Forecasting of monthly and annual groundwater levels is important for water resources management, irrigation, and assessment of climate change. This study employs entropy spectral analysis for forecasting monthly groundwater levels. For spectral analysis, the domain of consideration for defining entropy is the frequency domain, in which three types of entropies are known: Burg entropy, configurational entropy, and relative entropy. These entropies lead to three types of spectral analysis: (1) Burg entropy spectral analysis (BESA), (2) configurational entropy spectral analysis (CESA), and (3) relative entropy spectral analysis (RESA). BESA, CESA, and RESA are employed to analyze spectra and forecast monthly groundwater levels, and then they ...
This dissertation discusses the multivariate hydrologic analysis by the entropy theory. It is divide...
This study examined the groundwater quality in Ha'il according to World Health Organization (WHO) st...
Groundwater sustainability is critical to the future of agriculture and food security. The challenge...
Forecasting of monthly and annual groundwater levels is important for water resources management, ir...
Entropy spectral analysis is developed for monthly streamflow forecasting, which contains the use of...
Monthly streamflow has elements of stochasticity, seasonality, and periodicity. Spectral analysis an...
A two-level modeling strategy is formulated to predict groundwater levels (GWL) within a portion of ...
This paper, the second in the series, uses the entropy theory to describe the spatial variability of...
Drought analysis is important for water resources planning and management. Drought duration and seve...
Configurational entropy spectral analysis (CESAS) is developed with spectral power as a random varia...
This paper develops a minimum relative entropy theory with frequency as a random variable, called MR...
In this study, index of entropy and catastrophe theory methods were used for demarcating groundwater...
The groundwater flow system is typical dissipative structure system, and its evolution can be descri...
Entropy theory has wide applications to a range of problems in the fields of environmental and water...
In the field of stochastic hydrology, hydrologic series is formed with the non- periodic component, ...
This dissertation discusses the multivariate hydrologic analysis by the entropy theory. It is divide...
This study examined the groundwater quality in Ha'il according to World Health Organization (WHO) st...
Groundwater sustainability is critical to the future of agriculture and food security. The challenge...
Forecasting of monthly and annual groundwater levels is important for water resources management, ir...
Entropy spectral analysis is developed for monthly streamflow forecasting, which contains the use of...
Monthly streamflow has elements of stochasticity, seasonality, and periodicity. Spectral analysis an...
A two-level modeling strategy is formulated to predict groundwater levels (GWL) within a portion of ...
This paper, the second in the series, uses the entropy theory to describe the spatial variability of...
Drought analysis is important for water resources planning and management. Drought duration and seve...
Configurational entropy spectral analysis (CESAS) is developed with spectral power as a random varia...
This paper develops a minimum relative entropy theory with frequency as a random variable, called MR...
In this study, index of entropy and catastrophe theory methods were used for demarcating groundwater...
The groundwater flow system is typical dissipative structure system, and its evolution can be descri...
Entropy theory has wide applications to a range of problems in the fields of environmental and water...
In the field of stochastic hydrology, hydrologic series is formed with the non- periodic component, ...
This dissertation discusses the multivariate hydrologic analysis by the entropy theory. It is divide...
This study examined the groundwater quality in Ha'il according to World Health Organization (WHO) st...
Groundwater sustainability is critical to the future of agriculture and food security. The challenge...