Machine learning and internet of things applications in enterprise architectures: Solutions, challenges, and open issues

Author:

Rehman Zubaida1,Tariq Noshina2,Moqurrab Syed Atif3,Yoo Joon3ORCID,Srivastava Gautam456ORCID

Affiliation:

1. Department of Cloud and Security Royal Melbourne Institute of Technology Melbourne Australia

2. Department of Avionics Engineering Air University Islamabad Pakistan

3. School of Computing Gachon University Seongnam‐si Korea

4. Department of Computer Science and Math Lebanese American University Beirut Lebanon

5. Research Center for Interneural Computing China Medical University Taichung Taiwan

6. Department of Mathematics and Computer Science Brandon University Brandon Manitoba Canada

Abstract

SummaryThe rapid growth of the Internet of Things (IoT) has led to its widespread adoption in various industries, enabling enhanced productivity and efficient services. Integrating IoT systems with existing enterprise application systems has become common practice. However, this integration necessitates reevaluating and reworking current Enterprise Architecture (EA) models and Expert Systems (ES) to accommodate IoT and cloud technologies. Enterprises must adopt a multifaceted view and automate various aspects, including operations, data management, and technology infrastructure. Machine Learning (ML) is a powerful IoT and smart automation tool within EA. Despite its potential, a need for dedicated work focuses on ML applications for IoT services and systems. With IoT being a significant field, analyzing IoT‐generated data and IoT‐based networks is crucial. Many studies have explored how ML can solve specific IoT‐related challenges. These mutually reinforcing technologies allow IoT applications to leverage sensor data for ML model improvement, leading to enhanced IoT operations and practices. Furthermore, ML techniques empower IoT systems with knowledge and enable suspicious activity detection in smart systems and objects. This survey paper conducts a comprehensive study on the role of ML in IoT applications, particularly in the domains of automation and security. It provides an in‐depth analysis of the state‐of‐the‐art ML approaches within the context of IoT, highlighting their contributions, challenges, and potential applications.

Publisher

Wiley

Subject

Artificial Intelligence,Computational Theory and Mathematics,Theoretical Computer Science,Control and Systems Engineering

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