Knowledge Agora



Scientific Article details

Title Insights into the performance of green supply chain in the Chinese semiconductor industry
ID_Doc 67434
Authors Shahzad, F; Ben Zaied, Y; Shahzad, MA; Mahmood, F
Title Insights into the performance of green supply chain in the Chinese semiconductor industry
Year 2024
Published
DOI 10.1016/j.ijpe.2024.109286
Abstract To achieve the global carbon neutrality goal by 2050, businesses are urged to take the lead in adopting sustainable practices. Recently, there has been a growing interest among both academics and practitioners in utilizing artificial intelligence (AI) for digital transformation. However, measuring the impact of digital transformation on achieving carbon neutrality goals is still in its infancy, particularly in the context of the semiconductor industry. Therefore, this study aims to explore the nexus between AI capabilities, digital transformation, and carbon neutrality in enhancing green supply chain performance. A partial least squares structural equation modeling, bootstrapping, and importance -performance map analysis were employed to test the proposed research model. The data was obtained through a structured questionnaire from 426 respondents from semiconductor firms in China. The results revealed that AI capabilities positively impact the digital transformation of Chinese semiconductor firms. Furthermore, the findings demonstrated that digitally transformed firms are better equipped to achieve carbon neutrality objectives. Lastly, the study found a positive correlation between carbon neutrality and the overall performance of green supply chains in semiconductor manufacturing firms. These results serve as a valuable resource for logistics and supply chain managers, providing insights into how AI capabilities can be harnessed to enhance the performance of green supply chains.
Author Keywords Artificial intelligence capabilities; Digital transformation; Carbon neutrality; Supply chain; Performance; Semiconductor firms
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:001248683300001
WoS Category Engineering, Industrial; Engineering, Manufacturing; Operations Research & Management Science
Research Area Engineering; Operations Research & Management Science
PDF
Similar atricles
Scroll