SMART ANALYTICAL SYSTEMS: LEVERAGING ARTIFICIAL INTELLIGENCE FOR REAL-TIME CHEMICAL DETECTION AND DATA INTERPRETATION
- 1. Department of Chemistry, Federal University of Education, Zaria, Nigeria
- 2. Department of Chemistry, Ahmadu Bello University, Zaria
Description
Traditional chemical detection methods have been foundational in healthcare, environmental monitoring, and industrial processing, providing accurate and reliable results over decades of application. Recent advancements in artificial intelligence (AI), coupled with innovations in sensor technologies, are transforming this landscape by enabling intelligent, autonomous, and real-time chemical detection systems. AI-powered analytical platforms leverage ML algorithms, DL models, and advanced data processing to enhance sensitivity, specificity, and predictive capabilities, even in complex or dynamic environments. This article examines the architecture and core components of AI-driven chemical sensing systems, highlighting their integration with spectroscopic, electrochemical, and biosensor technologies. Applications span diverse sectors, including medical diagnostics, environmental pollution tracking, food quality assurance, and industrial process optimization. The discussion also addresses key challenges, such as data quality, model interpretability, and system scalability, while emphasizing the importance of interdisciplinary expertise and robust validation frameworks. The paper concludes with an outlook on emerging trends, including portable AI-enabled sensors, integration with the Internet of Things (IoT), and the role of AI in green and sustainable chemistry. Ultimately, the synergy between AI and chemical sensing holds significant promise for creating faster, smarter, and more accessible analytical solutions that can respond effectively to real-world demands.
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