Sign Up to like & get
recommendations!
0
Published in 2018 at "Acta Materialia"
DOI: 10.1016/j.actamat.2018.09.025
Abstract: Abstract The mechanical properties of materials usually depend on the size of the considered object. Silicon, for instance, undergoes between the macroscopic and nanometer scales, a brittle-to-ductile transition at room temperature. Although essential for the…
read more here.
Keywords:
low temperature;
temperature;
intrinsic plasticity;
temperature intrinsic ... See more keywords
Sign Up to like & get
recommendations!
0
Published in 2019 at "Neurocomputing"
DOI: 10.1016/j.neucom.2019.07.009
Abstract: Abstract In this paper, the computational performance of a Spiking Feed-forward Neural Network (SFNN) is investigated based on a brain-inspired Intrinsic Plasticity (IP) mechanism, which is a membrane potential adaptive tuning scheme used to change…
read more here.
Keywords:
intrinsic plasticity;
neural networks;
plasticity mechanism;
spiking feed ... See more keywords
Sign Up to like & get
recommendations!
0
Published in 2020 at "Nature Electronics"
DOI: 10.1038/s41928-020-0412-1
Abstract: Neuromorphic architectures merge learning and memory functions within a single unit cell and in a neuron-like fashion. Research in the field has been mainly focused on the plasticity of artificial synapses. However, the intrinsic plasticity…
read more here.
Keywords:
intrinsic plasticity;
plasticity;
memory;
silicon nanowire ... See more keywords
Sign Up to like & get
recommendations!
0
Published in 2020 at "eNeuro"
DOI: 10.1523/eneuro.0453-19.2020
Abstract: Abstract Muscarinic acetylcholine receptors (mAChRs) inhibit small-conductance calcium-activated K+ channels (SK channels) and enhance synaptic weight via this mechanism. SK channels are also involved in activity-dependent plasticity of membrane excitability (“intrinsic plasticity”). Here, we investigate…
read more here.
Keywords:
mouse primary;
plasticity;
sk2;
intrinsic plasticity ... See more keywords
Sign Up to like & get
recommendations!
0
Published in 2017 at "Frontiers in Computational Neuroscience"
DOI: 10.3389/fncom.2017.00074
Abstract: Dynamic neural fields (DNFs) are dynamical systems models that approximate the activity of large, homogeneous, and recurrently connected neural networks based on a mean field approach. Within dynamic field theory, the DNFs have been used…
read more here.
Keywords:
intrinsic plasticity;
input;
fields intrinsic;
neural fields ... See more keywords