Journal of Engineering and Applied Sciences
Year:
2018
Volume:
13
Issue:
23
Page No.
9908 - 9913
Using Differential Evolution with Neural Networks Forecasting
Model Creating for Pipeline Corrosion
Authors :
Abdul SttarIsmail Wdaa
References
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