博碩士論文 107621003 詳細資訊




以作者查詢圖書館館藏 以作者查詢臺灣博碩士 以作者查詢全國書目 勘誤回報 、線上人數:141 、訪客IP:3.145.111.115
姓名 林怡成(Yi-Cheng Lin)  查詢紙本館藏   畢業系所 大氣科學學系
論文名稱 臺灣大型點源與交通移動源污染排放對PM2.5濃度影響
(Impact of major point sources and mobile emissions on PM2.5 concentrations in Taiwan)
相關論文
★ 土地利用型態對地表能量收支與海陸風模擬的影響★ 探討邊界層參數化對氣象與空氣污染模擬結果的影響
★ 探討土地利用型態對珠江口沿岸地區氣象模擬的影響:高污染事件日之個案分析★ 探討台灣地區在春季期間經長程傳輸所觀測之一氧化碳濃度與綜觀天氣之關係
★ 探討地表參數對台灣地區氣象模擬的影響★ 探討區域尺度氣候變遷對台灣地區氣象場及汙染物濃度模擬的影響
★ 使用CMAQ-HDDM探討台灣地區臭氧之非線性 反應及估算高臭氧區的來源貢獻量: 2011年個案分析★ 地表水文循環過程與大氣耦合作用對土壤溼度以及氣象模擬的影響
★ 使用VVM探討陸氣交換過程對台灣地區高解析氣象模擬的影響--理想個案模擬★ 使用群集分析分類綜觀尺度天氣型態以探討台灣北部地區午後熱對流系統局部環流結構與系統發展特性
★ 台灣中部山區局部環流結構特性與其對空氣汙染物傳送過程的影響★ 開發適用於大氣邊界層觀測的無人機系統
★ 雲林地區細懸浮微粒的來源解析★ 臺灣中部山區埔里盆地之局部環流與邊界層結構特性
★ 臺灣背風渦旋特性分析及其對空氣污染物傳輸過程影響★ 探討地下水參數化對於臺灣地表水文過程之影響
檔案 [Endnote RIS 格式]    [Bibtex 格式]    [相關文章]   [文章引用]   [完整記錄]   [館藏目錄]   [檢視]  [下載]
  1. 本電子論文使用權限為同意立即開放。
  2. 已達開放權限電子全文僅授權使用者為學術研究之目的,進行個人非營利性質之檢索、閱讀、列印。
  3. 請遵守中華民國著作權法之相關規定,切勿任意重製、散佈、改作、轉貼、播送,以免觸法。

摘要(中) 臺灣PM2.5高污染事件常發生於秋冬時期,長期暴露於高濃度PM2.5中,人體呼吸系統將受到嚴重破壞,故空氣污染議題備受民眾關注。高污染事件主要受氣象環境與本地排放源的高排放量影響,臺灣氮氧化物(NOX)年排放量以移動源廢氣排放為主、硫氧化物(SOX)年排放量則以工業活動和電力業居多,其中火力發電廠更占全國點源近四成排放量。根據經濟部能源局2018年資料指出,臺灣有近81%的發電量來自化石燃料,53%屬於傳統的燃煤技術,燃燒後的污染物不僅影響周圍環境,亦隨著風場結構帶往下風處。近年來,臺灣政府致力於實現高發電效率和低排放的目標,引進超超臨界(Ultra Super Critical, USC)燃煤技術應用於林口火力發電廠中,以增加發電量並減少氮氧化物和硫氧化物的排放,此研究的目的是評估USC技術對臺灣空氣污染的影響。
林口火力發電廠位於林口台地西側近海處,為了解林口周圍環境污染物特性,參考前人群集分類結果(Hsu and Cheng, 2019)將污染物依天氣型態分類,並使用環保署測站的歷年成份資料與陽明交通大學蔡春進教授提供2020年2月逐時PM2.5資料進行分析與討論。結果顯示,群集3(弱綜觀天氣型態)PM2.5與前驅物質(NOx與SO2)的濃度值最高,其次為群集2(高壓迴流天氣型態)與群集6(副熱帶高壓壟罩天氣型態),PM2.5成份以硫酸鹽與硝酸鹽為主。
使用氣象模擬WRF3.8.1版本與臺灣空氣污染物排放量清冊資訊TEDS10的輸出結果,納入CMAQv5.2進行空氣污染物模擬,個案一時間點為2020年2月12日至13日、個案二為2020年2月24日至25日,此時臺灣氣象環境處於弱綜觀的穩定天氣型態,由於西半部區域位於背風區、空氣擴散條件差,導致該區域空氣品質不佳。為了進一步探討林口發電廠對下風處空氣品質的影響,使用Brute Force Method(BFM)將林口火力發電廠的排放量調整為零(NoLKP組),並與Base組進行比較。林口電廠主要影響雙北、桃園和新竹地區,PM2.5小時平均貢獻量值約0.5~1.5μg/m3。同時,針對USC技術對於周圍環境空氣品質改善效益,使用2013年林口電廠亞臨界(Subcritical, SC)舊機組排放資料進行空品模擬,計算與Base組之間的差異。結果顯示,北部地區空氣品質改善效益較好,中部地區較差。
當臺灣西部地區高濃度PM2.5事件發生時,其他重工廠與交通移動源的污染排放量高於林口火力電廠許多,欲探討各大型污染源PM2.5貢獻,經由BFM計算各污染源貢獻量,再依照群集結果進行分類。當臺灣處於弱綜觀天氣型態下,各污染源主要影響各自所在的空品區,點源貢獻量占比約1~2%,以台中火力發電廠影響最為顯著;交通移動源貢獻相較於點源PM2.5貢獻量較高,占比約16~23%。
摘要(英) The high PM2.5 pollution incidents often happen during autumn and winter in Taiwan. Long-term exposure to high concentrations of PM2.5, the human respiratory system will be destroyed severely, therefore, the issue of air pollution is of great concern to the public. High pollution incidents are mainly affected by the meteorological environment and high local emissions. The annual emissions of nitrogen