Research on Driver Style Recognition Based on GA-K-Means and PSO-SVM

聚类分析 人工智能 降维 计算机科学 支持向量机 粒子群优化 模式识别(心理学) 朴素贝叶斯分类器 主成分分析 机器学习 轮廓 数据挖掘
作者
Yinghao Chen,Guangqiang Wu,Jian Wu,Hao Wang
出处
期刊:SAE international journal of connected and automated vehicles 卷期号:07 (4): 405-417
标识
DOI:10.4271/12-07-04-0026
摘要

<div>This article aims to address the challenge of recognizing driving styles, a task that has become increasingly complex due to the high dimensionality of driving data. To tackle this problem, a novel method for driver style clustering, which leverages the principal component analysis (PCA) for dimensionality reduction and an improved GA-K-means algorithm for clustering, is proposed. In order to distill low-dimensional features from the original dataset, PCA algorithm is employed for feature extraction and dimensionality reduction. Subsequently, an enhanced GA-K-means algorithm is utilized to cluster the extracted driving features. The incorporation of the genetic algorithm circumvents the issue of the model falling into local optima, thereby facilitating effective driver style recognition. The clustering results are evaluated using the silhouette coefficient, Calinski–Harabasz (CH) index, and GAP value, demonstrating that this method yields more stable classification results compared to traditional clustering methods. In the final stage, a particle swarm optimization-SVM (PSO-SVM) algorithm is applied to classify the clustering results, which are then compared with results from other machine learning algorithms such as decision tree, naive Bayes network, and K-nearest-neighbor (KNN). This comprehensive approach to driver style recognition holds promise for enhancing traffic safety and efficiency. The accurate recognition of driving style can lay the foundation for further optimization of advanced driver assistance systems (ADAS).</div>
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