Airborne Neural Network
- URL: http://arxiv.org/abs/2505.24513v1
- Date: Fri, 30 May 2025 12:22:02 GMT
- Title: Airborne Neural Network
- Authors: Paritosh Ranjan, Surajit Majumder, Prodip Roy,
- Abstract summary: This paper proposes a novel concept: the Airborne Neural Network a distributed architecture where multiple airborne devices each host a subset of neural network neurons.<n>This approach has the potential to revolutionize Aerospace applications, including airborne air traffic control, real-time weather and geographical predictions, and dynamic geospatial data processing.
- Score: 0.17205106391379024
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep Learning, driven by neural networks, has led to groundbreaking advancements in Artificial Intelligence by enabling systems to learn and adapt like the human brain. These models have achieved remarkable results, particularly in data-intensive domains, supported by massive computational infrastructure. However, deploying such systems in Aerospace, where real time data processing and ultra low latency are critical, remains a challenge due to infrastructure limitations. This paper proposes a novel concept: the Airborne Neural Network a distributed architecture where multiple airborne devices each host a subset of neural network neurons. These devices compute collaboratively, guided by an airborne network controller and layer specific controllers, enabling real-time learning and inference during flight. This approach has the potential to revolutionize Aerospace applications, including airborne air traffic control, real-time weather and geographical predictions, and dynamic geospatial data processing. By enabling large-scale neural network operations in airborne environments, this work lays the foundation for the next generation of AI powered Aerospace systems.
Related papers
- Predicting Large-scale Urban Network Dynamics with Energy-informed Graph Neural Diffusion [51.198001060683296]
Networked urban systems facilitate the flow of people, resources, and services.<n>Current models such as graph neural networks have shown promise but face a trade-off between efficacy and efficiency.<n>This paper addresses this trade-off by drawing inspiration from physical laws to inform essential model designs.
arXiv Detail & Related papers (2025-07-31T01:24:01Z) - Brain-Inspired Decentralized Satellite Learning in Space Computing Power Networks [42.67808523367945]
Space Computing Power Networks (Space-CPN) emerges as a promising architecture to coordinate the computing capability of satellites and enable on board data processing.<n>We propose to employ spiking neural networks (SNNs), which is supported by the neuromorphic computing architecture, for on-board data processing.<n>We put forward a decentralized neuromorphic learning framework, where a communication-efficient inter-plane model aggregation method is developed.
arXiv Detail & Related papers (2025-01-27T12:29:47Z) - Machine Learning-Based User Scheduling in Integrated
Satellite-HAPS-Ground Networks [82.58968700765783]
Integrated space-air-ground networks promise to offer a valuable solution space for empowering the sixth generation of communication networks (6G)
This paper showcases the prospects of machine learning in the context of user scheduling in integrated space-air-ground communications.
arXiv Detail & Related papers (2022-05-27T13:09:29Z) - Monolithic Silicon Photonic Architecture for Training Deep Neural
Networks with Direct Feedback Alignment [0.6501025489527172]
We propose on-chip training of neural networks enabled by a CMOS-compatible silicon photonic architecture.
Our scheme employs the direct feedback alignment training algorithm, which trains neural networks using error feedback rather than error backpropagation.
We experimentally demonstrate training a deep neural network with the MNIST dataset using on-chip MAC operation results.
arXiv Detail & Related papers (2021-11-12T18:31:51Z) - WaveSense: Efficient Temporal Convolutions with Spiking Neural Networks
for Keyword Spotting [1.0152838128195467]
We propose spiking neural dynamics as a natural alternative to dilated temporal convolutions.
We extend this idea to WaveSense, a spiking neural network inspired by the WaveNet architecture.
arXiv Detail & Related papers (2021-11-02T09:38:22Z) - Deep Learning Aided Routing for Space-Air-Ground Integrated Networks
Relying on Real Satellite, Flight, and Shipping Data [79.96177511319713]
Current maritime communications mainly rely on satellites having meager transmission resources, hence suffering from poorer performance than modern terrestrial wireless networks.
With the growth of transcontinental air traffic, the promising concept of aeronautical ad hoc networking relying on commercial passenger airplanes is potentially capable of enhancing satellite-based maritime communications via air-to-ground and multi-hop air-to-air links.
We propose space-air-ground integrated networks (SAGINs) for supporting ubiquitous maritime communications, where the low-earth-orbit satellite constellations, passenger airplanes, terrestrial base stations, ships, respectively, serve as the space-, air-,
arXiv Detail & Related papers (2021-10-28T14:12:10Z) - Evolved neuromorphic radar-based altitude controller for an autonomous
open-source blimp [4.350434044677268]
In this paper, we propose an evolved altitude controller based on an SNN for a robotic airship.
We also present an SNN-based controller architecture, an evolutionary framework for training the network in a simulated environment, and a control strategy for ameliorating the gap with reality.
arXiv Detail & Related papers (2021-10-01T20:48:43Z) - Airfoil's Aerodynamic Coefficients Prediction using Artificial Neural
Network [0.0]
Figuring out the right airfoil is a crucial step in the preliminary stage of any aerial vehicle design.
This study compares different network architectures and training datasets in an attempt to gain insight as to how the network perceives the given airfoil geometries.
arXiv Detail & Related papers (2021-09-24T19:07:19Z) - On-board Volcanic Eruption Detection through CNNs and Satellite
Multispectral Imagery [59.442493247857755]
Authors propose a first prototype and a study of feasibility for an AI model to be 'loaded' on board.
As a case study, the authors decided to investigate the detection of volcanic eruptions as a method to swiftly produce alerts.
Two Convolutional Neural Networks have been proposed and created, also showing how to correctly implement them on real hardware.
arXiv Detail & Related papers (2021-06-29T11:52:43Z) - Federated Learning in the Sky: Aerial-Ground Air Quality Sensing
Framework with UAV Swarms [53.38353133198842]
Air quality significantly affects human health, it is increasingly important to accurately and timely predict the Air Quality Index (AQI)
This paper proposes a new federated learning-based aerial-ground air quality sensing framework for fine-grained 3D air quality monitoring and forecasting.
For ground sensing systems, we propose a Graph Convolutional neural network-based Long Short-Term Memory (GC-LSTM) model to achieve accurate, real-time and future AQI inference.
arXiv Detail & Related papers (2020-07-23T13:32:47Z) - Deep Learning for Ultra-Reliable and Low-Latency Communications in 6G
Networks [84.2155885234293]
We first summarize how to apply data-driven supervised deep learning and deep reinforcement learning in URLLC.
To address these open problems, we develop a multi-level architecture that enables device intelligence, edge intelligence, and cloud intelligence for URLLC.
arXiv Detail & Related papers (2020-02-22T14:38:11Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.