Submitted:
25 August 2025
Posted:
19 September 2025
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Abstract
Keywords:
1. Introduction
3. Optimization Criteria in Geometric Trajectory Planning
3.1. Key Optimization Criteria
- Trajectory Length: Minimizing the path length is often the primary objective, as it directly impacts the robot’s efficiency and resource utilization. Shorter trajectories reduce travel time and energy consumption, making them ideal for many applications [8].
- Trajectory Smoothness: Smooth trajectories are crucial for ensuring stable and efficient robot motion. Abrupt changes in direction or velocity can lead to mechanical stress, increased energy consumption, and reduced accuracy. Smoothness is often quantified using curvature and jerk metrics [20].
- Time Efficiency: Time-optimal trajectories are critical in applications where speed is a priority, such as in industrial automation or search-and-rescue operations. Time efficiency is closely tied to the robot’s velocity profile and acceleration limits [21].
- Energy Consumption: Energy-efficient trajectories are vital for battery-powered robots or systems operating in energy-constrained environments. Optimizing energy usage involves minimizing unnecessary acceleration, deceleration, and idling [22].
- Collision Avoidance: Ensuring collision-free trajectories is a fundamental requirement in any navigation task. This involves not only avoiding static obstacles but also dynamically adapting to moving obstacles in real-time [12].
- Environmental Factors: External conditions such as wind resistance, terrain roughness, or fluid dynamics (in underwater or aerial robots) can significantly impact trajectory planning. These factors must be modeled and accounted for to ensure robust performance [23].
3.2. Path Length as an Optimization Criterion
3.3. Path Smoothness in Robotic Navigation
- Curvature Continuity: Ensuring that the curvature of the path is continuous, which is critical for high-speed navigation and dynamic environments [35].
- Jerk Minimization: Minimizing the rate of change of acceleration (jerk) to ensure smoother motion and reduce wear on the robot’s actuators [36].
- Energy-Efficient Smoothing: Optimizing paths to minimize energy consumption, which is particularly important for battery-operated robots [37].
- Adaptive Smoothing: Dynamically adjusting the smoothness of the path based on environmental changes and obstacle movements [38].
3.4. Time Cost in Robotic Navigation
- is the state space of the robot dynamics,
- x is the state vector, consisting of position, velocity, and possibly acceleration,
- u is the control input that may depend on voltage, torque, or other functions of control manipulators,
- T is the total execution time.
- is the robot motion acceleration, which is a function of the control input at the k-th time sample,
- N is the final time step when the robot reaches the goal,
- is the k-th collision-free waypoint.
- is the velocity of the robot,
- is the control input,
- is a weighting factor that balances the trade-off between velocity and control effort.
- is a penalty function that increases the cost when the robot approaches obstacles or violates environmental constraints,
- is a weighting factor for the control effort.
- M is the number of robots,
- is a penalty function that ensures collision avoidance between robots j and k.
- Reward Function: Designed to penalize time consumption and deviations from the desired trajectory.
- State-Action Space: Encodes the robot’s dynamics and environmental constraints.
- Training Efficiency: Measured by the convergence rate and computational resources required.
- Horizon Length: Determines the number of future steps considered in the optimization.
- Constraint Handling: Ensures feasibility of the trajectory under dynamic and environmental constraints.
- Computational Complexity: Measured by the time required to solve the optimization problem at each time step.
- Pareto Front: Represents the trade-off between competing objectives.
- Weighting Factors: Used to prioritize time-optimality over other objectives.
- Scalability: Evaluated based on the ability to handle high-dimensional state spaces.
- Replanning Frequency: Determines how often the trajectory is updated.
- Convergence Speed: Measures the time required to adapt to new environmental conditions.
- Robustness: Evaluated based on the ability to handle uncertainties and disturbances.
- Autonomous vehicles,
- Industrial robotics,
- Aerial drones.
3.5. Energy Cost in Robotic Navigation
- Kinetic Energy (Ek): Energy associated with the robot’s motion.
- Traction Resistance Energy (Ef): Energy dissipated in overcoming traction resistances.
