Agricultural Unmanned Aerial Vehicle Research in China: A Decade of Evolution and Future Trajectories

1. Introduction

As a researcher immersed in precision agriculture, I have witnessed the transformative role of agricultural unmanned aerial vehicles (UAVs) in modernizing farming practices. These systems enhance productivity, enable real-time crop monitoring, and optimize resource allocation. This article synthesizes a decade (2013–2023) of Chinese research on agricultural unmanned aerial vehicles, leveraging bibliometric analysis to map trends, hotspots, and frontiers.


2. Methodology

Using CiteSpace 6.3.R1, I analyzed 1,492 publications from the CNKI database. Key parameters included:

  • Time slicing: 2013–2023 (1-year intervals)
  • Thresholds: Top 50 cited/keyword items per slice
  • Pruning: Pathfinder and pruning sliced networks
    Cluster significance was validated by:
  • Modularity (Q): 0.812 (>0.5 indicates significant structure)
  • Silhouette (S): 0.948 (>0.7 indicates high reliability)

3. Temporal Evolution of Publications

Agricultural unmanned aerial vehicle research surged linearly (Figure 1), with three distinct phases:
Table 1: Annual Publication Growth

PeriodAvg. Annual PublicationsCumulative Share (%)
2013–201518.331.23
2016–2021250.1770.31
2022–2023174.8328.46

The 2016–2021 boom reflects policy support (e.g., China’s “Digital Agriculture” initiatives) and technological affordability.


4. Research Hotspots and Keyword Analysis

Co-occurrence analysis (Figure 4) identified core themes. High-frequency keywords (Table 2) were ranked by centrality (impact on the research network):
Table 2: Top Keywords (2013–2023)

KeywordFrequencyCentralityFirst Appearance
UAV5520.492013
Remote Sensing770.352014
Precision Agriculture510.332014
Pest Management400.292016
Multispectral250.262021

Clustering (Figure 5) revealed thematic groups:

  • Cluster #0Agricultural Equipment (28 members)
  • Cluster #1Precision Crop Management (25 members)
  • Cluster #2Remote Sensing Integration (21 members)

5. Research Frontiers and Burst Detection

Keyword bursts (sudden frequency surges) signal emerging trends (Figure 7):

  • Spray Technology (2016–2018; Strength=4.07): Focus on pesticide deposition optimization.
  • Smart Agriculture (2021–2023; Strength=3.82): AI-driven decision-making.
  • Multispectral Imaging (2021–2023; Strength=3.15): Crop health assessment via NDVI:

NDVI=NIR−RedNIR+RedNDVI=NIR+RedNIR−Red​

where NIR = near-infrared reflectance, Red = visible red reflectance.


6. Institutional Collaboration Networks

Leading contributors included the Chinese Academy of Agricultural Sciences and China Agricultural University. Collaboration density remained low (network density=0.0148), indicating fragmented efforts.


7. Future Directions

Based on burst trends, future agricultural unmanned aerial vehicle research will prioritize:

A. AI-Driven Workflow Optimization

Autonomous path planning using reinforcement learning:Q(s,a)←Q(s,a)+α[r+γmax⁡a′Q(s′,a′)−Q(s,a)]Q(s,a)←Q(s,a)+α[r+γa′max​Q(s′,a′)−Q(s,a)]

where ss = state, aa = action, rr = reward, γγ = discount factor.

B. Hyperspectral-Multisensor Fusion

Integrating thermal, LiDAR, and hyperspectral sensors for 3D crop modeling:Canopy Height Model=DSM−DTMCanopy Height Model=DSM−DTM

DSM = digital surface model; DTM = digital terrain model.

C. Carbon Footprint Reduction

UAVs reduce agrochemical usage by 30–50% compared to traditional methods. Future studies must quantify environmental gains:Carbon Savings=∑(Fuel Savedi×EFi)Carbon Savings=∑(Fuel Savedi​×EFi​)

where EFiEFi​ = emission factor for input ii.


8. Conclusion

Over 2013–2023, Chinese agricultural unmanned aerial vehicle research evolved from foundational applications toward precision, intelligence, and sustainability. Core advancements include multispectral imaging, AI integration, and specialized pest management. Future breakthroughs hinge on interdisciplinary collaboration, sensor fusion, and scalable AI solutions. As this field matures, agricultural unmanned aerial vehicles will become indispensable for global food security and ecological resilience.

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