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Probabilistic attainability maps: Efficiently predicting driver-specific electric vehicle range

机译:概率可达性图:有效预测驾驶员特定的电动汽车行驶里程

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This paper concerns the efficient computation of a confidence level with which a particular driver will be able to reach a particular destination given the current state of charge of the battery of an electric vehicle. This probability of attainability is simultaneously computed for all destinations in a realistically sized map while taking into account the driver, the environment, on-board auxiliary systems and the vehicle battery system as potential sources of estimation noise. The model uses a feature-based linear regression framework which allows for a computationally efficient implementation capable of providing real-time updates of the resulting probabilistic attainability map. It was deployed on an all-electric Nissan Leaf and evaluated using data from over 140 miles of driving. The system proposed produces results of a quality commensurate with state-of-the-art approaches in terms of prediction accuracy.
机译:本文涉及在给定电动汽车电池当前充电状态的情况下,特定驾驶员将能够到达特定目的地的置信度水平的有效计算。在考虑到驾驶员,环境,车载辅助系统和车辆电池系统作为估计噪声的潜在来源的同时,针对现实中大小的地图中的所有目的地,同时计算可达到性的可能性。该模型使用基于特征的线性回归框架,该框架允许进行计算有效的实现,该实现能够提供所得概率可及性图的实时更新。它被部署在全电动的日产Leaf上,并使用来自140英里以上行驶的数据进行评估。所提出的系统在预测精度方面产生的质量与最新技术相当。

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