Studies on the Identificasting and Forecasting for Short Hydrological Time Series
碩士 === 淡江大學 === 水資源及環境工程學系 === 86 === Recently, the Hurvich and Tsai (1997) focused on the short time series and made use of the minimizing the mean squared error to establish the linear relationship between Zt+h and {Zt-k+1,..., Zt} in order to increase...
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ndltd-TW-086TKU010880142015-10-13T17:34:45Z http://ndltd.ncl.edu.tw/handle/42067685153500512298 Studies on the Identificasting and Forecasting for Short Hydrological Time Series 水文短序列模式判定與預測之研究 King, Shih-Kai 金士凱 碩士 淡江大學 水資源及環境工程學系 86 Recently, the Hurvich and Tsai (1997) focused on the short time series and made use of the minimizing the mean squared error to establish the linear relationship between Zt+h and {Zt-k+1,..., Zt} in order to increase the forecasting abilities. However, the Hurvich and Tsai''s research only limited on analyzing the synthetic data of some special models. Therefore, the following study is not only probing into the suitable range for the method that Hurvich and Tsai provide but also will focus on the monthly riverflow discharge data of Taiwan to make a comprehensive research.This study uses Burg (1978) and the traditional methods that estimate the autocovariance to yield the estimates of the predictor coefficients from Hurvich and Tsai. In the mean time, this research adopts the maximum entropy and moment methods to estimate the parameters of the time series model when the difference display on the forecasting abilities between the Hurvich and Tsai and the time series model. Three criteria, AICC, AIC and FPE, are used as the model selection criteria for identifying short time series model.The results of synthetic data show that maximum entropy method has better parameters estimating accuracy than moment method, whatever the data is close to non-staionarity or stationarity with small sample size. After using the maximum entropy estimator and the autocovariance estimator (Burg) to estimate the parameters, the AICC criterion has better quality of identifying model, especially when data closes to non-stationarity. For the small sample, the forecasting ability is better when the time series model is used for examining the maximum entropy estimator. When the sample size increases, the forecasting ability of both methods of Hurvich and Tsai and time series models are very similar.In general, the Hurvich and Tsai used the traditional method that estimate the autocovariance showed the best forecasting ability for the real data. However, the SAR model and the Hurvich and Tsai have the same qualities of predication. The SAR model is better for the monthly riverflow data of Taiwan if the principle of parsimony of the parameter is considerable. Yu Gwo-Hsing 虞國興 1998 學位論文 ; thesis 121 zh-TW |
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碩士 === 淡江大學 === 水資源及環境工程學系 === 86 === Recently, the Hurvich and Tsai (1997) focused on the short time
series and made use of the minimizing the mean squared error to
establish the linear relationship between Zt+h and {Zt-k+1,...,
Zt} in order to increase the forecasting abilities. However,
the Hurvich and Tsai''s research only limited on analyzing the
synthetic data of some special models. Therefore, the following
study is not only probing into the suitable range for the method
that Hurvich and Tsai provide but also will focus on the monthly
riverflow discharge data of Taiwan to make a comprehensive
research.This study uses Burg (1978) and the traditional methods
that estimate the autocovariance to yield the estimates of the
predictor coefficients from Hurvich and Tsai. In the mean time,
this research adopts the maximum entropy and moment methods to
estimate the parameters of the time series model when the
difference display on the forecasting abilities between the
Hurvich and Tsai and the time series model. Three criteria,
AICC, AIC and FPE, are used as the model selection criteria for
identifying short time series model.The results of synthetic
data show that maximum entropy method has better parameters
estimating accuracy than moment method, whatever the data is
close to non-staionarity or stationarity with small sample size.
After using the maximum entropy estimator and the autocovariance
estimator (Burg) to estimate the parameters, the AICC criterion
has better quality of identifying model, especially when data
closes to non-stationarity. For the small sample, the
forecasting ability is better when the time series model is used
for examining the maximum entropy estimator. When the sample
size increases, the forecasting ability of both methods of
Hurvich and Tsai and time series models are very similar.In
general, the Hurvich and Tsai used the traditional method that
estimate the autocovariance showed the best forecasting ability
for the real data. However, the SAR model and the Hurvich and
Tsai have the same qualities of predication. The SAR model is
better for the monthly riverflow data of Taiwan if the principle
of parsimony of the parameter is considerable.
|
author2 |
Yu Gwo-Hsing |
author_facet |
Yu Gwo-Hsing King, Shih-Kai 金士凱 |
author |
King, Shih-Kai 金士凱 |
spellingShingle |
King, Shih-Kai 金士凱 Studies on the Identificasting and Forecasting for Short Hydrological Time Series |
author_sort |
King, Shih-Kai |
title |
Studies on the Identificasting and Forecasting for Short Hydrological Time Series |
title_short |
Studies on the Identificasting and Forecasting for Short Hydrological Time Series |
title_full |
Studies on the Identificasting and Forecasting for Short Hydrological Time Series |
title_fullStr |
Studies on the Identificasting and Forecasting for Short Hydrological Time Series |
title_full_unstemmed |
Studies on the Identificasting and Forecasting for Short Hydrological Time Series |
title_sort |
studies on the identificasting and forecasting for short hydrological time series |
publishDate |
1998 |
url |
http://ndltd.ncl.edu.tw/handle/42067685153500512298 |
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