Abstract
Rapid urbanization has intensified air pollution levels, creating an
urgent need for intelligent, real-time monitoring systems that can
effectively track and analyze pollutants across dynamic city
environments. Conventional Internet of Things (IoT)-based sensing
frameworks often face challenges such as latency, limited processing
power, and inefficient data management when deployed at large scales.
Recent advances in quantum communication and edge artificial
intelligence (Edge AI) have opened new avenues for developing highly
adaptive and secure environmental monitoring architectures. Despite
the proliferation of drone-assisted monitoring systems, most existing
models rely on centralized cloud computing, resulting in network
bottlenecks and delayed responses. Furthermore, data collected from
heterogeneous sensors often lack accuracy due to noise interference
and spatial inconsistencies, limiting the reliability of real-time pollution
detection and source localization. This study proposes an Edge-
Enabled Quantum Drone Sensor Network (Q-DSN) integrated with
Convolutional Neural Networks (CNNs) to perform decentralized
pollution detection and classification. Quantum key distribution (QKD)
enhances communication security among drones, while CNN-based
feature extraction processes multispectral data from gas sensors and
high-resolution cameras. The edge layer employs a lightweight AI
model for on-site prediction, reducing latency and dependence on cloud
computation. In addition, an adaptive routing protocol optimizes data
transmission between drones and ground stations. Simulation and
field-level evaluations demonstrated that the proposed Q-DSN achieved
a detection accuracy of 81–84%, a latency reduction to 2.1–2.7 seconds,
and an energy efficiency improvement of 20–35% compared to
conventional IoT-based and drone-assisted monitoring systems.
Communication reliability reached 92% through quantum-secured
channels, while edge-level inference enabled real-time classification of
pollutants such as CO2, NO2, PM2.5, and VOCs across a 2 km² urban testbed.
Authors
N. Devakirubai
R P Sarathy Institute of Technology, India
Keywords
Quantum Drone Networks, Edge AI, Convolutional Neural Networks, Urban Pollution Detection, Secure Environmental Monitoring