El Niño-Southern Oscillation forecasting using complex networks analysis of LSTM neural networks

Artificial Life and Robotics - Tập 24 Số 4 - Trang 445-451 - 2019
Clifford Broni-Bedaiko1, Ferdinand Apietu Katsriku2, Tatsuo Unemi3, Masayasu Atsumi3, Jamal-Deen Abdulai2, Norihiko Shinomiya3, Ebenezer Owusu2
1University of Ghana, Legon, Accra, Ghana
2University of Ghana, ACCRA, Ghana
3Soka University, Tokyo, Japan

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