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Krishan G

National Institute of Hydrology, Roorkee, Uttarakhand, India

Biography

Dr. Gopal Krishan is currently Scientist-C, at National Institute of Hydrology, Roorkee and Ex-Researcher-Indo Gangetic Basin, Groundwater Resilience Project, British Geological Survey, United Kingdom. Dr. Gopal has over sixteen years of research experience in many facets of hydrological evaluations, surface water and groundwater hydrology project management, and field investigations. Before joining NIH, he worked at IIRS-ISRO, Dehradun for 3 years in National Land Degradation, National Landuse/landcover and National Carbon Projects sponsored by Department of Space.
Publications

Application of Artificial Neural Network for Groundwater Level Simulation in Amritsar and Gurdaspur Districts of Punjab, India

In this paper, the most stable and efficient neural network configuration for predicting groundwater level in Amritsar and Gurdaspur districts of Punjab, India is identified. For predicting the model efficiency and accuracy, different types of network architectures and training algorithms are investigated and compared. It has been found that accura... Read More»

Lohani AK and Krishan G

Research Article: J Earth Sci Clim Change 2015, 6: 274

DOI: 10.4172/2157-7617.1000274

Abstract Peer-reviewed Full Article Peer-reviewed Article PDF Mobile Full Article

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