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1.
Turalioğlu FS 《Environmental monitoring and assessment》2005,104(1-3):119-130
Sulphur dioxide and PM10 levels are investigated in Erzurum during the periods of 1990–2000 heating season to assess air pollution level. For that reason, emissions of sulphur dioxide and particulate matter were calculated by using consumption of fuels and Turkish emission factors. These emission values were evaluated together with air pollution levels, which were measured at six stations in Erzurum atmosphere during 1990–2000 winter periods. Results reveal that in 1990–1994 heating period, there is an increasing trend in the emissions and air pollution levels over Erzurum, and the air quality limits were not met. The daily 24 h limit (short-term limit) was exceeded 127 days in 1992–1993 winter period. The reason for this increase was found to be the switching to use of low-quality fossil fuels instead of cleaner ones. Results also indicated that there was a considerable decrease in emissions of air pollutants and air pollution levels after 1995. This can be explained by the consumption of more high-quality fossil fuels. The correlation coefficient of SO2 with PM10 is obtained as r2 = 0.85, which is a high value supporting the idea that both pollutants are emitted from the same source. 相似文献
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Aysen Müezzinoğlu Tolga Elbir Abdurrahman Bayram 《Environmental Engineering and Policy》1998,1(2):109-116
In this study, an inventory of air pollutant emission estimates from major air polluting sources in Turkey for period between 1985 and 2005 with 5-year intervals were estimated. Inventory covers anthropogenic sources of five major air pollutants of particulate matter, sulfur dioxide, carbon monoxide, nitrogen oxides and non-methane volatile organic compounds. Their break-down with respect to main activity sectors were shown and their distribution by the largest industrial source categories were worked out as annual estimates. This inventory and its analysis point to serious environmental implications of air pollutants and a need to develop a policy plan for reducing these emissions. 相似文献
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Tüzün I Bayramoğlu G Yalçin E Başaran G Celik G Arica MY 《Journal of environmental management》2005,77(2):85-92
The microalgae Chlamydomonas reinhardtii was used for the biosorption of Hg(II), Cd(II) and Pb(II) ions. The maximum adsorption of Hg(II) and Cd(II) ions on Chlamydomonas reinhardtii biomass was observed at pH 6.0 and the corresponding value for Pb(II) ions was 5.0. The biosorption of Hg(II), Cd(II) and Pb(II) ions by microalgae biomass increased as the initial concentration of Hg(II), Cd(II) and Pb(II) ions increased in the biosorption medium. The maximum biosorption capacities of microalgae for Hg(II), Cd(II) and Pb(II) ions were 72.2+/-0.67, 42.6+/-0.54 and 96.3+/-0.86 mg/g dry biomass, respectively. The affinity order for algal biomass was Pb(II)>Hg(II)>Cd(II). FT-IR analysis of algal biomass revealed the presence of amino, carboxyl, hydroxyl and carbonyl groups, which were responsible for biosorption of metal ions. Biosorption equilibrium was established in about 60 min and the equilibrium was well described by the Freundlich biosorption isotherms. Temperature change in the range of 5-35 degrees C did not affect the biosorption capacity. The microalgae could be regenerated using 0.1 M HCl, with up to 98% recovery, which allowed the reuse of the biomass in six biosorption-desorption cycles without any considerable loss of biosorption capacity. 相似文献
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Çetin Selvinaz Özaydın Tuğba 《Environmental science and pollution research international》2021,28(31):41688-41697
Environmental Science and Pollution Research - Bisphenol A (BPA), one of the endocrine disrupting chemicals, is the object of great concern because of its widespread use throughout the world. In... 相似文献
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Onifade Stephen Taiwo Erdoğan Savaş Alagöz Mehmet Bekun Festus Victor 《Environmental science and pollution research international》2021,28(31):41663-41674
Environmental Science and Pollution Research - The quest for improved environmental quality through low-carbon emission has been explored in this study in the wake of the growing call for a... 相似文献
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Macar Oksal Kalefetoğlu Macar Tuğçe Çavuşoğlu Kültiğin Yalçın Emine 《Environmental science and pollution research international》2020,27(32):40253-40261
Environmental Science and Pollution Research - Cobalt (Co) is widely used in many industrial fields such as batteries and paints. Cobalt, a dangerous heavy metal, can be found in high... 相似文献
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云南腾冲地区大气降水中氢氧稳定同位素特征 总被引:2,自引:0,他引:2
为了揭示腾冲地区降水中氢氧稳定同位素特征,利用2009年1月~2011年12月腾冲地区339个降水样品资料,对降水中的氢、氧同位素组成及其影响因素进行了分析和研究。结果表明:腾冲地区大气降水中δ18O值变化范围为-2678‰~405‰,δD值变化范围为-20095‰~3689‰,均处于全球降水δ18O与δD值变化范围内。天气尺度下,腾冲地区降水中δ18O的变化具有显著的降水量效应以及反温度效应。但是,在季风降水期间,如果相邻两天都有降水发生时,腾冲地区降水中δ18O值变化并不一定遵循“降水量效应”。利用ECMWF(European Centre for Medium Range Weather Forecasts)提供的TCWV(Total Column Water Vapour)再分析资料,发现TCWV与δ18O的日变化存在明显的反位相对应关系。腾冲地区的大气降水线为:δD=818δ18O+1172,斜率与截距均比全球和全国的大气降水线偏大,说明该地区气候湿润多雨。d值分布具有季节差异,在雨季(4~9月),腾冲地区降水的水汽主要来源于低纬度海洋,空气湿度大,降水中d值较小;在干季(10~3月),由于受大陆性气团控制,腾冲地区降水的水汽主要来源于西风带的输送以及局地再蒸发水汽的补充,空气湿度小,降水中d值较大 相似文献
10.
采用1998~2013年卫星遥感影像反演的PM2.5全球高精度产品数据集,结合GIS空间分析、地理加权回归(GWR)以及地理探测器等方法,系统地分析了成渝城市群城市化与PM2.5分布之间的关系。结果表明:(1)1998~2013年成渝城市群城市化速度较快,城市区域的PM2.5均值明显高于非城市区域,说明城市化对PM2.5具有一定的影响;(2)近16 a PM2.5重心与城市重心整体上都向东南方向移动,且两者每年在经度上的波动方向基本相反;(3)夜间灯光数据与PM2.5在空间分布上具有较好的一致性,且1998~2013年两者的GWR全局R2在0.86~0.95之间,相关性显著,研究区内城市化和人类活动对PM2.5的分布具有明显影响;(4)地理探测分析表明不同城市化因子对PM2.5影响差异显著,从2006到2013年城区人口密度和建成区绿化覆盖率逐渐成为成渝城市群PM2.5分布的主要影响因子。 相似文献