Confidence Interval Estimation for Precipitation Quantiles Based on Principle of Maximum Entropy

The principle of maximum entropy (POME) has been used for a variety of applications in hydrology, however it has not been used in confidence interval estimation. Therefore, the POME was employed for confidence interval estimation for precipitation quantiles in this study. The gamma, Pearson type 3 (...

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Main Authors: Ting Wei, Songbai Song
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/21/3/315
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spelling doaj-1b189764f13f444c96fd94f3cd2663c52020-11-25T01:21:53ZengMDPI AGEntropy1099-43002019-03-0121331510.3390/e21030315e21030315Confidence Interval Estimation for Precipitation Quantiles Based on Principle of Maximum EntropyTing Wei0Songbai Song1College of Water Resources and Architectural Engineering, Northwest A&amp;F University, Yangling 712100, ChinaCollege of Water Resources and Architectural Engineering, Northwest A&amp;F University, Yangling 712100, ChinaThe principle of maximum entropy (POME) has been used for a variety of applications in hydrology, however it has not been used in confidence interval estimation. Therefore, the POME was employed for confidence interval estimation for precipitation quantiles in this study. The gamma, Pearson type 3 (P3), and extreme value type 1 (EV1) distributions were used to fit the observation series. The asymptotic variances and confidence intervals of gamma, P3, and EV1 quantiles were then calculated based on POME. Monte Carlo simulation experiments were performed to evaluate the performance of the POME method and to compare with widely used methods of moments (MOM) and the maximum likelihood (ML) method. Finally, the confidence intervals <i>T</i>-year design precipitations were calculated using the POME for the three distributions and compared with those of MOM and ML. Results show that the POME is superior to MOM and ML in reducing the uncertainty of quantile estimators.https://www.mdpi.com/1099-4300/21/3/315principle of maximum entropyquantile estimationconfidence intervalMonte Carlo simulationprecipitation frequency analysis
collection DOAJ
language English
format Article
sources DOAJ
author Ting Wei
Songbai Song
spellingShingle Ting Wei
Songbai Song
Confidence Interval Estimation for Precipitation Quantiles Based on Principle of Maximum Entropy
Entropy
principle of maximum entropy
quantile estimation
confidence interval
Monte Carlo simulation
precipitation frequency analysis
author_facet Ting Wei
Songbai Song
author_sort Ting Wei
title Confidence Interval Estimation for Precipitation Quantiles Based on Principle of Maximum Entropy
title_short Confidence Interval Estimation for Precipitation Quantiles Based on Principle of Maximum Entropy
title_full Confidence Interval Estimation for Precipitation Quantiles Based on Principle of Maximum Entropy
title_fullStr Confidence Interval Estimation for Precipitation Quantiles Based on Principle of Maximum Entropy
title_full_unstemmed Confidence Interval Estimation for Precipitation Quantiles Based on Principle of Maximum Entropy
title_sort confidence interval estimation for precipitation quantiles based on principle of maximum entropy
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2019-03-01
description The principle of maximum entropy (POME) has been used for a variety of applications in hydrology, however it has not been used in confidence interval estimation. Therefore, the POME was employed for confidence interval estimation for precipitation quantiles in this study. The gamma, Pearson type 3 (P3), and extreme value type 1 (EV1) distributions were used to fit the observation series. The asymptotic variances and confidence intervals of gamma, P3, and EV1 quantiles were then calculated based on POME. Monte Carlo simulation experiments were performed to evaluate the performance of the POME method and to compare with widely used methods of moments (MOM) and the maximum likelihood (ML) method. Finally, the confidence intervals <i>T</i>-year design precipitations were calculated using the POME for the three distributions and compared with those of MOM and ML. Results show that the POME is superior to MOM and ML in reducing the uncertainty of quantile estimators.
topic principle of maximum entropy
quantile estimation
confidence interval
Monte Carlo simulation
precipitation frequency analysis
url https://www.mdpi.com/1099-4300/21/3/315
work_keys_str_mv AT tingwei confidenceintervalestimationforprecipitationquantilesbasedonprincipleofmaximumentropy
AT songbaisong confidenceintervalestimationforprecipitationquantilesbasedonprincipleofmaximumentropy
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