Abstract

With the accelerated development of robot technologies, control becomes one of the central themes of research. In traditional approaches, the controller, by its internal functionality, finds appropriate actions on the basis of specific objectives for the task at hand. While very successful in many applications, self-organized control schemes seem to be favored in large complex systems with unknown dynamics or which are difficult to model. Reasons are the expected scalability, robustness, and resilience of self-organizing systems. The paper presents a self-learning neurocontroller based on extrinsic differential plasticity introduced recently, applying it to an anthropomorphic musculoskeletal robot arm with attached objects of unknown physical dynamics. The central finding of the paper is the following effect: by the mere feedback through the internal dynamics of the object, the robot is learning to relate each of the objects with a very specific sensorimotor pattern. Specifically, an attached pendulum pilots the arm into a circular motion, a half-filled bottle produces axis oriented shaking behavior, a wheel is getting rotated, and wiping patterns emerge automatically in a table-plus-brush setting. By these object-specific dynamical patterns, the robot may be said to recognize the object's identity, or in other words, it discovers dynamical affordances of objects. Furthermore, when including hand coordinates obtained from a camera, a dedicated hand-eye coordination self-organizes spontaneously. These phenomena are discussed from a specific dynamical system perspective. Central is the dedicated working regime at the border to instability with its potentially infinite reservoir of (limit cycle) attractors “waiting” to be excited. Besides converging toward one of these attractors, variate behavior is also arising from a self-induced attractor morphing driven by the learning rule. We claim that experimental investigations with this anthropomorphic, self-learning robot not only generate interesting and potentially useful behaviors, but may also help to better understand what subjective human muscle feelings are, how they can be rooted in sensorimotor patterns, and how these concepts may feed back on robotics.

Highlights

  • Control is a ubiquitous theme of life and technology

  • While the complexity of programming stands as a challenge for decades, in recent times considerable progress has been achieved by new materials (Kim et al, 2013), powerful actuators (Raibert et al, 2008), the improved theory of control (Siciliano et al, 2009), but in particular by the tremendous increase in computational power that allows modeling and physically realistic simulations of very complex systems to improve planning and control (Mordatch et al, 2012; Erez et al, 2013; Posa et al, 2014) and even allows to simulate large controlled muscular body systems (Yamane and Nakamura, 2011), or find new perspectives for artificial evolution (Bongard, 2015) by exploiting super computer power

  • An attached pendulum drives the arm into a circular motion, a half-filled bottle produces axis oriented shaking behavior, a wheel is getting rotated, and wiping patterns emerge automatically in a table-plus-brush setting. This is of interest for the self-organized acquisition of behavioral primitives but there is more: as the emerging patterns are object specific, we may say that the robot was able of identifying the object’s identity by just the feedback through the internal dynamics of the object

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Summary

INTRODUCTION

Control is a ubiquitous theme of life and technology. When reaching for a cup of coffee or walking through the mountains, our nervous system controls all movements with great ease, despite the great uncertainty involved in controlling the muscles, the complexity of the task and many other factors. An attached pendulum drives the arm into a circular motion, a half-filled bottle produces axis oriented shaking behavior, a wheel is getting rotated, and wiping patterns emerge automatically in a table-plus-brush setting This is of interest for the self-organized acquisition of behavioral primitives but there is more: as the emerging patterns are object specific, we may say that the robot was able of identifying the object’s identity by just the feedback through the (unknown) internal dynamics of the object.

ROBOT BEHAVIOR AS A SELF-EXCITED PHYSICAL MODE
Learning Dynamics
Properties
EXPERIMENTS
Peculiarities of Muscle-tendon Driven Systems
Self-Regulated Working Regime
Manipulability
Emerging Modes
Rotating a Wheel
Wiping
Hand-Eye Coordination
Perspectives for Goal Oriented Behavior
DISCUSSION
Full Text
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