首页> 外文期刊>Atmospheric environment >Biases in greenhouse gases static chambers measurements in stabilization ponds: Comparison of flux estimation using linear and non-linear models
【24h】

Biases in greenhouse gases static chambers measurements in stabilization ponds: Comparison of flux estimation using linear and non-linear models

机译:稳定池温室气体静态室测量中的偏差:使用线性和非线性模型进行通量估算的比较

获取原文
获取原文并翻译 | 示例
           

摘要

The closed static chamber technique is widely used to quantify greenhouse gases (GHG) i.e. CH4, CO2 and N2O from aquatic and wastewater treatment systems. However, chamber-measured fluxes over air-water interfaces appear to be subject to considerable uncertainty, depending on the chamber design, lack of air mixing in the chamber, concentration gradient changes during the deployment, and irregular eruptions of gas accumulated in the sediment. In this study, the closed static chamber technique was tested in an anaerobic pond operating under tropical conditions. The closed static chambers were found to be reliable to measure GHG, but an intrinsic limitation of using closed static chambers is that not all the data for gas concentrations measured within a chamber headspace can be used to estimate the flux due to gradient concentration curves with non-plausible and physical explanations. Based on the total data set, the percentage of curves accepted was 93.6, 87.2, and 73% for CH4, CO2 and N2O, respectively. The statistical analyses demonstrated that only considering linear regression was inappropriate (i.e. approximately 40% of the data for CH4, CO2 and N2O were best fitted to a non-linear regression) for the determination of GHG flux from stabilization ponds by the closed static chamber technique. In this work, it is clear that when R-adj-non-lin(2) > R-adj-lin(2), the application of linear regression models is not recommended, as it leads to an underestimation of GHG fluxes by 10-50%. This suggests that adopting only or mostly linear regression models will affect the GHG inventories obtained by using closed static chambers. According to our results, the misuse of the usual R-2 parameter and only the linear regression model to estimate the fluxes will lead to reporting erroneous information on the real contribution of GHG emissions from wastewater. Therefore, the R-adj(2) and non-linear regression model analysis should be used to reduce the biases in flux estimation by the inappropriate application of only linear regression models. (C) 2015 Elsevier Ltd. All rights reserved.
机译:封闭式静态室技术被广泛用于量化水生和废水处理系统中的温室气体(GHG),即CH4,CO2和N2O。但是,根据气室设计,气室中空气缺乏混合,展开过程中的浓度梯度变化以及沉积物中积聚的气体的不规则喷发,在气水界面上通过气室测量的通量似乎存在很大的不确定性。在这项研究中,在热带条件下操作的厌氧池中测试了封闭式静态室技术。已发现封闭的静态腔室对于测量GHG是可靠的,但是使用封闭的静态腔室的固有局限性在于,由于梯度浓度曲线的变化,并非在腔室顶部空间内测量的气体浓度的所有数据都可用于估算通量。 -合理而实际的解释。根据总数据集,CH4,CO2和N2O的曲线接受百分比分别为93.6、87.2和73%。统计分析表明,仅考虑线性回归是不合适的(即,CH4,CO2和N2O的数据中约40%最好用于非线性回归),用于通过封闭静态腔室技术确定稳定池的温室气体通量。在这项工作中,很明显,当R-adj-non-lin(2)> R-adj-lin(2)时,不建议使用线性回归模型,因为这会导致GHG通量低估10 -50%。这表明仅采用线性回归模型或主要采用线性回归模型将影响通过使用封闭式静态隔室获得的温室气体清单。根据我们的结果,滥用常规R-2参数以及仅使用线性回归模型来估计通量将导致报告有关废水中温室气体排放的真正贡献的错误信息。因此,R-adj(2)和非线性回归模型分析应通过适当地应用线性回归模型来减少通量估计中的偏差。 (C)2015 Elsevier Ltd.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号