Xiang, Z., Ying, F., Wang, D., Tan, R., Zhang, Y., & Dustdar, S. (2026). Quesada: A Framework for Reliable and Trustworthy Data Acquisition in 6G-IoT. IEEE Internet of Things Journal, 13(5), 8232–8247. https://doi.org/10.1109/JIOT.2025.3621446
Data acquisition; multiaccess edge computing (MEC); trustworthy systems
en
Abstract:
The convergence of artificial intelligence (AI) and the Internet of Things (IoT) in future sixth-generation (6G) networks (6G-IoT) promises to unlock unprecedented capabilities. However, the continuous collection and analysis of large-scale, low-density data pose significant threats to the reliability and trustworthiness of these systems, leading to high energy consumption and potential decision-making based on the stale information. To address these critical challenges, this article proposes a novel architecture for building reliable and trustworthy 6G-IoT services. Our approach involves three key contributions: 1) we leverage the multiaccess edge computing (MEC) paradigm to locally process raw data, filtering redundancy and thereby ensuring that AI models operate on more meaningful information; 2) we design a decoupled, two-level (edge-cloud) decision-making mechanism that explicitly manages the tradeoff between data trustworthiness (quantified by information freshness) and system energy consumption, a cornerstone of long-term reliability; and 3) we implement these principles in a new, distributed end-edge-cloud framework named query-control-based safe and data-trustworthy acquisition (Quesada), which coordinates edge and cloud decisions to enhance the overall system performance. To validate our approach, we conduct a series of comparative experiments. The results demonstrate that the Quesada framework significantly improves both system reliability and data trustworthiness, making it a viable architecture for future 6G-IoT applications.