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An automated signalized junction controller that learns strategies from a human expert

机译:自动化的信号连接控制器,可向人类专家学习策略

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An automated signalized junction control system that can learn strategies from a human expert has been developed. This system applies machine learning techniques based on logistic regression and neural networks to affect a classification of state space using evidence data generated when a human expert controls a simulated junction.The state space is constructed from a series of bids from agents, which monitor regions of the road network. This builds on earlier work which has developed the High Bid auctioning agent system to control signalized junctions using localization probe data. For reference the performance of the machine learning signal control strategies are compared to that of High Bid and the MOVA system, which uses inductive loop detectors.Performance is evaluated using simulation experiments on two networks. One is an isolated T-junction and the other is a two junction network modelled on the High Road area of Southampton, UK. The experimental results indicate that machine learning junction control strategies trained by a human expert can outperform High Bid and MOVA both in terms of minimizing average delay and maximizing equitability; where the variance of the distribution over journey times is taken as a quantitative measure of equitability. Further experimental tests indicate that the machine learning control strategies are robust to variation in the positioning accuracy of localization probes and to the fraction of vehicles equipped with probes.
机译:已经开发了一种可以向人类专家学习策略的自动化信号交叉口控制系统。该系统运用基于逻辑回归和神经网络的机器学习技术,利用人类专家控制模拟结点时产生的证据数据来影响状态空间的分类。状态空间是由来自代理商的一系列投标构成的,这些投标监视着区域的区域。道路网。这是在早期工作的基础上进行的,该工作开发了High Bid拍卖代理系统,可以使用定位探针数据来控制信号化的路口。作为参考,将机器学习信号控制策略的性能与High Bid和使用感应环路检测器的MOVA系统的性能进行了比较,并通过两个网络上的仿真实验评估了性能。一个是隔离的T型结,另一个是在英国南安普敦的高路地区建模的两个结网络。实验结果表明,在最小化平均延迟和最大化公平性方面,由人类专家训练的机器学习结点控制策略可以胜过High Bid和MOVA。其中分布随旅行时间的变化被视为对公平性的定量度量。进一步的实验测试表明,机器学习控制策略对于定位探针的定位精度的变化以及配备有探针的车辆的分数具有鲁棒性。

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