Machine Learning Predicts Biochar Aging Effects on Nitrous Oxide Emissions from Agricultural Soils

IF 2.3 Q1 AGRICULTURE, MULTIDISCIPLINARY
Shujun Wang, Jie Li, Xiangzhou Yuan, Sachini Supunsala Senadheera, Scott X. Chang, Xiaonan Wang* and Yong Sik Ok*, 
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Abstract

Biochar effects on agricultural soils change over time as biochar ages. To better understand the long-term impacts of biochar application on climate change mitigation, the effect of biochar aging on nitrous oxide (N2O) emissions has been widely investigated in field experiments. However, the underlying relationship of N2O emissions with biochar properties, fertilization practices, soil properties, and weather conditions is poorly understood. We collected data from 30 peer-reviewed publications with 279 observations and used machine learning (ML) to model and explore critical factors affecting daily N2O fluxes. We established and compared models constructed using neural networks (NN), support vector regression (SVR), random forest (RF), and extreme gradient boosting (XGB). We found that the gradient boosting regression (GBR) model was the optimal algorithm for predicting daily N2O fluxes (R2 > 0.90). The importance of factors driving daily N2O fluxes is as follows: fertilization practices (44%) > weather conditions (30%) > soil properties (21%) > biochar properties (5%). In addition, the aging time of biochar, potassium application rate, soil clay fraction, and mean air temperature were critical factors affecting the daily N2O fluxes. When biochar is initially applied, it can reduce N2O emissions; however, it has no long-term effects in reducing N2O emissions. The accurate prediction and insights from the ML model benefit the assessment of the long-term effects of biochar aging on N2O emissions from agricultural soils.

Abstract Image

机器学习预测生物炭老化对农业土壤氧化亚氮排放的影响
生物炭对农业土壤的影响会随着生物炭老化时间的推移而变化。为了更好地了解生物炭的应用对减缓气候变化的长期影响,人们在田间试验中广泛研究了生物炭老化对一氧化二氮(N2O)排放的影响。然而,人们对一氧化二氮排放与生物炭特性、施肥方法、土壤特性和天气条件之间的内在联系知之甚少。我们从 30 篇经同行评审的出版物中收集了 279 个观测数据,并使用机器学习(ML)来建模和探索影响每日 N2O 通量的关键因素。我们建立并比较了使用神经网络(NN)、支持向量回归(SVR)、随机森林(RF)和极端梯度提升(XGB)构建的模型。我们发现,梯度提升回归(GBR)模型是预测每日一氧化二氮通量的最佳算法(R2 > 0.90)。影响每日 N2O 通量的重要因素如下:施肥方法(44%);天气条件(30%);土壤性质(21%);生物炭性质(5%)。此外,生物炭的老化时间、钾施用量、土壤粘土成分和平均气温也是影响日 N2O 通量的关键因素。在最初施用生物炭时,生物炭可以减少一氧化二氮的排放;但是,生物炭在减少一氧化二氮排放方面没有长期效果。ML 模型的准确预测和见解有利于评估生物炭老化对农业土壤 N2O 排放的长期影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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