The Collaborative Architecture Design of Unmanned Aerial Vehicle Flight Control Systems and Multimodal Information Networks in Low-Altitude Economy
DOI: https://doi.org/10.62517/jes.202502415
Author(s)
Weihang Yan
Affiliation(s)
Shanghai High School of BANZ, Shanghai, China
Abstract
This article focuses on the low-altitude economy field and delves deeply into the collaborative architecture design of unmanned aerial vehicle (UAV) flight control systems and multimodal information networks. This paper expounds the concept, current development status and application scenarios of low-altitude economy, analyzes the key components, working principles and technical challenges of unmanned aerial vehicle (UAV) flight control systems, and dissects the connotation, architecture and integration mechanism of multimodal information networks. On this basis, the design principles and goals of the collaborative architecture are proposed, the collaborative architecture is designed in detail, and its application scenarios and advantages are discussed. It seeks to offer theoretical backing and technical guidelines for the effective utilization of unmanned aerial vehicles (UAVs) within the low-altitude economy, thereby fostering its sustainable progress.
Keywords
Low-Altitude Economy; Unmanned Aerial Vehicle Flight Control System; Multimodal Information Network; Collaborative Architecture Design
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