A Systematic Review of Data Quality in CPS and IoT for Industry 4.0

Author:

Goknil Arda1ORCID,Nguyen Phu1ORCID,Sen Sagar1ORCID,Politaki Dimitra2ORCID,Niavis Harris2ORCID,Pedersen Karl John3ORCID,Suyuthi Abdillah3ORCID,Anand Abhilash3ORCID,Ziegenbein Amina4ORCID

Affiliation:

1. SINTEF, Norway

2. Inlecom Innovation, Greece

3. DNV, Norway

4. PTW TU Darmstadt, Germany

Abstract

The Internet of Things (IoT) and Cyber-Physical Systems (CPS) are the backbones of Industry 4.0, where data quality is crucial for decision support. Data quality in these systems can deteriorate due to sensor failures or uncertain operating environments. Our objective is to summarize and assess the research efforts that address data quality in data-centric CPS/IoT industrial applications. We systematically review the state-of-the-art data quality techniques for CPS and IoT in Industry 4.0 through a systematic literature review (SLR) study. We pose three research questions, define selection and exclusion criteria for primary studies, and extract and synthesize data from these studies to answer our research questions. Our most significant results are (i) the list of data quality issues, their sources, and application domains, (ii) the best practices and metrics for managing data quality, (iii) the software engineering solutions employed to manage data quality, and (iv) the state of the data quality techniques (data repair, cleaning, and monitoring) in the application domains. The results of our SLR can help researchers obtain an overview of existing data quality issues, techniques, metrics, and best practices. We suggest research directions that require attention from the research community for follow-up work.

Funder

European Union’s Horizon 2020 Research and Innovation programme

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference158 articles.

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