城市综合体大型停车场实时异常检测与标定研究

Shuaifei Song, Deyuan Zhu, Yuncheng Song, Kun Yu, Huabin Feng, Hengchang Liu
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引用次数: 0

摘要

随着低成本、低功耗传感和通信技术的发展,人们对实现智慧城市的物联网越来越感兴趣,以最大限度地提高城市基础设施的生产力和可靠性。其中最具代表性的例子是智能停车系统,它由停车传感器和后端服务器组成。在现有的系统中,停车传感器被放置在每个停车位,监测车位的状态,然后将传感数据发送到后端服务器进行进一步处理。基于这些传感器数据,智能停车系统可以提供车位可用性预测、远程预约和停车引导等智能服务。所有这些智能服务的前提是传感器数据准确可靠。然而,随着传感器的老化,传感器可能会产生一些不可靠的数据,这给我们的智能服务带来了很大的挑战。在本文中,我们提出了一个新的异常检测和校准系统在“苏州中心”,中国最大的最先进的城市综合体之一。我们的系统使用监督机器学习算法,专注于捕捉时空特征。实验结果表明,该系统能有效地识别出大多数异常,提高了传感器的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Real-time Anomaly Detection and Calibration for Large Parking Lot in Urban Complex
With the development of low-cost, low-power sensing and communication technologies, there has been growing interest in the IoT for realizing smart cities, in order to maximize the productivity and reliability of urban infrastructure. One of the most representative examples is smart parking system, which consists of parking sensors and backend servers. In existing systems, parking sensors are placed in each parking spot to monitor the status of the parking spot, and then the sensing data is send to backend servers for further processing. Based on these sensor data, the smart parking system can provide some smart services, such as parking spot availability prediction, remote booking and parking guidance. The premise of all these smart services is that the sensor data is accurate and reliable. However, as the sensor ages, the sensor may produce some unreliable data, which brings great challenges to our smart services. In this paper, we present a novel anomaly detection and calibration system in "Suzhou Center", one of the largest most advanced urban complexes in China. Our system uses supervised machine learning algorithms, focusing on capturing spatio-temporal features. The experimental results show that our system can identify most anomalies and improve the accuracy of the sensor.
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