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Dynamic Network Model for Smart City Data-Loss Resilience Case Study: City-to-City Network for Crime Analytics

机译:智慧城市数据丢失复原力的动态网络模型案例研究:犯罪分析的城市间网络

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摘要

Today’s cities generate tremendous amounts of data, thanks to a boom in affordable smart devices and sensors. The resulting big data creates opportunities to develop diverse sets of context-aware services and systems, ensuring smart city services are optimized to the dynamic city environment. Critical resources in these smart cities will be more rapidly deployed to regions in need, and those regions predicted to have an imminent or prospective need. For example, crime data analytics may be used to optimize the distribution of police, medical, and emergency services. However, as smart city services become dependent on data, they also become susceptible to disruptions in data streams, such as data loss due to signal quality reduction or due to power loss during data collection. This paper presents a dynamic network model for improving service resilience to data loss. The network model identifies statistically significant shared temporal trends across multivariate spatiotemporal data streams and utilizes these trends to improve data prediction performance in the case of data loss. Dynamics also allow the system to respond to changes in the data streams such as the loss or addition of new information flows. The network model is demonstrated by city-based crime rates reported in Montgomery County, MD, USA. A resilient network is developed utilizing shared temporal trends between cities to provide improved crime rate prediction and robustness to data loss, compared with the use of single city-based auto-regression. A maximum improvement in performance of 7.8% for Silver Spring is found and an average improvement of 5.6% among cities with high crime rates. The model also correctly identifies all the optimal network connections, according to prediction error minimization. City-to-city distance is designated as a predictor of shared temporal trends in crime and weather is shown to be a strong predictor of crime in Montgomery County.
机译:得益于价格适中的智能设备和传感器的迅猛发展,当今的城市产生了大量数据。由此产生的大数据为开发各种上下文感知服务和系统创造了机会,从而确保智能城市服务针对动态城市环境进行了优化。这些智慧城市中的关键资源将更快速地部署到有需要的地区,并且预计那些地区将有迫切或潜在的需求。例如,犯罪数据分析可用于优化警察,医疗和紧急服务的分配。但是,随着智慧城市服务变得越来越依赖数据,它们也容易受到数据流中断的影响,例如由于信号质量下降或数据收集过程中的功率损耗而导致的数据丢失。本文提出了一种动态网络模型,用于提高服务抗数据丢失的能力。网络模型可识别跨多元时空数据流的统计上显着的共享时间趋势,并在数据丢失的情况下利用这些趋势来改善数据预测性能。动态还使系统能够响应数据流中的变化,例如丢失或添加新的信息流。网络模型由美国马里兰州蒙哥马利县报告的城市犯罪率证明。与使用基于单个城市的自动回归相比,利用城市之间共享的时间趋势开发了一种弹性网络,以提供改进的犯罪率预测和数据丢失的鲁棒性。发现“银泉”的最大绩效改善为7.8%,在犯罪率较高的城市中,平均改善为5.6%。该模型还可以根据预测误差的最小化正确识别所有最佳网络连接。城市之间的距离被指定为犯罪的共同时间趋势的预测因素,而天气在蒙哥马利县被证明是犯罪的有力预测因素。

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