基于模糊马尔可夫模型和自回归模型的车速预测方法

Junbo Jing, Dimitar Filev, A. Kurt, E. Ozatay, J. Michelini, Ü. Özgüner
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引用次数: 33

摘要

车速预测可以使各种车辆控制设计受益,特别是在燃油经济性应用方面。本文介绍了一种仅使用最小速度测量信息的车载计算轻型车辆短期速度预测器。预测器概括历史速度数据的潜在模式,从概率的角度进行预测。该方法的新颖之处在于利用模糊建模消除了车辆加速状态定义、分类和预测的分辨率限制。该方法采用自回归(AR)模型捕捉车辆速度数据的短期动态,并通过模糊隶属度将数据划分为多个加速状态。在预测过程中,通过模糊编码将加速度测量值映射到马尔可夫状态,并通过马尔可夫跃迁预测未来的加速度状态。通过模糊状态隶属度相似度选择训练后的AR模型进行确定性速度预测。用车辆的实际城市行驶数据对所开发的预测器进行了测试,并通过对比研究验证了所纳入技术的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle speed prediction using a cooperative method of fuzzy Markov model and auto-regressive model
Vehicle speed prediction can benefit a wide range of vehicle control designs, especially for fuel economy applications. This paper shows a computationally light vehicle short term speed predictor designed for on-board implementation, using minimal information of speed measurement only. The predictor generalizes historical speed data's underlying pattern and predicts from probability aspect. One novelty of the method is the usage of fuzzy modeling to eliminate the resolution limitation in vehicle acceleration state definition, classification, and prediction. The method uses Auto-regressive (AR) model to capture vehicle speed data's short term dynamics, and classifies the data into multiple acceleration states by fuzzy membership. In the prediction process, acceleration measurements are mapped to the Markov states by fuzzy encoding, and future acceleration states are predicted by Markov transition. Deterministic speed prediction is calculated from the trained AR models, which are selected by fuzzy state membership similarity. The developed predictor is tested with a vehicle's real urban driving data, and the effectiveness of the incorporated techniques is verified by a comparison study.
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