90 research outputs found
A COMPARATIVE STUDY ON CALIBRATION METHODS OF NASH’S RAINFALL-RUNOFF MODEL TO AMMAMEH WATERSHED, IRAN
Increasing importance of watershed management during last decades highlighted the need for sufficient data and accurate estimation of rainfall and runoff within watersheds. Therefore, various conceptual models have been developed with parameters based on observed data. Since further investigations depend on these parameters, it is important to accurately estimate them. This study by utilizing various methods, tries to estimate Nash rainfall-runoff model parameters and then evaluate the reliability of parameter estimation methods; moment, least square error, maximum likelihood, maximum entropy and genetic algorithm. Results based on a case study on the data from Ammameh watershed in Central Iran, indicate that the genetic algorithm method, which has been developed based on artificial intelligence, more accurately estimates Nash’s model parameters
Large-scale climatic teleconnection for predicting extreme hydro-climatic events in southern Japan
Coordinator: Sameh KantoushPrnicipial Invistegator: Vahid Nouran
Drought index downscaling using AI-based ensemble technique and satellite data
This study introduces and validates an artificial intelligence (AI)–based downscaling method for Standardized Precipitation Indices (SPI) in the northwest of Iran, utilizing PERSSIAN-CDR data and MODIS-derived drought-dependent variables. The correlation between SPI and two drought-dependent variables at a spatial resolution of 0.25° from 2000 to 2015 served as the basis for predicting SPI values at a finer spatial resolution of 0.05° for the period spanning 2016 to 2021. Shallow AI models (Support Vector Regression, Adaptive Neural Fuzzy Inference System, Feedforward Neural Network) and the Long Short-Term Memory (LSTM) deep learning method are employed for downscaling, followed by an ensemble post-processing technique for shallow AI models. Validation against rain gauge data indicates that all methods improve SPI simulation compared to PERSIANN-CDR products. The ensemble technique excels by 20% and 25% in the training and test phases, respectively, achieving the mean Determination Coefficient (DC) score of 0.67 in the validation phase. Results suggest that the deep learning LSTM method is less suitable for limited observed data compared to ensemble techniques. Additionally, the proposed methodology successfully detects approximately 80% of drought conditions. Notably, SPI-6 outperforms other temporal scales. This study advances the understanding of AI-driven downscaling for SPI, emphasizing the efficacy of ensemble approaches and providing valuable insights for regions with limited observational data.</p
Groundwater Level Forecasting Using Wavelet and Kriging
In this research, a hybrid wavelet-artificial neural network (WANN) and a geostatistical method were proposed for spatiotemporal prediction of the groundwater level (GWL) for one month ahead. For this purpose, monthly observed time series of GWL were collected from September 2005 to April 2014 in 10 piezometers around Mashhad City in the Northeast of Iran. In temporal forecasting, an artificial neural network (ANN) and a WANN were trained for each piezometer. Kriging was used in spatial estimations. The comparison of the prediction accuracy of these two models illustrated that the WANN was more efficacious in prediction of GWL for one month ahead. Thereafter, in order to predict GWL in desired points in the study area, the kriging method was used and a Gaussian model was selected as the best variogram model. Ultimately, the WANN with coefficient of determination and root mean square error and mean absolute error, 0.836 and 0.335 and 0.273 respectively, in temporal forecasting and Gaussian model with root mean square, 0.253 as the best fitted model on Kriging method for spatial estimating were suitable choices for spatiotemporal GWL forecasting. The obtained map of groundwater level showed that the groundwater level was higher in the areas of plain located in mountainside areas. This fact can show that outcomes are respectively correct
Evaluation of Leachate Quality and its Effects on Agriculture in the Vicinity of Zanjan Landfill
Landfills can be considered as a potential threat to groundwater resources, considering the potential of groundwater pollution by leachate with the pollutants such as hydrocarbons and heavy metals. In this study, spatial changes in groundwater quality used in agriculture, in the vicinity of landfill site of municipal solid wastes in the southwest of Zanjan city were investigated. For this purpose, analysis of 18 physicochemical, heavy metals and bacterial parameters in leachate and 14 groundwater samples were investigated around the dumpsite up to a 5 km radius from landfill during two sampling periods (i.e., December 2020 and June 2011). In this study, several indices including leachate pollution index, sodium absorption ratio, Killie index, soluble sodium percentage and permeability index were used to investigate groundwater pollution in the study area due to leachate or other sources. According to the results of LPI, none of the groundwater samples were polluted with leachate. Also, the quality of these resources for use in agriculture was evaluated favorably according to SAR, KR and PI