- Motor Heating Energy (Ee): Energy lost as heat in the motors.
- Mechanical Friction Energy (Em): Energy dissipated in overcoming friction torque.
- Idle Energy (Eidle): Energy consumed by idling motors and onboard electric devices.
- is the total power consumption and loss at time t,
- T is the total execution time.
- is the power consumed during motion,
- is the power consumed during idle states.
- is the efficiency of the regenerative braking system,
- is the power generated during braking.
3.6. Risk Cost in Robotic Navigation
- Collision Risk: Probability of collisions with environmental elements or individuals.
- Robot Malfunction: Probability of robot failure or abrupt movements.
- Environmental Hazards: Probability of natural events such as rain or wind increasing the risk of slipping or crashing.
- is the probability of a risk event at time t,
- is the cost associated with the event.
- is the neural network function,
- represents the network parameters.
- is the membership function for the i-th risk factor,
- is the cost associated with the i-th risk factor.
3.7. Integration of Optimization Criteria
5. Overview of Collision-Free Path Planning Strategy
5.1. Hybrid Path Planning
- is the hybrid path,
- is the globally optimal path,
- is the locally adjusted path,
- is a weighting factor that balances global and local planning.
5.2. Real-Time Adaptation
- is the robot’s state at time t,
- is the reference trajectory,
- is the control input,
- T is the prediction horizon.
5.3. Recent Advancements in Collision-Free Path Planning
- Deep Reinforcement Learning (DRL): DRL-based approaches have been employed to learn collision-free navigation policies in complex environments [73].
- Multi-Agent Path Planning: Techniques for coordinating multiple robots to avoid collisions while achieving individual goals [74].
- Uncertainty-Aware Planning: Methods that account for uncertainties in sensor data and environmental dynamics [75].
- Energy-Efficient Path Planning: Energy-efficient path planning combines optimization of energy consumption with collision avoidance, employing various algorithmic strategies tailored to different robotic systems and environments. These approaches address challenges like terrain roughness, multi-agent coordination, and dynamic obstacles while minimizing motion costs [76].
7. Conclusion
Key Takeaways for Future Research
- Transformer-Based Planning: Future systems should explore integrating spatial-temporal attention mechanisms into planning pipelines to improve generalization and context-aware navigation, especially in multi-agent and partially observable environments.
- Real-Time and Embedded Efficiency: Further innovation is needed to support GPU and neuromorphic execution on power-constrained platforms, ensuring autonomy is feasible for small-scale robots and edge devices.
- Scalable Multi-Agent Coordination: Scalability remains a bottleneck. Approaches that combine decentralized optimization, learning-based approximations, and adaptive communication protocols are promising.
- Safe and Ethical Optimization: New planning frameworks should incorporate constraints and verification layers that explicitly account for safety, fairness, and human preferences, particularly when operating alongside humans.
- Standardization and Benchmarking: To assess progress meaningfully, standardized evaluation frameworks and real-world benchmarks—particularly those involving uncertainty, real-time constraints, and ethical dilemmas—must be developed.
Author Contributions
Funding
References
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| Method | Mathematical Definition | Parameters and Description |
|---|---|---|
| Bézier Curve [24,27] | Parameters: , (control points), n (degree). | |
| Description: Smooth curve defined by control points, parameterized by t. | ||
| Elastic Stretching [39] | Parameters: (curvature), s (arc length). | |
| Description: Minimizes total squared curvature for smooth paths. | ||
| Minimum Angle Difference [24] | Parameters: (angle at waypoint i). | |
| Description: Minimizes angular difference for smooth turns. | ||
| Curvature Continuity [35] | Parameters: (curvature derivative). | |
| Description: Ensures continuous curvature along the path. | ||
| Jerk Minimization [36] | Parameters: (jerk at time t). | |
| Description: Minimizes jerk for smoother motion. | ||
| Energy-Efficient Smoothing [37] | Parameters: (force/energy as a function of velocity). | |
| Description: Optimizes energy consumption. | ||
| Adaptive Smoothing [38] | Parameters: (curvature at arc length s and time t). | |
| Description: Dynamically adjusts smoothness based on environment. |
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