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1.
鞍山市环境空气颗粒物中重金属元素分布特征   总被引:7,自引:4,他引:3  
研究了鞍山市环境空气中可吸入颗粒物(PM10和PM2.5)中重金属元素分布特征,结果表明鞍山市环境空气可吸入颗粒物中Zn、Pb、Al、Cu四种金属总和所占21种元素比例近85%。重金属元素在不同粒径颗粒物中的浓度水平有明显差别,更易富集在细颗粒物PM2.5上。  相似文献   

2.
沈阳市冬季环境空气质量统计预报模型建立及应用   总被引:5,自引:3,他引:2  
利用沈阳市2013年1—2月大气自动监测数据和同期气象资料,选取19项预报因子,采用逐步回归方法建立了沈阳市冬季环境空气质量统计预报模型,预报项目包括细颗粒物(PM2.5)、可吸入颗粒物(PM10)、二氧化硫(SO2)、二氧化氮(NO2)、一氧化碳(CO)日均浓度及臭氧(O3)日最大8 h平均浓度。2013年11月至2014年1月,应用该模型并结合人为经验修订,开展了沈阳市环境空气质量预报工作,预报结果与实测结果的对比验证结果表明,环境空气预测结果级别准确率达到79.1%,首要污染物准确率为73.6%。  相似文献   

3.
为研究烟花爆竹集中燃放对江淮地区环境空气质量的影响,基于近地面常规空气质量参数、颗粒物组分参数、激光雷达监测等数据资料,系统分析了2022年春节期间烟花爆竹燃放对安徽省主要城市和县域环境空气质量的影响。研究表明,2022年春节期间安徽省环境空气质量总体好于2019—2021年平均水平,但受局部烟花爆竹燃放和不利气象条件(低温、小风、高湿、静稳)的叠加影响,产生的环境效应(颗粒物浓度峰值较高、影响范围较广)依然较为严重。重点区域(合肥和淮北)大气颗粒物组分中硝酸根离子(NO^(-)_(3))、硫酸根离子(SO ^(2-)_(4))和铵根离子(NH_(4)^(+))等主要离子占比有所下降(降幅为3.4%~12.1%),烟花爆竹燃放示踪组分(钾离子、氯离子、金属元素等)均出现了明显的峰值过程,且金属元素浓度占比涨幅明显高于水溶性离子。烟花爆竹燃放对颗粒物的垂直分布和传输沉降过程产生显著影响,燃放排放主要以球形细颗粒物为主;不利气象条件下的本地烟花爆竹燃放叠加周边污染传输影响是造成主城区空气质量显著恶化的主要原因。基于ρ(PM_(2.5))/ρ(CO)的比值法估算,集中燃放时段,烟花爆竹燃放对城建区PM_(2.5)质量浓度的绝对贡献范围为4~701μg/m^(3),平均值达159μg/m^(3);烟花爆竹燃放对PM_(2.5)质量浓度的贡献量和贡献率呈现皖中>皖北>皖南的分布特征。主城区的禁燃措施对于春节期间空气质量的改善起到了关键作用,同时需要加强城市周边区域的烟花爆竹燃放管控措施。  相似文献   

4.
对"十三五"期间哈尔滨市空气质量状况、变化特征及影响因素进行分析,为哈尔滨市打赢蓝天保卫战提供科学参考。以哈尔滨市为研究区域,基于哈尔滨市12个国控监测点位监测结果,对"十三五"期间哈尔滨市环境空气质量优良天数及6项污染物进行分析,总结了环境空气质量变化特征及影响因素。结果表明:"十三五"期间,哈尔滨市环境空气质量呈现波动向好趋势,较"十二五"期间大幅改善,除细颗粒物外,其他指标已稳定达二级标准,臭氧成为仅次于细颗粒物的首要污染物,冬季燃煤污染是环境空气最主要的污染来源,秋季秸秆焚烧及春季清除秸秆根茬也会产生一定影响。  相似文献   

