scholarly journals Path planning control using high abstraction level environment model and industrial task-oriented knowledge

Author(s):  
Florent Leoty ◽  
Philippe Fillatreau ◽  
Bernard Archimede
Robotica ◽  
1998 ◽  
Vol 16 (5) ◽  
pp. 575-588 ◽  
Author(s):  
Andreas C. Nearchou

A genetic algorithm for the path planning problem of a mobile robot which is moving and picking up loads on its way is presented. Assuming a findpath problem in a graph, the proposed algorithm determines a near-optimal path solution using a bit-string encoding of selected graph vertices. Several simulation results of specific task-oriented variants of the basic path planning problem using the proposed genetic algorithm are provided. The results obtained are compared with ones yielded by hill-climbing and simulated annealing techniques, showing a higher or at least equally well performance for the genetic algorithm.


2005 ◽  
Vol 45 (2) ◽  
pp. 313-321 ◽  
Author(s):  
M. Streibl ◽  
F. Zängl ◽  
K. Esmark ◽  
R. Schwencker ◽  
W. Stadler ◽  
...  

2020 ◽  
Vol 2020 ◽  
pp. 1-13
Author(s):  
Yongqiang Qi ◽  
Yi Ke

In this paper, fast path planning of on-water automatic rescue intelligent robot is studied based on the constant thrust artificial fluid method. First, a three-dimensional environment model is established, and then the kinematics equation of the robot is given. The constant thrust artificial fluid method based on the isochronous interpolation method is proposed, and a novel algorithm of constant thrust fitting is researched through the impulse compensation. The effect of obstacles on original fluid field is quantified by the perturbation matrix, and the streamlines can be regarded as the planned path. Simulation results demonstrate the effectiveness of this method by comparing with A-star algorithm and ant colony algorithm. It is proved that the planned path can avoid all obstacles smoothly and swiftly and reach the destination eventually.


Author(s):  
Dimitris Kehagias

Computer architecture is an essential topic in undergraduate Computer Science (CS) curricula. Teaching computer architecture courses to CS students can be challenging, as the concepts are on a high abstraction level and not easy to grasp for students. Learning of computer architecture abstracts is strongly reinforced by hands-on assignment experience. This paper presents results from a survey of assignments from 40 undergraduate computer architecture courses, which are offered in 40 CS departments. These surveyed courses are selected from universities listed among the 120 top North America universities by the Webometrics Ranking of World Universities 2015. The information used for this survey is based solely on material publicly accessible on the websites of courses.


Sensors ◽  
2021 ◽  
Vol 21 (11) ◽  
pp. 3606
Author(s):  
Bogdan Trăsnea ◽  
Cosmin Ginerică ◽  
Mihai Zaha ◽  
Gigel Măceşanu ◽  
Claudiu Pozna ◽  
...  

Autonomous mobile robots are usually faced with challenging situations when driving in complex environments. Namely, they have to recognize the static and dynamic obstacles, plan the driving path and execute their motion. For addressing the issue of perception and path planning, in this paper, we introduce OctoPath, which is an encoder-decoder deep neural network, trained in a self-supervised manner to predict the local optimal trajectory for the ego-vehicle. Using the discretization provided by a 3D octree environment model, our approach reformulates trajectory prediction as a classification problem with a configurable resolution. During training, OctoPath minimizes the error between the predicted and the manually driven trajectories in a given training dataset. This allows us to avoid the pitfall of regression-based trajectory estimation, in which there is an infinite state space for the output trajectory points. Environment sensing is performed using a 40-channel mechanical LiDAR sensor, fused with an inertial measurement unit and wheels odometry for state estimation. The experiments are performed both in simulation and real-life, using our own developed GridSim simulator and RovisLab’s Autonomous Mobile Test Unit platform. We evaluate the predictions of OctoPath in different driving scenarios, both indoor and outdoor, while benchmarking our system against a baseline hybrid A-Star algorithm and a regression-based supervised learning method, as well as against a CNN learning-based optimal path planning method.


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