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首页> 外文期刊>Arabian Journal for Science and Engineering >Analysis of Driver Performance Using Hybrid ofWeighted Ensemble Learning Technique and Evolutionary Algorithms
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Analysis of Driver Performance Using Hybrid ofWeighted Ensemble Learning Technique and Evolutionary Algorithms

机译:使用重载综合学习技术和进化算法的混合驾驶员性能分析

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摘要

Having a full situational awarenesswhile driving is one of themost important perceptions for safe driving which can be reduced by various factors such as in-vehicle infotainment, distraction, or mental load leading. Machine learning methods are being used to optimize for the identification of these inhibiting factors. To do so, three types of data were used: biographic features, physiological signals and vehicle information of 68 participants are being utilized to identify the normal and loaded behaviors. This research, therefore, concentrates on driving behavior analysis using a new automated hybrid framework for detection of performance degradation of drivers due to distraction. The proposed model contains a hybrid of extreme learning neural network, as an ensemble learning method and evolutionary algorithms, to determine the weights of classifiers, for combining several traditional classifiers. The obtained results showcase that the proposed model yields outstanding performance than the other applied methods.
机译:拥有全面的态势方面驾驶是安全驾驶的重要感知之一,可以通过诸如车载信息娱乐,分心或精神载荷的各种因素减少。机器学习方法用于优化这些抑制因子的鉴定。为此,使用了三种类型的数据:正在利用68名参与者的传记特征,生理信号和车辆信息来识别正常和加载的行为。因此,本研究专注于使用新的自动混合框架进行驾驶行为分析,以检测由于分散注意力而导致驱动器的性能下降。所提出的模型包含一个极端学习神经网络的混合动力,作为集合学习方法和进化算法,以确定分类器的权重,用于组合几种传统分类器。所获得的结果展示了所提出的模型比其他应用方法产生出色的性能。

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