Digital Twin-Enabled Online Battlefield Learning with Random Finite Sets

The digital twin is becoming the most promising emerging technology in the field of unmanned combat and has the potential to innovate future combat styles. Online battlefield learning is one of the key technologies for supporting the successful application of digital twin in unmanned combat. Since t...

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Main Authors: Peng Wang, Mei Yang, Jiancheng Zhu, Yong Peng, Ge Li
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2021/5582241
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spelling doaj-6770190338624c279871c447c2fe71e42021-05-24T00:15:16ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52732021-01-01202110.1155/2021/5582241Digital Twin-Enabled Online Battlefield Learning with Random Finite SetsPeng Wang0Mei Yang1Jiancheng Zhu2Yong Peng3Ge Li4College of Systems EngineeringCollege of Systems EngineeringCollege of Systems EngineeringCollege of Systems EngineeringCollege of Systems EngineeringThe digital twin is becoming the most promising emerging technology in the field of unmanned combat and has the potential to innovate future combat styles. Online battlefield learning is one of the key technologies for supporting the successful application of digital twin in unmanned combat. Since there is an urgent need for effective algorithms for online learning the battlefield states in real time, a new random finite set- (RFS-) based algorithm is proposed in the presence of detection uncertainty including clutters, missed detection, and noises. The system architecture and operational mode for implementing the digital twin-enabled online battlefield learning are provided. The unmanned ground vehicle (UGV) is employed as the experimental subject for systematically describing the proposed algorithm. The system architecture for implementing the digital twin-enabled online battlefield learning is firstly given, and its operational mode is also described in detail. The RFS-based digital twin models including the battlefield state model, UGV motion model, and sensor model are designed. The Bayesian inference is adopted, and the probability hypothesis density (PHD) filter is modified to implement the online learning process. At last, a group of experiments are conducted to verify the performance and effectiveness of the proposed algorithm. The research work in this paper will provide a good demonstration of the application of digital twin in unmanned combat.http://dx.doi.org/10.1155/2021/5582241
collection DOAJ
language English
format Article
sources DOAJ
author Peng Wang
Mei Yang
Jiancheng Zhu
Yong Peng
Ge Li
spellingShingle Peng Wang
Mei Yang
Jiancheng Zhu
Yong Peng
Ge Li
Digital Twin-Enabled Online Battlefield Learning with Random Finite Sets
Computational Intelligence and Neuroscience
author_facet Peng Wang
Mei Yang
Jiancheng Zhu
Yong Peng
Ge Li
author_sort Peng Wang
title Digital Twin-Enabled Online Battlefield Learning with Random Finite Sets
title_short Digital Twin-Enabled Online Battlefield Learning with Random Finite Sets
title_full Digital Twin-Enabled Online Battlefield Learning with Random Finite Sets
title_fullStr Digital Twin-Enabled Online Battlefield Learning with Random Finite Sets
title_full_unstemmed Digital Twin-Enabled Online Battlefield Learning with Random Finite Sets
title_sort digital twin-enabled online battlefield learning with random finite sets
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5273
publishDate 2021-01-01
description The digital twin is becoming the most promising emerging technology in the field of unmanned combat and has the potential to innovate future combat styles. Online battlefield learning is one of the key technologies for supporting the successful application of digital twin in unmanned combat. Since there is an urgent need for effective algorithms for online learning the battlefield states in real time, a new random finite set- (RFS-) based algorithm is proposed in the presence of detection uncertainty including clutters, missed detection, and noises. The system architecture and operational mode for implementing the digital twin-enabled online battlefield learning are provided. The unmanned ground vehicle (UGV) is employed as the experimental subject for systematically describing the proposed algorithm. The system architecture for implementing the digital twin-enabled online battlefield learning is firstly given, and its operational mode is also described in detail. The RFS-based digital twin models including the battlefield state model, UGV motion model, and sensor model are designed. The Bayesian inference is adopted, and the probability hypothesis density (PHD) filter is modified to implement the online learning process. At last, a group of experiments are conducted to verify the performance and effectiveness of the proposed algorithm. The research work in this paper will provide a good demonstration of the application of digital twin in unmanned combat.
url http://dx.doi.org/10.1155/2021/5582241
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AT meiyang digitaltwinenabledonlinebattlefieldlearningwithrandomfinitesets
AT jianchengzhu digitaltwinenabledonlinebattlefieldlearningwithrandomfinitesets
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