博碩士論文 103621006 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:13 、訪客IP:3.15.186.248
姓名 謝承勳(Cheng-Hsun Hsieh)  查詢紙本館藏   畢業系所 大氣科學學系
論文名稱 改進改進地表溫度在季節預報的技術
(Improving seasonal forecast skill of surface temperature)
相關論文
★ NCEP重新分析資料中的有限時間不穩定與伴隨的奇異模★ 利用台灣測站資料進行短期氣候統計預報之研究
★ NCEP月平均資料的經驗正交模分析★ NCEP五日侯平均資料的經驗正交模分析
★ 利用兩層模式的位渦探討冬季中緯度綜觀尺度特徵★ 旬到月尺度統計預報模式的發展
★ 影響熱帶海溫演變的主要下表層變數★ 季節循環、聖嬰現象與全球氣候變遷之間交互作用的探討
★ 資料時空前置處理對主成份分析法的影響: 一個基於AO和NAO訊號之研究★ CMIP5多模式系集年代際預報實驗對熱帶地區的年際預報能力與偏差校正的探討
★ 應用秩等級分布恆常性於氣候預測的可行性研究與層位渦收支分析初探
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) 本研究發展出一種全新的預報後處理方法來改進地表溫度在多模式系集平均的季節預報技術。簡要來說,此方法使用變數轉換、馬可夫模式(Markov model)和主成分分析引進觀測資料所提供的資訊來修正原始模式的預報值並改進多模式系集平均之預報技術。我們使用哥白尼氣候變遷系統(Copernicus Climate Change Service;C3S)的多模式季節預報計畫的月平均兩米溫度後報(hindcast)資料來進行方法的發展與評估。預報技術的評估指標是預報值和觀測值之間的相關係數和均方根誤差。參考的預報方法是持續性預報(Persistence forecast)和原始的模式預報。
首先我們在ENSO 指標區域利用k交叉驗證(K-fold cross-validation forecasts)來建立和測試此預報後處理方法。ENSO indices預報實驗的結果顯示,預報技術的修正幅度是由東向西增加的,而且這方法中僅保留1個經驗正交(empirical orthogonal function; EOF)模態所得到的修正預報值結果為最佳。方法建立後,我們接著進行全球1° x 1°經緯網格溫度場的預報實驗。一般而言,原始的多模式系集平均預報在陸地上的第1個月超前預報技術表現有比持續預報要好,而在海洋上除了Niño區域外則是在所有的超前預報都比持續預報要差。全球溫度場的預報實驗顯示,此方法不僅大幅度的提升原模式的預報技術,同時仍保有原模式在中太平洋的預報能力。比較修正後預報值與模式預報之結果亦指出,此方法的修正量可能會受到模式本身預報能力的影響而有所不同。在原模式表現不好之區域,其改善程度並不明顯甚至有變差的現象,反之在部分有預報能力之區域則會有明顯的改進。總體而言,在經過本文的方法修正後的預報大體保留了原始的多模式系集平均預報和持續預報的優點。
摘要(英) In this study, we develop a novel forecast post-processing method to improve multi-model mean (MME) seasonal forecast skill of surface temperature. Briefly speaking, this method uses variable transformation, Markov model, and principal components analysis to combine the information from observation to calibrate and improve MME forecast skill. We apply monthly mean 2m temperature hindcast data from the multi-system seasonal forecast service of the Copernicus Climate Change Service (C3S) to develop and evaluate this method. Forecast skills were evaluated using correlation coefficient and root-mean-square error (RMSE) between forecasts and observations. The performance of this method is evaluated by comparing forecast skills among this method, persistence forecasts, and original model MME forecasts.
We first used K-fold cross-validation forecasts to build and test the post-process of forecast method. Results from ENSO indices forecast experiments show that the forecast skill is increased from east to west and the use of only one EOF mode in this method yields the largest forecast skill improvement. After finishing the development of the method, we conduct the 1° x 1° global surface temperature forecast experiment. Generally speaking, original model MME forecasts of global surface temperature field have better skill in land area at lead one month and worse skill in ocean area except the Niño region at all lead months than persistence forecasts. The forecast experiment shows that the calibrated MME forecasts show notable improvement over the original model MME forecasts. Furthermore, the degree of improvement in skill depends on the original model skill. Overall speaking, the calibrated MME forecasts combine the advantages of both the persistence forecasts and the original model MME forecasts to yield better forecast skill than both methods.
關鍵字(中) ★ 多模式系集預報
★ 季節預報
關鍵字(英) ★ Multi-model forecast
★ seasonal forecast
論文目次 摘要 I
ABSTRACT II
致謝 III
目錄 IV
表目錄 V
圖目錄 V
第一章 緒論 1
1-1 前言與文獻回顧 1
1-2 研究目的 2
1-3 論文架構 4
第二章 資料來源與處理 5
2-1 資料來源 5
2-2 資料處理 5
第三章 研究方法與步驟 7
3-1 研究方法 7
3-1-1 刀切法(Jackknife method) 7
3-1-2 變數轉換(Transformation scheme) 8
3-1-3 馬可夫模型(Markov model) 8
3-1-4 主成分分析法(Principal components analysis, PCA) 9
3-2 驗證指標 10
3-2-1 相關係數(Correlation coefficient) 10
3-2-2 均方根誤差(Root Mean Square Error, RMSE) 11
3-3 研究步驟 12
第四章 結果與討論 14
4-1 ENSO INDICES 14
4-1-2 討論 16
4-2 全球經緯網格點 16
4-2-1 校驗後之預報值與原始模式預報值之比較 16
4-2-2 討論 18
第五章 結論與未來展望 19
5-1 結論 19
參考文獻 21
附表 24
附圖 26
參考文獻 王俊寓,2017:CMIP5多模式系集年代際預報實驗對熱帶地區的年際預報能力與偏差校正的探討。國立中央大學大氣物理所碩士論文,1–68。
許家華,2014:資料時空前置處理對主成份分析法的影響: 一個基於AO和NAO訊號之研究。國立中央大學大氣物理所碩士論文,1–89。
Christensen, J. H., Kjellström, E., Giorgi, F., Lenderink, G., and Rummukainen, M., 2010: Weight assignment in regional climate models, 44, 179–194.
