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http://krishi.icar.gov.in/jspui/handle/123456789/49594
Title: | Streamflow forecasting: overview of advances data-driven techniques |
Other Titles: | Not Available |
Authors: | Priyanka Sharma Deepesh Machiwal |
ICAR Data Use Licennce: | http://krishi.icar.gov.in/PDF/ICAR_Data_Use_Licence.pdf |
Author's Affiliated institute: | ICAR::Central Arid Zone Research Institute |
Published/ Complete Date: | 2021-07-05 |
Project Code: | Not Available |
Keywords: | Streamflow forecasting Data-driven models Time-series modeling Artificial intelligence technique Hybrid models |
Publisher: | Elsevier, Netherlands |
Citation: | Sharma, P. and Machiwal, D. (2021). Streamflow forecasting: overview of advances data-driven techniques. In: Sharma, P. and Machiwal, D. (Editors), Advances in Streamflow Forecasting – from Traditional to Modern Approaches. Elsevier, Netherlands, pp. 1-50. |
Series/Report no.: | Not Available; |
Abstract/Description: | Reliable and realistic streamflow forecasting is very important in hydrology, hydraulic, and water resources engineering as it can directly affect the dams operation and performance, groundwater recharge/exploitation, sediment conveyance capability of river, watershed management, etc. However, an accurate streamflow forecasting is not an easy task due to the high uncertainty associated with climate conditions and complexity of collecting and handling both spatial and non-spatial data. Therefore, hydrologists from all over the world have developed and adopted several types of data-driven techniques ranging from traditional stochastic time-series modeling to modern hybrid artificial intelligence models for future prediction of streamflow. In literature, studies dealing with streamflow forecasting used a variety of techniques having dissimilar concepts and characteristics, and streamflow datasets at different time scale such as daily, monthly, seasonal and yearly etc. This chapter first describes and classifies available data-driven techniques used in streamflow forecasting into suitable groups depending upon their characteristics. Then, growth of the salient data-driven models both single and hybrid such as time-series models, artificial neural network models, and other artificial intelligence models is discussed with their applications and comparisons as reported in studies on streamflow forecasting over time. Thereafter, current approaches used in the recent five-year streamflow-forecasting studies are briefly summarized. Also, challenges experienced by the researchers in applying data-driven techniques for streamflow forecasting are addressed. It is concluded that a vast scope exists for improving streamflow forecasts using emerging and modern tools and combining them with location-specific and in-depth knowledge of the physical processes occurring in the hydrologic system. |
Description: | Not Available |
ISSN: | Not Available |
Type(s) of content: | Book chapter |
Sponsors: | Not Available |
Language: | English |
Name of Journal: | Not Available |
Volume No.: | Not Available |
Page Number: | 1-50 |
Name of the Division/Regional Station: | Division of Natural Resources |
Source, DOI or any other URL: | Not Available |
URI: | http://krishi.icar.gov.in/jspui/handle/123456789/49594 |
Appears in Collections: | NRM-CAZRI-Publication |
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