Estimating energy consumption of a PHEV using vehicle and on-board navigation data

A. Ourabah, B. Quost, A. Gayed, T. Denoeux
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引用次数: 5

Abstract

This paper presents a novel approach for predicting the energy consumption of a plug-in hybrid electric vehicle (PHEV). We propose to estimate energy consumption strategy from data via regression applied to trip recordings. Descriptors of the trip elements are obtained from both recordings and statistics provided by a GPS navigation system. Trips are then split into elementary units corresponding to an homogeneous driving context. For each trip element, the optimal energy consumption strategy is computed via (expensive) dynamic programming simulations. Here, data analysis is used so as to identify descriptors of this trip element that are relevant to predict the energy consumption. Then, a polynomial model is fit to the data so as to estimate, for each new trip element, the optimal energy consumption strategy from the expected driving condition, rather than using dynamic programming. Our approach distinguishes itself by the fact that road context, driver style, road slope and auxiliary electrical power are taken into account to estimate the energy consumption of a PHEV. The accuracy of the prediction process is evaluated over test data, and demonstrates the interest of our approach in predicting energy consumption.
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利用车辆和车载导航数据估算插电式混合动力汽车的能耗
提出了一种预测插电式混合动力汽车(PHEV)能耗的新方法。我们建议通过应用于旅行记录的回归来估计数据的能耗策略。行程要素的描述符是从GPS导航系统提供的记录和统计数据中获得的。然后将行程拆分为与同构驾驶环境相对应的基本单元。对于每个行程单元,通过(昂贵的)动态规划仿真计算出最优的能耗策略。在这里,使用数据分析来识别与预测能耗相关的该行程元素的描述符。然后,对数据拟合多项式模型,根据预期驾驶状态估计每一个新的出行要素的最优能耗策略,而不是使用动态规划。我们的方法的区别在于考虑了道路环境、驾驶员风格、道路坡度和辅助电力来估计插电式混合动力汽车的能耗。通过测试数据评估了预测过程的准确性,并证明了我们的方法在预测能耗方面的兴趣。
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