Smart city management is going through a remarkable transition, in terms of quality and diversity of services provided to the end-users. The stakeholders that deliver pervasive applications are now able to address fundamental challenges in the big data value chain, from data acquisition, data analysis and processing, data storage and curation, and data visualisation in real scenarios. Industry 4.0 is pushing this trend forward, demanding for servitization of products and data, also for the smart cities sector where humans, sensors and devices are operating in strict collaboration. The data produced by the ubiquitous devices must be processed quickly to allow the implementation of reactive services such as situational awareness, video surveillance and geo-localization, while always ensuring the safety and privacy of involved citizens. This paper proposes a modular architecture to (i) leverage innovative technologies for data acquisition, management and distribution (such as Apache Kafka and Apache NiFi), (ii) develop a multi-layer engineering solution for revealing valuable and hidden societal knowledge in smart cities environment, and (iii) tackle the main issues in tasks involving complex data flows and provide general guidelines to solve them. We derived some guidelines from an experimental setting performed together with leading industrial technical departments to accomplish an efficient system for monitoring and servitization of smart city assets, with a scalable platform that confirms its usefulness in numerous smart city use cases with different needs.
翻译:智能城市管理正在经历一个引人注目的转变,即向最终用户提供的服务质量和多样性方面。提供普遍应用的利益攸关方现在能够应对数据获取、数据分析和处理、数据储存和整理以及真实情况下的数据可视化等数据价值链中的重大挑战。产业4.0正在推动这一趋势,要求为产品和数据保守化,同时也为智能城市部门,即人类、传感器和装置正在严格协作运行的智能城市部门,开发多层工程解决方案,以揭示智能城市环境中的宝贵和隐蔽的社会知识;必须快速处理无处不在的装置生成的数据,以便实施应对服务,如情景意识、视频监视和地理定位,同时始终确保相关公民的安全和隐私。本文提出了一个模块架构,以(一) 利用创新技术技术获取、管理和分配数据(如Apache Kafka和Apache NiFi) ;(二) 开发一个多层工程解决方案,以便在智能城市环境环境中发现宝贵和隐蔽的社会知识,并为解决这些知识提供总体指南。我们从与智能城市技术部门一起进行的实验性设计中获得了一些指导方针,以便智能城市服务器能够高效使用。