oxides (NOX) and sulfur oxides (SOX) are dominated by mobile source exhaust emissions, industrial activities and the electric power industry. Nearly 40% of the emissions from all factories in Taiwan come from power plants. According to the data from Bureau of Energy in 2018, nearly 81% of Taiwan’s electricity generation comes from fossil fuels, and 53% of fossil fuels are using traditional coal-burning technologies. Pollutants not only affect the surrounding environment, but also are blown to downwind area. In recent years, the government has been committed to achieving the goals of high power generation efficiency and low emissions. It has introduced a new technology Ultra Super Critical (USC) coal-burning technology which is installed in the Linkou Power Plant to increase power generation and reduce the emissions of nitrogen oxides and sulfur oxide. The purpose of this study is to evaluate the influence of USC technology on Taiwan’s air pollution.
The results of WRF v3.8.1 and Taiwan Emission Data System (TEDS10) were incorporated into CMAQv5.2 for air quality simulation. Case 1 is February 12-13, 2020, and case 2 is February 24 to 25, 2020, at this time, Taiwan’s meteorological environment was in a weak synoptic weather. As western Taiwan was located in the leeside area and the pollutants diffusion conditions were poor, air quality in that region was bad. To further explore the influence of Linkou Power Plant on air quality of downwind area, using Brute Force Method (BFM) to adjust the emissions of Linkou Power Plant to zero (NoLKP) and compared with the Base simulation. Linkou Power Plant mainly affects Taipei, Taoyuan and Hsinchu areas, the hourly mean contribution of PM2.5 is about 0.5~1.5μg/m3. At the same time, in view of the efficiency of how USC technology improving the ambient air quality, calculate the difference Base and Subcritical(SC) which using 2013 Linkou Power Plant emission data into CMAQ model. The results show that the efficiency of air quality improvement in the northern and southern regions are better.
To explore the contribution of other high emission industries and transportation sources in the western Taiwan when high PM2.5 concentration event happened, the contribution of each pollution source is calculated by BFM. When Taiwan is in a weak synoptic weather, each pollution source mainly affects its air quality area, and the factories contribute about 1 to 2%. The Taichung power plant has the most significant impact, and the mobile source contribution affected nearly 16~23%.
