FrugalLight:利用深度强化学习与模型压缩、蒸馏和领域知识实现对称感知循环异构交叉口控制

Sachin Kumar Chauhan, Rijurekha Sen
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摘要

发展中国家需要更好地管理因快速城市化而快速增长的交通流量。否则,日益严重的交通拥堵将增加因鲁莽驾驶导致的死亡人数,并使新德里等城市的汽车尾气排放和空气污染居高不下。然而,发达国家最先进的交通信号控制方法需要使用昂贵的传感、计算和通信资源。本文通过对 FrugalLight(FL)的设计和评估,探讨了在资源有限的情况下,控制算法能走多远。我们还利用低成本嵌入式设备上的高效技术,采集并处理了印度新德里一个繁忙十字路口的真实交通数据集。该数据集 ( https://delhi-trafficdensity-dataset.github.io ) 包含 40 天内该十字路口所有通道的交通密度信息,时间粒度为每秒一次测量。FrugalLight ( https://github.com/sachin-iitd/FrugalLight ) 在新德里收集的交通数据集和纽约的另一个开源交通数据集上进行了评估。FrugalLight 的性能与最先进的基于卷积神经网络(CNN)的传感算法和基于深度强化学习(DRL)的控制算法不相上下,而资源利用率却低了一个数量级。我们将知识提炼和基于领域知识的 DRL 模型压缩精心结合起来,进一步探索改进方法,并采用模型诊断元学习技术,以快速适应新交叉路口的交通状况。因此,收集到的真实数据集和 FrugalLight 为基于资源效率 RL 的交叉路口控制设计提供了机会,供 ML 研究界使用,其中控制器应具有有限的碳足迹。即使在资源匮乏的地区,计算和通信基础设施有限,这种智能、绿色的交叉口控制器也能帮助减少交通拥堵和相关的车辆排放。这是实现联合国可持续发展目标(SDG)中可持续城市和社区以及气候行动这两项目标的关键一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FrugalLight : Symmetry-Aware Cyclic Heterogeneous Intersection Control using Deep Reinforcement Learning with Model Compression, Distillation and Domain Knowledge
Developing countries need to better manage fast increasing traffic flows, owing to rapid urbanization. Else, increasing traffic congestion would increase fatalities due to reckless driving, as well as keep vehicular emissions and air pollution critically high in cities like New Delhi. State-of-the-art traffic signal control methods in developed countries, however, use expensive sensing, computation and communication resources. How far can control algorithms go, under resource constraints, is explored through the design and evaluation of FrugalLight (FL) in this paper. We also captured and processed a real traffic dataset at a busy intersection in New Delhi, India, using efficient techniques on low cost embedded devices. This dataset ( https://delhi-trafficdensity-dataset.github.io ) contains traffic density information at fine time granularity of one measurement every second, from all approaches of the intersection for 40 days. FrugalLight ( https://github.com/sachin-iitd/FrugalLight ) is evaluated on the collected traffic dataset from New Delhi and another open source traffic dataset from New York. FrugalLight matches the performance of state-of-the-art Convolutional Neural Network (CNN) based sensing and Deep Reinforcement Learning (DRL) based control algorithms, while utilizing resources less by an order of magnitude. We further explore improvements using a careful combination of knowledge distillation and domain knowledge based DRL model compression, with employing Model-Agnostic Meta-Learning to quickly adapt to traffic at new intersections. The collected real dataset and FrugalLight therefore opens up opportunities for resource efficient RL based intersection control design for the ML research community, where the controller should have limited carbon footprint. Such intelligent, green, intersection controllers can help reduce traffic congestion and associated vehicular emissions, even if compute and communication infrastructure is limited in low resource regions. This is a critical step towards achieving two of the United Nations Sustainable Development Goals (SDG), namely sustainable cities and communities and climate action.
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