طراحی مدل زنجیره‌تامین حلقه بسته در شرایط عدم‌اطمینان با در نظر گرفتن انبارهای واسطه ای (بررسی موردی: شرکت خودرنگ)

نوع مقاله: مقاله پژوهشی

نویسندگان

1 کارشناس ارشد مدیریت ، موسسه غیر انتفاعی امین ، فولاد شهر ، اصفهان

2 استادیار، گروه مدیریت، واحد دهاقان، دانشگاه آزاد اسلامی، دهاقان، ایران

چکیده

مدیریت‌زنجیره‌تامین، فرآیند برنامه‌ریزی، اجرا و کنترل کارآمد جریان مواد‌اولیه، موجودی‌های در جریان ساخت، محصولات‌نهایی و همچنین جریان اطلاعات مرتبط با آن از تامین مواد اولیه تا تحویل به مصرف کننده نهایی می‌باشد. هدف این تحقیق طراحی یک مدل زنجیره‌تامین حلقه‌بسته در شرایط عدم‌اطمینان با در نظر گرفتن انبارهای واسطه ای در شرکت خودرنگ می باشد تا با تاثیرآن بر روندتولید و توزیع، برلزوم شناخت هرچه بیشتر این مفهوم و جایگاهی که می‌تواند در توسعه شرکت خودرنگ داشته باشد تاکیدکند. در این تحقیق پس ازجمع‌آوری اطلاعات ومشاوره با کارشناسان شرکت خودرنگ، تا حد امکان بدون لطمه‌زدن به اصل داده‌ها مدل ساده‌سازی گردید و با استفاده ازتکنیک‌های برنامه‌ریزی غیرخطی ، شبکه‌های‌عصبی و با نرم‌افزار‌های متلب و گمز کدگذاری گردید. نتایج این پژوهش در یک محیط بسته و بدون دخالت متغیرهای خارج از مدل، در شرکت خودرنگ نشان می‌دهد مدیران این شرکت توانسته‌اند با پیاده‌سازی معیارهای مربوط به زنجیره‌تامین حلقه‌بسته وپیش‌بینی میزان تقاضا و برگشت محصول، رضایت مشتریان و تامین‌کنندگان عمده خود را فراهم سازند.

کلیدواژه‌ها


عنوان مقاله [English]

Design a closed-loop supply chain in uncertainty conditions taking into account the intermediary warehouses (Case Study: khodrang company)

نویسندگان [English]

  • Laila Arab 1
  • sayyed mohammad reza davoodi 2
1 Master of Science in Management, Amin Instituted Of Higher Education,Isfahan,Iran.
2 Assistant Professor, Department of Management, Dehaghan Branch, Islamic Azad University, Dehaghan, Iran
چکیده [English]

The management of the supply chain is the process of planning, implementing and controlling the flow of raw material, inventory in the course of construction, final products, as well as the flow of related information from the supply of raw materials up to delivery to the final consumer. The purpose of this study is to design a closed-loop supply chain in uncertainty conditions taking into account the intermediary warehouses in the khodrang company. so that its impact on the process of production and distribution, Berlzom recognizes as much of this concept and position as can be found in Enhance the development of khodrang company. In this research after collecting information and consulting with experts of the company, the model was simplified as much as possible without damaging the data principle. Using the nonlinear programming and neural networks and with the software Metalb and Gram coding. The results of this research in a closed environment without the involvement of external variables in the company itself show that the managers of this company have been able to implement the criteria and indicators related to the ring chain and the Nasal demand and product return levels provide the satisfaction of their major customers and suppliers.

کلیدواژه‌ها [English]

  • Closed Loop Chain
  • Logistics
  • Uncertainty
  • Neural network

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