關鍵字(中) ★ 細懸浮微粒
★ 超超臨界技術
★ 火力發電廠
★ 交通移動源
關鍵字(英) ★ CMAQ
★ Brute Force Method
論文目次 摘要…………………………………………………………………………………i
Abstract…………………………………………………………………iii
致謝…………………………………………………………………………………v
表目錄……………………………………………………………………………ix
圖目錄……………………………………………………………………………xi
第一章 緒論………………………………………………………………1
1-1 前言………………………………………………………………………1
1-2 文獻回顧………………………………………………………………2
1-3 研究目的………………………………………………………………4
第二章 污染物特性分析…………………………………………5
2-1 北臺灣污染物特性………………………………………….………………5
2-2 PM2.5成份特性…………………………………..…………………………6
第三章 研究方法………………………………………………………..……………8
3-1 模式介紹…………………………………………………….………………8
3-1-1 氣象模式………………………………………………..……………8
3-1-2 排放資料………………………………………………..…...…………9
3-1-3 空氣品質模式………………………………………..…………..……9
3-2 Brute Force Method…………………………………………………..…..…10
第四章 個案選取與實驗設計…………………………………………………...……11
4-1 個案選取………………………………………………..……………………11
4-1-1 高污染事件個案一………………………………………………...…11
4-1-2 高污染事件個案二…………………………………………………...12
4-2 模式設定………………………………………………..……………………12
4-3 實驗設計………………………………………………………………….…13
第五章 實驗結果與討論………………………………………………………..……14
5-1 氣象與空品模擬結果統計校驗指數………………………………………..14
5-2 個案一(2020/02/12 – 2020/02/13) …………………………………….……14
5-2-1 氣象模式表現……………………………………………..………….14
5-2-2 空品模式表現……………………………………………………...…15
5-3 個案二(2020/02/24 – 2020/02/25) …………………………………………16
5-3-1 氣象模式表現…………………………………………………….…16
5-3-2 空品模式表現……………………………………………..………..17
5-4 林口火力發電廠對周界環境影響…………………………………………18
5-4-1 個案一(2020/02/12 – 2020/02/13) …………………………………18
5-4-2 個案二(2020/02/24 – 2020/02/25) …………………………………20
5-5 USC技術對空氣品質改善效益……………………………………………21
5-5-1 個案一(2020/02/12 – 2020/02/13) …………………………………21
5-5-2 個案二(2020/02/24 – 2020/02/25) …………………………………22
5-6 臺灣西半部地區各大型污染源之貢獻量……………………………..…23
第六章 結論與未來展望……………………………………………………………26
6-1 結論……………………………………………………………………….26
6-2 未來展望……………………………………………..………………….27
參考文獻……………………………………………..……………………………28
附表……………………………………………..…………………………………33
附圖……………………………………………..…………………………………54
參考文獻 Bell, M. L., Dominici, F., & Samet, J. M., 2005 : A meta-analysis of time-series studies of ozone and mortality with comparison to the national morbidity, mortality, and air pollution study. Epidemiology (Cambridge, Mass.), 16(4), 436.
Burr, M. J. and Y. Zhang, 2011 : Source apportionment of fine particulate matter over the Eastern U.S. Part I: source sensitivity simulations using CMAQ with the Brute
Force method. Atmospheric Research, 2(3), 300‐317.
Cheng, F. Y., Chin, S. C., & Liu, T. H., 2012 : The role of boundary layer schemes in meteorological and air quality simulations of the Taiwan area. Atmospheric environment, 54, 714-727.
Cheng, F. Y., Hsu, Y. C., Lin, P. L., & Lin, T. H., 2013 : Investigation of the effects of different land use and land cover patterns on mesoscale meteorological simulations in the Taiwan area. Journal of Applied Meteorology and Climatology, 52(3), 570-587.
Chuang, M. T., Fu, J. S., Jang, C. J., Chan, C. C., Ni, P. C., & Lee, C. T., 2008 : Simulation of long-range transport aerosols from the Asian Continent to Taiwan by
a Southward Asian high-pressure system. Science of the total environment, 406(1-2), 168-179.
Chuang, M.T., Chou, C.C.K., Lin, N.H., Takami, A., Hsiao, T.C., Lin, T.H., Fu, J.S., Pani, S.K., Lu, Y.R. and Yang, T.Y., 2017 : A simulation study on PM2.5 sources and meteorological characteristics at the northern tip of Taiwan in the early stage of the Asian haze period. Aerosol and Air Quality Research, 17(12), 3166-3178.
