We introduce a novel differentiable hybrid traffic simulator, which simulates traffic using a hybrid model of both macroscopic and microscopic models and can be directly integrated into a neural network for traffic control and flow optimization. This is the first differentiable traffic simulator for macroscopic and hybrid models that can compute gradients for traffic states across time steps and inhomogeneous lanes. To compute the gradient flow between two types of traffic models in a hybrid framework, we present a novel intermediate conversion component that bridges the lanes in a differentiable manner as well. We also show that we can use analytical gradients to accelerate the overall process and enhance scalability. Thanks to these gradients, our simulator can provide more efficient and scalable solutions for complex learning and control problems posed in traffic engineering than other existing algorithms. Refer to https://sites.google.com/umd.edu/diff-hybrid-traffic-sim for our project.
翻译:我们引入了一种新型不同的混合交通模拟器,该模拟器使用大型和微型模型的混合模型模拟交通量,可以直接纳入交通控制和流量优化的神经网络,这是宏观和混合模型的第一个可区分的交通模拟器,可以计算穿越时步和不相容的航道的交通状态梯度,在混合框架内计算两种类型的交通模式之间的梯度流动,我们提出了一个新的中间转换组件,以不同的方式连接车道。我们还表明,我们可以使用分析梯度来加速整个过程和提高可缩放性。由于这些梯度,我们的模拟器可以比其他现有的算法为交通工程中出现的复杂学习和控制问题提供更有效和可扩缩的解决办法。参考 https://sites.gogle.com/umd.edu/diff-hybrid-traffic-sim,用于我们的工程。