Title
Secure end-to-end processing of smart metering data
Abstract
Cloud computing considerably reduces the costs of deploying applications through on-demand, automated and fine-granular allocation of resources. Even in private settings, cloud computing platforms enable agile and self-service management, which means that physical resources are shared more efficiently. Cloud computing considerably reduces the costs of deploying applications through on-demand, automated and fine-granular allocation of resources. Even in private settings, cloud computing platforms enable agile and self-service management, which means that physical resources are shared more efficiently. Nevertheless, using shared infrastructures also creates more opportunities for attacks and data breaches. In this paper, we describe the SecureCloud approach. The SecureCloud project aims to enable confidentiality and integrity of data and applications running in potentially untrusted cloud environments. The project leverages technologies such as Intel SGX, OpenStack and Kubernetes to provide a cloud platform that supports secure applications. In addition, the project provides tools that help generating cloud-native, secure applications and services that can be deployed on potentially untrusted clouds. The results have been validated in a real-world smart grid scenario to enable a data workflow that is protected end-to-end: from the collection of data to the generation of high-level information such as fraud alerts.
Year
DOI
Venue
2019
10.1186/s13677-019-0141-z
Journal of Cloud Computing
Keywords
DocType
Volume
Cloud computing, Security, Trusted execution, Smart grids, Privacy, Confidential computing
Journal
8
Issue
ISSN
Citations 
1
2192-113X
0
PageRank 
References 
Authors
0.34
0
16
Name
Order
Citations
PageRank
Andrey Brito117024.58
Christof Fetzer22429172.89
Stefan Köpsell331832.74
Peter Pietzuch41869106.77
Marcelo Pasin518117.37
Pascal Felber62432178.76
Keiko Fonseca700.34
Marcelo Rosa800.34
Luiz Gomes900.34
Rodrigo Riella1000.34
Charles B. Prado1153.93
Luiz F. Rust1200.34
Daniel E. Lucani1323642.29
Marton Sipos1433.09
László Nagy1500.34
Marcell Fehér1611.03