Short review on Integration of Industry 4.0 Technologies in Water Treatment: Innovations, Challenges, and Future Perspectives
Authors/Creators
- 1. Laboratoire de Science et Technologie des Aliments et Bioressources et de Nutrition Humaine (LaSTABNH), Université Nationale d'Agriculture.
- 2. Laboratoire d'Etude et de Recherche en Chimie Appliquée, Ecole Polytechnique d'Abomey-Calavi, Université d'Abomey-Calavi.
- 3. Département des Sciences Exactes et Appliquées, Laboratoire de Technologies et Sciences Appliquées, Haute Ecole de Commerce et de Management.
Description
The growing demand for sustainable, efficient, and resilient water treatment systems has driven increasing interest in the integration of Industry 4.0 technologies. This review explores the practical applications of key digital innovations including the Internet of Things (IoT), artificial intelligence (AI) and machine learning, big data analytics, and automation with cyber-physical systems in modern water treatment. These technologies enable real-time monitoring, predictive maintenance, process optimization, and data-driven decision-making, transforming conventional facilities into adaptive, smart systems. A literature search was conducted across peer-reviewed publications and technical reports from 2015 to 2025, with data extracted on study areas, methodologies, outcomes, and practical implications. The analysis highlights successful case applications in water quality monitoring, wastewater treatment, and infrastructure management, while also identifying challenges related to cost, interoperability, and regulatory frameworks. Future perspectives emphasize the need for low-cost and scalable solutions, seamless integration with existing infrastructure, supportive policies, and collaborative partnerships across research, industry, and governance. Emerging opportunities include the convergence of Industry 4.0 with advanced biosensors, blockchain, and autonomous robotics, paving the way for fully automated and self-optimizing treatment plants.
Files
GSCARR-2025-0295.pdf
Files
(701.1 kB)
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