Publication | Open Access
Anomaly Score-Based Risk Early Warning System for Rapidly Controlling Food Safety Risk
17
Citations
34
References
2022
Year
Anomaly DetectionMachine LearningEngineeringWarning SystemSafety ScienceDiagnosisRisk AnalysisFood Safety RiskEarly Warning AnalysisData ScienceData MiningRisk ManagementManagementFood ControlPublic HealthPredictive AnalyticsFood Quality AssuranceComputer ScienceFood Safety Risk AssessmentEarly Warning SystemEpidemiologyFood SafetyEarly Warning Thresholds
Food safety is a high-priority issue for all countries. Early warning analysis and risk control are essential for food safety management practices. This paper innovatively proposes an anomaly score-based risk early warning system (ASRWS) via an unsupervised auto-encoder (AE) for the effective early warning of detection products, which classifies qualified and unqualified products by reconstructing errors. The early warning analysis of qualified samples is carried out by early warning thresholds. The proposed method is applied to a batch of dairy product testing data from a Chinese province. Extensive experimental results show that the unsupervised anomaly detection model AE can effectively analyze the dairy product testing data, with a prediction accuracy and fault detection rate of 0.9954 and 0.9024, respectively, within only 0.54 s. We provided an early warning threshold-based method to conduct the risk analysis, and then a panel of food safety experts performed a risk revision on the prediction results produced by the proposed method. In this way, AI improves the panel's efficiency, whereas the panel enhances the model's reliability. This study provides a fast and cost-effective, food safety early warning method for detection data and assists market supervision departments in controlling food safety risk.
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