博碩士論文 103326030 完整後設資料紀錄

DC 欄位 語言
DC.contributor環境工程研究所zh_TW
DC.creator林乃芸zh_TW
DC.creatorNai-Yun Linen_US
dc.date.accessioned2019-1-29T07:39:07Z
dc.date.available2019-1-29T07:39:07Z
dc.date.issued2019
dc.identifier.urihttp://ir.lib.ncu.edu.tw:88/thesis/view_etd.asp?URN=103326030
dc.contributor.department環境工程研究所zh_TW
DC.description國立中央大學zh_TW
DC.descriptionNational Central Universityen_US
dc.description.abstract細懸浮微粒(氣動粒徑小於或等於2.5 μm的粒狀物質, PM2.5)對於環境及民眾健康有重大的影響,本文分析「104-105年細懸浮微粒(PM2.5)化學成分監測專案工作計畫」及「細懸浮微粒(PM2.5)化學成分監測及分析計畫」於2015年7月至2017年12月在板橋、忠明、嘉義、斗六、小港、花蓮環保署空氣品質監測站採集的化學成分數據,探討PM2.5質量濃度及金屬元素季節變化趨勢、金屬元素可能來源、高PM2.5濃度(>35 μg m-3)與低濃度(<35 μg m-3)金屬元素占比差異,推論金屬元素健康效應;同時,使用正矩陣因子法(Positive Matrix Factorization, PMF)推估污染來源並結合風向及條件機率函數(Conditional Probability Function, CPF)輔助判別當地污染源貢獻。 研究結果發現板橋及花蓮站PM2.5質量濃度變化,都是春季最高,忠明為秋季,斗六、嘉義及小港則是冬季最高,濃度最低季節除了板橋是秋季最低外,其他測站都是夏季。於六個測站中,Al、Fe、Na、Mg、K、Ca、Zn屬於高濃度群,這些元素主要貢獻來源可能有塵土(Al、Fe及Ca)、海鹽(Na及Mg)、交通(Fe、Na、Ca及Zn)、煉鋼(Fe及Zn)、廢棄物焚化(Al、Fe、Ca及Zn)等。中間濃度群金屬元素多與人為活動有關,如:燃煤、燃油等工業污染源及交通活動,低濃度群則與工業鍋爐排放和化石燃料燃燒有關。值得一提的是,釩元素(V)在各站各季節都是以小港站濃度最高,V是燃油的特徵元素,表示小港站在各站中受燃油燃燒的貢獻最高。 在採集的金屬元素中,Ni、Cr、Cd、As為國際癌症研究署歸類的第一級人類致癌物,Pb為第二B級人類致癌物,本文計算這些金屬元素吸入途徑的人類暴露濃度,推估結果以Pb為各站所有元素暴露量最高,Ni與Cr次之,Ni、Cr、Cd暴露濃度以小港站較高,As、Pb則為嘉義站,元素致癌風險數值介於10-5~10-7,各站以小港站的致癌風險較高,值得注意。 PMF受體模式結合CPF推估顯示,各站以燃油或燃煤燃燒、交通排放、工業排放、塵土、海水飛沫為主。比較採樣期間各站高PM2.5濃度與低濃度的成分占比,發現六站中只有Ba的占比在高濃度時略高於低濃度的現象,Ba的來源可能有輪胎和剎車磨損、鋼鐵廠及塵土,其他在低濃度時有較高占比的元素為Na、Mg、Ca、Ti、Mn、Ni、V,主要為塵土及工業污染的指標物種。 金屬元素在PM2.5濃度占比雖低,但它們往往攜帶著污染來源特徵,少數金屬元素又有致癌性,因此,PM2.5金屬元素的解析有其重要性。zh_TW
dc.description.abstractPM2.5 (particulate matter with aerodynamic diameter less than or equal to 2.5 μm) plays a significant role in the environment and public health. This study analyzed the data collected at the Banqiao, Zhongming, Douliu, Chiayi, Xiaogang, and Hualien stations in the “2015-2016 PM2.5 chemical composition monitoring and analysis study” and “PM2.5 chemical composition monitoring and analysis study” in 2017. The objectives included the investigations on the variation trends of PM2.5 mass and metal element concentrations, potential sources of metal elements, differences of metal element proportions in high and low PM2.5, and the assessments of the health risk of metal elements. Additionally, this study executed source apportionments using Positive Matrix Factorization (PMF) and verified local source contributions by coupling Conditional Probability Function (CPF) with wind direction. The results showed that the Banqiao and Hualien stations were with the highest PM2.5 seasonal concentrations in spring, while the Zhongming station was in autumn and the Douliu, Chiayi, and Xiaogang stations were in winter. In contrast, the lowest PM2.5 seasonal concentration was in autumn for the Banqiao station and summer for other stations. Among the six stations, Al, Fe, Na, Mg, K, Ca, and Zn belonged to the high concentration group. Major contribution sources of these metal elements can be derived from crustal material (Al, Fe, and Ca), sea salt (Na and Mg), transportation activities (Fe, Na, Ca, and Zn), steel refinery (Fe and Zn), and waste incineration (Al, Fe, Ca and Zn). The metal elements in the medium concentration group were mostly associated with anthropogenic activities, for example, coal and oil burning related industrial sources and transportation activities. For the metal elements in the low concentration group, industrial boilers and fossil fuel burning were major contributing sources. The highest concentration of vanadium (V) in all stations and seasons was at the Xiaogang station. Consequently, the Xiaogang station is under the influence of emissions of oil burning significantly in all stations, as V is the tracer element of oil burning. Among the analyzed metal elements, Ni, Cr, Cd, and As are classified into group 1 and group 2B human carcinogens for Pb by the International Agency for Research on Cancer. This study computed the human exposure via inhalation pathway to find that Pb exposure was the highest followed by Ni and Cr in all stations. The exposure of Ni, Cr, and Cd ranked the highest at the Xiaogang station, while As and Pb reached the highest at the Chiayi station. The cancer risk of the elements lied in the range from 10-7 to 10-5. The Xiaogang station is noted to have the highest cancer risk among all stations. The combination of PMF with CPF on source apportionment of metal elements resulted in identifying sources of oil (coal) burning, transportation activities, industrial discharge, crustal materials, and sea salt. Comparing high PM2.5 concentration (>35 μg m-3) with low concentration (<35 μg m-3) samples, Ba was the sole metal element with slightly greater PM2.5 proportion. The sources of Ba included tire and brake wearing, steel-making, and crustal materials. In contrast, Na, Mg, Ca, Ti, Mn, Ni, and V were with greater PM2.5 proportion in the low PM2.5 samples. They are tracers of industrial pollution and crustal materials. Although metal elements are low in PM2.5 mass proportion, they tend to carry over polluting source characteristics and few of them are carcinogens. Therefore, the analysis of PM2.5 metal elements is of importance.en_US
DC.subject細懸浮微粒(PM2.5)zh_TW
DC.subjectPM2.5化學成分zh_TW
DC.subjectPMFzh_TW
DC.subject金屬元素zh_TW
DC.subject健康風險zh_TW
DC.subjectPM2.5en_US
DC.subjectPM2.5 chemical compositionen_US
DC.subjectPMFen_US
DC.subjectMetal elementsen_US
DC.subjectHealth risken_US
DC.title2015~2017年台灣都會區細懸浮微粒(PM2.5)金屬元素濃度時間及空間變化zh_TW
dc.language.isozh-TWzh-TW
DC.type博碩士論文zh_TW
DC.typethesisen_US
DC.publisherNational Central Universityen_US

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