5.
对2021年影响江苏省的沙尘天气过程开展研究,分析受影响的时间、区域特征及环境空气质量特征。结果表明,影响江苏省的沙尘天气过程共计13次,全省累计受影响229 d。从时间分布看,沙尘天气过程多发生在1月、3—5月,2月、11月较少,6—10月和12月无沙尘天气过程。从区域分布看,苏北地区受沙尘天气过程影响较显著,受影响天数>20 d的城市均分布于此。受沙尘天气过程影响,且东北偏北风或东北风输送时,可吸入颗粒物(PM10)和细颗粒物(PM2.5)较易出现小时高值。沙尘过程造成PM10日均质量浓度超标的天数占比为38.0%,造成PM2.5日均质量浓度超标的天数占比仅为12.7%;扣除沙尘天气过程影响后,PM2.5和PM10年均质量浓度分别较扣除前下降1和6μg/m3,沙尘天气过程对PM10质量浓度的影响大于对PM2.5质量浓度的影响。受沙尘天气过程影响时,环境空气质量为轻度污染及以上级别占...  相似文献   

6.
根据西宁市13个环境空气监测站点2013—2017年大气污染物细颗粒物(PM2. 5)、可吸入颗粒物(PM10)、二氧化硫(SO_2)、二氧化氮(NO_2)、臭氧最大8 h平均(O_3-8h)和一氧化碳(CO)的监测数据,采用主分量分析法对西宁市环境空气质量进行了综合评估。结果表明,2013—2017年西宁市大部分环境空气监测站点周边环境空气质量逐渐提升,4个国控站综合得分(F)趋势变化幅度较大,其周边环境空气质量状况改善较为明显;城南新区、湟源县气象局和西钢监测站点周边环境空气质量呈逐年下降趋势,与其附近工业生产有关。  相似文献   

7.
采用单颗粒飞行时间质谱分析上海市2022年3月—5月新冠感染防控期间大气颗粒物来源,重点关注移动排放源的时空分布规律,并对防控期间、春节期间和防控前正常生产生活期间的监测结果做比对分析。结果表明,防控期间细颗粒物质量浓度较春节期间和正常生产生活时段下降了23.3%;受防控减排措施影响明显的移动源、扬尘、燃煤和工业工艺源排放的细颗粒物质量浓度相较另外两个时段都有不同程度的降低。  相似文献   

8.
基于郑州市2017年1月1日—2022年2月28日环境空气细颗粒物(PM2.5)逐日质量浓度监测数据和同期气象数据,利用反向传播(BP)神经网络构建了环境空气PM2.5质量浓度预报模型,实现了对郑州市后1日环境空气PM2.5质量浓度日均值进行预报。构建了考虑大气氧化性因素(情景一)和不考虑大气氧化性因素(情景二)这2种情景,并对2种情景下的预报效果进行评价。结果显示,在情景一下,各季节PM2.5预报质量浓度与实况质量浓度的标准化平均偏差(NMB)和均方根误差(RMSE)均处于较低水平,表明预报效果均具有较好的稳定性;各季节PM2.5实况质量浓度与预报质量浓度之间的相关系数(r)、一致性指数(IA)、准确率(Q)和级别预报准确率(G)均处于较高水平,其中Q值均>79%,G值均>80%,表明各季节PM2.5实况质量浓度与预报质量浓度趋势的吻合程度较高。情景一各季节PM2.5预报质量浓度与实况质量浓度的NMB和RMSE均低于情景...  相似文献   

9.
为研究乌鲁木齐市冬季采暖期间大气颗粒物污染特征,通过采样和在线监测二种手段分析了2015年1~2月大气颗粒物样品,采用重量法分析颗粒物质量浓度,并对其相关性进行分析。结果表明:依据《环境空气质量标准》(GB 3095-2012),采样期间乌鲁木齐市大气PM_(10) 和PM_(2.5)的日均质量浓度均超过了国家二级标准,颗粒物污染严重;PM_(10) 和PM_(2.5)存在显著相关性,PM_(2.5)和PM_(10) 浓度的比值均大于0.5,采暖期PM2.5对乌鲁木齐市大气颗粒物贡献显著。  相似文献   

10.
选取燃烧型煤和原煤的典型链条炉,应用自行设计的固定源烟气颗粒物稀释采样系统,现场测试细颗粒物PM_(2.5)、PM_(10)和金属元素的排放特征。结果表明,型煤燃烧细颗粒物的排放比例高于原煤,型煤燃烧除尘器进口、出口PM_(2.5)质量比原煤燃烧分别增加715%和708%。燃烧型煤时,As和Pb在各粒径段的质量比均比原煤大。同时,由于型煤燃烧可吸入颗粒物的排放比例增加,包含或附着在烟尘上的金属元素排放比例也相应增加。  相似文献   

