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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Predictive Cruise Control Using Radial Basis Function Network-Based Vehicle Motion Prediction and Chance Constrained Model Predictive Control
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Predictive Cruise Control Using Radial Basis Function Network-Based Vehicle Motion Prediction and Chance Constrained Model Predictive Control

机译:基于径向基函数网络的车辆运动预测和机会约束模型预测控制的巡航预测控制

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摘要

Predicting future motions of surrounding vehicles and driver's intentions are essential to avoid future potential risks. The predicting future motions, however, is very challenging because the future cannot be deterministically known a priori and there are infinitely many possible future trajectories. Prediction becomes far more challenging when trying to foresee distant future. This paper proposes a probabilistic motion prediction algorithm that can accurately compute the likelihood of multiple target lanes and trajectories of surrounding vehicles by using the artificial neural network; more specifically radial base function network (RBFN). The RBFN prediction algorithm estimates the likelihood of each lane being the driver's target lane in categorical distributions and the corresponding future trajectories in parallel. In order to demonstrate the effectiveness of the proposed prediction algorithm, it is applied for the predictive cruise control problem. Chance-constrained model predictive control (CCMPC) is utilized because the chance constraints in CCMPC can handle collision uncertainties associated with future uncertainties from the proposed prediction algorithm. The RBFN-based CCMPC simulation is conducted for several risky cut-in scenarios and compared with the state-of-the-art Interactive Multiple Model (IMM)-based prediction algorithm. The simulation results show that the RBFN-based CCMPC achieves higher collision avoidance success rate than that of the IMM-based CCMPC while using smaller actuator inputs and providing higher passenger comforts. Furthermore, the RBFN-based CCMPC showed high robustness to false braking during near lane-change (lane-keeping) scenarios.
机译:预测周围车辆的未来运动和驾驶员的意图对于避免未来的潜在风险至关重要。但是,预测未来的动作非常具有挑战性,因为无法确定性地先验地了解未来,并且有无限多种可能的未来轨迹。当试图预见遥远的未来时,预测变得更具挑战性。提出了一种概率运动预测算法,该算法可以通过人工神经网络准确地计算出周围车辆的多个目标车道和轨迹的似然性。更具体地说,是径向基函数网络(RBFN)。 RBFN预测算法在分类分布和相应的未来轨迹中并行估计每个车道成为驾驶员目标车道的可能性。为了证明所提出的预测算法的有效性,将其应用于预测巡航控制问题。利用机会约束模型预测控制(CCMPC)是因为CCMPC中的机会约束可以处理所提出的预测算法中与未来不确定性相关的碰撞不确定性。基于RBFN的CCMPC仿真针对几种风险较高的插入场景进行,并与基于最新的交互式多模型(IMM)的预测算法进行了比较。仿真结果表明,基于RBFN的CCMPC与基于IMM的CCMPC相比,实现了更高的防撞成功率,同时使用了较小的执行器输入并提供了更高的乘客舒适度。此外,基于RBFN的CCMPC在接近车道变更(车道保持)场景下显示出对虚假制动的高鲁棒性。

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