scispace - formally typeset
Search or ask a question

Showing papers by "K. P. Sudheer published in 2016"


Journal ArticleDOI
TL;DR: This paper presented and compared WNN and artificial neural network, both of which were combined with the ensemble method using block bootstrap sampling (BB), in terms of the forecast accuracy and precision at various lead-times on the Bow River, Alberta, Canada, suggesting that the WNN-BB is a robust modeling approach for streamflow forecasting and thus would aid in flood management.

118 citations


Journal ArticleDOI
27 Jul 2016-PLOS ONE
TL;DR: A significant decrease in the monsoon rainfall over major water surplus river basins in India is found, contradict the traditional notion of dry areas becoming drier and wet areas becoming wetter in response to climate change in India.
Abstract: India’s agricultural output, economy, and societal well-being are strappingly dependent on the stability of summer monsoon rainfall, its variability and extremes. Spatial aggregate of intensity and frequency of extreme rainfall events over Central India are significantly increasing, while at local scale they are spatially non-uniform with increasing spatial variability. The reasons behind such increase in spatial variability of extremes are poorly understood and the trends in mean monsoon rainfall have been greatly overlooked. Here, by using multi-decadal gridded daily rainfall data over entire India, we show that the trend in spatial variability of mean monsoon rainfall is decreasing as exactly opposite to that of extremes. The spatial variability of extremes is attributed to the spatial variability of the convective rainfall component. Contrarily, the decrease in spatial variability of the mean rainfall over India poses a pertinent research question on the applicability of large scale inter-basin water transfer by river inter-linking to address the spatial variability of available water in India. We found a significant decrease in the monsoon rainfall over major water surplus river basins in India. Hydrological simulations using a Variable Infiltration Capacity (VIC) model also revealed that the water yield in surplus river basins is decreasing but it is increasing in deficit basins. These findings contradict the traditional notion of dry areas becoming drier and wet areas becoming wetter in response to climate change in India. This result also calls for a re-evaluation of planning for river inter-linking to supply water from surplus to deficit river basins.

113 citations


Journal ArticleDOI
TL;DR: Impacts of land use changes on the water balance components are assessed for the near future employing four different climate conditions (baseline, IPCC A1B, dry, wet, wet) using SLEUTH projections as a dynamic input to the hydrologic model SWAT.

91 citations


Journal ArticleDOI
TL;DR: In this article, the authors proposed a method of regionalization based on the probability distribution function of model parameters, which accounts the variability in the catchment characteristics, and the results indicated that the ensemble simulations in the ungauged basins were closely matching with the observed streamflow data.
Abstract: Regionalization of model parameters by developing appropriate functional relationship between the parameters and basin characteristics is one of the potential approaches to employ hydrological models in ungauged basins. While this is a widely accepted procedure, the uniqueness of the watersheds and the equifinality of parameters bring lot of uncertainty in the simulations in ungauged basins. This study proposes a method of regionalization based on the probability distribution function of model parameters, which accounts the variability in the catchment characteristics. It is envisaged that the probability distribution function represents the characteristics of the model parameter, and when regionalized the earlier concerns can be addressed appropriately. The method employs probability distribution of parameters, derived from gauged basins, to regionalize by regressing them against the catchment attributes. These regional functions are used to develop the parameter characteristics in ungauged basins based on the catchment attributes. The proposed method is illustrated using soil water assessment tool model for an ungauged basin prediction. For this numerical exercise, eight different watersheds spanning across different climatic settings in the USA are considered. While all the basins considered in this study were gauged, one of them was assumed to be ungauged (pseudo-ungauged) in order to evaluate the effectiveness of the proposed methodology in ungauged basin simulation. The process was repeated by considering representative basins from different climatic and landuse scenarios as pseudo-ungauged. The results of the study indicated that the ensemble simulations in the ungauged basins were closely matching with the observed streamflow. The simulation efficiency varied between 57 and 61 % in ungauged basins. The regional function was able to generate the parameter characteristics that were closely matching with the original probability distribution derived from observed streamflow data.

42 citations


Book ChapterDOI
01 Jan 2016
TL;DR: In this chapter, commonly employed uncertainty methods such as bootstrap and Bayesian are applied in ANN and demonstrated through a case example of flood forecasting models in terms of convergence of parameter and quality of prediction interval evaluated using uncertainty indices.
Abstract: The research towards improving the prediction and forecasting of artificial neural network (ANN) based models has gained significant interest while solving various engineering problems. Consequently, different approaches for the development of ANN models have been proposed. However, the point estimation of ANN forecasts seldom explains the actual mechanism that brings the relationship among modeled variables. This raises the question on the model output while making decisions due to the inherent variability or uncertainty associated. The standard procedure though available for the quantification of uncertainty, their applications in ANN model are still limited. In this chapter, commonly employed uncertainty methods such as bootstrap and Bayesian are applied in ANN and demonstrated through a case example of flood forecasting models. It also discusses the merits and limitations of bootstrap ANN (BTANN) and Bayesian ANN (BANN) models in terms of convergence of parameter and quality of prediction interval evaluated using uncertainty indices.

15 citations


Journal ArticleDOI
TL;DR: The proposed AMHMABB model is able to show better streamflow modeling performance when compared with the simulation based SMHMA BB model, plausibly due to the significant role played by the objective functions related to the preservation of multi-site critical deficit run sum and the huge hybrid model parameter space available for the evolutionary search.

10 citations