Cohan, D. S., 2004 : Applicability of CMAQ-DDM to Source Apportionment and Control Strategy Development. In 3rd Annual CMAS Models-3 Users’ Conference, October (pp. 18-20).
Couzo, E., McCann, J., Vizuete, W., Blumsack, S., & West, J. J., 2016 : Modeled response of ozone to electricity generation emissions in the northeastern United
States using three sensitivity techniques. Journal of the Air & Waste Management Association, 66(5), 456-469.
Di Gianfrancesco, Augusto. (Ed.)., 2016: Materials for ultra-supercritical and advanced ultra-supercritical power plants. Woodhead Publishing.
Fang, S.H. and Chen, H.W., 1996 : Air quality and pollution control in Taiwan. Atmospheric environment, 30(5), 735-741.
Guenther A.B., Jiang X., Heald C.L., Sakulyanontvittaya T., Duhl T., Emmons L.K., Wang X., 2012 : The model of emissions of gases and aerosols from nature version 2.1 (MEGAN2.1): an extended and updated framework for modeling biogenic emissions. Geoscientific Model Development, 5(6), 1471-1492.
Hsu, C. H., & Cheng, F. Y., 2019 : Synoptic weather patterns and associated air pollution in Taiwan. Aerosol and Air Quality Research, 19(5), 1139-1151.
Hong, Y. M., Lee, B. K., Park, K. J., Kang, M. H., Jung, Y. R., Lee, D. S., & Kim, M. G., 2002 : Atmospheric nitrogen and sulfur containing compounds for three sites of South Korea. Atmospheric Environment, 36(21), 3485-3494.
Ito, K., De Leon, S. F., & Lippmann, M., 2005 : Associations between ozone and daily mortality: analysis and meta-analysis. Epidemiology, 446-457.
Kelly, J. T., Baker, K. R., Napelenok, S. L., & Roselle, S. J., 2015 : Examining single-source secondary impacts estimated from brute-force, decoupled direct method, and advanced plume treatment approaches. Atmospheric Environment, 111, 10-19.
Koo, B., Wilson, G. M., Morris, R. E., Dunker, A. M., Yarwood, G., 2009 : Comparison of source apportionment and sensitivity analysis in a particulate matter air quality model. Environmental science & technology, 43(17), 6669-6675.
Koo, B., Wilson, G. M., Morris, R. E., Yarwood, G., & Dunker, A. M., 2009 : Comparison of PM source apportionment and sensitivity analysis in CAMx. In 8th Annual CMAS Conference, Chapel Hill, NC, October (pp. 19-21).
Kwok, R. H. F., Baker, K. R., Napelenok, S. L., & Tonnesen, G. S.,2015 : Photochemical grid model implementation and application of VOC, NOx, and O3 source
apportionment. Geoscientific Model Development, 8(1), 99-114.
Likens, G. E., Driscoll, C. T., & Buso, D. C., 1996 : Long-term effects of acid rain: response and recovery of a forest ecosystem. Science, 272(5259), 244-246.
Lin, Y. C., & Cheng, M. T., 2007 : Evaluation of formation rates of NO2 to gaseous and particulate nitrate in the urban atmosphere. Atmospheric Environment, 41(9), 1903-1910.
Liu, X., Xu, Y., Zeng, X., Zhang, Y., Xu, M., Pan, S., ... & Gao, X., 2016 : Field measurements on the emission and removal of PM2. 5 from coal-fired power stations:
1.Case study for a 1000 MW ultrasupercritical utility boiler. Energy & Fuels, 30(8), 6547-6554.
Li, Xinhao., 2017 : Optimization and reconstruction technology of SCR flue gas denitrification ultra low emission in coal fired power plant. In IOP Conference
Series: Materials Science and Engineering , IOP Publishing.
Lu, H. Y., Wu, Y. L., Mutuku, J. K., & Chang, K. H., 2019 : Various sources of PM2.5 and their impact on the air quality in Tainan City, Taiwan. Aerosol and Air Quality
Research, 19(3), 601-619.
Marmur, A., Unal, A., Mulholland, J.A., & Russell, A.G., 2005 : Optimization based source apportionment of PM2.5 incorporating gas-to-particle ratios. Environmental
Science and Technology, 39(9), 3245-3254
Mauzerall, D. L., & Wang, X., 2001 : Protecting agricultural crops from the effects of tropospheric ozone exposure: reconciling science and standard setting in the United States, Europe, and Asia. Annual Review of energy and the environment, 26(1), 237-268.
