环境科学
反硝化
土壤水分
DSSAT公司
硝化作用
种植
农业
过程(计算)
含水量
环境工程
农业工程
计算机科学
氮气
土壤科学
工程类
生态学
化学
有机化学
岩土工程
操作系统
生物
作者
Mara Gabbrielli,Marina Allegrezza,Giorgio Ragaglini,Antonio Manco,Luca Vitale,Alessia Perego
标识
DOI:10.3390/horticulturae10010098
摘要
Modeling approaches have emerged to address uncertainties arising from N2O emissions variability, representing a powerful methodology to investigate the two emitting processes (i.e., nitrification and denitrification) and to represent the interconnected dynamics among soil, atmosphere, and crops. This work offers an extensive overview of the widely used models simulating N2O under different cropping systems and management practices. We selected process-based models, prioritizing those with well-documented algorithms found in recently published scientific articles or having published source codes. We reviewed and compared the algorithms employed to simulate N2O emissions, adopting a unified symbol system. The selected models (APSIM, ARMOSA, CERES-EGC, CROPSYST, CoupModel, DAYCENT, DNDC, DSSAT, EPIC, SPACSYS, and STICS) were categorized by the approaches used to model nitrification and denitrification processes, discriminating between implicit or explicit consideration of the microbial pool and according to the formalization of the main environmental drivers of these processes (soil nitrogen concentration, temperature, moisture, and acidity). Models’ setting and performance assessments were also discussed. From the appraisal of these approaches, it emerged that soil chemical–physical properties and weather conditions are the main drivers of N cycling and the consequent gaseous emissions.
科研通智能强力驱动
Strongly Powered by AbleSci AI