J 2026

A Hybrid Big-Data Framework for Tourist and High-Speed Rail Mobility Modelling

ŠAUER, Martin; Vilém PAŘIL; Monika JANDOVÁ; Tomáš PALETA; Martin FARBIAK et al.

Základní údaje

Originální název

A Hybrid Big-Data Framework for Tourist and High-Speed Rail Mobility Modelling

Název česky

A Hybrid Big-Data Framework for Tourist and High-Speed Rail Mobility Modelling

Vydání

Transport Policy, London, Elsevier, 2026, 0967-070X

Další údaje

Jazyk

angličtina

Typ výsledku

Článek v odborném periodiku

Obor

50200 5.2 Economics and Business

Stát vydavatele

Velká Británie a Severní Irsko

Utajení

není předmětem státního či obchodního tajemství

Odkazy

Impakt faktor

Impact factor: 5.300 v roce 2024

Označené pro přenos do RIV

Ne

Organizační jednotka

Ekonomicko-správní fakulta

UT WoS

EID Scopus

Klíčová slova česky

mobile phone data; travel demand estimation; transport planning; shift to rail; GDPR compliance

Klíčová slova anglicky

mobile phone data; travel demand estimation; transport planning; shift to rail; GDPR compliance

Příznaky

Mezinárodní význam, Recenzováno
Změněno: 4. 2. 2026 15:25, Mgr. Alžběta Karolyiová

Anotace

V originále

This paper introduces a novel hybrid methodology to address the critical challenge of accurately forecasting demand for significant infrastructure projects, such as High-Speed Rail (HSR), where traditional estimates often suffer from significant overestimation. The study has three main objectives: (1) to identify and quantify biases in current long-distance transport demand forecasts; (2) to understand how these biases affect the highly variable and unpredictable demand generated by tourists; and (3) to introduce an integrated approach that reduces such biases and improves transport planning by combining large-scale mobile phone signalling data with traditional data sources (e.g., traffic counts, travel surveys). The novelty of the study lies in the integration of behavioural big data into transport modelling and in its ability to capture same-day visitors—a group typically underrepresented in conventional tourism statistics yet highly relevant for long-distance mobility forecasts. Using the planned Prague–Brno HSR corridor in the Czech Republic as a real-world case study, we analyse both the advantages and drawbacks of using signalling phone data for transport planning. This approach is crucial because multi-billion-euro HSR investments depend on accurate forecasts; overestimations risk misallocating vast public funds. Our method provides a more granular understanding of travel dynamics, particularly by capturing the highly volatile and often underreported impact of tourist flows on long-distance travel. Demand is estimated through scenarios to reduce uncertainty, reflecting alternative assumptions about behavioural responses and modal shifts. The analysis estimates a potential annual demand of 4.5 to 10.5 million passengers for the Prague–Brno HSR, a figure significantly lower than official projections. This discrepancy highlights the risk of optimism bias in conventional forecasting. For policymakers, the primary conclusion is the urgent need to institutionalise multi-source, data-driven methods for evidence-based decision-making. By providing a more realistic picture of current demand and revealing nuanced behaviours such as regional differences in the willingness to shift from cars to HSR, this hybrid approach supports fiscally responsible planning and the development of targeted strategies to promote sustainable mobility.

Česky

This paper introduces a novel hybrid methodology to address the critical challenge of accurately forecasting demand for significant infrastructure projects, such as High-Speed Rail (HSR), where traditional estimates often suffer from significant overestimation. The study has three main objectives: (1) to identify and quantify biases in current long-distance transport demand forecasts; (2) to understand how these biases affect the highly variable and unpredictable demand generated by tourists; and (3) to introduce an integrated approach that reduces such biases and improves transport planning by combining large-scale mobile phone signalling data with traditional data sources (e.g., traffic counts, travel surveys). The novelty of the study lies in the integration of behavioural big data into transport modelling and in its ability to capture same-day visitors—a group typically underrepresented in conventional tourism statistics yet highly relevant for long-distance mobility forecasts. Using the planned Prague–Brno HSR corridor in the Czech Republic as a real-world case study, we analyse both the advantages and drawbacks of using signalling phone data for transport planning. This approach is crucial because multi-billion-euro HSR investments depend on accurate forecasts; overestimations risk misallocating vast public funds. Our method provides a more granular understanding of travel dynamics, particularly by capturing the highly volatile and often underreported impact of tourist flows on long-distance travel. Demand is estimated through scenarios to reduce uncertainty, reflecting alternative assumptions about behavioural responses and modal shifts. The analysis estimates a potential annual demand of 4.5 to 10.5 million passengers for the Prague–Brno HSR, a figure significantly lower than official projections. This discrepancy highlights the risk of optimism bias in conventional forecasting. For policymakers, the primary conclusion is the urgent need to institutionalise multi-source, data-driven methods for evidence-based decision-making. By providing a more realistic picture of current demand and revealing nuanced behaviours such as regional differences in the willingness to shift from cars to HSR, this hybrid approach supports fiscally responsible planning and the development of targeted strategies to promote sustainable mobility.

Návaznosti

EF16_026/0008430, projekt VaV
Název: Nová mobilita - vysokorychlostní dopravní systémy a dopravní chování populace