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Artificial neural networks: A solution for increasing the accuracy of regional traceability assessments

机译:人工神经网络:提高区域可追溯性评估准确性的解决方案

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We are presenting a feasibility study regarding the use of Artificial Neural Networks for performing more detailed (regional) traceability assessments in the case of horticultural products. The challenge is related to the significant data variability and the need of fast data analysis and processing, especially in the case of fast perishable products. A case study performed for lovage (Levisticum Officinale) indicates that ANN may provide efficient and cost-effective automated regional traceability evaluations. This method yields a remarkable correct classification rate even for a simple (three layer) architecture and a training database built with a low number of physico-chemical properties.
机译:我们正在提出一项有关使用人工神经网络进行园艺产品情况下更详细(区域)可追溯性评估的可行性研究。挑战与显着的数据可变性以及对快速数据分析和处理的需求有关,特别是在快速易腐产品的情况下。针对独活草(Levisticum Officinale)进行的案例研究表明,人工神经网络可以提供有效且具有成本效益的自动化区域可追溯性评估。即使对于简单的(三层)体系结构和具有少量理化性质的训练数据库,该方法也能产生显着的正确分类率。

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