학술논문

On Neural Networks Redundancy and Diversity for Their Use in Safety-Critical Systems
Document Type
Periodical
Source
Computer. 56(5):41-50 May, 2023
Subject
Computing and Processing
Deep learning
Redundancy
Neural networks
Safety
Embedded systems
Contingency management
Language
ISSN
0018-9162
1558-0814
Abstract
An increasing number of critical functionalities integrated in embedded critical systems rely on deep learning (DL) technology. This article summarizes certain key aspects of DL’s intrinsic stochastic and training-data-dependent nature that are at odds with current domain-specific functional safety standards. We exemplify how redundancy and diversity of neural networks can help to reconcile DL technology and functional safety requirements.