Title of article :
Green Supply Chain Risk Network Management and Performance Analysis: Bayesian Belief Network Modeling
Author/Authors :
Shakeri, Mahdi Faculty of Economics and Management - Semnan University, Semnan, Iran , Zarei, Azim Faculty of Economics and Management - Semnan University, Semnan, Iran , Azar, Adel Faculty of Management and Economics - Tarbiat Modares University, Tehran, Iran , Maleki Minbash Razgah, Morteza Faculty of Economics and Management - Semnan University, Semnan, Iran
Abstract :
With the increase in environmental awareness, competitions and government policies,
implementation of green supply chain management activities to sustain production and conserve
resources is becoming more necessary for different organizations. However, it is difficult to
successfully implement green supply chain (GSC) activities because of the risks involved. These
risks alongside their resources disrupt the normal functioning of the GSC and affect its
environmental and economic performance. The pharmaceutical industry in particular, is crucial to
providing life-saving products and services to the society. The products and services provided in
this industry, have several impacts on the environment in different ways. These include expired or
unused medicines, inappropriate distribution by pharmacies or drug companies, disposal of surplus
medicines in household sewage and improper disposal of pills or capsules by patients. This study
represents a GSC risk network model that considers the interrelationships between risks in order
to achieve an optimal level of performance measures defined in the supply chain by Bayesian Belief
Networks (BBN). The model is empirically implemented through a case study conducted in Imam
Reza hospital of Mashhad medicine supply chain involving structured and semi-structured
interviews and workshop sessions with experts. This work uses a literature review and a causal
map BBN approach in finalizing the risks and also uses the BBN inference system and scenario
analysis for prioritization and analysis of the risks through the network under probability
conditions. According to the findings, inefficient logistics network design, supplier quality issues
and green raw material supply disruption are highly prioritized.
Keywords :
Green supply chain , Bayesian belief network model , Medicine supply chain risks , Interacting risks , Supply chain performance
Journal title :
Environmental Energy and Economic Research (EEER)