智能基础设施:改善隐私和安全的解决方案

Peyton Kardos, Benjamin Suter, Dylan Mullican, Joseph J Nicol, Matthew Kline, Emily York, A. Salman
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引用次数: 1

摘要

智能基础设施的开发和实施为这些系统的特定用户以及广大公众提出了合理的安全和隐私问题。通过智能基础设施系统内的智能应用程序整合大数据,使大型科技公司和政府实体能够收集并潜在地利用消费者的个人信息。这些强大的组织收集消费者数据,以便对其进行分析、交易或出售,或者只是存储以供以后使用。收集大数据或元数据,即关于数据的数据,为收集者提供了观察或预测特定个人或群体行为的机会。那些掌握这些信息的人可以利用这些信息来促进自己的议程,或者利用那些在不知情或未经同意的情况下收集这些信息的人。此外,目前缺乏有关智能应用程序或物联网设备安全的立法和政策,这使得安全和隐私泄露的可能性更加普遍。一个漏洞将允许访问敏感信息,这将对个人和/或国家范围的安全和隐私构成威胁。由于智能基础设施的动态性,我们对这个问题进行了系统分析,作为一种方法论方法,得出了三种解决方案。我们推荐一个基于解决方案的三部分分析,包括1.)2.财政支持3.政策法规的制定技术集成。该解决方案解决了市场缓解、消费者数据隐私以及智能技术和关键基础设施之间的数据身份验证问题。这项研究的初步结果表明,这些组件对于可持续的智能基础设施是必要的。
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Smart Infrastructure: Solutions to Improve Privacy and Security
The development and implementation of smart infrastructure raises legitimate security and privacy concerns for both the specific users of these systems as well as the public at large. The consolidation of big data through smart applications within smart infrastructure systems allows large tech companies and government entities to gather and potentially exploit the personal information of consumers. These powerful organizations collect consumer data in order to perform analysis on it, trade or sell it, or simply store it for later use. The gathering of big data or metadata, data about data, provides an opportunity for the collector to observe or predict the behaviors of specific individuals or groups. Those holding this information could use it to promote their own agendas or to otherwise exploit those from whom it has been collected without their knowledge or consent. Additionally, the current lack of legislation and policies concerning the security of smart applications or IoT devices makes the possibility of security and privacy breaches more prevalent. A breach would allow access to sensitive information which would be a threat to security and privacy at an individual and/or national scale. Due to the dynamic nature of smart infrastructure, we employed a systems analysis of this problem as a methodological approach leading to three solutions. We recommend a three-part solution-based analysis, consisting of 1.) Financial Backing 2.) Creation of Policies and Regulations and 3.) Technical Integration. This solution addresses market mitigation, data privacy for consumers, and data authentication between smart technologies and critical infrastructure. Preliminary results of this research suggest that these components are necessary for a sustainable smart infrastructure.
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