Fig. 1. CRP & CRH of Gaussian and Logistic data. (a) Gaussian white noise data, (b) Logistic data
Fig. 2. Location of water gauges
Fig. 3. Weekly water level data of Upo station 1 & 2
Fig. 4. Box-Cox transformed Upo station 1 data(λ = 0.1603)
Fig. 6. Model fit of Transformed Upo station 1 data and Upo station 2 data
Fig. 5. ACF & PACF of Transformed Upo station 1 data and Upo station 2 data
Table 1. Statistic for the Gaussian and logistic series(Kim et al, 2003)
Table 2. Result of CRH
Table 3. statistics of water level data
Table 4. Result of Stationary test
Table 5. statistics of Box-Cox transformed Upo station 1 data
Table 6. Compare AIC with several ARIMA model of Upo station 1 & station 2
Table 7. The result of Nonparametric statistics of Residual data
Table 8. BDS statistic result(Residual of Upo station 1)
Table 9. BDS statistic result(Residual of Upo station 2)
Table 10. The Randomness test result of CRH about Residual data
Table 11. Randomness test result of (A) and (B) data
참고문헌
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