This file was created by the TYPO3 extension
bib
--- Timezone: UTC
Creation date: 2024-12-03
Creation time: 17-51-55
--- Number of references
4
inproceedings
2023-wagner-lcn-repel
Retrofitting Integrity Protection into Unused Header Fields of Legacy Industrial Protocols
2023
10
https://www.comsys.rwth-aachen.de/fileadmin/papers/2023/2023-wagner-repel.pdf
IEEE
48th IEEE Conference on Local Computer Networks (LCN), Daytona Beach, Florida, US
Daytona Beach, Florida, US
IEEE Conference on Local Computer Networks (LCN)
Oktober 1-5, 2023
accepted
en
1
EricWagner
NilsRothaug
KonradWolsing
LennartBader
KlausWehrle
MartinHenze
inproceedings
2023_pennekamp_benchmarking_comparison
Designing Secure and Privacy-Preserving Information Systems for Industry Benchmarking
2023
6
15
13901
489-505
Benchmarking is an essential tool for industrial organizations to identify potentials that allows them to improve their competitive position through operational and strategic means. However, the handling of sensitive information, in terms of (i) internal company data and (ii) the underlying algorithm to compute the benchmark, demands strict (technical) confidentiality guarantees—an aspect that existing approaches fail to address adequately. Still, advances in private computing provide us with building blocks to reliably secure even complex computations and their inputs, as present in industry benchmarks. In this paper, we thus compare two promising and fundamentally different concepts (hardware- and software-based) to realize privacy-preserving benchmarks. Thereby, we provide detailed insights into the concept-specific benefits. Our evaluation of two real-world use cases from different industries underlines that realizing and deploying secure information systems for industry benchmarking is possible with today's building blocks from private computing.
Lecture Notes in Computer Science (LNCS), Volume 13901
real-world computing; trusted execution environments; homomorphic encryption; key performance indicators; benchmarking
internet-of-production
https://www.comsys.rwth-aachen.de/fileadmin/papers/2023/2023-pennekamp-industry-benchmarking.pdf
Springer
Proceedings of the 35th International Conference on Advanced Information Systems Engineering (CAiSE '23), June 12-16, 2023, Zaragoza, Spain
Zaragoza, Spain
35th International Conference on Advanced Information Systems Engineering (CAiSE '23)
June 12-16, 2023
978-3-031-34559-3
0302-9743
10.1007/978-3-031-34560-9_29
1
JanPennekamp
JohannesLohmöller
EduardVlad
JoschaLoos
NiklasRodemann
PatrickSapel
Ina BereniceFink
SethSchmitz
ChristianHopmann
MatthiasJarke
GüntherSchuh
KlausWehrle
MartinHenze
incollection
2023_pennekamp_crd-a.i
Evolving the Digital Industrial Infrastructure for Production: Steps Taken and the Road Ahead
2023
2
8
35-60
The Internet of Production (IoP) leverages concepts such as digital shadows, data lakes, and a World Wide Lab (WWL) to advance today’s production. Consequently, it requires a technical infrastructure that can support the agile deployment of these concepts and corresponding high-level applications, which, e.g., demand the processing of massive data in motion and at rest. As such, key research aspects are the support for low-latency control loops, concepts on scalable data stream processing, deployable information security, and semantically rich and efficient long-term storage. In particular, such an infrastructure cannot continue to be limited to machines and sensors, but additionally needs to encompass networked environments: production cells, edge computing, and location-independent cloud infrastructures. Finally, in light of the envisioned WWL, i.e., the interconnection of production sites, the technical infrastructure must be advanced to support secure and privacy-preserving industrial collaboration. To evolve today’s production sites and lay the infrastructural foundation for the IoP, we identify five broad streams of research: (1) adapting data and stream processing to heterogeneous data from distributed sources, (2) ensuring data interoperability between systems and production sites, (3) exchanging and sharing data with different stakeholders, (4) network security approaches addressing the risks of increasing interconnectivity, and (5) security architectures to enable secure and privacy-preserving industrial collaboration. With our research, we evolve the underlying infrastructure from isolated, sparsely networked production sites toward an architecture that supports high-level applications and sophisticated digital shadows while facilitating the transition toward a WWL.
Cyber-physical production systems; Data streams; Industrial data processing; Industrial network security; Industrial data security; Secure industrial collaboration
internet-of-production
https://www.comsys.rwth-aachen.de/fileadmin/papers/2023/2023-pennekamp-iop-a.i.pdf
Springer
Interdisciplinary Excellence Accelerator Series
Internet of Production: Fundamentals, Applications and Proceedings
978-3-031-44496-8
10.1007/978-3-031-44497-5_2
1
JanPennekamp
AnastasiiaBelova
ThomasBergs
MatthiasBodenbenner
AndreasBührig-Polaczek
MarkusDahlmanns
IkeKunze
MoritzKröger
SandraGeisler
MartinHenze
DanielLütticke
BenjaminMontavon
PhilippNiemietz
LuciaOrtjohann
MaximilianRudack
Robert H.Schmitt
UweVroomen
KlausWehrle
MichaelZeng
incollection
2023_rueppel_crd-b2.ii
Model-Based Controlling Approaches for Manufacturing Processes
2023
2
8
221-246
The main objectives in production technology are quality assurance, cost reduction, and guaranteed process safety and stability. Digital shadows enable a more comprehensive understanding and monitoring of processes on shop floor level. Thus, process information becomes available between decision levels, and the aforementioned criteria regarding quality, cost, or safety can be included in control decisions for production processes. The contextual data for digital shadows typically arises from heterogeneous sources. At shop floor level, the proximity to the process requires usage of available data as well as domain knowledge. Data sources need to be selected, synchronized, and processed. Especially high-frequency data requires algorithms for intelligent distribution and efficient filtering of the main information using real-time devices and in-network computing. Real-time data is enriched by simulations, metadata from product planning, and information across the whole process chain. Well-established analytical and empirical models serve as the base for new hybrid, gray box approaches. These models are then applied to optimize production process control by maximizing the productivity under given quality and safety constraints. To store and reuse the developed models, ontologies are developed and a data lake infrastructure is utilized and constantly enlarged laying the basis for a World Wide Lab (WWL). Finally, closing the control loop requires efficient quality assessment, immediately after the process and directly on the machine. This chapter addresses works in a connected job shop to acquire data, identify and optimize models, and automate systems and their deployment in the Internet of Production (IoP).
Process control; Model-based control; Data aggregation; Model identification; Model optimization
internet-of-production
https://www.comsys.rwth-aachen.de/fileadmin/papers/2023/2023-rueppel-iop-b2.i.pdf
Springer
Interdisciplinary Excellence Accelerator Series
Internet of Production: Fundamentals, Applications and Proceedings
978-3-031-44496-8
10.1007/978-3-031-44497-5_7
1
Adrian KarlRüppel
MuzafferAy
BenediktBiernat
IkeKunze
MarkusLandwehr
SamuelMann
JanPennekamp
PascalRabe
Mark P.Sanders
DominikScheurenberg
SvenSchiller
TiandongXi
DirkAbel
ThomasBergs
ChristianBrecher
UweReisgen
Robert H.Schmitt
KlausWehrle