Shallow landslide susceptibility assessment using a novel hybrid intelligence approach
Ataollah Shirzadi(University of Kurdistan), Inge Revhaug(Norwegian University of Life Sciences), Dieu Tien Bui(University of South-Eastern Norway), Karim Solaimani(Sari Agricultural Sciences and Natural Resources University), Ataollah Kavian(Sari Agricultural Sciences and Natural Resources University), Binh Thai Pham(University Of Transport Technology), Himan Shahabi(University of Kurdistan), Kamran Chapi(University of Kurdistan)
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