Forecasting Automotive Supply Chain Shortfalls with Heterogeneous Time Series
Bach Viet Do, Xingyu Li, Chaoye Pan

TL;DR
This paper presents a novel deep learning approach combining attention mechanisms and survival analysis to forecast supply chain disruptions in the automotive industry, demonstrating high accuracy and interpretability.
Contribution
It introduces a new methodology integrating attention-based neural networks with survival analysis for heterogeneous time series forecasting in supply chains.
Findings
Achieved 0.85 precision and 0.8 recall in disruption prediction
Successfully modeled over 500,000 heterogeneous time series
Provided interpretability using SHAP for actionable insights
Abstract
Operational disruptions can significantly impact companies performance. Ford, with its 37 plants globally, uses 17 billion parts annually to manufacture six million cars and trucks. With up to ten tiers of suppliers between the company and raw materials, any extended disruption in this supply chain can cause substantial financial losses. Therefore, the ability to forecast and identify such disruptions early is crucial for maintaining seamless operations. In this study, we demonstrate how we construct a dataset consisting of many multivariate time series to forecast first-tier supply chain disruptions, utilizing features related to capacity, inventory, utilization, and processing, as outlined in the classical Factory Physics framework. This dataset is technically challenging due to its vast scale of over five hundred thousand time series. Furthermore, these time series, while exhibiting…
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Taxonomy
TopicsQuality and Supply Management · Management and Optimization Techniques
MethodsSoftmax · Attention Is All You Need · 7 Fastest Ways to Call American Airlines Reservations Number (USA Guide) · Shapley Additive Explanations
