


default search action
ICONS 2020: Oak Ridge, Tennessee, USA
- Thomas E. Potok, Catherine D. Schuman:

Proceedings of the International Conference on Neuromorphic Systems, ICONS 2020, Oak Ridge, Tennessee, USA, July, 2020. ACM 2020, ISBN 978-1-4503-8851-1 - Bojian Yin

, Federico Corradi
, Sander M. Bohté:
Effective and Efficient Computation with Multiple-timescale Spiking Recurrent Neural Networks. 1:1-1:8 - Angel Yanguas-Gil

:
Coarse scale representation of spiking neural networks: backpropagation through spikes and application to neuromorphic hardware. 2:1-2:7 - Ali Lotfi-Rezaabad, Sriram Vishwanath:

Long Short-Term Memory Spiking Networks and Their Applications. 3:1-3:9 - Daniel Elbrecht, Catherine D. Schuman

:
Neuroevolution of Spiking Neural Networks Using Compositional Pattern Producing Networks. 4:1-4:5 - Michael Hampo, David Fan, Todd Jenkins, Ashley DeMange, Stefan Westberg, Trevor J. Bihl, Tarek M. Taha:

Associative Memory in Spiking Neural Network Form Implemented on Neuromorphic Hardware. 5:1-5:8 - Jimmy Gammell, Sae Woo Nam, Adam N. McCaughan:

Layer-skipping connections facilitate training of layered networks using equilibrium propagation. 6:1-6:4 - Ruthvik Vaila, John N. Chiasson, Vishal Saxena:

Continuous Learning in a Single-Incremental-Task Scenario with Spike Features. 7:1-7:4 - Andrew Fountain, Cory E. Merkel:

Energy Constraints Improve Liquid State Machine Performance. 8:1-8:8 - Yutong Gao, Shang Wu, Gina C. Adam

:
Batch Training for Neuromorphic Systems with Device Non-idealities. 9:1-9:4 - William Severa, Ryan Dellana, Craig M. Vineyard

:
Effective Pruning of Binary Activation Neural Networks. 10:1-10:5 - Clemens J. S. Schaefer, Siddharth Joshi:

Quantizing Spiking Neural Networks with Integers. 11:1-11:8 - Byungik Ahn:

Implementation of a 12-Million Hodgkin-Huxley Neuron Network on a Single Chip. 12:1-12:8 - Janak Sharda

, Nilabjo Dey, Ankesh Jain
, Debanjan Bhowmik
:
Reduction of the Weight-Decay Rate of Volatile Memory Synapses in an Analog Hardware Neural Network for Accurate and Scalable On-Chip Learning. 13:1-13:8 - Shikhar Tuli, Debanjan Bhowmik

:
Design of a Conventional-Transistor-Based Analog Integrated Circuit for On-Chip Learning in a Spiking Neural Network. 14:1-14:8 - Zhehui Wang

, Huaipeng Zhang, Tao Luo
, Weng-Fai Wong
, Anh-Tuan Do, Paramasivam Vishnu, Wei Zhang, Rick Siow Mong Goh:
NCPower: Power Modelling for NVM-based Neuromorphic Chip. 15:1-15:7 - J. Parker Mitchell, Catherine D. Schuman

, Thomas E. Potok:
A Small, Low Cost Event-Driven Architecture for Spiking Neural Networks on FPGAs. 16:1-16:4 - Samiran Ganguly, Avik W. Ghosh:

Building Reservoir Computing Hardware Using Low Energy-Barrier Magnetics. 17:1-17:8 - Rajkumar Kubendran

, Weier Wan
, Siddharth Joshi, H.-S. Philip Wong, Gert Cauwenberghs
:
A 1.52 pJ/Spike Reconfigurable Multimodal Integrate-and-Fire Neuron Array Transceiver. 18:1-18:4 - Rami A. Alzahrani, Alice C. Parker:

Neuromorphic Circuits With Neural Modulation Enhancing the Information Content of Neural Signaling. 19:1-19:8 - John Carter

, Jocelyn Rego, Daniel Schwartz
, Vikas Bhandawat, Edward Kim:
Learning Spiking Neural Network Models of Drosophila Olfaction. 20:1-20:5 - Frances S. Chance

:
Interception from a Dragonfly Neural Network Model. 21:1-21:5 - Adithya Gurunathan, Laxmi R. Iyer:

Spurious learning in networks with Spike Driven Synaptic Plasticity. 22:1-22:8 - Ioannis Polykretis, Guangzhi Tang

, Konstantinos P. Michmizos:
An Astrocyte-Modulated Neuromorphic Central Pattern Generator for Hexapod Robot Locomotion on Intel's Loihi. 23:1-23:9 - Neil Getty, Zixuan Zhao

, Stephan Gruessner, Liaohai Chen, Fangfang Xia:
Recurrent and Spiking Modeling of Sparse Surgical Kinematics. 24:1-24:5 - Md. Shahanur Alam, Chris Yakopcic, Guru Subramanyam, Tarek M. Taha:

Memristor Based Neuromorphic Adaptive Resonance Theory for One-Shot Online Learning and Network Intrusion Detection. 25:1-25:8 - Kathleen E. Hamilton, Tiffany M. Mintz, Prasanna Date

, Catherine D. Schuman
:
Spike-based graph centrality measures. 26:1-26:8 - J. Darby Smith

, William Severa, Aaron J. Hill, Leah Reeder
, Brian Franke, Richard B. Lehoucq, Ojas D. Parekh, James B. Aimone
:
Solving a steady-state PDE using spiking networks and neuromorphic hardware. 27:1-27:8 - Kathleen E. Hamilton, Prasanna Date

, Bill Kay
, Catherine D. Schuman
:
Modeling epidemic spread with spike-based models. 28:1-28:5

manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.


Google
Google Scholar
Semantic Scholar
Internet Archive Scholar
CiteSeerX
ORCID














