车辆跟踪系统的时间分布非凸优化支持向量机

IF 2.1 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Canadian Journal of Electrical and Computer Engineering Pub Date : 2023-06-08 DOI:10.1109/ICJECE.2023.3252088
R. Selvakumar;K. Venkatalakshmi
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引用次数: 0

摘要

本文提出了一种用于弯道车辆主动转向稳定性的非凸优化支持向量机算法。最初,我们考虑了弯道几何公式,并为NCVX OSVM设计了一个时间分布(TD)模型,以计算10 m/s时的转向角0°–180°,从而在最高弯道进入速度下跟随主动导航。拟议的TD NCVX OSVM与三个模块互连。在第一个模块中,制定了NCVX成本函数和优化SVM,以实现平稳转向稳定性。第二个模块是基于使用朴素贝叶斯概率分类器(NBPC)来提高更快的训练时间(IFTT)。第三个模块使用优化的非凸(NCVX)成本函数来减少误差现象。这三个模块的性能通过来自车载传感器的100个数据点进行评估。此外,它在弯道(开始、继续、退出)条件下进行预处理。通过在FPGA Zynq 7000处理器上的实验学习和python脚本编程,证明了TD-NCVX OSVM设计的决定性。经验计算的准确率为98.36%。此外,当车辆转弯速度大于30mm/h时,所提出的设计预测了弯曲转向的可接受上限。
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Time-Distributed Non-Convex Optimized Support Vector Machine for Vehicular Tracking Systems
This article presents a non-convex optimized support vector machine (NCVX OSVM) algorithm for active steering stability of vehicles on a curved road. Initially, we considered a curved road geometrics formulation and designed a time-distributed (TD) model for NCVX OSVM to compute the steering angle 0°–180° at 10 m/s to follow active navigation at the highest curve entry speed. The proposed TD NCVX OSVM is interconnected with three modules. In the first module, formulated NCVX cost functions and Optimized SVM for smooth steering stability. The second module is based on improving faster training time (IFTT) by using the Naive Bayes probabilistic classifier (NBPC). The third module uses an optimized non-convex (NCVX) cost function to reduce the error phenomenon. The performance of these three modules is evaluated by several 100 data points from vehicle onboard sensors. Further, it is pre-processed in the curved road (start, continue, exit) conditions. The decisive of TD-NCVX OSVM design is demonstrated by using experimental learning on FPGA Zynq 7000 processor and programmed with python script. The empirical calculation shows an accuracy of 98.36%. Furthermore, the proposed design predicts an acceptable upper limit for curved steering whenever the vehicle turning speed is greater than 30 mi/h.
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