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Control method of urban intelligent parking guidance system based on Internet of Things

机译:基于事物互联网城市智能停车指导系统的控制方法

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摘要

With the rapid development of the economy, people's living standards continue to improve, which has exacerbated the increase in urban motor vehicles. The increase in the number of cars has facilitated people's travel and promoted economic growth. However, with the continuous increase in the number of motor vehicles in XX, the problem of difficult parking is becoming more and more dangerous. In order to find a more effective, convenient and accurate parking space prediction effect, this article uses IoT technology to model the roads and main parking lots around XX stations, and uses adaptive genetic algorithms to induce drivers and simulate them. The optimal path and the shortest time for the driver to reach each parking lot from the current location are obtained. In this study, a wavelet neural network model is proposed. The data of the B underground parking lot is used to train and predict the model, and it is found that the prediction accuracy is high. The particle swarm optimization algorithm was used to optimize the wavelet neural network model. As a result, the error between the predicted value and the actual value was further reduced, and the accuracy was further improved. This present work proposes the optimal parking lot selection based on the Logit model. The experimental results show that the parking lot induction method based on the Logit model can realize the selection of the best parking lot. Combined with the optimal path selection, the driver is guided to reach the optimal parking lot on the optimal path.
机译:随着经济的快速发展,人民的生活水平继续改善,这加剧了城市机动车辆的增加。汽车数量的增加有助于人们的旅行和促进经济增长。然而,随着XX的机动车辆数量的不断增加,难以停车的问题越来越危险。为了找到更有效,方便准确的停车位预测效果,本文使用IoT技术来模拟XX站周围的道路和主要停车场,并使用自适应遗传算法诱导驱动程序并模拟它们。获得了从当前位置到达每个停车场的驱动器到达每个停车场的最佳路径和最短时间。在该研究中,提出了一种小波神经网络模型。 B地下停车场的数据用于训练和预测模型,发现预测精度高。粒子群优化算法用于优化小波神经网络模型。结果,预测值与实际值之间的误差进一步降低,并且进一步提高了准确度。本工作提出了基于Logit模型的最佳停车场选择。实验结果表明,基于Logit模型的停车场诱导方法可以实现最佳停车场的选择。结合最佳路径选择,引导驾驶员在最佳路径上达到最佳停车场。

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