Anda belum login :: 20 Jul 2025 18:04 WIB
Detail
ArtikelNeuronal Plasticity and Temporal Adaptivity: GasNet Robot Control Networks  
Oleh: Smith, Tom ; Husbands, Phil ; Philippides, Andy ; O'Shea, Michael
Jenis: Article from Journal - e-Journal
Dalam koleksi: Adaptive Behavior vol. 10 no. 3-4 (Jul. 2002), page 161–183.
Topik: evolutionary robotics; artificial neural networks; GasNets; neuromodulation; neuronal plasticity
Fulltext: 161.pdf (1.5MB)
Isi artikelDesigning controllers for autonomous robots is not an exact science, and there are few guiding principles on what properties of control systems are useful for what kinds of task. In this article we analyze the functional operation of robot controllers developed using evolutionary computation methods, to elucidate the strengths and weaknesses of the underlying control system class. By comparing and contrasting robot controllers based on two different classes of artificial neural network, the GasNet and NoGas networks, we show that the increased evolvability of the GasNet class on a visual shape discrimination task is due to the temporally adaptive nature of the GasNet, where neuronal plasticity mediated through the concentration of virtual neuromodulatory “gases” occurs over a wide range of time courses. We argue that the availability of mechanisms operating over a wide range of potential time courses is a crucial property for controllers used to generate adaptive behavior over time, and that the design process should easily be able to adapt those time courses to the natural time scales in the environment.
Opini AndaKlik untuk menuliskan opini Anda tentang koleksi ini!

Kembali
design
 
Process time: 0 second(s)