In the rapidly evolving realm of smart agriculture, unmanned aerial vehicles (UAVs) have emerged as indispensable agents of precision and efficiency. Among them, variable-load UAVs equipped with pesticide spraying systems have captured significant attention due to their operational flexibility and enhanced efficacy in pest and disease management. These quadrotor machines offer promising advantages: swift operational speeds, minimized risks of pesticide drift, and superior crop surface coverage, all crucial for advancing sustainable agricultural practices. However, the inherent challenge lies in managing the UAV dynamics as their payload—specifically the liquid pesticide—steadily decreases during mission execution.
As the pesticide liquid volume diminishes, the UAV’s overall mass, center of gravity, and moment of inertia undergo continuous alterations, introducing complexities in dynamic behavior that traditional control algorithms often overlook. Prior research typically simplifies modeling by assuming constant mass conditions or addresses abrupt mass changes in solid payload systems, thereby neglecting the nuanced, time-dependent dynamics inherent in slow liquid loss scenarios. This oversight poses significant obstacles for achieving precise trajectory tracking and stable attitude control, both imperative for successful and reliable agricultural plant protection operations.
Addressing this intricate problem, Dr. Shuting Xu and her multidisciplinary team at Beijing Forestry University’s School of Technology have conceptualized and developed a comprehensive, time-varying multibody dynamic model tailored for variable-load UAVs. Their innovative approach segmentalizes the UAV system into two principal modules: a constant-mass frame embodying the stable structural chassis, and a dynamically evolving pesticide tank module. This bifurcated framework allows meticulous characterization of temporal changes in mass distribution and their subsequent effects on UAV flight dynamics.
To capture the complex fluid-structure interactions within the pesticide tank, the research employs computational fluid dynamics (CFD), utilizing the renowned ANSYS Fluent software to simulate transient gas-liquid two-phase flow behaviors. This in-depth simulation strategy models the internal fluid dynamics as the pesticide gradually depletes, providing crucial insights into shifts in the center of gravity and inertial properties. By applying curve-fitting techniques to the CFD data, the team extracted precise time-varying mathematical functions describing these parameters, effectively bridging the gap between fluid dynamics and UAV structural modeling.
The integration of the two conceptual modules culminated in a robust time-varying multibody dynamic model that forms the cornerstone for advanced control system design. Recognizing this, the researchers innovated a disturbance-rejection trajectory tracking control system grounded in proportional-derivative (PD) sliding mode control principles. Their controller architecture follows an inner-outer loop paradigm, where the inner loop precisely manages attitude stabilization while the outer loop governs spatial trajectory adherence, harmonizing dynamic response and trajectory precision.
An outstanding feature of their control design lies in the enhancement of the sliding mode reaching law. Conventionally, sliding mode controllers rely on discontinuous sign functions that, while robust, induce the undesirable phenomenon of chattering—rapid oscillations that impair system performance and wear mechanical components. By substituting this with a continuous hyperbolic tangent function, Dr. Xu’s team maintained fast control error convergence while significantly mitigating chattering effects, thereby improving overall system stability and actuator longevity.
To substantiate the theoretical underpinnings, rigorous simulation experiments were performed. These trials revealed the controller’s exceptional precision in trajectory tracking, evidenced by minimal position errors—standard deviations of 0.0507 meters horizontally, 0.161 meters laterally, and a near-negligible 0.0002 meters vertically. Attitude control exhibited similarly impressive metrics, with roll, pitch, and yaw angles demonstrating rapid error convergence and minimal transient deviations. Comparative analyses underscored the superior performance of this methodology over traditional PID and conventional sliding mode controls, particularly regarding dynamic response velocities and robustness under variable payload conditions.
Expanding beyond simulations, the research team conducted real-world flight experiments within a wheat field in Hebei Province. The UAV, laden with a full pesticide tank, executed spraying missions at a steady altitude of four meters while navigating predetermined paths. Results confirmed high-fidelity trajectory adherence during straight-line segments, with minor deviations of approximately 0.2 to 0.3 meters during turns. Crucially, the UAV promptly corrected its course within 5 to 8 seconds post-deviation, thereby satisfying the stringent accuracy prerequisites for effective plant protection.
This groundbreaking research not only bridges critical gaps between fluid dynamics, multibody modeling, and control systems for aerial agricultural platforms but also paves the way for further innovations. The profound implications span improved spraying precision, enhanced flight stability, and greater adaptability to dynamic load changes—factors essential to optimizing UAV utility in agriculture. Future research trajectories set forth by Dr. Xu’s team encompass fault-tolerant control, strategies for mitigating liquid sloshing effects within tanks, and robust control algorithms capable of withstanding unpredictable wind disturbances, thereby elevating the reliability and scope of variable-load UAV deployment.
Integrating time-sensitive fluid dynamics with sophisticated control algorithms represents a paradigm shift in agricultural UAV design and operation. The work of Dr. Xu and colleagues concretizes a framework where UAVs can not only sense and adapt to physical changes in their payload but also dynamically adjust control strategies to maintain mission efficacy. This addresses a longstanding challenge in deploying UAVs for precision agricultural tasks requiring both autonomy and resilient control under evolving conditions.
The meticulous modeling and control improvements offer a scalable solution adaptable to various UAV configurations and agricultural applications. Its potential to reduce pesticide overuse and environmental contamination, while enhancing operational efficiency, resonates powerfully with global sustainability goals. Moreover, this approach enriches the broader field of robotics and autonomous systems by advancing adaptive modeling techniques responsive to continuously varying physical parameters.
In conclusion, this innovative blend of computational fluid dynamics and advanced sliding mode control delivers a vital leap toward allowing UAVs to operate with unprecedented autonomy and accuracy under real-world conditions. As the agricultural landscape increasingly embraces digital and automated solutions, such technological breakthroughs will be fundamental in shaping safer, smarter, and more sustainable farming ecosystems worldwide.
Subject of Research: Experimental study of dynamic modeling and control of variable-load UAVs in agricultural spraying.
Article Title: Time-varying dynamic modeling and trajectory tracking control for variable-load unmanned aerial vehicle.
News Publication Date: 15-Jun-2026.
Web References:
Frontiers of Agricultural Science and Engineering – DOI 10.15302/J-FASE-2025662
Keywords: Variable-load UAV, time-varying dynamics, trajectory tracking control, sliding mode control, computational fluid dynamics, pesticide spraying, smart agriculture, attitude stabilization, control robustness, multibody modeling.

