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<dc:date>2026-04-21T22:11:39Z</dc:date>
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<title>INCOH-SAR-30-2010-State of the Art Report on Reservoir Sedimentation.</title>
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<description>INCOH-SAR-30-2010-State of the Art Report on Reservoir Sedimentation.
Ranga Raju, K. G.; Kothyari, U. C.; Mittal, M. K.
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<dc:date>2010-01-01T00:00:00Z</dc:date>
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<title>INCOH-SAR-29-2007-Flood of august 2006 in arid Rajasthan -Causes, magnitude and strategies</title>
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<description>INCOH-SAR-29-2007-Flood of august 2006 in arid Rajasthan -Causes, magnitude and strategies
Faroda, A. S.; Joshi, D. C.
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<dc:date>2007-01-01T00:00:00Z</dc:date>
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<title>INCOH/SAR-28/2007-Artificial neural network modelling</title>
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<description>INCOH/SAR-28/2007-Artificial neural network modelling
Mohan, S.
During the last decade, ANNs have emerged as a powerful tool for pattern recognition and modeling output from a system using the input data. Artificial Neural Networks are relatively crude electronic models based on the neural structure of the brain. The application of ANNs to water resources problems has become popular due to their immense power and potential in modeling non-linear systems. Among the many ANN structures that have been studied, the widely used structure in the area of hydrology is the multi-layer, feed-forward network. Neural networks  learn,  they  are  not programmed.  Yet,  even though they  are not traditionally programmed, the designing of neural networks does require a skill. This skill involves the understanding  of  the  network  topologies,  current  hardware,  current software tools, the application to be solved, and a strategy to acquire the necessary data to train the network. This skill further involves the selection of learning rules, transfer functions, summation functions, and how to connect the neurons within the network.
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<dc:date>2007-01-01T00:00:00Z</dc:date>
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<title>INCOH/SAR-27/2006-Manual for roof top rain water harvesting using cisterns or storage tanks for individual households community and institutions</title>
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<description>INCOH/SAR-27/2006-Manual for roof top rain water harvesting using cisterns or storage tanks for individual households community and institutions
Sharma, Santosh Kumar
Roof Top Rain Water Harvesting is an important rain water harvesting process of capturing and storing rainfall utilizing the roof tops of the residential, industrial and other housing complex, thereby preventing run off, evaporation and seepage of rainfall; for efficient conservation and utilization. Roof Top Rainwater Harvesting is mainly used for drinking water supply. For many parts of India, Roof Top Rainwater is the cheapest form of water supply due to the availability of substantial rain-water.  Roof Top Rain Water Harvesting techniques have an edge over other alternatives especially in hilly areas, islands, coastal and saline areas because of difficulties in construction of water supply schemes. The planning and designing of Roof Top Rain Water Harvesting system is guided by the volume of water that could be captured by the rooftop and subsequently stored. The extent and distribution of rainfall decides the volume of water available from the rooftops. Since the area of rooftops is by and large a fixed entity, the extent of rainfall and related climatic conditions decide the quantity of rainwater, which could be harvested and stored.
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<dc:date>2006-01-01T00:00:00Z</dc:date>
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