Title :
Linear prediction based uniform state sampling for sampling based motion planning systems
Author :
Chyon Hae Kim ; Sugawara, Shinji ; Sugano, S.
Author_Institution :
Honda Res. Inst. Japan Co., Ltd., Wako, Japan
fDate :
Nov. 29 2012-Dec. 1 2012
Abstract :
We discuss the optimality and computational efficiency of sampling based motion planning (SBMP), which calculates dynamically precise and approximately optimal state transitions using arbitrarily selected nonlinear control system models. To ensure high optimality and computational efficiency, SBMP requires an approximately uniform state sampling function, though the non-linearity of the system models does not allow a perfect function. We propose linear prediction-based uniform state sampling (LPUSS) that samples approximately uniform state points while ensuring a dynamically correct state transition profile with a small calculation cost. LPUSS samples a state by using the given non-linear control system model after determining the input values by using a local linear transition model. We developed a mechanical motion planning system using LPUSS, articulated body algorithm, and parallel computing techniques. To validate LPUSS, we conducted experiments on double, triple, and sixtuple inverted pendulum models. LPUSS showed better optimality and computational efficiency with the double and triple inverted pendulum models, compared with randomized kinodynamic planning (RKP), which is based on rapid random tree (RRT), and our previously proposed rapid semi-optimal motion-planning method in which state sampling is based on uniform inputs. In particular, compared with our previous method, LPUSS was respectively 130 times and 3,000 times faster on double and triple inverted pendulum models under the condition of the same optimality. LPUSS found an approximately optimal swing up motion for the sixtuple inverted pendulum model within 40 minutes. According to our survey, there is no other optimization method that is applicable to higher than quadruple inverted pendulum models with standard constraints.
Keywords :
computational complexity; nonlinear control systems; optimal control; path planning; pendulums; sampling methods; trees (mathematics); LPUSS; RKP; RRT; SBMP; arbitrarily selected nonlinear control system models; articulated body algorithm; calculation cost; computational efficiency; double inverted pendulum model; dynamically correct state transition profile; linear prediction based uniform state sampling; linear prediction-based uniform state sampling; local linear transition model; mechanical motion planning system; optimal state transitions; optimal swing up motion; optimality; optimization method; parallel computing techniques; quadruple inverted pendulum models; randomized kinodynamic planning; rapid random tree; rapid semioptimal motion-planning method; sampling based motion planning systems; sixtuple inverted pendulum model; standard constraints; state sampling function; system model nonlinearity; triple inverted pendulum model; Computational efficiency; Computational modeling; Equations; Mathematical model; Parallel processing; Planning; Torque;
Conference_Titel :
Humanoid Robots (Humanoids), 2012 12th IEEE-RAS International Conference on
Conference_Location :
Osaka
DOI :
10.1109/HUMANOIDS.2012.6651603