Nakata, H., Uehara, K., Goto, Y., Fukumura, M., Shimasaki, H., Takikawa, K., & Miyawaki, T., 2014 : Polycyclic aromatic hydrocarbons in oysters and sediments from the Yatsushiro Sea, Japan: Comparison of potential risks among PAHs, dioxins and dioxin-like compounds in benthic organisms. Ecotoxicology and environmental safety, 99, 61-68.
Napelenok, S. L., Foley, K. M., Kang, D., Mathur, R., Pierce, T., Rao, S. T., 2011 : Dynamic evaluation of regional air quality model’s response to emission reductions in the presence of uncertain emission inventories. Atmospheric Environment, 45(24), 4091-4098.
Pakkanen, T.A., Loukkola, K., Korhonen, C.H., Aurela, M., Makela, T., Hillamo, R.E., et al., 2001 : Sources and chemical composition of atmospheric fine and coarse particles in the Helsinki area. Atmospheric Environment, 35(32), 5381-5391.
Schwartz, J., Dockery, D. W., & Neas, L. M., 1996 : Is daily mortality associated specifically with fine particles?. Journal of the Air & Waste Management Association, 46(10), 927-939.
Seinfeld, J. H., Pandis, S. N., & Noone, K., 1998 : Atmospheric chemistry and physics: from air pollution to climate change. Physics Today, 51(10), 88.

Skamarock W.C., Klemp J.B., Dudhia J., Gill D.O., Barker D.M., Duda M.G., Huang X.-Y., Wang W., Powers J.G., 2008 : A Description of the Advanced Research WRF Version 3. National Center for Atmospheric Research Technical Note, NCAR, Boulder, CO, USA.
TEDS-10.0 (2016). Taiwan Emission Data System Version 9.0, Environmental Protection
Administration, Taipei, Taiwan, Republic of China.
Tramošljika, B., Blecich, P., Bonefačić, I., & Glažar, V., 2021: Advanced ultra-supercritical coal-fired power plant with post-combustion carbon capture: analysis
of electricity penalty and CO2 emission reduction. Sustainability, 13(2), 801.
Zhang, Dongke., 2013: Ultra-supercritical coal power plants. Materials, Technologies and Optimization.
Zhang, W., Capps, S. L., Hu, Y., Nenes, A., Napelenok, S. L., Russell, A. G., 2012 : Development of the high-order decoupled direct method in three dimensions for particulate matter: enabling advanced sensitivity analysis in air quality models. Geoscientific Model Development, 5(2), 355-368.
Zheng, B., Tong, D., Li, M., Liu, F., Hong, C., Geng, G., et al., 2018 : Trends in China′s anthropogenic emissions since 2010 as the consequence of clean air actions. Atmospheric Chemistry and Physics, 18(19), 14095-14111.
Zhou, J., Ito, K., Lall, R., Lippmann, M., & Thurston, G., 2011: Time-series analysis of mortality effects of fine particulate matter components in Detroit and Seattle. Environmental Health Perspectives, 119(4), 461-466.
賴立蓁, (2010). 鹿港和二林地區大氣懸浮微粒的化學組成及揚塵污染源指紋資料
之建立. 國立中興大學環境工程學所碩士論文.
黃柏翔, (2010). 台中及南海地區大氣懸浮微粒的化學組成及其污染源貢獻量解析,國立中興大學環境工程研究所碩士論文.
李崇德, (2019). 108年度細懸浮微粒(PM2.5)化學成分監測及分析計畫, 行政院環
境保護署委託研究計畫.
蔡春進, (2019). 林口電廠空污排放對環境PM2.5及重金屬之影響調查研究, 臺灣
電力公司委託研究計劃.
指導教授 鄭芳怡(Fang-Yi Cheng) 審核日期 2021-8-25
推文 facebook   plurk   twitter   funp   google   live   udn   HD   myshare   reddit   netvibes   friend   youpush   delicious   baidu   
網路書籤 Google bookmarks   del.icio.us   hemidemi   myshare   

若有論文相關問題,請聯絡國立中央大學圖書館推廣服務組 TEL:(03)422-7151轉57407,或E-mail聯絡  - 隱私權政策聲明