Knowledge reasoning and strategy optimization for ship operation and maintenance based on digital twin and improved KD tree algorithm

Objective With the continuous development of industrial technology, the intelligence of modern ship processes has been continuously advancing. The propulsion system, auxiliary power system, etc. of ships have become increasingly intelligent, and ship maintenance work has become ever more complex. Di...

Full description

Saved in:
Bibliographic Details
Main Authors: Liyao ZHANG, Ziqian GUO, Ruifang LI, Xun YE, Tao MA
Format: Article
Language:English
Published: Editorial Office of Chinese Journal of Ship Research 2025-04-01
Series:Zhongguo Jianchuan Yanjiu
Subjects:
Online Access:http://www.ship-research.com/en/article/doi/10.19693/j.issn.1673-3185.04113
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850174600929869824
author Liyao ZHANG
Ziqian GUO
Ruifang LI
Xun YE
Tao MA
author_facet Liyao ZHANG
Ziqian GUO
Ruifang LI
Xun YE
Tao MA
author_sort Liyao ZHANG
collection DOAJ
description Objective With the continuous development of industrial technology, the intelligence of modern ship processes has been continuously advancing. The propulsion system, auxiliary power system, etc. of ships have become increasingly intelligent, and ship maintenance work has become ever more complex. Different from land equipment, the environment in which ships are located is more severe. When a problem occurs, it will not only affect the stability of the ship during operation, but also bring huge safety hazards. To this end, this paper focuses on a knowledge reasoning method for ship operations and maintenance (O&M) based on digital twin technology. MethodBased on the physical entity of the ship, the ship operation and maintenance process is analyzed, and a digital twin model for ship O&M is constructed from the multi-dimensions of "geometry-physics-behavior-rule". Aiming at the early warning information in the ship O&M knowledge model, by using previous ship O&M cases, a ship O&M case database containing ship dynamic monitoring data and maintenance methods is established. Based on the database, a method for ship O&M knowledge reasoning and strategy generation using an improved KD tree algorithm is proposed. Neighboring cases are weighted using Gaussian distance weighting, and the whale optimization algorithm (WOA) is used to optimize the characteristic attributes of ship equipment to achieve accurate knowledge reasoning. ResultsThe experimental results show that the proposed improved KD tree algorithm (ω-KDtree-WOA) achieves an inference accuracy of 0.928 when the K value is 4 and the population size is 400, which is approximately 3.2% higher than that of the traditional KD tree algorithm under the same conditions. In addition, compared with the classification confidence weighted and distance weighted K-nearest neighbor algorithm (CCW-WKNN) and the smoothing weight distance to solve K-nearest neighbor (SDWKNN) algorithm, etc., the algorithm proposed in this paper has significant advantages in accuracy, recall, precision, and F1 score, especially showing stronger stability when the K value is larger.ConclusionThe proposed method can be effectively applied to the O&M process of ship gas turbines.
format Article
id doaj-art-cea9e0db5ec844dcb9a0005d480b18a1
institution OA Journals
issn 1673-3185
language English
publishDate 2025-04-01
publisher Editorial Office of Chinese Journal of Ship Research
record_format Article
series Zhongguo Jianchuan Yanjiu
spelling doaj-art-cea9e0db5ec844dcb9a0005d480b18a12025-08-20T02:19:37ZengEditorial Office of Chinese Journal of Ship ResearchZhongguo Jianchuan Yanjiu1673-31852025-04-0120211813010.19693/j.issn.1673-3185.04113ZG4113Knowledge reasoning and strategy optimization for ship operation and maintenance based on digital twin and improved KD tree algorithmLiyao ZHANG0Ziqian GUO1Ruifang LI2Xun YE3Tao MA4School of Management, Harbin Institute of Technology, Harbin 150001, ChinaSchool of Information Engineering, Wuhan University of Technology, Wuhan 430070, ChinaSchool of Information Engineering, Wuhan University of Technology, Wuhan 430070, ChinaSchool of Information Engineering, Wuhan University of Technology, Wuhan 430070, ChinaSchool of Management, Harbin Institute of Technology, Harbin 150001, ChinaObjective With the continuous development of industrial technology, the intelligence of modern ship processes has been