4.7 Article

PRIAS: An Intelligent Analysis System for Pesticide Residue Detection Data and Its Application in Food Safety Supervision

期刊

FOODS
卷 11, 期 6, 页码 -

出版社

MDPI
DOI: 10.3390/foods11060780

关键词

pesticide residue; intelligent analysis system; statistical analysis; association rule; fusion processing

资金

  1. National Natural Science Foundation of China [61972010]
  2. National Key Research and Development Program of China [2018YFC1603602]
  3. Beijing Science and Technology Planning Project [Z151100001615041]
  4. Basic Research Project of the Ministry of Science and Technology [2015FY111200]

向作者/读者索取更多资源

This study presents an intelligent analysis system for deep analysis and mining of pesticide residue data to quickly identify food safety risks, and automatic generation of reports. The application results in 42 cities in mainland China show that the system can improve the depth, accuracy, and efficiency of pesticide residue data analysis, and provide better decision support for food safety supervision.
Pesticide residue is a prominent factor that leads to food safety problems. For this reason, many countries sample and detect pesticide residues in food every year, which generates a large amount of pesticide residue data. However, the way to deeply analyze and mine these data to quickly identify food safety risks is still an unresolved issue. In this study, we present an intelligent analysis system that supports the collection, processing, and analysis of detection data of pesticide residues. The system is first based on a number of databases such as maximum residue limit standards for the fusion of pesticide residue detection results; then, it applies a series of statistical methods to analyze pesticide residue data from multiple dimensions for quickly identifying potential risks; it uses the Apriori algorithm to mine the implicit association in the data to form pre-warning rules; finally, it applies Word document automatic generation technology to automatically generate pesticide residue analysis and pre-warning reports. The system was applied to analyze the pesticide residue detection results of 42 cities in mainland China from 2012 to 2015. Application results show that the system proposed in this study can greatly improve the depth, accuracy and efficiency of pesticide residue detection data analysis, and it can provide better decision support for food safety supervision.

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