indices, however, according to SSP, 64% and 86% of samples during December 2020 and June 2021, respectively, were reported polluted. In general, the results of qualitative study of groundwater samples in dry season (December 2020) were more pronounced than pollutants. Although based on the results of agricultural indicators and LPI in well number 5 as the closest well to the landfill, no contamination by leachate has been reported, however the high chlorine concentration which was at maximum of allowed range, the potential dangers of landfill leachate were shown. It is noted that chlorine acts as a leachate detector in groundwater. Therefore it is recommended that monitoring wells be dug at different depths and at distances of less than one kilometer from the landfill, and sampling be done in successive periods to determine even the smallest effects of leachate on groundwater
The Applications of Soft Computing Methods for Seepage Modeling: A Review
In recent times, significant research has been carried out into developing and applying
soft computing techniques for modeling hydro-climatic processes such as seepage modeling. It
is necessary to properly model seepage, which creates groundwater sources, to ensure adequate
management of scarce water resources. On the other hand, excessive seepage can threaten the
stability of earthfill dams and infrastructures. Furthermore, it could result in severe soil erosion
and consequently cause environmental damage. Considering the complex and nonlinear nature of
the seepage process, employing soft computing techniques, especially applying pre-post processing
techniques as hybrid methods, such as wavelet analysis, could be appropriate to enhance modeling
efficiency. This review paper summarizes standard soft computing techniques and reviews their
seepage modeling and simulation applications in the last two decades. Accordingly, 48 research
papers from 2002 to 2021 were reviewed. According to the reviewed papers, it could be understood
that regardless of some limitations, soft computing techniques could simulate the seepage successfully
either through groundwater or earthfill dam and hydraulic structures. Moreover, some suggestions
for future research are presented. This review was conducted employing preferred reporting items
for systematic reviews and meta-analyses (PRISMA) method
Application of hydrogeological and biological research for the lysimeter experiment performance under simulated municipal landfill condition
The size and chemical composition of leachates migrating into the aquifer are dependent on the parameters of the waste and
the storage conditions. Lysimeter studies allow us to determine the size and chemical composition of leachates as well as
the leachate water balance. Lysimeter studies were conducted on a 230-L municipal waste sample for 6 months. During the
tests, the specific electrolyte conductivity, pH, Eh, and temperature, as well as the chemical composition, microbiological
analysis, and profiling of physiological population level using EcoPlate™ microarrays were measured in collected leachate
samples. During the entire experiment, the amounts of inflow and outflow from lysimeters were measured. To assess the existence
of significant differences in the chemical component concentrations in leachates, use of Principal Component Analysis
was taken into account. The maximum EC value from leachate from the lysimeter was 33 mS/cm. High concentrations of
ammonium ion (up to approx. 1400 mg dm−3), chlorides (up to approx. 6800 mg dm−3), and iron (up to approx. 31 mg dm−3)
were observed in the effluents. The number of enterococci in May reached 53,000 cells/100 ml. By contrast, the number of
these microorganisms was about 15,000 and 16,000 CFU/100 ml in January and April, respectively. Community-level physiological
profiling indicates that the activity and functional diversity of microorganisms were higher in the leachate samples
obtained in winter compared to effluents collected from lysimeters in spring
Application of Z-numbers to teleconnection modeling between monthly precipitation and large scale sea surface temperature
The teleconnection modeling of hydro-climatic events is a complex problem with highly uncertain circumstances. In contrast to the classic
fuzzy logic methods, by using the Z-number in addition to the constraint of information, and by evaluating the data reliability, it is possible to
characterize the degree of ambiguity of data. In this regard, this study investigates the performance of the Z-number-based model (ZBM) in
prediction of classified monthly precipitation (MP) events of two synoptic stations in Iran (up to five months in advance). To this end, the sea
surface temperature (SST) of adjacent seas was used as a predictor. The suggested model, by using Z-number directly and applying fuzzy
Hausdorff distance to determine weights of if-then rules, predicted MP events of both the stations with over 70% confidence. Analysis of
the results in the test step showed that the ZBM compared to the traditional fuzzy approach improved the results by 69% for Kermanshah
and 112% for Tabriz. Overall, the Z-number concept by assessing events reliability can be used in various sectors of water resources manage-
ment such as decision-making and drought monitoring
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