Wu Li-Chun, Wei Chia-Bei, Yang Shang-Shyng, Chang Tsu-Hua, Pan Han-Wei, Chung Ying-Chien
Department of Industrial Engineering and Management, China Institute of Technology, Taipei, Taiwan, Republic of China.
J Air Waste Manag Assoc. 2007 Mar;57(3):319-27. doi: 10.1080/10473289.2007.10465340.
River and sediment have unique carbon dynamics and are important sources of the dominant greenhouse gases (GHG), carbon dioxide (CO2) and methane (CH4). To understand the relationship between CO2/CH4 emissions and water quality/sediment characteristics, we have investigated critical parameters in the river water. Eight parameters of water quality (dissolved oxygen, oxidation-reduction potential [ORP], chemical oxygen demand, biochemical oxygen demand [BOD5], suspended solid, nitrate [NO3-], NH4+, and bacteria) and four sediment characteristics (total organic carbon [TOC], total nitrogen [T-N], NO3-, and ammonium [NH4+]) were measured in two of the larger rivers in Taiwan, and relevant environmental conditions were recorded. The experimental results indicated that CO2 emissions from the river were mainly affected by BOD5 concentrations and the levels of bacteria. CH4 emissions, on the other hand, were greatly affected by the ORP in the river. The correlation between CO2 emissions and sediment characteristics was insignificant (R2 < 0.3). However, TOC and T-N in the sediment may lead to increases in CH4 emissions into the atmosphere. A deeper analysis of the relationship between the different parameters and GHG emissions by ANOVA and the multiple regression method revealed that CO2 emission (y) was significantly related to bacteria number (x1) and BOD concentration (X2). The regression equation takes the form y = 0.00032x1 + 3.18089x2 + 25.37304. Also, the regression relationship between CH4 emission (y) and ORP (x) in the river can be described as y = -0.825216x + 169.02257. The relationship between CH4 emission and sediment characteristics may be described as y = 5.073962x1(TOC) + 2.871245x2(T-N) - 12.3262. Extra sampling data were collected to examine the feasibility of the developed multiple regression equations. The experimental results suggest that the emissions of such GHGs as CO2 and CH4 from rivers can be predicted using the regression equations developed here. Moreover, the emissions may be reduced by manipulating the proper factors.
河流和沉积物具有独特的碳动态,是主要温室气体二氧化碳(CO₂)和甲烷(CH₄)的重要来源。为了解CO₂/CH₄排放与水质/沉积物特征之间的关系,我们对河流水体中的关键参数进行了研究。在台湾的两条较大河流中,测量了八个水质参数(溶解氧、氧化还原电位[ORP]、化学需氧量、生化需氧量[BOD₅]、悬浮固体、硝酸盐[NO₃⁻]、铵[NH₄⁺]和细菌)以及四个沉积物特征参数(总有机碳[TOC]、总氮[T-N]、NO₃⁻和铵[NH₄⁺]),并记录了相关环境条件。实验结果表明,河流中的CO₂排放主要受BOD₅浓度和细菌数量的影响。另一方面,CH₄排放则受河流中ORP的显著影响。CO₂排放与沉积物特征之间的相关性不显著(R² < 0.3)。然而,沉积物中的TOC和T-N可能会导致大气中CH₄排放增加。通过方差分析(ANOVA)和多元回归方法对不同参数与温室气体排放之间的关系进行深入分析后发现,CO₂排放(y)与细菌数量(x₁)和BOD浓度(x₂)显著相关。回归方程形式为y = 0.00032x₁ + 3.18089x₂ + 25.37304。此外,河流中CH₄排放(y)与ORP(x)之间的回归关系可描述为y = -0.825216x + 169.02257。CH₄排放与沉积物特征之间的关系可描述为y = 5.073962x₁(TOC) + 2.871245x₂(T-N) - 12.3262。收集了额外的采样数据以检验所建立的多元回归方程的可行性。实验结果表明,利用此处建立的回归方程可以预测河流中CO₂和CH₄等温室气体的排放。此外,通过控制适当的因素可以减少这些气体的排放。