Risk-Aware Graph Search with Dynamic Edge Cost Discovery

Author(s):  
Ryan Skeele ◽  
Jen Jen Chung ◽  
Geoffrey A. Hollinger
Keyword(s):  
2018 ◽  
Vol 38 (2-3) ◽  
pp. 182-195 ◽  
Author(s):  
Jen Jen Chung ◽  
Andrew J Smith ◽  
Ryan Skeele ◽  
Geoffrey A Hollinger

In this paper, we introduce a novel algorithm for incorporating uncertainty into lookahead planning. Our algorithm searches through connected graphs with uncertain edge costs represented by known probability distributions. As a robot moves through the graph, the true edge costs of adjacent edges are revealed to the planner prior to traversal. This locally revealed information allows the planner to improve performance by predicting the benefit of edge costs revealed in the future and updating the plan accordingly in an online manner. Our proposed algorithm, risk-aware graph search (RAGS), selects paths with high probability of yielding low costs based on the probability distributions of individual edge traversal costs. We analyze RAGS for its correctness and computational complexity and provide a bounding strategy to reduce its complexity. We then present results in an example search domain and report improved performance compared with traditional heuristic search techniques. Lastly, we implement the algorithm in both simulated missions and field trials using satellite imagery to demonstrate the benefits of risk-aware planning through uncertain terrain for low-flying unmanned aerial vehicles.


Author(s):  
Sam Anand ◽  
Mohamed Sabri

Abstract Robots play an important role in the modern factory and are used in a manufacturing cell for several functions such as assembly, material handling, robotic welding, etc. One of the principal problems faced by robots while performing their tasks is the presence of obstacles such as fixtures, tools, and objects in the robot workspace. Such objects could result in a collision with one of the arms of the robots. Fast collision-free motion planning algorithms are therefore necessary for robotic manipulators to operate in a wide variety of changing environments. The configuration space approach is one of the widely used methods for collision-free robotic path planning. This paper presents a novel graph-based method of searching the configuration space for a collision-free path in a robotic assembly operation. Dijkstra’s graph search algorithm is used for optimizing the joint displacements of the robot while performing the assembly task. The methodology is illustrated using a simple robotic assembly planning task.


Author(s):  
Xinbiao Gan ◽  
Yiming Zhang ◽  
Ruibo Wang ◽  
Tiejun Li ◽  
Tiaojie Xiao ◽  
...  
Keyword(s):  

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