Chapter 6: Identification of key performance indicators in the implementation of the green supply chain based on the Internet of Things

Authors

  • Paria Samadi-Parviznejad Research expert of Academic Center for Education, Culture and Research (ACECR), Iran, Tabriz

Keywords:

Green supply chain, Smart supply chain, Internet of Things, Supply chain based on the Internet of Things

Abstract

Green supply chain is a practical concept that in today's era, taking into account environmental strategies, has an important place in improving the capabilities of the supply chain. better the goals of the supply chain process, their study and investigation in this field is of great importance. Therefore, in this chapter of the book, an attempt has been made to examine the effects of smart technologies such as the Internet of Things in supply chains as the beating heart of business. How they affect green and environmentally friendly processes should be investigated. The cause and effect relationships of all actors in this arena are presented in this analytical framework. Studying these relationships helps to understand this concept and optimize green supply chains based on the Internet of Things.

Downloads

Download data is not yet available.

References

Bathaee, M., Nozari, H., & Szmelter-Jarosz, A. (2023). Designing a new location-allocation and routing model with simultaneous pick-up and delivery in a closed-loop supply chain network under uncertainty. Logistics, 7(1), 3.

Bayanati, M. (2019). Identifying and analyzing dimensions and components and indicators affecting technology transfer with an emphasis on digital transformation. International Scientific Hub, 36-48.

Bayanati, M. (2019). Theories and models of product innovation and organizational innovation. International Scientific Hub, 11-21.

Fallah, M., Sadeghi, M. E., & Nozari, H. (2021). Quantitative analysis of the applied parts of Internet of Things technology in Iran: an opportunity for economic leapfrogging through technological development. Science and technology policy Letters, 11(4), 45-61.

Faridi, S., Madanchi Zaj, M., Daneshvar, A., Shahverdiani, S., & Rahnamay Roodposhti, F. (2023). Portfolio rebalancing based on a combined method of ensemble machine learning and genetic algorithm. Journal of Financial Reporting and Accounting, 21(1), 105-125.

Ghahremani-Nahr, J., Nozari, H., & Bathaee, M. (2021). Robust box Approach for blood supply chain network design under uncertainty: hybrid moth-flame optimization and genetic algorithm. International Journal of Innovation in Engineering, 1(2), 40-62.

Khaje Zadeh, S., Shahverdiani, S., Daneshvar, A., & Madanchi Zaj, M. (2021). Predicting the optimal stock portfolio approach of meta-heuristic algorithm and Markov decision process. Journal of decisions and operations research, 5(4), 426-445.

Lotfi, F. H. Z., Najafi, S. E., & Nozari, H. (Eds.). (2016). Data envelopment analysis and effective performance assessment. IGI Global.

Najafi, R., Fallahshams, M. F., & Madanchi Zaj, M. (2018). Introduction of Supervision Pattern on financial Institution in Iran Capital Market with Risk-Based Approach. Journal of Securities Exchange, 11(43), 23-72.

Najafi, S. E., Nozari, H., & Edalatpanah, S. A. (2022). Artificial Intelligence of Things (AIoT) and Industry 4.0–Based Supply Chain (FMCG Industry). A Roadmap for Enabling Industry 4.0 by Artificial Intelligence, 31-41.

Nozari, H., Sadeghi, M. E., & Najafi, S. E. (2022). Quantitative Analysis of Implementation Challenges of IoT-Based Digital Supply Chain (Supply Chain 0/4). arXiv preprint arXiv:2206.12277.

Published

2023-08-07

How to Cite

Samadi-Parviznejad, P. (2023). Chapter 6: Identification of key performance indicators in the implementation of the green supply chain based on the Internet of Things. International Scientific Hub, 56–70. Retrieved from https://books.iscihub.com/index.php/ISCIHB/article/view/33

Issue

Section

Chapter