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Comparison of Support Vector Machine and Gradient Boosting Regression Tree for Predicting Spatially Explicit Life Cycle Global Warming and Eutrophication Impacts: A case study in corn production

机译:支持向量机和梯度提升回归树用于预测空间显式生命周期的全球变暖和富营养化影响的比较:以玉米生产为例

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Agriculture ranks one of the top contributors to global warming and nutrient pollution. Quantifying life cycle environmental impacts from agricultural production serves as scientific foundation for forming effective remediation strategies. However, the methods capable of accurately and efficiently calculating spatially explicit life cycle global warming and eutrophication impacts at a fine spatial scale over a geographic region are lacking. The objective of this study was to compare two regression models for estimating spatially explicit life cycle global warming and eutrophication, with corn production in the Midwest region as a demonstrating example. The results indicated that the gradient boosting regression tree model built with monthly weather features yielded higher predictive accuracy for life cycle global warming impact and life cycle EU. Moreover, predictive accuracy was improved at the cost of simulation time. The gradient boosting regression tree model required longer training time. Additionally, all machine learning models were million times faster than the traditional process-based model and were suitable for use in computationally-intensive applications like optimization and predication.
机译:农业是全球变暖和营养物污染的主要贡献者之一。量化生命周期对农业生产的环境影响,为形成有效的补救策略提供了科学依据。然而,缺乏能够在地理区域上的精细空间尺度上准确有效地计算空间明晰的生命周期的全球变暖和富营养化影响的方法。这项研究的目的是比较两个回归模型,以估算全球变暖和富营养化在空间上明确的生命周期,并以中西部地区的玉米产量为例。结果表明,利用月度天气特征构建的梯度增强回归树模型对生命周期全球变暖影响和生命周期EU具有更高的预测准确性。此外,以仿真时间为代价提高了预测准确性。梯度增强回归树模型需要更长的训练时间。此外,所有机器学习模型都比传统的基于过程的模型快一百万倍,并且适用于诸如优化和预测之类的计算密集型应用。

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