# An in-depth analysis of UAV path planning, including procedures, algorithms, optimization models, and emerging challenges

**Authors:** Muhammad Nafees, Tamkeen Syeda, Amjad Ali, Hira Farman, Muhammad Tayyab

PMC · DOI: 10.1016/j.mex.2026.103826 · MethodsX · 2026-02-17

## TL;DR

This paper reviews UAV path planning methods, evaluates their pros and cons, and highlights future research needs for better autonomous navigation.

## Contribution

A structured survey of UAV path planning techniques and emerging challenges, emphasizing gaps in real-time and multi-UAV systems.

## Key findings

- Traditional, heuristic, and AI-driven algorithms each have distinct strengths and weaknesses in UAV navigation.
- Real-time processing and multi-UAV coordination remain significant challenges in current path planning systems.
- Energy efficiency and environmental adaptability are critical for practical UAV deployment in complex settings.

## Abstract

•Comprehensive Overview – The paper surveys UAV path planning research, covering classification techniques, traditional, heuristic / metaheuristic, hybrid, and AI-driven algorithms, along with various problem models.•Key Insights – It evaluates the strengths and weaknesses of existing methods, highlighting their effectiveness in ensuring safe, energy-efficient, and adaptive UAV navigation in complex environments.•Future Directions – The study identifies research gaps and emphasizes challenges such as real-time processing, multi-UAV coordination, energy efficiency, and environmental concerns to guide future innovations.

Comprehensive Overview – The paper surveys UAV path planning research, covering classification techniques, traditional, heuristic / metaheuristic, hybrid, and AI-driven algorithms, along with various problem models.

Key Insights – It evaluates the strengths and weaknesses of existing methods, highlighting their effectiveness in ensuring safe, energy-efficient, and adaptive UAV navigation in complex environments.

Future Directions – The study identifies research gaps and emphasizes challenges such as real-time processing, multi-UAV coordination, energy efficiency, and environmental concerns to guide future innovations.

Unmanned aerial vehicles (UAVs) have emerged as valuable assets in modern surveillance, environmental monitoring, disaster response, and delivery systems. Their autonomy is built around effective path planning, which provides safe, energy-efficient, and goal-oriented navigation in complex, dynamic environments. This paper provides a comprehensive overview of UAV path planning research, encompassing classification techniques, heuristic and metaheuristic algorithms, and underlying problem models. It emphasizes significant contributions from traditional, hybrid, and AI-driven techniques while carefully highlighting upcoming issues, such as real-time processing, multi-UAV coordination, energy limitations, and environmental concerns. The study provides a detailed assessment of the strengths and weaknesses of significant algorithms, allowing for the identification of research gaps and future initiatives. This paper is an invaluable resource for researchers and practitioners seeking to create robust, scalable, and adaptive UAV route planning systems appropriate for a wide range of mission-specific and real-world applications.

Image, graphical abstract

## Full-text entities

- **Chemicals:** ABC (-)
- **Species:** Drosophila melanogaster (fruit fly, species) [taxon 7227], Megaptera novaeangliae (humpback whale, species) [taxon 9773]

## Full text

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## Figures

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## References

68 references — full list in the complete paper: https://tomesphere.com/paper/PMC12969461/full.md

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Source: https://tomesphere.com/paper/PMC12969461