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SELF-LEARNING BASED MECHANISM FOR VEHICLE UTILIZATION AND OPTIMIZATION

机译:基于自学习的车辆利用机制和优化

摘要

There is no mechanism for vehicle utilization and optimization through continuous and incremental planning which ensures that transportation plans are based on real-time conditions. The present invention discloses systems and methods for vehicle utilization and optimization based on self-learning mechanism. A machine learning model for dynamic association of users to vehicles is provided that learns previously clubbed patterns of users with their corresponding locations. The learnt previously clubbed patterns are utilized for determining association between previously clubbed locations which is further utilized to obtain an optimal set of locations. The users are dynamically associated to vehicles allocated for the obtained optimal set of locations by honoring one or more social and vehicle constraints. The proposed system has self-learning capability which ensures effective vehicle utilization and optimization in real time.
机译:通过连续和增量规划没有车辆利用和优化的机制,确保运输计划基于实时条件。 本发明公开了基于自学习机制的车辆利用和优化的系统和方法。 提供了一种用于车辆动态通信的机器学习模型,用于学习先前使用相应位置的用户的俱乐部模式。 所得学习的先前杆状杆模式用于确定先前俱乐部地点之间的关联,该位置进一步利用以获得最佳位置集合。 用户通过纪念一个或多个社交和车辆限制来动态地与分配的最佳位置集的车辆相关联。 所提出的系统具有自学能力,可确保实时使用有效的车辆利用率和优化。

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