continuously advancing. The propulsion system, auxiliary power system, etc. of ships have become increasingly intelligent, and ship maintenance work has become ever more complex. Different from land equipment, the environment in which ships are located is more severe. When a problem occurs, it will not only affect the stability of the ship during operation, but also bring huge safety hazards. To this end, this paper focuses on a knowledge reasoning method for ship operations and maintenance (O&M) based on digital twin technology. MethodBased on the physical entity of the ship, the ship operation and maintenance process is analyzed, and a digital twin model for ship O&M is constructed from the multi-dimensions of "geometry-physics-behavior-rule". Aiming at the early warning information in the ship O&M knowledge model, by using previous ship O&M cases, a ship O&M case database containing ship dynamic monitoring data and maintenance methods is established. Based on the database, a method for ship O&M knowledge reasoning and strategy generation using an improved KD tree algorithm is proposed. Neighboring cases are weighted using Gaussian distance weighting, and the whale optimization algorithm (WOA) is used to optimize the characteristic attributes of ship equipment to achieve accurate knowledge reasoning. ResultsThe experimental results show that the proposed improved KD tree algorithm (ω-KDtree-WOA) achieves an inference accuracy of 0.928 when the K value is 4 and the population size is 400, which is approximately 3.2% higher than that of the traditional KD tree algorithm under the same conditions. In addition, compared with the classification confidence weighted and distance weighted K-nearest neighbor algorithm (CCW-WKNN) and the smoothing weight distance to solve K-nearest neighbor (SDWKNN) algorithm, etc., the algorithm proposed in this paper has significant advantages in accuracy, recall, precision, and F1 score, especially showing stronger stability when the K value is larger.ConclusionThe proposed method can be effectively applied to the O&M process of ship gas turbines.http://www.ship-research.com/en/article/doi/10.19693/j.issn.1673-3185.04113ship operations and maintenancedigital twinknowledge reasoningknowledge-based engineeringkd-tree algorithmwhale optimization algorithm
spellingShingle Liyao ZHANG
Ziqian GUO
Ruifang LI
Xun YE
Tao MA
Knowledge reasoning and strategy optimization for ship operation and maintenance based on digital twin and improved KD tree algorithm
Zhongguo Jianchuan Yanjiu
ship operations and maintenance
digital twin
knowledge reasoning
knowledge-based engineering
kd-tree algorithm
whale optimization algorithm
title Knowledge reasoning and strategy optimization for ship operation and maintenance based on digital twin and improved KD tree algorithm
title_full Knowledge reasoning and strategy optimization for ship operation and maintenance based on digital twin and improved KD tree algorithm
title_fullStr Knowledge reasoning and strategy optimization for ship operation and maintenance based on digital twin and improved KD tree algorithm
title_full_unstemmed Knowledge reasoning and strategy optimization for ship operation and maintenance based on digital twin and improved KD tree algorithm
title_short Knowledge reasoning and strategy optimization for ship operation and maintenance based on digital twin and improved KD tree algorithm
title_sort knowledge reasoning and strategy optimization for ship operation and maintenance based on digital twin and improved kd tree algorithm
topic ship operations and maintenance
digital twin
knowledge reasoning
knowledge-based engineering
kd-tree algorithm
whale optimization algorithm
url http://www.ship-research.com/en/article/doi/10.19693/j.issn.1673-3185.04113
work_keys_str_mv AT liyaozhang knowledgereasoningandstrategyoptimizationforshipoperationandmaintenancebasedondigitaltwinandimprovedkdtreealgorithm
AT ziqianguo knowledgereasoningandstrategyoptimizationforshipoperationandmaintenancebasedondigitaltwinandimprovedkdtreealgorithm
AT ruifangli knowledgereasoningandstrategyoptimizationforshipoperationandmaintenancebasedondigitaltwinandimprovedkdtreealgorithm
AT xunye knowledgereasoningandstrategyoptimizationforshipoperationandmaintenancebasedondigitaltwinandimprovedkdtreealgorithm
AT taoma knowledgereasoningandstrategyoptimizationforshipoperationandmaintenancebasedondigitaltwinandimprovedkdtreealgorithm