Congestion-Based Benchmarking and Accessing Sustainability in Network DEA, Case study: Nine Iranian Tomato Paste Supply Chains
محورهای موضوعی : مجله بین المللی ریاضیات صنعتیE. Mollaeian 1 , Farhad Hosseinzade Lotfi 2 , A. Toloie-Eshlaghy 3 , M. Rostamy Malkhalifeh 4 , M. A. Afshar Kazemi 5
1 - Department of Industrial Management,Science and Research Branch, Islamic Azad University, Tehran, Iran.
2 - Department of Mathematics, Science and Research Branch, Islamic Azad University, Tehran, Iran.
3 - Department of Industrial Management, Science and Research Branch, Islamic Azad University, Tehran, Iran
4 - Department of Mathematics, Science and Research Branch, Islamic Azad University, Tehran, Iran.
5 - Department of Industrial Management, Central Tehran Branch, Islamic Azad University, Tehran, Iran.
کلید واژه: Benchmark, Network DEA, Congestion, Sustainable development, Inverse DEA,
چکیده مقاله :
This paper deals with benchmarking for a three-stage DMU. After investigating and eliminating congestion, adjustment of intermediate products and initial inputs have achieved by utilizing an Inverse DEA model, which dominates the current vectors and serve as a benchmark that is to the best of this paper knowledge. This process has two cases. First, the overall efficiency stays fixed, and the second case, is corresponded to the overall efficiency improvement.
این مقاله در ارتباط با مبحث الگویابی برای واحد تصمیم گیرنده سه مرحله می باشد. ابتدا تراکم در واحد شناسایی می شود و حذف می گردد، بدین ترتیب مقادیر تعدیل شده برای محصولات میانی و ورودی های اولیه سیستم بدست می آید. این مقادیر تعدیل شده، که منجر به مغلوب کردن مقادیر جاری و تعیین کردن نقطه الگو حاصل می شوند، با استفاده از مدل معکوس DEA حاصل می شود که یکی از مهم ترین بخش های این مقاله است. این فرآیند در دو حالت مجزا اتفاق می افتد: حالت اول اینکه کارایی کل سیستم ثابت می ماند و حالت دوم اینکه کارایی کلی سیستم درصدی بهبود دارد.
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