In this work new artificial learning and innate control mechanisms are proposed for application in autonomous behavioral systems for mobile robots. An autonomous system (for mobile robots) existent in the literature is enhanced with respect to its capacity of exploring the environment and avoiding risky configurations (that lead to collisions with obstacles even after learning). The particular autonomous system is based on modular hierarchical neural networks. Initially,the autonomous system does not have any knowledge suitable for exploring the environment (and capture targets œ foraging). After a period of learning,the system generates efficientobstacle avoid ance and target seeking behaviors. Two particular deficiencies of the forme raut...
In this paper we propose a neural network based navigation for intelligent autonomous mobile robots....
Abstract. We describe an autonomous mobile robot that employs a simple sensorimotor learning algorít...
A local learning rule for recurrent neural networks is derived by introducing neurons as self-regula...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
Classical reinforcement learning mechanisms and a modular neural network are unified for conceiving ...
peer reviewedClassical reinforcement learning mechanisms and a modular neural network are unified to...
Classical reinforcement learning mechanisms and a modular neural network are unified for conceiving ...
An autonomous system able to construct its own navigation strategy for mobile robots is proposed. Th...
This paper describes a reinforcement connec-tionist learning mechanism that allows a goal-directed a...
Although behaviour-based robotics has been successfully used to develop autonomous mobile robots up ...
Abstract- In this work an autonomous navigation system based in a modular neuro-fuzzy network for co...
We present a neural network that learns to control approach and avoidance behaviors in a mobile robo...
A new way of building control systems, known as behavior-based robotics, has recently been proposed ...
We describe an autonomous mobile robot that employs a simple sensorimotor learning algorithm at thre...
In this paper we propose a neural network based navigation for intelligent autonomous mobile robots....
Abstract. We describe an autonomous mobile robot that employs a simple sensorimotor learning algorít...
A local learning rule for recurrent neural networks is derived by introducing neurons as self-regula...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
Classical reinforcement learning mechanisms and a modular neural network are unified for conceiving ...
peer reviewedClassical reinforcement learning mechanisms and a modular neural network are unified to...
Classical reinforcement learning mechanisms and a modular neural network are unified for conceiving ...
An autonomous system able to construct its own navigation strategy for mobile robots is proposed. Th...
This paper describes a reinforcement connec-tionist learning mechanism that allows a goal-directed a...
Although behaviour-based robotics has been successfully used to develop autonomous mobile robots up ...
Abstract- In this work an autonomous navigation system based in a modular neuro-fuzzy network for co...
We present a neural network that learns to control approach and avoidance behaviors in a mobile robo...
A new way of building control systems, known as behavior-based robotics, has recently been proposed ...
We describe an autonomous mobile robot that employs a simple sensorimotor learning algorithm at thre...
In this paper we propose a neural network based navigation for intelligent autonomous mobile robots....
Abstract. We describe an autonomous mobile robot that employs a simple sensorimotor learning algorít...
A local learning rule for recurrent neural networks is derived by introducing neurons as self-regula...