LGETSep 25, 2023

Disruption Detection for a Cognitive Digital Supply Chain Twin Using Hybrid Deep Learning

arXiv:2309.14557v131 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

This addresses supply chain resilience for decision-makers, but it is incremental as it combines existing methods in a new application.

The paper tackles disruption detection in supply chains by proposing a hybrid deep learning approach within a cognitive digital twin framework, resulting in a method that demonstrates trade-offs between sensitivity, detection delay, and false alarms.

Purpose: Recent disruptive events, such as COVID-19 and Russia-Ukraine conflict, had a significant impact of global supply chains. Digital supply chain twins have been proposed in order to provide decision makers with an effective and efficient tool to mitigate disruption impact. Methods: This paper introduces a hybrid deep learning approach for disruption detection within a cognitive digital supply chain twin framework to enhance supply chain resilience. The proposed disruption detection module utilises a deep autoencoder neural network combined with a one-class support vector machine algorithm. In addition, long-short term memory neural network models are developed to identify the disrupted echelon and predict time-to-recovery from the disruption effect. Results: The obtained information from the proposed approach will help decision-makers and supply chain practitioners make appropriate decisions aiming at minimizing negative impact of disruptive events based on real-time disruption detection data. The results demonstrate the trade-off between disruption detection model sensitivity, encountered delay in disruption detection, and false alarms. This approach has seldom been used in recent literature addressing this issue.

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