Estimating the Agricultural Environmental Burden As Part of a Holistic Life Cycle Assessment of Food

Tao Dai, A. Fleischer, A. Wemhoff, Ross Lee
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Abstract

A precise calculation of the environmental burden of food products is a prerequisite for creating food eco-labeling as a strategy for environmental impact mitigation. Life cycle assessment (LCA) is widely used for this purpose, and proxy data is traditionally used due to the shortage of data. Uncertainties are introduced in this process since food products contain a variety of origins. In this study, data from the United States Department of Agriculture (USDA) is used to examine the temporal and geographic variability of the global warming potential (GWP) of seven kinds of field crops. Artificial neural network (ANN) models are then used to predict the GWP of these products at both product and category levels based on temporal and spatial variables such as soil properties, climate, latitude and elevation. The results show that temporally, a monotonic GWP trend was found in corn, soybean and winter wheat. The average geographic variability is more than 27% and is larger than temporal variability. ANN was proven to be a good prediction tool at the product level, with a coefficient of correlation (CC) of at least 0.78 in the simplest model and higher CCs when the number of neurons increases. Predictions with ANN at the category level shows that the selected variables cannot fully encompass all temporal and geographical variability.
评估农业环境负担作为食品整体生命周期评估的一部分
精确计算食品的环境负担是创建食品生态标签作为减轻环境影响战略的先决条件。生命周期评估(LCA)被广泛用于此目的,由于数据不足,传统上使用代理数据。由于食品含有多种来源,因此在这一过程中引入了不确定性。在这项研究中,来自美国农业部(USDA)的数据被用来检验7种大田作物的全球变暖潜能值(GWP)的时间和地理变化。然后使用人工神经网络(ANN)模型,根据土壤性质、气候、纬度和海拔等时空变量,在产品和类别水平上预测这些产品的全球升温潜能值。结果表明,玉米、大豆和冬小麦的全球升温潜能值在时间上呈单调趋势。平均地理变异大于27%,大于时间变异。人工神经网络在产品层面被证明是一个很好的预测工具,在最简单的模型中,相关系数(CC)至少为0.78,当神经元数量增加时,相关系数更高。人工神经网络在类别水平上的预测表明,所选择的变量不能完全包含所有的时间和地理变异性。
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