About This Item
- Full TextFull Text(subscription required)
- Pay-Per-View PurchasePay-Per-View
Purchase Options Explain
Share This Item
The AAPG/Datapages Combined Publications Database
Environmental Geosciences (DEG)
Abstract
Environmental Geosciences, V.
2010. The American Association of Petroleum Geologists/Division of Environmental Geosciences. All rights reserved.
DOI:10.1306/eg.07170909010
Derivations of simple site-specific recharge-precipitation relationships: A case study from the Cuddalore Basin, India
S. Mohan,1 Marykutty Abraham2
1Environmental and
Water
Resources Engineering, Department of Civil Engineering, IIT Madras, Chennai 600 036, India
2Center for
Water
Research, Sathyabama University, Chennai 600 119, India; [email protected]
AUTHORS
S. Mohan is a professor in the Department of Civil Engineering at the Indian Institute of Technology Madras, India. His research interests include environmental system analysis, environmental impact assessment,
water
quality modeling,
water
and wastewater treatment,
water
resources system analysis, Geographic Information System and its applications, and evolutionary algorithms. He has published several articles in national and international journals, which are of high value.
Marykutty Abraham is a scientist in the Center for
Water
Research, Sathyabama University, Chennai, India. Her main areas of interest are groundwater hydrology-groundwater flow and contaminant transport modeling,
water
harvesting, irrigation engineering,
water
resources systems engineering, air and
water
quality modeling, and geographic information systems. She has also conducted many field experiments related to evapotraspiration.
ABSTRACT
Population growth and higher living standards have resulted in an ever-increasing demand for
water
. Quantifying the current rate of groundwater recharge is a prerequisite for efficient and sustainable groundwater resource management in dry areas. The normal practice of assuming natural recharge value as certain percentage of rainfall may be suitable for yearly estimation, but this method miserably fails if it is used for short-term estimation. Equations were developed for natural recharge estimation and applied to a case study for Cuddalore Basin, Tamilnadu, India. Natural recharge was estimated using
water
level fluctuation method,
water
balance method, nonlinear regression method, and artificial neural network (ANN) model. According to the
water
level fluctuation method, on an average, 18.74% of the rain got recharged to the ground. The average annual recharge to the groundwater reserve was 18.98, 16.81, and 18.48% of rainfall in the case of the
water
balance model, nonlinear regression model, and ANN model. The study shows that the framework adopted for the nonlinear regression and ANN models can be locally used to predict natural recharge based on precipitation estimates.
Pay-Per-View Purchase Options
The article is available through a document delivery service. Explain these Purchase Options.
| Watermarked PDF Document: $16 | |
| Open PDF Document: $28 |