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1.
Front Comput Neurosci ; 16: 948973, 2022.
Artigo em Inglês | MEDLINE | ID: mdl-36465959

RESUMO

Navigation in ever-changing environments requires effective motor behaviors. Many insects have developed adaptive movement patterns which increase their success in achieving navigational goals. A conserved brain area in the insect brain, the Lateral Accessory Lobe, is involved in generating small scale search movements which increase the efficacy of sensory sampling. When the reliability of an essential navigational stimulus is low, searching movements are initiated whereas if the stimulus reliability is high, a targeted steering response is elicited. Thus, the network mediates an adaptive switching between motor patterns. We developed Spiking Neural Network models to explore how an insect inspired architecture could generate adaptive movements in relation to changing sensory inputs. The models are able to generate a variety of adaptive movement patterns, the majority of which are of the zig-zagging kind, as seen in a variety of insects. Furthermore, these networks are robust to noise. Because a large spread of network parameters lead to the correct movement dynamics, we conclude that the investigated network architecture is inherently well-suited to generating adaptive movement patterns.

2.
Curr Biol ; 26(4): R166-8, 2016 Feb 22.
Artigo em Inglês | MEDLINE | ID: mdl-26906488

RESUMO

Bees and wasps are famous for many things, including elaborate flights to learn where their nest is. A new study provides precise, three-dimensional details of a wasp's head and body movements during such flights and reconstructs what the wasp sees.


Assuntos
Aprendizagem , Vespas , Animais , Abelhas , Cabeça , Movimento
3.
Artif Life ; 11(1-2): 139-60, 2005.
Artigo em Inglês | MEDLINE | ID: mdl-15811224

RESUMO

Recent years have seen the discovery of freely diffusing gaseous neurotransmitters, such as nitric oxide (NO), in biological nervous systems. A type of artificial neural network (ANN) inspired by such gaseous signaling, the GasNet, has previously been shown to be more evolvable than traditional ANNs when used as an artificial nervous system in an evolutionary robotics setting, where evolvability means consistent speed to very good solutions--here, appropriate sensorimotor behavior-generating systems. We present two new versions of the GasNet, which take further inspiration from the properties of neuronal gaseous signaling. The plexus model is inspired by the extraordinary NO-producing cortical plexus structure of neural fibers and the properties of the diffusing NO signal it generates. The receptor model is inspired by the mediating action of eurotransmitter receptors. Both models are shown to significantly further improve evolvability. We describe a series of analyses suggesting that the reasons for the increase in evolvability are related to the flexible loose coupling of distinct signaling mechanisms, one "chemical" and one "electrical."


Assuntos
Adaptação Fisiológica/fisiologia , Redes Neurais de Computação , Neurotransmissores/fisiologia , Robótica/métodos , Robótica/instrumentação
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