Author
Listed:
- Wei Pu
- Shuang Ma
- Xiangbin Yan
Abstract
With the fierce competition in e-commerce, e-tailers are required to rapid responses to a variety of customised orders with multiple frequencies and strict delivery times. The delay or insufficient supply caused by disruptions might result in lost sales during long-term processes. To address this problem, a two-stage stochastic programming model considering profits, consumer service level (CSL) as well as market priorities is developed to manage long-term disruptions. We analyse multi-period consumer transaction data and formulate geographical relevance (GR) to link each marketplace with historical data in related regions and then prioritise market segments. A GR-based two-stage stochastic programming with multi-period is proposed, which (1) considers both proactive mitigation decisions before disruption and reactive recovery plans after disruption; (2) collaborates three resilience strategies; (3) optimises the e-tailer's profits considering market priorities during long-term disruptions. Using a real case of Chinese e-commerce under the COVID-19 pandemic, it is illustrated (1) the applicability and performance of the proposed GR-based model for multi-period resilience optimisation improving both the CSL and the total profit; (2) the efficiency and robustness of the developed sequential particle swarm optimisation with social structures algorithm. The proposed method could optimise e-tailers' response strategies for managing long-term disruptions in practice.
Suggested Citation
Wei Pu & Shuang Ma & Xiangbin Yan, 2024.
"Geographical relevance-based multi-period optimization for e-commerce supply chain resilience strategies under disruption risks,"
International Journal of Production Research, Taylor & Francis Journals, vol. 62(7), pages 2455-2482, April.
Handle:
RePEc:taf:tprsxx:v:62:y:2024:i:7:p:2455-2482
DOI: 10.1080/00207543.2023.2217937
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