Showing 6,041 - 6,060 results of 7,336 for search '"On the Road"', query time: 0.06s Refine Results
  1. 6041
  2. 6042

    Effects of Additive Materials on Indirect Tensile Strength and Moisture Sensitivity of Recycled Asphalt Pavement (RAP) by Soz Mohammed Ebrahim, Hardy Kamal Karim

    Published 2019-10-01
    “…Using reclaimed asphalt pavement with additives as part of new road construction has economic and environmental advantages. …”
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    Article
  3. 6043

    Functional Outcome of Osteosynthesis with PHILOS in Elderly Patients: Experience at Tertiary Care Centre by Narendra Singh Kushwaha, Sushil Kumar Saini, Ashutosh Verma, Ravindra Mohan, Atul Kumar Saroj, Arpit Singh, M. C. Prajwal

    Published 2023-01-01
    “…Mode of trauma in elderly patients with severe osteoporosis, fractures usually resulted from low velocity indirect trauma while high velocity trauma like road traffic accident was the cause of these fractures in younger age group. …”
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  4. 6044
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  10. 6050
  11. 6051

    Dynamics of Cropland Non-Agriculturalization in Shaanxi Province of China and Its Attribution Using a Machine Learning Approach by Huiting Yan, Hao Chen, Fei Wang, Linjing Qiu

    Published 2025-01-01
    “…XGBoost-SHAP attribution analysis revealed that among the 15 selected driving factors, precipitation, road network density, rural population, population density, grain yield, registered population, and slope length exerted the most significant influence on CLNA in SP. …”
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    Article
  12. 6052

    Studying the Properties of SBS/Rice Husk Ash-Modified Asphalt Binder and Mixture by Zhen Lu, Aimin Sha, Wentong Wang, Junfeng Gao

    Published 2020-01-01
    “…Sustainable materials in the field of road pavement have become a research direction in recent years. …”
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    Article
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    Information Volume Threshold for Graphical Variable Message Signs Based on Drivers’ Visual Cognition Behavior by Yiping Wu, Zilong Zhao, Fuwei Wu, Jian Rong

    Published 2022-01-01
    “…., elements and displaying the number of roads) of graphical VMS on drivers’ visual cognition characteristics and then determine the threshold number of roads displayed on VMS. …”
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  16. 6056

    PURP: A Scalable System for Predicting Short-Term Urban TrafficFlow Based on License Plate Recognition Data by Shan Zhang, Qinkai Jiang, Hao Li, Bin Cao, Jing Fan

    Published 2024-03-01
    “…Accurate and efficient urban traffic flow prediction can help drivers identify road traffic conditions in real-time, consequently helping them avoid congestion and accidents to a certain extent. …”
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    Article
  17. 6057

    Study on the Dynamic Response of Gravel Soil Low Embankment under a Long-Time Dynamic Loading Based on Model Test by Dapeng Liu, Jing Wang, Feng Du

    Published 2021-01-01
    “…The low embankment is an important technique for road development in subgrade engineering due to its small fill height and applicability to the natural landscape in the oasis desert area of Xinjiang, China. …”
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  18. 6058
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    Threshold Research on Highway Length under Typical Landscape Patterns Based on Drivers’ Physiological Performance by Xia Zhao, Zhonghua Wei, Zhixia Li, Yong Zhang, Xingyu Feng

    Published 2015-01-01
    “…The appropriately landscaped highway scenes may not only help improve road safety and comfort but also help protect ecological environment. …”
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    Article
  20. 6060

    Deep Reinforcement Learning-Based Speed Predictor for Distributionally Robust Eco-Driving by Rajan Chaudhary, Nalin Kumar Sharma, Rahul Kala, Sri Niwas Singh

    Published 2025-01-01
    “…A novel data-driven approach based on Deep Reinforcement Learning (DRL) is developed to predict the future speed trajectory of the leading HDV using simulated speed profiles and road slope information. The DQN-based speed predictor achieves a prediction accuracy of 95.4% and 93.2% in Driving Cycles 1 and 2, respectively. …”
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    Article