Synonyme wurden verwendet für: Lernen maschinelles Lernen
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1–20 von 324 Ergebnissen
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    Α New Method to Generate the Initial Population of the Bees Algorithm for Robot Path Planning in a Static Environment

    Kashkash, Mariam / Haj Darwish, Ahmed / Joukhadar, Abdulkader | Springer Verlag | 2022
    Schlagwörter: Machine Learning

    Why do people take e-scooter trips? Insights on temporal and spatial usage patterns of detailed trip data

    Shah, Nitesh R. / Guo, Jing / Han, Lee D. et al. | Elsevier | 2023
    Schlagwörter: Unsupervised machine learning

    What’s eating public transit in the United States? Reasons for declining transit ridership in the 2010s

    Lee, Yongsung / Lee, Bumsoo | Elsevier | 2022
    Schlagwörter: Machine learning

    What Lies behind Idle Connection Time in Fast-Charging Public Stations: Evidence from Changshu, China

    Zhou, Xizhen / Ding, Xueqi / Ji, Yanjie | ASCE | 2024
    Schlagwörter: Machine learning

    Voronoi Diagram-Based Approach to Identify Maritime Corridors

    Masmoudi, Mariem / Chakhar, Salem / Chabchoub, Habib | Springer Verlag | 2023
    Schlagwörter: Machine Learning

    Virtual-Reality-Simulation (VRS) (Teilprojekt 7). BMBF-Verbundprojekt DeepC

    Kühnapfel, Uwe / Röllich, Thorsten / Bretthauer, Georg | Tema Archiv | 2005
    Schlagwörter: maschinelles Lernen

    Virtual Interactive Planning Model of Landscape Architecture in Settlement Area Based on Situational Awareness

    Diao, Jun-qin / Cui, Xue-yong | Springer Verlag | 2020
    Schlagwörter: Machine Learning

    Video-Based Abnormal Driving Behavior Detection and Risk Control Using Machine Learning

    Sai Prasad, Kashi / Pasupathy, S. | Springer Verlag | 2022
    Schlagwörter: Machine learning

    Vibration-based Damage Detection in Bridges via Machine Learning

    Sun, Shuang / Liang, Li / Li, Ming et al. | Springer Verlag | 2018
    Schlagwörter: machine learning

      Vibration-based Damage Detection in Bridges via Machine Learning

      Sun, Shuang / Liang, Li / Li, Ming et al. | Online Contents | 2018
      Schlagwörter: machine learning

    Vehicular Networks and Autonomous Driving Cars

    Seon Hong, Choong / Khan, Latif U. / Chen, Mingzhe et al. | Springer Verlag | 2021
    Schlagwörter: Machine Learning

    Vehicle Trajectory Outlier Detection for Road Safety

    AlShanbari, Hanan S. / Al-Qadi, Heba T. / Al-Hassani, Ashwaq M. et al. | Springer Verlag | 2021
    Schlagwörter: Machine learning

    Vehicle Over Speed Detection System

    Ganesan, K. / Manikandan, N. S. / Sugumaran, Vijayan | Springer Verlag | 2023
    Schlagwörter: Machine Learning

    Vehicle Entry Management System Using Image Processing

    Vallikannu, R. / kanth, Krishna / Kumar, L. SaiPavan et al. | Springer Verlag | 2022
    Schlagwörter: Machine Learning

    UUV teams, control from a biological perspective

    McDowell, P. / Chen, J. / Bourgeois, B. | Tema Archiv | 2002
    Schlagwörter: Lernen , maschinelles Lernen

    Using machine learning for direct demand modeling of ridesourcing services in Chicago

    Yan, Xiang / Liu, Xinyu / Zhao, Xilei | Elsevier | 2020
    Schlagwörter: Machine learning

    Urban traffic control based on learning agents

    Gregoire, P.L. / Desjardins, C. / Laumonier, J. et al. | Tema Archiv | 2007
    Schlagwörter: Lernen , maschinelles Lernen

    Universiti Malaysia Pahang Autonomous Shuttle Development: Lane Classification Analysis Using Convolutional Neural Network (CNN)

    Yee, Lee Yin / Zakaria, Muhammad Aizzat | Springer Verlag | 2022
    Schlagwörter: Machine learning

    Understanding transit ridership in an equity context through a comparison of statistical and machine learning algorithms

    Yousefzadeh Barri, Elnaz / Farber, Steven / Jahanshahi, Hadi et al. | Elsevier | 2022
    Schlagwörter: Machine learning

    Understanding market competition between transportation network companies using big data

    Huang, Guan / Liang, Yuebing / Zhao, Zhan | Elsevier | 2023
    Schlagwörter: Interpretable machine learning