Twin Screw Expanders Profile Optimization Using Surrogate-‎Based Modelling

ساخت وبلاگ

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برچسب : نویسنده : مهندس نقوی bmined بازدید : 89 تاريخ : چهارشنبه 22 تير 1401 ساعت: 15:56