ARALIK TİP 2 BULANIK TOPSIS YÖNTEMİ İLE YATIRIM YERİ KARAR ANALİZİ

Karar verme problemlerinde,  birden fazla kriter birlikte değerlendirilirken,  mümkün çözümlerden en uygun alternatifi seçmek hedeflenmektedir.  Günümüz şartlarında büyük boyutta kararlar almak isteyen yatırımcılar, hedef pazarda varlıklarını devam ettirebilmek ve maksimum faydayı sağlamak için birden fazla faktörü birlikte değerlendirerek en iyi seçimi yapmak zorundadırlar. Bu karar yatırım bölgesi seçimi için alınıyorsa yatırımcı, yatırım dönemi boyunca firmaya maksimum fayda sağlayacak bölgeyi seçmek zorundadır. Çok kriterli karar verme olarak adlandırılan bu tip problemler çok fazla sayıda farklı teknikle çözülebilmekte ve karar vericilere büyük faydalar sağlamaktadır. Bu çalışmada; imalat sektöründe yatırım yapacak olan bir firmada yatırım bölgesi kararı verilirken, aralık tip 2 bulanık TOPSIS yöntemi kullanılarak, en doğru seçim kararını almak hedeflenmiştir. Buna ulaşmak için belirlenen kriterler, yatırımcının gerçekte karşılaşabileceği ekonomik, teknik, kültürel ve sosyal tüm faktörler birlikte ele alınarak oluşturulmuştur. Belirlenen on adet kriter üç farklı yatırım bölgesi için değerlendirilip yatırım için en doğru bölgenin Marmara bölgesi olduğuna karar verilmiştir.

Investment Location Decision Analysis with Interval Type-2 Fuzzy TOPSIS Method

In decision making problems, when multiple criteria are evaluated together, it is aimed to choose the most suitable alternative from possible solutions. Investors who want to make big-scale decisions in today's conditions have to make the best choice by evaluating more than one factor together to maintain their assets in the target market and to provide maximum benefit. If this decision is taken for facility location selection, the investor must choose the region that will provide maximum benefit to the company during the investment period. These types of problems, called multi-criteria decision making, can be solved with a large number of different techniques and provide great benefits to decision makers. In this study; it is aimed to make the right decision for facility location selection by using the interval type 2 fuzzy TOPSIS method for a firm that will invest in the manufacturing sector. In order to achieve this, the criteria set out are taken together with all the economic, technical, cultural and social factors that the investor might actually encounter. Specified ten criteria are evaluated for three different investment regions and it is decided that the most appropriate region for investment is the Marmara region.

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