Multi-Agent Based Transfer Learning for Data-Driven Air Traffic
Applications
- URL: http://arxiv.org/abs/2401.14421v1
- Date: Tue, 23 Jan 2024 22:21:07 GMT
- Title: Multi-Agent Based Transfer Learning for Data-Driven Air Traffic
Applications
- Authors: Chuhao Deng and Hong-Cheol Choi and Hyunsang Park and Inseok Hwang
- Abstract summary: This paper proposes a Multi-Agent Bidirectional Representations from Transformers (MA-BERT) model that fully considers the multi-agent characteristic of the ATM system and learns air traffic controllers' decisions.
By pre-training the MA-BERT on a large dataset from a major airport and then fine-tuning it to other airports and specific air traffic applications, a large amount of the total training time can be saved.
- Score: 1.588400000775528
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Research in developing data-driven models for Air Traffic Management (ATM)
has gained a tremendous interest in recent years. However, data-driven models
are known to have long training time and require large datasets to achieve good
performance. To address the two issues, this paper proposes a Multi-Agent
Bidirectional Encoder Representations from Transformers (MA-BERT) model that
fully considers the multi-agent characteristic of the ATM system and learns air
traffic controllers' decisions, and a pre-training and fine-tuning transfer
learning framework. By pre-training the MA-BERT on a large dataset from a major
airport and then fine-tuning it to other airports and specific air traffic
applications, a large amount of the total training time can be saved. In
addition, for newly adopted procedures and constructed airports where no
historical data is available, this paper shows that the pre-trained MA-BERT can
achieve high performance by updating regularly with little data. The proposed
transfer learning framework and MA-BERT are tested with the automatic dependent
surveillance-broadcast data recorded in 3 airports in South Korea in 2019.
Related papers
- Amelia: A Large Model and Dataset for Airport Surface Movement Forecasting [12.684598713362007]
Amelia-48 is a large surface movement dataset collected using the System Wide Information Management (SWIM) Surface Movement Event Service (SMES)
Amelia-TF is a transformer-based next-token-prediction large multi-agent multi-airport trajectory forecasting model trained on 292 days.
It is validated on unseen airports with experiments showcasing the different prediction horizon lengths, ego-agent selection strategies, and training recipes.
arXiv Detail & Related papers (2024-07-30T20:50:48Z) - Deep Reinforcement Learning for Real-Time Ground Delay Program Revision and Corresponding Flight Delay Assignments [24.09560293826079]
Ground Delay Programs (GDP) is a prevalent Traffic Management Initiative used in Air Traffic Management (ATM) to reconcile capacity and demand discrepancies at airports.
We developed two RL models: Behavioral Cloning (BC) and Conservative Q-Learning (CQL)
These models are designed to enhance GDP efficiency by utilizing a sophisticated reward function that integrates ground and airborne delays and terminal area congestion.
arXiv Detail & Related papers (2024-05-14T03:48:45Z) - Forging Vision Foundation Models for Autonomous Driving: Challenges,
Methodologies, and Opportunities [59.02391344178202]
Vision foundation models (VFMs) serve as potent building blocks for a wide range of AI applications.
The scarcity of comprehensive training data, the need for multi-sensor integration, and the diverse task-specific architectures pose significant obstacles to the development of VFMs.
This paper delves into the critical challenge of forging VFMs tailored specifically for autonomous driving, while also outlining future directions.
arXiv Detail & Related papers (2024-01-16T01:57:24Z) - Big data-driven prediction of airspace congestion [40.02298833349518]
We present a novel data management and prediction system that accurately predicts aircraft counts for a particular airspace sector within the National Airspace System (NAS)
In the preprocessing step, the system processes the incoming raw data, reduces it to a compact size, and stores it in a compact database.
In the prediction step, the system learns from historical trajectories and uses their segments to collect key features such as sector boundary crossings, weather parameters, and other air traffic data.
arXiv Detail & Related papers (2023-10-13T09:57:22Z) - Online Evolutionary Neural Architecture Search for Multivariate
Non-Stationary Time Series Forecasting [72.89994745876086]
This work presents the Online Neuro-Evolution-based Neural Architecture Search (ONE-NAS) algorithm.
ONE-NAS is a novel neural architecture search method capable of automatically designing and dynamically training recurrent neural networks (RNNs) for online forecasting tasks.
Results demonstrate that ONE-NAS outperforms traditional statistical time series forecasting methods.
arXiv Detail & Related papers (2023-02-20T22:25:47Z) - Deep Reinforcement Learning Assisted Federated Learning Algorithm for
Data Management of IIoT [82.33080550378068]
The continuous expanded scale of the industrial Internet of Things (IIoT) leads to IIoT equipments generating massive amounts of user data every moment.
How to manage these time series data in an efficient and safe way in the field of IIoT is still an open issue.
This paper studies the FL technology applications to manage IIoT equipment data in wireless network environments.
arXiv Detail & Related papers (2022-02-03T07:12:36Z) - DAE : Discriminatory Auto-Encoder for multivariate time-series anomaly
detection in air transportation [68.8204255655161]
We propose a novel anomaly detection model called Discriminatory Auto-Encoder (DAE)
It uses the baseline of a regular LSTM-based auto-encoder but with several decoders, each getting data of a specific flight phase.
Results show that the DAE achieves better results in both accuracy and speed of detection.
arXiv Detail & Related papers (2021-09-08T14:07:55Z) - A Simplified Framework for Air Route Clustering Based on ADS-B Data [0.0]
This paper presents a framework that can support to detect the typical air routes between airports based on ADS-B data.
As a matter of fact, our framework can be taken into account to reduce practically the computational cost for air flow optimization.
arXiv Detail & Related papers (2021-07-07T08:55:31Z) - Spatio-Temporal Data Mining for Aviation Delay Prediction [15.621546618044173]
We present a novel aviation delay prediction system based on stacked Long Short-Term Memory (LSTM) networks for commercial flights.
The system learns from historical trajectories from automatic dependent surveillance-broadcast (ADS-B) messages.
Compared with previous schemes, our approach is demonstrated to be more robust and accurate for large hub airports.
arXiv Detail & Related papers (2021-03-20T18:37:06Z) - SMART: Simultaneous Multi-Agent Recurrent Trajectory Prediction [72.37440317774556]
We propose advances that address two key challenges in future trajectory prediction.
multimodality in both training data and predictions and constant time inference regardless of number of agents.
arXiv Detail & Related papers (2020-07-26T08:17:10Z) - Taurus: A Data Plane Architecture for Per-Packet ML [59.1343317736213]
We present the design and implementation of Taurus, a data plane for line-rate inference.
Our evaluation of a Taurus switch ASIC shows that Taurus operates orders of magnitude faster than a server-based control plane.
arXiv Detail & Related papers (2020-02-12T09:18:36Z)
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.