11.
以福州市西三环快速路某路段为实验靶区,利用微型环境检测仪采集路边细颗粒物(PM2.5)、亚微米颗粒物(PM1.0)和黑碳(BC)的空间分布样本,解析其在道路绿化带前后(绿化带前是指干道和辅道外边缘线位置,其他位置均视为绿化带后)的变化特征及原因。结果表明:(1)颗粒物浓度随着采样点远离干道而整体趋于递减,呈现BC>PM2.5>PM1.0的衰减率变化特征,且植被稠密的路边环境对应更大的颗粒物浓度降幅。(2)夏季绿化带后的颗粒物浓度降幅高于冬季,冬季绿化带后部分采样点的PM1.0和PM2.5浓度甚至有所抬升。在植被茂密的路边环境下,风自干道吹向绿化带情景的路边空气质量介于风自绿化带吹向干道情景和风平行于干道情景之间。(3)BC对交通变化的敏感性高于PM2.5和PM1.0,植被茂密的绿化带后的颗粒物浓度降幅会因交通强度的上升而增大。风自干道吹向绿化带时,绿化带对颗粒物的调节作用会随交通源强和季节的变化而不同...  相似文献   

12.
基于南充市主城区6项大气污染物浓度数据,研究了2014-2020年南充市的空气质量指数、空气质量指数等级和首要污染物的时序分布。结果表明:随着大气污染防治的开展,南充市大气污染物浓度逐渐下降,出现首要污染物的天数逐年减少,空气质量逐步提高。受污染物节律性影响,空气质量呈现明显的季节差异,冬季空气质量最差,春季次之,夏季污染相对较轻,秋季最轻。首要污染物类型的季节分布特征表现为冬季出现首要污染物天数最多,春季和夏季次之,秋季最少。春、秋、冬季以PM2.5污染为主,夏季以O3污染为主。从全年来看,与O3相比,PM2.5对空气质量的影响更为突出。在持续控制大气污染物排放总量的同时,精细化协同管控细颗粒物、氮氧化物、挥发性有机物和二氧化硫排放将有助于现阶段的大气污染防治。  相似文献   

13.
In this study, the relationship between inhalable particulate (PM10), fine particulate (PM2.5), coarse particles (PM2.5 – 10) and meteorological parameters such as temperature, relative humidity, solar radiation, wind speed were statistically analyzed and modelled for urban area of Kolkata during winter months of 2003–2004. Ambient air quality was monitored with a sampling frequency of twenty-four hours at three monitoring sites located near traffic intersections and in an industrial area. The monitoring sites were located 3–5 m above ground near highly trafficked and congested areas. The 24 h average PM10 and PM2.5 samples were collected using Thermo-Andersen high volume samplers and exposed filter papers were extracted and analysed for benzene soluble organic fraction. The ratios between PM2.5 and PM10 were found to be in the range of 0.6 to 0.92 and the highest ratio was found in the most polluted urban site. Statistical analysis has shown a strong positive correlation between PM10 and PM2.5 and inverse correlation was observed between particulate matter (PM10 and PM2.5) and wind speed. Statistical analysis of air quality data shows that PM10 and PM2.5 are showing poor correlation with temperature, relative humidity and solar radiation. Regression equations for PM10 and PM2.5 and meteorological parameters were developed. The organic fraction of particulate matter soluble in benzene is an indication of poly aromatic hydrocarbon (PAH) concentration present in particulate matter. The relationship between the benzene soluble organic fraction (BSOF) of inhalable particulate (PM10) and fine particulate (PM2.5) were analysed for urban area of Kolkata. Significant positive correlation was observed between benzene soluble organic fraction of PM10 (BSM10) and benzene soluble organic fraction of PM2.5 (BSM2.5). Regression equations for BSM10 and BSM2.5 were developed.  相似文献   

14.
石家庄市大气颗粒物元素组分特征分析   总被引:2,自引:1,他引:1  
为研究石家庄市大气颗粒物的污染特征及其来源,于2013年4—5月在主城6区分别采集TSP、PM10和PM2.5颗粒物样品,利用ICP-MS分析其中的22种元素浓度。结果表明,石家庄市城区Ca、Fe元素在各粒径颗粒物中含量都较高,PM2.5中的S、K含量较高,PM10和TSP中Mg、Al的浓度相对较高。颗粒物的主要来源为燃煤尘、道路尘和建筑尘,TSP、PM10和PM2.5具有较好的统计相关性和同源性。  相似文献   

