Article
A membrane parallel rapidly-exploring random tree algorithm for robotic motion planning
Author/s | Pérez Hurtado de Mendoza, Ignacio
Martínez del Amor, Miguel Ángel Zhang, Gexiang Neri, Ferrante Pérez Jiménez, Mario de Jesús |
Department | Universidad de Sevilla. Departamento de Ciencias de la Computación e Inteligencia Artificial |
Publication Date | 2020 |
Deposit Date | 2021-02-03 |
Published in |
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Abstract | In recent years, incremental sampling-based motion planning algorithms have been widely used to solve robot motion planning problems
in high-dimensional configuration spaces. In particular, the Rapidly-exploring Random ... In recent years, incremental sampling-based motion planning algorithms have been widely used to solve robot motion planning problems in high-dimensional configuration spaces. In particular, the Rapidly-exploring Random Tree (RRT) algorithm and its asymptotically-optimal counterpart called RRT* are popular algorithms used in real-life applications due to its desirable properties. Such algorithms are inherently iterative, but certain modules such as the collision-checking procedure can be parallelized providing significant speedup with respect to sequential implementations. In this paper, the RRT and RRT* algorithms have been adapted to a bioinspired computational framework called Membrane Computing whose models of computation, a.k.a. P systems, run in a non-deterministic and massively parallel way. A large number of robotic applications are currently using a variant of P systems called Enzymatic Numerical P systems (ENPS) for reactive controlling, but there is a lack of solutions for motion planning in the framework. The novel models in this work have been designed using the ENPS framework. In order to test and validate the ENPS models for RRT and RRT*, we present two ad-hoc implementations able to emulate the computation of the models using OpenMP and CUDA. Finally, we show the speedup of our solutions with respect to sequential baseline implementations. The results show a speedup up to 6x using OpenMP with 8 cores against the sequential implementation and up to 24x using CUDA against the best multi-threading configuration. |
Funding agencies | Ministerio de Economia, Industria y Competitividad (MINECO). España National Natural Science Foundation of China Beijing Advanced Innovation Center for Intelligent Robots and Systems Artificial Intelligence Key Laboratory of Sichuan Province New Generation Artificial Intelligence Science and Technology Major Project of Sichuan Province Sichuan Science and Technology Program |
Project ID. | TIN2017- 89842-P (MABICAP)
61972324 61672437 61702428 2019IRS14 2019RYJ06 2018GZDZX0043 2018GZ0185 2018GZ0086 |
Citation | Pérez Hurtado de Mendoza, I., Martínez del Amor, M.Á., Zhang, G., Neri, F. y Pérez Jiménez, M.d.J. (2020). A membrane parallel rapidly-exploring random tree algorithm for robotic motion planning. Integrated Computer-Aided Engineering, 27 (2), 121-138. |
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