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Optimized and meta-optimized neural networks for short-term traffic flow prediction: A genetic approach

机译:用于短期交通流量预测的优化和元优化神经网络:一种遗传方法

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摘要

Short-term forecasting of traffic parameters such as flow and occupancy is an essential element of modern Intelligent Transportation Systems research and practice. Although many different methodologies have been used for short-term predictions, literature suggests neural networks as one of the best alternatives for modeling and predicting traffic parameters. However, because of limited knowledge regarding a network's optimal structure given a specific dataset, researchers have to rely on time consuming and questionably efficient rules-of-thumb when developing them. This paper extends past research by providing an advanced, genetic algorithm based, multilayered structural optimization strategy that can assist both in the proper representation of traffic flow data with temporal and spatial characteristics as well as in the selection of the appropriate neural network structure. Further, it evaluates the performance of the developed network by applying it to both univariate and multivariate traffic flow data from an urban signalized arterial. The results show that the capabilities of a simple static neural network, with genetically optimized step size. momentum and number of hidden units, are very satisfactory when modeling both univariate and multivariate traffic data.
机译:流量和占用率等交通参数的短期预测是现代智能交通系统研究和实践的基本要素。尽管许多不同的方法已用于短期预测,但文献表明神经网络是建模和预测交通参数的最佳替代方法之一。但是,由于在给定特定数据集的情况下对网络最佳结构的了解有限,因此研究人员在开发它们时必须依赖耗时且可疑的有效经验法则。本文通过提供基于高级遗传算法的多层结构优化策略扩展了过去的研究,该策略可以帮助正确表示具有时间和空间特征的交通流数据,以及选择合适的神经网络结构。此外,它通过将发达网络应用于城市信号动脉的单变量和多变量交通流量数据来评估其性能。结果表明,具有遗传优化步长的简单静态神经网络具有强大的功能。在对单变量和多变量交通数据进行建模时,动量和隐藏单位数非常令人满意。

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