15.
以无锡市为研究区,使用过境时间相近的哨兵2号Sentinel-2和Landsat8影像,综合使用NDSI、NDISI、MNDWI、LST等指数进行决策树分类,获得10 m高空间分辨率的土地利用分类结果和裸土分布,裸土提取精度达到94.13%。统计了无锡市与8个国控环境空气自动监测站点1、2、3 km缓冲区范围内的裸土分布情况,并与各站点监测的大气颗粒物浓度进行相关性分析。结果表明,国控环境空气自动监测站点周边裸土面积对颗粒物浓度有较大影响,其中对PM10浓度的影响明显大于PM2.5;相比于1 km和3 km,2 km缓冲区范围内的裸土面积对PM10浓度的影响最大,建议环境管理部门重点关注无锡地区国控监测站点周边2 km范围内的裸土扬尘源分布情况。  相似文献   

16.
Port causes environmental and health concerns in coastal cities if its operation and development are not made environmentally compatible and sustainable. An emission inventory is necessary to assess the impact of port projects or growth in marine activity as well as to plan mitigation strategies. In this study, a detailed emission inventory of total suspended particulate (TSP) matter, respirable particulate matter (PM10), sulphur dioxide (SO2) and oxides of nitrogen (NOx) for a port having operation and construction activities in parallel is compiled. The study has been done for 1 year. Results show that the maximum contribution of emission of air pollutants in the port area was from TSP (68.5%) and the minimum was from SO2 (5.3%) to the total pollutants considered in this study. Total TSP emission from all activities of the port was 4,452 tyr???1 and PM10 emission was 903 tyr???1 in the year 2006. Re-suspension of dust from paved roads was the major contributor of TSP and PM10 in the road transport sector. Construction activities of the port had contributed 3.9% of TSP and 7.4% of PM10 to total emission of particulate matter. Of the total particulate emissions from various port activities approximately 20% of TSP could be attributed to PM10. The sectoral composition indicates that major contribution of SO2 emission in the port was from maritime sector and major contribution of NOx was from road transport sector.  相似文献   

17.
Considering the mounting evidences of the effects of air pollution on health, the present study was undertaken to assess the ambient air quality status in the fast growing urban centres of Haryana state, India. The samples were collected for total suspended particulate matter (TSPM), respirable suspended particulate matter (PM10), sulfur dioxide (SO2), and oxides of nitrogen (NO2) during different seasons from 8 districts of Haryana during January, 1999 to September, 2000. The four types of sampling sites with different anthropogenic activities i.e. residential, sensitive, commercial and industrial were identified in each city. The ambient air concentration of TSPM and PM10 observed was well above the prescribed standards at almost all the sites. The average ambient air concentrations of SO2 and NO2 were found below the permissible limits at all the centres. Comparatively higher concentration of SO2 was observed during winter seasons, which seems to be related with the enhanced combustion of fuel for space heating and relatively stable atmospheric conditions. Air Quality Index (AQI) prepared for these cities shows that residential, sensitive and commercial areas were moderately to severely polluted which is a cause of concern for the residents of these cities. The high levels of TSPM and SO2 especially in winter are of major health concern because of their synergistic action. The data from Hisar city reveals a significant increase in the total number of hospital visits/admissions of the patients with acute respiratory diseases during winter season when the level of air pollutants was high.  相似文献   

18.
北京地区不同季节PM2.5和PM10浓度对地面气象因素的响应   总被引:1,自引:0,他引:1  
利用2013年1月—2014年12月北京地区PM_(2.5)和PM_(10)监测数据和同期近地面气象观测数据,采用非参数分析法(Spearman秩相关系数)研究了北京地区PM_(2.5)和PM_(10)的浓度对不同季节地面气象因素的响应。结果表明:北京地区大气颗粒物浓度水平具有明显的季节特征,冬季大气颗粒物污染最严重,夏季最轻。不同季节影响颗粒物浓度水平的气象因素各不相同,其中风速和日照时数为主要影响因素。PM_(2.5)和PM_(10)质量浓度对气象因素变化的响应程度也有较大区别,PM_(2.5)/PM_(10)比值冬季最高,PM_(2.5)影响最大,春季最低,PM_(10)影响最大。这些结论可对制订科学有效的大气污染控制策略提供参考。  相似文献   

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