10.17862/cranfield.rd.12382604.v1 Iñigo Fernández del amo blanco Iñigo Fernández del amo blanco John ahmet Erkoyuncu John ahmet Erkoyuncu Maryam Farsi Maryam Farsi Datasets: Hybrid recommendations and dynamic authoring for AR knowledge capture and re-use in maintenance diagnosis applications Cranfield Online Research Data (CORD) 2020 Augmented Reality Maintenace Failure Diagnosis Authoring systems Knowledge capture Knowledge re-use Recommender systems Data integration Semantic Analysis Semantic Web Virtual Reality and Related Simulation Web Technologies (excl. Web Search) Computer-Human Interaction Information Systems Pattern Recognition and Data Mining Manufacturing Management 2020-06-02 15:15:44 Dataset https://cord.cranfield.ac.uk/articles/dataset/Datasets_Hybrid_recommendations_and_dynamic_authoring_for_AR_knowledge_capture_and_re-use_in_maintenance_diagnosis_applications/12382604 <p><a></a>This repository includes datasets on experimental cases of study and analysis regarding the research called " Hybrid recommendations and dynamic authoring for AR knowledge capture and re-use in maintenance diagnosis applications".</p><p> </p><p><br></p><p>DOI:</p><p> </p><p><br></p><p>Abstract: “In Industry 4.0, integrated data management is an important challenge due to heterogeneity and lack of structure of numerous existing data sources. A relevant research gap involves human knowledge integration, especially in maintenance operations. Augmented Reality (AR) can bridge this gap but requires improved augmented content to enable effective and efficient knowledge capture. This paper proposes dynamic authoring and hybrid recommender methods for accurate AR-based reporting. These methods aim to provide maintainers with augmented data input formats and recommended datasets for enhancing efficiency and effectiveness of their reporting tasks. This research validated the proposed contributions through experiments and surveys in two failure diagnosis reporting scenarios. Experimental results indicated that the proposed reporting solution can reduce reporting errors by 50% and reporting time by 20% compared to alternative recommender and AR tools. Besides, survey results suggested that testers perceived the proposed reporting solution as more effective and satisfactory for reporting tasks than alternative tools. Thus, proving that the proposed methods can improve effectiveness and efficiency of diagnosis reporting applications. Finally, this paper proposes future works towards a framework for automatic adaptive authoring in AR knowledge transfer and capture applications for human knowledge integration in the context of Industry 4.0.”</p>