Corpus ID: 54078175
Artificial neural network technique for modeling of groundwaterlevel in Langat Basin, Malaysia
M. Khaki, I. Yusoff, +1 author N. H. Hussin
Published 2016
Engineering
Forecasting of groundwater level variations is a significantly needed in groundwater resource management. Precise water level prediction assists in practical and optimal usage of water resources. The… Expand
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9 Citations
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Estimation of speed, armature temperature, and resistance in brushed DC machines using a CFNN based on BFGS BP
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Cascade-Forward Neural Network Based on Resilient Backpropagation for Simultaneous Parameters and State Space Estimations of Brushed DC Machines
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Computer Science, EngineeringArXiv
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145 Citations
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