首页> 外文期刊>Neural computing & applications >Fuzzy curvilinear path optimization using fuzzy regression analysis for mid vehicle collision detection and avoidance system analyzed on NGSIM I-80 dataset (real-road scenarios)
【24h】

Fuzzy curvilinear path optimization using fuzzy regression analysis for mid vehicle collision detection and avoidance system analyzed on NGSIM I-80 dataset (real-road scenarios)

机译:基于车辆I-80数据集的中车碰撞检测和避税系统模糊曲线路径优化,分析了NGSIM I-80数据集(实路方案)

获取原文
获取原文并翻译 | 示例
       

摘要

The majority of the prevailing collision detection and avoidance systems render evasive maneuvers for averting front and rear vehicle collisions. This paper introduces a mid vehicle collision detection and avoidance system with a constraint-free condition that produces mid vehicle maneuvers, particularly when jammed between the front and rear vehicles. Accordingly, three novel path estimation models based on crisp, fuzzy and fuzzy regression logic are blended to formulate a mid (host) vehicle collision detection and avoidance system. At the onset, the crisp model fits an offset-based curvilinear path for the mid vehicle to avoid edge collisions. The realized crisp model is later fuzzified to address more antecedents and accordingly deliver consequents for enhancing path estimation. Finally, the fuzzified model is regressed to obtain a good fitness for real-road conditions. The fused fuzzy regression renders an approximate version of the actual road strategy to obtain collision-free trajectories. This concept is later intrinsically extended to parallel parking in reverse direction. Simulation studies using coefficient of determination (R2) and mean square error on the field, real (next generation simulation-NGSIM) dataset reveals the goodness and the path closeness of the proposed system rendered by the novelly blended models tuned at each observation using the optimum h-uncertain factor. Also, relative mean square error analysis with state-of-art CDAS reveals the superiority of MCDAS, thereby making it amicable for real-road scenarios.
机译:大多数普遍的碰撞检测和避免系统呈现出避免前车和后车碰撞的避免行动。本文介绍了一个带有无限制条件的中车碰撞检测和避免系统,可产生中间车辆机动,特别是当在前后车辆之间卡住时。因此,混合了基于清​​晰,模糊和模糊回归逻辑的三种新的路径估计模型,以制定中间(主机)车辆碰撞检测和避免系统。在开始时,清晰模型适合用于中间的基于偏移的曲线路径,以避免边缘碰撞。实现的清晰模型后来是模糊的,以解决更多的前书,并因此提供用于增强路径估计的后果。最后,将模糊化模型回归以获得实际条件的良好健身。融合模糊回归呈现出实际道路战略的近似版本,以获得无碰撞轨迹。此概念后来延伸到相反的平行停车。使用确定系数(R2)和均方误差对现场的仿真研究,Real(下一代仿真-NGSIM)数据集显示所提出的系统的良好和路径近的近距离使用最佳观察在每个观察中调整的新型混合模型所呈现的H-不确定因素。此外,具有最先进的CDA的相对均方误差分析揭示了MCDA的优越性,从而使其可用于实际路景。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号