自主数据主体的智慧城市

J. Frecè, Thomas Selzam
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引用次数: 1

摘要

智慧城市依靠来自众多不同来源的数据来充分发挥其潜力。将来自私人来源的个人数据添加到智慧城市资源中,将大大增加这种潜力。这些数据的可持续利用必须基于法律合规、道德健全和提供数据主体的同意。他们必须得到保证,他们的个人数据不会被用于超出他们同意的范围的任何事情,并且不会遭受任何额外的风险暴露。为此,我们提出了一种针对自主数据主体(SDDS)的解决方案,该解决方案将私人和个人数据保存在分散的安全位置,而不会剥夺智慧城市从中包含的信息。SDDS通过严格划分其不同的系统元素来实现这一点,通过在公共分类账中专门存储非助记符索引和id,并且通过仅发送分析结果,而不通过网络发送原始数据。这样的设置既保证了数据主体的隐私,又赋予了智慧城市对大量新数据源的访问权限,同时也处理了用户同意,以确保符合数据保护法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart Cities of Self-Determined Data Subjects
Smart Cities depend on data from numerous different sources to live up to their full potential. Adding personal data from private sources to a smart city's resources significantly increases this potential. Sustainable utilisation of such data must base on legal compliancy, ethical soundness, and consent of the providing data subjects. They have to be assured that their personal data will not be used for anything beyond the scope they agreed to, and that it will not suffer from any additional risk exposure. For this we propose a solution for self-determined data subjects (SDDS), which keeps the private and personal data at their decentralized, safe locations, without depriving the smart city from the information contained within. SDDS achieves this with strict compartmentalization of its different system elements, by exclusively storing non-mnemonic indices and IDs in a public ledger, and by sending mere analytical results, yet no original data across the network. Such a setup ensures the data subjects' privacy, grants the smart city access to a high number of new data sources, and simultaneously handles the user-consent to ensure compliance with data protection laws.
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