Identifying and managing data quality requirements: a design science study in the field of automated driving
Journal article, 2024

Good data quality is crucial for any data-driven system’s effective and safe operation. For critical safety systems, the significance of data quality is even higher since incorrect or low-quality data may cause fatal faults. However, there are challenges in identifying and managing data quality. In particular, there is no accepted process to define and continuously test data quality concerning what is necessary for operating the system. This lack is problematic because even safety-critical systems become increasingly dependent on data. Here, we propose a Candidate Framework for Data Quality Assessment and Maintenance (CaFDaQAM) to systematically manage data quality and related requirements based on design science research. The framework is constructed based on an advanced driver assistance system (ADAS) case study. The study is based on empirical data from a literature review, focus groups, and design workshops. The proposed framework consists of four components: a Data Quality Workflow, a List of Data Quality Challenges, a List of Data Quality Attributes, and Solution Candidates. Together, the components act as tools for data quality assessment and maintenance. The candidate framework and its components were validated in a focus group.

Author

Shameer Kumar Pradhan

Hans-Martin Heyn

Software Engineering 1

Eric Knauss

Chalmers, Computer Science and Engineering (Chalmers), Interaction Design and Software Engineering

Software Quality Journal

0963-9314 (ISSN) 1573-1367 (eISSN)

Vol. 32 2 313-360

Very Efficient Deep Learning in IOT (VEDLIoT)

European Commission (EC) (EC/H2020/957197), 2020-11-01 -- 2023-10-31.

Areas of Advance

Information and Communication Technology

Subject Categories

Computer and Information Science

DOI

10.1007/s11219-023-09622-8

Related datasets

Replication Data for: Identifying and Managing Data Quality Requirements: A Design Science Study in the Field of Automated Driving [dataset]

URI: https://doi.org/10.7910/DVN/Y6ORUV DOI: 10.7910/DVN/Y6ORUV

More information

Created

11/15/2024