RETRACTED ARTICLE: Potential of soft computing approach for evaluating the factors affecting the capacity of steel–concrete composite beam
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Shahaboddin Shamshirband | Zainah Ibrahim | Maryam Safa | Meldi Suhatril | Mahdi Shariati | Ali Toghroli | Shahaboddin Shamshirband | Ali Toghroli | M. Shariati | Z. Ibrahim | M. Safa | M. Suhatril
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