Kumaraguru College of Technology,
Coimbatore, Tamilnadu
India
Review Article
Comparison of Decision Tree Based Rainfall Prediction Model with Data Driven Model Considering Climatic Variables
Author(s): Ramsundram N, Sathya S and Karthikeyan SRamsundram N, Sathya S and Karthikeyan S
In hydrological cycle, precipitation initiates the flow and governs the system. The preciseness in the prediction of rainfall will reduce the uncertainty involved in estimating the associated hydrological variables such as runoff, infiltration, and stream flow. Many research works has been channelled towards improving the accuracy of these predictions. ANN is the most widely used neural networks in Integrated Water Resource Management. Most of these models, utilize the strength of data-driven modelling approach. The reliability of these predictions depends on the preciseness in selecting the correlated variables. If the available historical database fails to record the most correlated variable, then reliability on these data-driven approach predictions is questionable. In this paper, an attempt has been made to develop a methodological framework that utilizes the strength of a predict.. Read More»
DOI:
10.4172/2168-9768.1000175
Irrigation & Drainage Systems Engineering received 835 citations as per Google Scholar report