Concept paper: Innovative approaches to food quality control: AI and machine learning for predictive analysis

Temilade Abass 1, Esther Oleiye Itua 2, Tabat Bature 3 and Michael Alurame Eruaga 3, *

1 Independent Researcher, Lagos, Nigeria
2 National Agency for Food and Drug Administration and Control (NAFDAC), Edo, Nigeria.
3 National Agency for Food and Drug Administration and Control (NAFDAC), Abuja, Nigeria.
 
Review Article
World Journal of Advanced Research and Reviews, 2024, 21(03), 823–828
Article DOI: 10.30574/wjarr.2024.21.3.0719
 
Publication history: 
Received on 22 January 2024; revised on 03 March 2024; accepted on 05 March 2024
 
Abstract: 
The concept paper explores the potential of artificial intelligence (AI) and machine learning (ML) in revolutionizing food quality control processes. In response to the growing challenges faced by the food industry in ensuring consistent quality and safety standards, this paper proposes leveraging advanced technologies to enhance predictive analysis. The traditional methods of food quality control are often reactive and time-consuming, leading to inefficiencies and increased risks of contamination or spoilage. By harnessing AI and ML algorithms, businesses can shift towards proactive strategies, predicting potential issues before they arise and implementing preventive measures accordingly. Key components of the proposed approach include data collection from various sources such as sensors, supply chain records, and historical quality data. Through sophisticated data analysis techniques, AI systems can identify patterns, anomalies, and correlations that might indicate deviations from expected quality standards. Moreover, ML models can continuously learn and adapt based on new data, improving prediction accuracy over time. Implementation of AI-driven predictive analysis in food quality control offers several benefits. Automation of quality control processes reduces manual effort and enables real-time monitoring, enabling timely interventions to maintain product quality. By minimizing the likelihood of product recalls, waste, and rework, businesses can achieve significant cost savings associated with quality control measures. Consistently delivering high-quality products strengthens consumer trust and loyalty, leading to increased market competitiveness and brand reputation. AI-powered systems can assist in ensuring compliance with stringent food safety regulations by providing comprehensive documentation of quality control measures and outcomes. However, successful adoption of AI and ML technologies in food quality control requires overcoming various challenges, including data privacy concerns, integration with existing systems, and ensuring the reliability and interpretability of AI-driven insights. the integration of AI and ML for predictive analysis represents a transformative opportunity for the food industry to modernize quality control practices and uphold the highest standards of safety and excellence. Embracing innovation in this domain is essential for staying competitive in a rapidly evolving market landscape and meeting the evolving expectations of consumers and regulatory bodies alike.
 
Keywords: 
Approaches; Food Quality Control; AI; Predictive Analysis
 
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