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Results for "Mobility Data"

Short-Term Traffic Forecasting Using High-Resolution Traffic Data

arXiv ·

Researchers developed a data-driven toolkit for short-term traffic forecasting using high-resolution traffic data from urban road sensors. The method models forecasting as a matrix completion problem, mapping inputs to a higher-dimensional space using kernels and adaptive boosting. Validated using real-world data from Abu Dhabi, UAE, the method outperforms state-of-the-art algorithms.

Interpretable Crisis Behavior Analysis Using Mobility and Social Media Data

arXiv ·

This paper introduces an interpretable pipeline that integrates mobility and social media data to analyze human behavior during crises. The framework was evaluated through two case studies, including a longitudinal analysis of UAE COVID-19 behavior from March 2020 to December 2021. The pipeline aligns heterogeneous daily signals, transforms them into binary behavioral states, applies Formal Concept Analysis (FCA) to extract co-occurrence structures, and mines association rules. Results demonstrate clear cross-domain behavioral structures in crises, yielding both scientifically credible and policy-actionable intelligence. Why it matters: This work provides a novel methodological approach for developing actionable crisis management strategies by fusing multimodal data, directly applicable to public health and emergency response in the UAE and the broader region.

Managing and Analyzing Big Traffic Data — An Uncertain Time Series Approach

MBZUAI ·

This article discusses the application of uncertain time series (UTS) approach to manage and analyze big traffic data for high-resolution vehicular transportation services. The study addresses challenges such as data sparseness, decision-making among multiple UTSs, and future forecasting with spatio-temporal correlations. Jilin Hui, previously a Research Associate at the Inception Institute of Artificial Intelligence (UAE), is applying this approach to solve problems related to increased congestion, greenhouse gas emissions, and reduced air quality in urban environments. Why it matters: The application of AI techniques to traffic management could significantly improve urban mobility and environmental sustainability in the GCC region and beyond.

Nonlinear Traffic Prediction as a Matrix Completion Problem with Ensemble Learning

arXiv ·

The paper introduces a novel method for short-term, high-resolution traffic prediction, modeling it as a matrix completion problem solved via block-coordinate descent. An ensemble learning approach is used to capture periodic patterns and reduce training error. The method is validated using both simulated and real-world traffic data from Abu Dhabi, demonstrating superior performance compared to other algorithms.

GITEX Africa 2026: How Data, Energy, and Sustainable Innovation Are Shaping Mobility Across Continent - Morocco World News

GITEX ·

GITEX Africa 2024 highlighted data utilization, energy solutions, and sustainable innovations as key forces reshaping mobility across the African continent. Discussions emphasized leveraging data analytics for smart transportation systems and optimizing energy consumption in vehicles. The event also showcased advancements in electric vehicles and renewable energy integration for sustainable mobility solutions. Why it matters: The focus on data-driven and sustainable mobility solutions at GITEX Africa 2024 underscores the region's commitment to leveraging technology for addressing transportation challenges and promoting environmental sustainability.

Unlocking coronavirus' secrets through cellphone data and social media

KAUST ·

A KAUST research team is using cellphone mobility data, Google searches, and social media to model and predict COVID-19 spread. The models aim to forecast cases in the coming weeks and inform resource allocation, including hospital beds and medical staff. The team is using aggregated and anonymized data from cellphone companies to respect people's privacy. Why it matters: Integrating real-time digital data with epidemiological modeling can improve the speed and effectiveness of public health responses in the region and globally.