Belirsizlik Altında Çevre Bilinçli Tedarikçi Seçimi Probleminin İncelenmesi

Sürdürülebilir tedarik zincirleri, toplumun güncel gereksinimlerini gelecek nesillerin kaynaklarını tehlikeye atmadan ulaşılabilir kılmayı hedeflemektedir. Kalkınmayı sürdürülebilir kılmanın yolu, tedarik zincirinde akışı gerçekleşen tüm kaynaklara kapalı bir döngü içinde gerçekleşme yeteneği kazandırılmasını sağlamaktan geçmektedir. Burada öncelikli kaynaklar, kıt olan ve yaşamı sürdürülebilir kılan çevresel kaynaklardır. Çevre bilinçli sistemler kurmak suretiyle, tedarik zincirindeki müşteriler ve işletmeler bu kaynakların sürdürülebilirliği konusunda katkı sağlayabilmektedir. Bu çalışma, yeşil tedarik zincirinde tedarikçi seçimi gerçekleştiren bir firmanın değerlendirmesi gereken kriterler incelenmiş olup, otomotiv sektöründe üretim yapan bir firma için tedarikçi değerlendirmesi ve analizi gerçekleştirilmiştir. Sonuçlar, sürdürülebilir tedarik zincirinde tedarikçi seçimi yaparken çevreci kriterlerin etki düzeyinin otomotiv sektöründe oldukça yüksek olduğunu göstermektedir.

Investigating Environmentally Conscious Supplier Selection Problem under Uncertainty

The main concern of sustainable supply chains is to enable present generation to reach their needs and aspirations without compromising the ability of future generations to meet their needs. Closing the loop in a supply chain, including the resources in the forward and reverse flow, is a prerequisite for sustainable supply chains and sustainable development. Here, the primary resources are scarce resources, which have environmental and economic value. By constructing environmentally conscious systems, customers and firms in a supply chain can contribute to sustainable practice. This study investigates the evaluation criteria for environmentally conscious supplier selection problem. Supplier evaluation and analysis is carried out for a company engaged in production in the automotive industry. The results indicate that the environmental criteria have considerable effect on the final decision while evaluating the performance of green suppliers in the automotive sector

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