一、中文部分
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3. 中華民國招商網/經濟部投資業務處(民96)。世界經濟論壇(WEF):台灣觀光旅遊競爭力,亞洲第4。96年 5 月 21 日,取自中華民國招商網 http://investintaiwan.nat.gov.tw/zh-tw/news/200705/2007052101.html
4. 台灣電力公司企劃處(民 98),2009台灣電力公司永續報告書,台北: 台灣電力公司。
5. 余序江、許志義、陳澤義(民87),科技管理導論:科技預測與規劃:五南出版社。
6. 林佳容譯(民88),預測未來,初版,台北:凱信出版事業有限公司。
7. 林茂文(民72),時間數列分析與預測,台北:華泰圖書文物公司。
8. 胡政源(民94),科技創新管理,第一版,台北:新文京開發出版股份有限公司。
9. 徐惇穎(民 87),以模糊及類神經理論探討次微米MOSFET元件君限電壓預測之研究,大葉大學電機工程所碩士論文。 10. 孫立群、張中銘、雷立芬,(民87),台灣輸日數量與日本冷凍鮪魚價格關係之研究,鮪、魷漁業資源計劃研討會。
11. 陳登源、陳孝平(民74),管理的預測方法,台北:幼獅文化事業公司及台此市銀行。
12. 陳湛勻(民88),現代決策應用與方法分析,台北:五南圖書出版公司。
13. 梁瑞勵(民 92),應用時間序列法及模糊系統法於短期負載預測,科技學刊,12:1期,19-28頁。
14.郭明哲(民74),預測方法,七版,中興管理顧問公司。
15. 許哲強(民94),區域尖峰負載預測分析系統之建立與應用研究,台電工程月刊,第686卷,121頁。
16. 張昌財、黃廷合、賴沅暉、張盛鴻、吳贊鐸、李沿儒、梅國忠、邱奕嘉(民93),科技管理導論。台北:全華科技圖書股份有限公司。
17. 黃泓智、林家玉、余清祥(民93),癌症醫療費用之推估:馬可夫鏈模型之應用,保險專刊,第20卷第1期,1-20頁。 18. 國際能源署 (民97)。世界能源展望2008。97年9月25日,取自http://www.iea.org/weo/index_chinese.asp
19. 雷立芬、陸雲,(民 89),農產品產銷預測系統之建立-紅豆,行政院農業委員會主管試驗研究計畫。
20. 賴正文(民 86),區域性負載預測及電力供給規劃模型建立之研究,國立成功大學資源工程研究所博士論文。
21. 賴擁成(民 88),三相感應電動機之自適模糊轉速控制器設計,海洋大學電機工程所碩土論文。
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23. 顏月珠(民74),商用統計學,台北:三民書局。
24. 慧典市場研究報告(民96)世界能源供需現狀與發展趨勢分析96年04月24日,取自慧典市場研究報告網站http://www.hdcmr.com/article/jzqb/09/04/9910.html
25. 羅啟豪(民94),運用灰色系統理論預測來台與出國旅客人數需求之研究,樹德科技大學經營管理研究所碩士論文。
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