Chen, D., and Yuan, X., 2004: A Markov model for seasonal forecast of Antarctic sea ice, J. Clim., 17, 3156– 3168.
Doblas-Reyes, F. J., M. Deque, and J.-P. Piedelievre, 2000: Multi model spread and probabilistic seasonal forecasts in PROVOST, Quart. J. Roy. Meteor. Soc., 126, 2069–2088.
Delsole, T., 2007: A Bayesian framework for multimodel regression, J. Climate, 20, 2810–2826.
Hagedorn, R., F. J. Doblas-Reyes, and T. N. Palmer, 2005: The rationale behind the success of multi-model ensembles in seasonal forecasting—I. Basic concept, Tellus, 57A, 219–233.
Hannachi, A., 2004: A primer for EOF analysis of climate data, Tech. rep. Reading, UK: Department of Meteorology, University of Reading.
Krishnamurti, T. N., and Coauthors, 1999: Improved weather and seasonal climate forecasts from multi-model superensemble, Science, 285, 1548–1550.
Krishnamurti, T. N., Kishtawal, C. M., Zhang, Z., LaRow, T. E., Bachiochi, D. R., Williford, C. E., Gadgil, S., and Surendran, S., 2000a:Improving tropical precipitation forecasts from a multianalysis superensemble, J. Climate, 13, 4217–4227.
Krishnamurti, T. N., Kishtawal, C. M., Zhang, Z., LaRow, T., Bachiochi, D., Williford, E., Gadgil, S., and Surendran, S., 2000b: Multimodel Ensemble Forecasts for Weather and Seasonal Climate, J. Climate, 13, 4196–4216.
Lee, D. Y., C.-Y. Tam, and C.-K. Park, 2008: Effects of multicumulus convective ensemble on East Asian summer monsoon rainfall simulation, J. Geophys. Res., 113, D24111.
Lee, K. Ashok, and J.-B. Ahn, 2011: Toward enhancement of prediction skills of multimodel ensemble seasonal prediction: A climate filter concept, J. Geophys. Res., 116, D06116.
Lee, Y.-A., and R.-Y. Tzeng, 2012: Persistence neutralization transformation: An effective way to improve short-lead forecast skill, J. Geophys. Res., 117, D23109.
Lee, D. Y., Ahn, J. B., and Ashok, K., 2013a: Improvement of multi‐model ensemble seasonal prediction skills over East Asian summer monsoon region using a climate filter concept, J. Appl. Meteorol. Climatol., 52, 1127– 1138.
Lambert S J , Boer G J.,2001: CMIP1 evaluation and intercomparison of coupled climate models, Clim. Dynam., 17, 83-106.
Palmer, T., and Coauthors, 2004: Development of a European Multimodel Ensemble System for Seasonal to Interannual Prediction (DEMETER), Bull. Amer. Meteor. Soc., 85, 853– 872.
Palmer, T., Shutts, G., Hagedorn, R., Doblas-Reyes, F., Jung, T. & Leutbecher, M., 2005a: Representing model uncertainty in weather and climate prediction, Annu. Rev. Earth Planet. Sci., 33, 163–193.
Palmer, T. N., Doblas-Reyes, F. J., Hagedorn, R. & Weisheimer, A., 2005b: Probabilistic prediction of climate using multi-model ensembles: from basics to applications, Phil. Trans. R. Soc. B, 360, 1991–1998.
Park, Y., R. Buizza, and M. Leutbeche, 2008: TIGGE: Preliminary results on comparing and combining ensembles, Quart.J. Roy. Meteor. Soc., 134, 2029–2050.
Roy Bhowmik, S. K. and Durai, V. R. , 2010: Application of multi-model ensemble techniques for real time district level rainfall forecasts in short range time scale over Indian region, Meteorol. Atmos. Phys., 106, 19–35.
Tebaldi C and Knutti R., 2007: The use of the multi-model ensemble in probabilistic climate projections, Phil. Trans. R. Soc. London A, 365 2053-2075.
Wang, B., and Coauthors, 2009: Advance and prospectus of seasonal prediction:Assessment of the APCC/CliPAS 14 model ensemble retrospective seasonal prediction (1980–2004), Climate Dyn., 33, 93–117.
Wu, Q., Yan, Y., and Chen, D., 2013: A Linear Markov Model for East Asian monsoon seasonal forecast, J. Clim., 26, 5183– 5195.
Xue, Y., A. Leetmaa, and M. Ji, 2000: ENSO prediction with Markov models: The impact of sea level, J. Climate, 13, 849–871.
Yuan, X., D. Chen, C. Li, L. Wang, and W. Wang, 2016: Arctic sea ice seasonal prediction by a linear Markov model, J. Clim., 29( 22), 8151– 8173.
指導教授 李永安(Yung-An Lee) 審核日期 2019-7-31
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