HITA: An Architecture for System-level Testing of Healthcare IoT Applications
- URL: http://arxiv.org/abs/2309.04223v3
- Date: Thu, 11 Jul 2024 17:06:49 GMT
- Title: HITA: An Architecture for System-level Testing of Healthcare IoT Applications
- Authors: Hassan Sartaj, Shaukat Ali, Tao Yue, Julie Marie Gjøby,
- Abstract summary: This paper presents a real-world test infrastructure software architecture (HITA) designed for healthcare IoT applications.
We evaluate HITA's digital twin (DT) generation component implemented using model-based and machine learning (ML) approaches.
- Score: 5.126355491416586
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: System-level testing of healthcare Internet of Things (IoT) applications requires creating a test infrastructure with integrated medical devices and third-party applications. A significant challenge in creating such test infrastructure is that healthcare IoT applications evolve continuously with the addition of new medical devices from different vendors and new services offered by different third-party organizations following different architectures. Moreover, creating test infrastructure with a large number of different types of medical devices is time-consuming, financially expensive, and practically infeasible. Oslo City's healthcare department faced these challenges while working with various healthcare IoT applications. To address these challenges, this paper presents a real-world test infrastructure software architecture (HITA) designed for healthcare IoT applications. We evaluated HITA's digital twin (DT) generation component implemented using model-based and machine learning (ML) approaches in terms of DT fidelity, scalability, and time cost of generating DTs. Results show that the fidelity of DTs created using model-based and ML approaches reach 94% and 95%, respectively. Results from operating 100 DTs concurrently show that the DT generation component is scalable and ML-based DTs have a higher time cost.
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