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OPTIMAL SWITCHING IN ANTI-LOCK BRAKE SYSTEMS OF GROUND VEHICLES BASED ON APPROXIMATE DYNAMIC PROGRAMMING

机译:基于近似动态规划的地面车辆防抱死制动系统最优切换

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Approximate dynamic programming, also known as reinforcement learning, is applied for optimal control of Anti-lock Brake Systems (ABS) in ground vehicles. As an accurate and control oriented model of the brake system, quarter vehicle model with hydraulic brake system is selected. Due to the switching nature of hydraulic brake system of ABS, an optimal switching solution is generated through minimizing a performance index that penalizes the braking distance and forces the vehicle velocity to go to zero, while preventing wheel lock-ups. Towards this objective, a value iteration algorithm is selected for 'learning' the infinite horizon solution. Artificial neural networks, as powerful function approximators, are utilized for approximating the value function. The training is conducted offline using least squares. Once trained, the converged neural network is used for determining optimal decisions for the actuators on the fly. Numerical simulations show that this approach is very promising while having low real-time computational burden, hence, outperforms many existing solutions in the literature.
机译:近似动态编程(也称为强化学习)可用于地面车辆的防抱死制动系统(ABS)的最佳控制。作为具有精确性和控制性的制动系统模型,选择了带液压制动系统的四分之一车辆模型。由于ABS液压制动系统的切换特性,通过使性能指标最小化(该效果指标不利于制动距离并迫使车速降至零,同时防止车轮锁死),可以生成最佳的切换解决方案。为了实现这一目标,选择了一种值迭代算法来“学习”无限地平线解决方案。人工神经网络作为强大的函数逼近器,用于逼近值函数。培训是使用最小二乘法离线进行的。一旦经过训练,融合的神经网络将用于为飞行中的执行器确定最佳决策。数值模拟表明,这种方法在实时计算负担较低的同时非常有前途,因此,其性能优于文献中的许多现有解决方案。

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