Röhrs Sina, Rohn Sascha, Pfeifer Yvonne, Romanova Anna
SGS Germany GmbH, Health and Nutrition, Heidenkampsweg 99, 20097 Hamburg, Germany.
Department of Food Chemistry and Analysis, Institute of Food Technology and Food Chemistry, Technische Universität Berlin, Gustav Meyer Allee 25, 13355 Berlin, Germany.
Foods. 2025 Apr 21;14(8):1437. doi: 10.3390/foods14081437.
Food safety is a global issue that can be enhanced by collaboration with reliable suppliers. Given the complexities of international supply chains, identifying reliable suppliers is often challenging and resource-intensive. Integrating artificial intelligence (AI) offers a valuable opportunity to improve efficiency in this process. The aim of the present study was to develop a quantitative supplier assessment scheme for implementation in an AI-supported database. The framework developed incorporates different indicators, including the hazard risk, incident category level, vulnerability of a commodity, audit performance, logistic performance index, gross domestic product (GDP) growth, and GDP per capita. Each indicator is evaluated according to its own distinct assessment. Ultimately, the sub-assessments are integrated into the calculation of a supplier's overall risk score. Hereby, it is possible to set individual weightings for each indicator. Manual testing using an exemplary selected supplier yielded promising results, indicating that the next steps involve implementation into an AI-supported database. It can be concluded that such an assessment framework can be an effective method for the identification of reliable suppliers. A future challenge will be to establish incentives to make audit data freely available, as these are often restricted and cannot be considered in the supplier risk assessment.
食品安全是一个全球性问题,与可靠供应商合作可加强食品安全。鉴于国际供应链的复杂性,识别可靠供应商往往具有挑战性且资源密集。整合人工智能(AI)为提高这一过程的效率提供了宝贵机会。本研究的目的是开发一种定量供应商评估方案,以便在人工智能支持的数据库中实施。所开发的框架纳入了不同指标,包括危害风险、事件类别级别、商品脆弱性、审核绩效、物流绩效指数、国内生产总值(GDP)增长和人均GDP。每个指标根据其各自不同的评估进行评价。最终,将子评估结果整合到供应商总体风险评分的计算中。据此,可以为每个指标设置单独的权重。使用一个经示例选择的供应商进行的人工测试产生了有前景的结果,表明下一步是将其实施到人工智能支持的数据库中。可以得出结论,这样一个评估框架可以成为识别可靠供应商的有效方法。未来的一个挑战将是建立激励机制,使审核数据能够免费获取,因为这些数据往往受到限制,无法在供应商风险评估中加以考虑。