Experiences and challenges from developing cyber‐physical systems in industry‐academia collaboration

Author:

Cederbladh Johan12ORCID,Eramo Romina3,Muttillo Vittoriano4,Strandberg Per Erik5

Affiliation:

1. Department of Innovation, Design, and Technology Mälardalen University Västerås Sweden

2. Department of Architecture and Planning Volvo Construction Equipment Eskilstuna Sweden

3. Department of Communication Science University of Teramo Teramo Italy

4. Department of Political Science University of Teramo Teramo Italy

5. Research and Development Westermo Network Technologies AB Västerås Sweden

Abstract

SummaryCyber‐physical systems (CPSs) are increasing in developmental complexity. Several emerging technologies, such as Model‐based engineering, DevOps, and Artificial intelligence, are expected to alleviate the associated complexity by introducing more advanced capabilities. The AIDOaRt research project investigates how the aforementioned technologies can assist in developing complex CPSs in various industrial use cases. In this paper, we discuss the experiences of industry and academia collaborating to improve the development of complex CPSs through the experiences in the research project. In particular, the paper presents the results of two working groups that examined the challenges of developing complex CPSs from an industrial and academic perspective when considering the previously mentioned technologies. We present five identified challenge areas from developing complex CPSs and discuss them from the perspective of industry and academia: data, modeling, requirements engineering, continuous software and system engineering, as well as intelligence and automation. Furthermore, we highlight practical experience in collaboration from the project via two explicit use cases and connect them to the challenge areas. Finally, we discuss some lessons learned through the collaborations, which might foster future collaborative efforts.

Publisher

Wiley

Reference48 articles.

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3. DevOps

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5. DangY LinQ HuangP.AIOps: real‐world challenges and research innovations. Paper presented at: 2019 IEEE/ACM 41st International Conference on Software Engineering: Companion Proceedings (ICSE‐Companion).2019:4‐5. doi:10.1109/ICSE‐Companion.2019.00023

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