BWM ve CoCoSo Yöntemleri ile Kentlerin Ulaşım Performanslarının Karşılaştırmalı Analizi

Kentsel ulaşım sisteminin performansının ölçülmesi, mevcut ulaşım sistemlerinin iyileştirilmesi ve geliştirilmesi için çok kritik bir konudur. Bununla birlikte, bir toplu taşıma sistemi için performans analizi yapmak sürece ilişkin çok sayıda çelişkili kriter ve karmaşık durumların varlığı gözetildiğinde karar vericiler ve uygulayıcılar için kolay bir iş değildir. Öte yandan, mevcut literatürde toplu taşıma sistemini değerlendirmek için yaygın olarak kabul edilen belirlenmiş bir kriter seti bulunmamaktadır. Dolayısıyla bu durum değerlendirme ve analiz süreçlerini çok daha zor bir hale getirmektedir. Bu çalışmada kentsel raylı ulaşım sistemlerinin performanslarını değerlendirmek üzere hibrit bir karar verme modeli önerilmektedir. Önerilen model, Best and Worst Method (BWM) ve Combined Compromise Solution (CoCoSo) tekniklerinin entegrasyonuna dayanmaktadır. BWM tekniği ile karar vericilerin öznel değerlendirmelerindeki en iyi ve en kötü tercihleri öne çıkarılarak kriter ağırlıkları belirlenmekte, CoCoSo tekniği ile karar alternatifleri performans düzeylerine göre sıralanmaktadır. Bu model, Avrupa’da metro hatlarına sahip 30 kentin raylı ulaşım performanslarını dokuz kriter ile değerlendirmek için uygulanmıştır. Çalışma sonucunda en yüksek performans düzeyine sahip olan ilk sıradaki kentin Saint Petersburg olduğu belirlenmiştir. Ayrıca yapılan duyarlılık analizi sonucunda önerilen modelin güvenilir ve tutarlı sonuçlar sergilediği, bu tür performans değerlendirme süreçlerinde uygun bir karar desteği sağlayabileceği tespit edilmiştir.

Comparative Performance Analysis for the Cities with the BWM and the CoCoSo Techniques

Measuring the performances of the urban transport systems is a critical issue in improving and developing the existing transport systems. In the meantime, making performance analysis for the public transport system is not easy for practitioners and decision-makers, as there are many conflicting criteria and very complicated situations in the evaluation process. In addition, there are no commonly accepted criteria set in the existing literature to assess the public transport systems. Hence, this situation makes it difficult to evaluate and analyze processes much more. The proposed model based on the integration of the Best and Worst Method (BWM) and Combined Compromise Solution (CoCoSo) techniques. While the criteria weights are identified by highlighting the worst and the best criterion with the BWM, decision alternatives are ranked with the CoCoSo technique. This model was implemented to evaluated urban rail systems performances of 30 European cities having metro rail systems. At the end of the study, it has been determined that the first ranked city having highest performance is Saint Petersburg. Besides, as a result of the sensitivity analysis, the proposed model provides reliable and consistent results and it has been observed that it can provide a proper decision support for these kinds of evaluation processes.

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