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估算伊朗胡齐斯坦省农田温室气体排放通量。

Estimation of greenhouse gas emission flux from agricultural lands of Khuzestan province in Iran.

机构信息

Department of Climatology, Faculty of Geography and Environmental Sciences, Hakim Sabzevari University, Sabzevar, Iran.

Faculty of Geography and Environmental Sciences, Hakim Sabzevari University, Sabzevar, Iran.

出版信息

Environ Monit Assess. 2022 Sep 21;194(11):811. doi: 10.1007/s10661-022-10497-8.

Abstract

Greenhouse gas emissions and their effects on global warming are one of the serious challenges of developed and developing countries. Investigating the amount of greenhouse gas emissions of different countries makes it possible to determine the share of countries in the production of greenhouse gases. The purpose of this study is to use DAYCENT and DNDC models to estimate the emission rate of methane, nitrous oxide, and carbon dioxide greenhouse gases as well as to estimate the global warming potential in Khuzestan agricultural lands in Iran. For this purpose, the gas sampling was done in rice, wheat, and sugarcane fields using a static chamber, and then the concentration of methane, nitrous oxide, and carbon dioxide was determined by using gas chromatography. In the following, DAYCENT and DNDC models were used to estimate gas emissions and the global warming potential of these gases was estimated. Finally, TOPSIS method was used to prioritize gas emissions. In order to evaluate the modeling accuracy, the statistical indicators of maximum error, root mean square error, determination coefficient, model efficiency, and residual mass coefficient were used. According to the results, the highest measured gas flux was obtained for rice fields at Baghmalek and the lowest for sugarcane in Abadan. The results of DAYCENT model estimation showed that the highest emissions were obtained for methane gas and rice cultivation, and lowest gas emissions were obtained for sugarcane cultivation. The results of DNDC model estimation also showed that the highest flux was determined for nitrous oxide gas in rice cultivation. The results of the estimation of global warming potential also showed that it was the highest in sugarcane cultivation (Shushtar station) and the DAYCENT model, and the lowest was also in wheat cultivation and the DNDC model. The statistical results of the estimation of DAYCENT and DNDC models showed that the DAYCENT model in sugarcane cultivation (Shushtar station) was the most accurate in estimating carbon dioxide gas, and the lowest accuracy was related to the DNDC model and sugarcane cultivation (Shushtar station) in estimating nitrous oxide gas. According to the results of agricultural activities in Khuzestan province, they have made a major contribution to the production of greenhouse gases, which, or the lack of attention to this issue, will have an effect on the future climate of this region.

摘要

温室气体排放及其对全球变暖的影响是发达国家和发展中国家面临的严重挑战之一。研究不同国家的温室气体排放量可以确定各国在温室气体产生中的份额。本研究的目的是使用 DAYCENT 和 DNDC 模型来估算甲烷、氧化亚氮和二氧化碳温室气体的排放率,并估计伊朗胡齐斯坦省农业用地的全球变暖潜能。为此,使用静态室在水稻、小麦和甘蔗田进行了气体采样,然后使用气相色谱法测定甲烷、氧化亚氮和二氧化碳的浓度。接下来,使用 DAYCENT 和 DNDC 模型估算气体排放,并估算这些气体的全球变暖潜能。最后,使用 TOPSIS 方法对气体排放进行优先级排序。为了评估建模精度,使用了最大误差、均方根误差、决定系数、模型效率和残差质量系数等统计指标。结果表明,Baghmalek 的水稻田测量的气体通量最高,而 Abadan 的甘蔗田最低。DAYCENT 模型估算结果表明,甲烷气体和水稻种植的排放量最高,而甘蔗种植的排放量最低。DNDC 模型估算结果也表明,水稻种植中氧化亚氮气体的通量最高。全球变暖潜能的估算结果也表明,Shushtar 站的甘蔗种植和 DAYCENT 模型的全球变暖潜能最高,而小麦种植和 DNDC 模型的全球变暖潜能最低。DAYCENT 和 DNDC 模型估算的统计结果表明,在估算二氧化碳气体方面,DAYCENT 模型在甘蔗种植(Shushtar 站)中最为准确,而在估算氧化亚氮气体方面,DNDC 模型和甘蔗种植(Shushtar 站)的准确性最低。根据胡齐斯坦省农业活动的结果,它们对温室气体的产生做出了重大贡献,如果对此问题缺乏关注,将对该地区的未来气候产生影响。

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