents several case studies that demonstrate the practical applications of IoT and AI-driven real-time analytics in optimizing supply chain management within the manufacturing sector. These case studies illustrate how leading manufacturers have successfully implemented IoT and AI technologies to enhance their supply chain operations, reduce costs, and improve efficiency. By providing real-world examples, the paper bridges the gap between theory and practice, showing the tangible benefits of integrating IoT and AI technologies in supply chain management.

This research emphasizes the transformative potential of integrating IoT with AI-driven real-time analytics for enhancing supply chain management in the manufacturing sector. By leveraging data from IoT devices and applying advanced AI algorithms, manufacturers can achieve unprecedented levels of efficiency, transparency, and agility in their supply chain operations. However, the successful implementation of these technologies requires addressing significant technical challenges, particularly around data security, network infrastructure, and computational efficiency. The paper argues that as these challenges are overcome, the integration of IoT and AI will become increasingly central to the future of supply chain management, enabling manufacturers to remain competitive in an increasingly complex and dynamic global market.

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Published

23-08-2024

How to Cite

[1]
P. R. Parida, A. K. Ratnala, and D. Kondaveeti, “Integrating IoT with AI-Driven Real-Time Analytics for Enhanced Supply Chain Management in Manufacturing”, J. of Artificial Int. Research and App., vol. 4, no. 2, pp. 40–84, Aug. 2024, Accessed: Nov. 14, 2024. [Online]. Available: https://aimlstudies.co.uk/index.php/jaira/article/view/289

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