Improving the robustness of analog deep neural networks through a Bayes-optimized noise injection approach

N Ye, L Cao, L Yang, Z Zhang, Z Fang, Q Gu… - Communications …, 2023 - nature.com
Analog deep neural networks (DNNs) provide a promising solution, especially for
deployment on resource-limited platforms, for example in mobile settings. However, the …

Computing-in-memory neural network accelerators for safety-critical systems: Can small device variations be disastrous?

Z Yan, XS Hu, Y Shi - Proceedings of the 41st IEEE/ACM International …, 2022 - dl.acm.org
Computing-in-Memory (CiM) architectures based on emerging nonvolatile memory (NVM)
devices have demonstrated great potential for deep neural network (DNN) acceleration …

[PDF][PDF] A Survey on Neuromorphic Architectures for Running Artificial Intelligence Algorithms

SAA Wahid, A Asad, F Mohammadi - Electronics, 2024 - preprints.org
Neuromorphic computing, a brain inspired non-Von Neumann computing system, addresses
the challenges posed by the Moore's law memory wall phenomenon. It has the capability to …

Enhancing reliability of neural networks at the edge: Inverted normalization with stochastic affine transformations

ST Ahmed, K Danouchi, G Prenat… - … , Automation & Test …, 2024 - ieeexplore.ieee.org
Bayesian Neural Networks (BayNNs) naturally provide uncertainty in their predictions,
making them a suitable choice in safety-critical applications. Additionally, their realization …

Programming Techniques of Resistive Random-Access Memory Devices for Neuromorphic Computing

P Machado, S Manich, Á Gómez-Pau… - Electronics, 2023 - mdpi.com
Neuromorphic computing offers a promising solution to overcome the von Neumann
bottleneck, where the separation between the memory and the processor poses increasing …

A Design Methodology for Fault-Tolerant Neuromorphic Computing Using Bayesian Neural Network

D Gao, X Xie, D Wei - Micromachines, 2023 - mdpi.com
Memristor crossbar arrays are a promising platform for neuromorphic computing. In practical
scenarios, the synapse weights represented by the memristors for the underlying system are …

Programming techniques of resistive random-access memory devices for neuromorphic computing

P Machado Panadés, S Manich Bou… - Electronics …, 2023 - upcommons.upc.edu
Neuromorphic computing offers a promising solution to overcome the von Neumann
bottleneck, where the separation between the memory and the processor poses increasing …

Machine learning-based predictive dynamics for vehicle motion control

S Zeng, Y Zhang, BB Litkouhi - US Patent App. 18/049,809, 2024 - Google Patents
A method includes receiving sensed vehicle-state data, actuation-command data, and
surface-coefficient data from a plurality of remote vehicles, inputting the sensed vehicle-state …