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ستاک مصطفی ، علی اصغری زهرا ، " مساله یکپارچه مکان یابی- مسیریابی- موجودی با امکان پاسخگویی به برخی مشتریان"، هشتمین کنفرانس بین المللی مهندسی صنایع، بهمن 90.
صفری سمیه ، پسندیده سیدحمیدرضا ، "ارائه مدل احتمالی مکان یابی مسیریابی موجودی زنجیره تامین با در نظر گرفتن ناوگان حمل و نقل ناهمگن"، همایش ملی پژوهش های مهندسی صنایع، شهریور 93.
علی احمدی علیرضا ، هاشمی امیری سید امید ، نوذری حامد ، حسین مرتجی سید طه ، " ارائه مدل ترکیبی مکان یابی موجودی، مسیریابی برای طراحی شبکه زنجیره های تامین چند سطحی"، نهمین کنفرانس بین المللی مهندسی صنایع، بهمن 91.
علی نژاد علیرضا ، سالاری سامرند ، سیف آزاده ، " توسعه مدل مکان یابی شبکه ای در حالت عدم قطعیت (حالت استوار)"، فصلنامه علمی ـ پژوهشی مطالعات مدیریت صنعتی سال دهم، شماره 26، پاییز 1391، 115-138.
فخرزاد محمد باقر، نور محمدزاده زهره، " یکپارچه سازی مسائل زمانبندی تولید و تحویل با رویکرد مسیریابی وسیله نقلیه با ناوگان ناهمگن "، فصلنامه علمی– پژوهشی مطالعات مدیریت صنعتی، دوره 13، شماره 38، پاییز 1394، صفحات 163-182.
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