Abstract

Recently, lightweight and flexible soft actuators have attracted interest from robotics researchers. We focused on pneumatic rubber artificial muscle (PAM) as a high-output soft actuator. The high compliance of PAM allows a robot to adapt flexibly to the environment without many external sensors. Although PAM has these characteristics, it is difficult to control because of the nonlinearity between the input and output and the delay of air response. This limits the accuracy of artificial muscles and complicates motion planning. Therefore, we considered that PAM can be driven by simplified control laws, so that the entire system shows emergent motion guided by metaheuristics. We developed a legged robot with two joints driven by PAMs. Each PAM was controlled with a cyclic signal, and the genetic algorithm was applied to optimize these signals. We tested to check whether the behavior of the PAMs is changed by the genetic algorithm using three simple performance indexes. We found out that although the genetic algorithm adjusted the local cyclic inputs appropriately according to each performance index, the time-varying characteristic of PAMs disturbed the monotonic increment of the evaluation values. We also discovered that by only adjusting the input timing, the leg develops a limitation in robustness.

Highlights

  • Soft actuators have attracted interest from robotics researchers for their characteristics of flexibility and light weight

  • This study focuses on pneumatic rubber artificial muscle (PAM) for use as a high-output soft actuator [1,2]

  • PAM-driven robot that canthat adjust behavior according to evaluation functions

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Summary

Introduction

Soft actuators have attracted interest from robotics researchers for their characteristics of flexibility and light weight. This study focuses on pneumatic rubber artificial muscle (PAM) for use as a high-output soft actuator [1,2]. In a complex environment such as irregular terrain and with many objects, a robot driven by soft actuators can flexibly change its own position and motion. Compensation of hysteresis based on modeling is attracting attention [8,9,10] These studies intend intend to to control control PAM in a more stable and accurate manner. Depend on the problem, weitexpect it to be applied widely to control use PAMs. In our each PAM driven by a simple law oflaw individuals that has information aboutabout the target task.

Straight-Fiber-Type
Controller
Cyclic
Cyclicwave
Figures andlow
Examples
Experiment
Evaluation Functions
Demonstration of Driving the Leg Robot without Load
Demonstration
18. Trajectory of leg tip using evaluation function
Conclusions
Full Text
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