Abstract
Urban transport systems face increasing complexity as freight and passenger flows compete for limited road capacity. While multimodal forecasting methods have progressed, short-term interactions between vehicle classes remain underexplored, particularly in real-world operational settings. This study addresses that gap by examining whether recent freight or passenger volumes are significantly associated with current traffic conditions across modes. Using 6,003 hourly records from Liverpool, UK, we develop an interpretable machine learning framework combining K-means clustering, XGBoost classification, and the DALEX explainability toolkit. Results show that one-hour lagged freight volume significantly improves the classification of current passenger traffic states, while the reverse effect is limited. Global feature importance and local interpretability analyses consistently identify freight volume as the most influential predictor. Partial dependence plots (PDPs) reveal a nonlinear inflexion point, where freight volumes exceeding roughly 500 vehicles per hour in this Liverpool case study are associated with reduced passenger flow. McNemar's test confirms a statistically significant improvement, and robustness checks, including alternative lag structures, interaction terms, and reciprocal models, reinforce the stability of this finding. These insights offer practical value for short-term forecasting, corridor-level coordination, and longer-term multimodal planning. The observed directional asymmetry, wherein freight volumes more reliably predict passenger conditions than the reverse, highlights the potential benefits of incorporating freight data into real-time traffic management systems. More broadly, the study demonstrates how interpretable machine learning can uncover cross-modal dependencies and support the development of more integrated, responsive, and equitable urban mobility systems.
| Originalsprache | Englisch |
|---|---|
| Aufsatznummer | 104927 |
| Fachzeitschrift | Transportation Research Part A: Policy and Practice |
| Volume | 206 |
| Frühes Online-Datum | 14 Feb. 2026 |
| DOIs | |
| Publikationsstatus | Veröffentlicht - Apr. 2026 |
UN SDGs
Dieser Output leistet einen Beitrag zu folgendem(n) Ziel(en) für nachhaltige Entwicklung
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SDG 11 – Nachhaltige Städte und Gemeinschaften
Wissenschaftszweige
- 102003 Bildverarbeitung
- 102002 Augmented Reality
- 102001 Artificial Intelligence
- 102029 Praktische Informatik
- 211911 Nachhaltige Technologien
- 102021 Pervasive Computing
- 303 Gesundheitswissenschaften
- 303008 Ergonomie
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- 102026 Virtual Reality
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- 102024 Usability Research
- 102013 Human-Computer Interaction
- 202034 Regelungstechnik
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- 102 Informatik
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- 203 Maschinenbau
- 202040 Übertragungstechnik
- 102019 Machine Learning
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- 202 Elektrotechnik, Elektronik, Informationstechnik
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- 501 Psychologie
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JKU-Schwerpunkte
- Sustainable Development: Responsible Technologies and Management
- Digital Transformation
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