ROCVSYOCApr 4, 2023

HALO: Hazard-Aware Landing Optimization for Autonomous Systems

arXiv:2304.01583v17 citationsh-index: 42
Originality Incremental advance
AI Analysis

This addresses safety-critical landing for autonomous aerial vehicles like Mars rovers, representing an incremental advance in domain-specific hazard-aware planning.

The paper tackles the problem of autonomous landing in uncertain environments by developing a coupled perception-planning solution, achieving greater landing success and improved fuel efficiency compared to a nonadaptive baseline in simulated Martian tests.

With autonomous aerial vehicles enacting safety-critical missions, such as the Mars Science Laboratory Curiosity rover's landing on Mars, the tasks of automatically identifying and reasoning about potentially hazardous landing sites is paramount. This paper presents a coupled perception-planning solution which addresses the hazard detection, optimal landing trajectory generation, and contingency planning challenges encountered when landing in uncertain environments. Specifically, we develop and combine two novel algorithms, Hazard-Aware Landing Site Selection (HALSS) and Adaptive Deferred-Decision Trajectory Optimization (Adaptive-DDTO), to address the perception and planning challenges, respectively. The HALSS framework processes point cloud information to identify feasible safe landing zones, while Adaptive-DDTO is a multi-target contingency planner that adaptively replans as new perception information is received. We demonstrate the efficacy of our approach using a simulated Martian environment and show that our coupled perception-planning method achieves greater landing success whilst being more fuel efficient compared to a nonadaptive DDTO approach.

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