The Analysis of Intelligent Functions Required for Inland Ships
Abstract
:1. Introduction
2. Analysis of Functional Modules for Inland Intelligent Ships
2.1. Current Classification Status of Functional Modules for Intelligent Ships
2.2. Necessity Analysis of Functional Modules
3. Intelligent Ship Technology
3.1. Ship Intelligent Perception Technology
3.1.1. Navigation Environment Information Perception
3.1.2. Ship State Monitoring
3.1.3. Information Analysis and Processing
3.2. Ship Intelligent Communication Technology
3.3. Ship Intelligent Evaluation Technology
3.3.1. Navigational Posture Assessment
3.3.2. Hull Structure Condition Assessment
3.3.3. Energy Consumption and Energy Efficiency Condition Assessment
3.3.4. Cargo and Cargo Hold Condition Evaluation
3.3.5. Fault Diagnosis
3.4. Ship Intelligent Decision-Making Technology
3.4.1. Route Planning
3.4.2. Intelligent Collision Avoidance
3.5. Ship Intelligent Control Technology
3.5.1. Motion Control
3.5.2. Remote Control
3.5.3. Energy Efficiency Control
3.5.4. Automatic Loading and Unloading and Intelligent Stowage
3.5.5. Hull and Equipment Maintenance as Needed
4. Inland Intelligent Ship Functional Requirements Forecast
4.1. Association between Inland Intelligent Ship Functions and Intelligent Technologies
4.2. Overall Development Goals of Inland Intelligent Ships
4.3. Specific Development Goals and Predictions for Inland Intelligent Ships at Different Stages
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Organization | Date | Related Documents | Primary Content |
---|---|---|---|
China Classification Society (CCS) | December 2015 (Updated as of December 2023) | Rules for Intelligent Ships 2024 | Intelligent Navigation, Intelligent Hull, Intelligent Engine Room, Intelligent Energy Efficiency Management, Intelligent Cargo Management, Intelligent Integration Platform, Remote Control, Autonomous Operation |
Lloyd’s Register of Shipping (LR) | February 2017 | Code for Unmanned Marine Systems | Structure, Stability, Control, Electrical, Navigation, Propulsion System, Firefighting |
Det Norske Veritas (DNV GL) | October 2018 | Class Guideline Smartship | Enhanced Foundation, Operational Enhancement, Performance Enhancement, Safety and Reliability Enhancement, Enhanced Condition Monitoring |
American Bureau of Shipping (ABS) | June 2022 | Smart Functions for Marine Vessels and Offshore Units | Structural Health Monitoring, Machinery Health Monitoring, Asset Efficiency Monitoring, Operational Performance Management, Crew Assistance and Functional Enhancement |
Nippon Kaiji Kyokai (NK) | January 2020 | Guidelines for Automated/Autonomous Operation of ships | Streamlining and unmanned crewing of small, short-distance ships; automation or remote operation of part of the ship’s operations, mainly in support of the crew |
European Union (EU) | 2019 | Autonomous Ship Research and Development Program | Autonomous Navigation Systems, Intelligent Energy Management, Intelli-gent Ship Operations, Communication and Remote Monitoring, Autonomous Safety Systems |
Netherlands Forum Smart Shipping (SMASH) | November 2021 | Smart Shipping Roadmap | In the short term, focus on reducing the number of ship drivers through ship automation and intelligent technology, and realize “autonomous human assistance” for ships on a small scale |
Rolls-Royce | 2014 | Advanced Autonomous Waterborne Applications (AAWA) | Focusing the functional research and development of intelligent ships on two aspects: firstly, intelligent subsystems, and secondly, realizing the intelligence of the whole ship’s platform [9] |
Hai Lanxin | 2016 | Intelligent Ship 1.0 Specialization | Focusing on the development of ship intelligent assisted autopilot system, completed the ship assisted autopilot system with sensing, decision-making and execution functions [10] |
Hyundai Heavy Industries Group | 2017 | Intelligent Ship Program | Focusing on the research and development of intelligent navigation, intelligent berthing and other auxiliary systems for ships [11] |
Development Stage | Planning Year | Overall Prediction of Intelligent Functional Goals | Functional Module |
---|---|---|---|
Near Term | 2030 | Modular intelligence, primarily at an initial level with assistance | Intelligent Navigation, Intelligent Engine Room, Intelligent Energy Efficiency Management, Intelligent Cargo Management, Intelligent Integration Platform |
Mid Term | 2035 | Multi-intelligent module linkage, intelligent level advancement | Addition of intelligent hull module |
Long Term | 2050 | Global intelligence, highly intelligent | Addition of remote control and autonomous operation modules |
Functional Module | Goal of Intelligence | Division of Intelligent Functional Stages |
---|---|---|
Intelligent Navigation | Achieving reliable ship situational awareness and environmental information perception, equipped with route planning functionality | (1) Intelligent perception function (2) Monitoring function for ship’s floating state and dynamic motion (3) Design optimization function for route and speed |
Intelligent Engine Room | Achieving monitoring, diagnosis, and evaluation of ship engine room condition and equipment operation, and providing intelligent decision support and maintenance plans based on problem types | (1) Engine room condition monitoring function (2) Engine room equipment health assessment function (3) Engine room auxiliary decision-making function (4) Engine room condition-based maintenance function (5) Remote control of the main propulsion device from the wheelhouse and periodic unmanned watchkeeping capability |
Intelligent Energy Efficiency Management | Assessing the ship’s energy efficiency, navigation, and loading condition to provide evaluation results and solutions such as speed optimization and optimal loading based on longitudinal trim optimization | (1) Ship energy efficiency online intelligent monitoring function (2) Ship speed intelligent optimization function (3) Optimal loading function based on trim optimization |
Intelligent Cargo Management | Monitoring of cargo condition onboard and related systems, combined with the ship’s cargo condition and port terminal condition, to achieve formulation and optimization of loading/unloading plans, as well as process risk alerting and decision-making | (1) Function of sensing the condition of cargo, cargo holds, and related systems (2) Function of formulating and optimizing cargo loading/unloading plans (3) Function of alarm for abnormal states, analysis of causes, and formulation of assisted decision-making |
Intelligent Integration Platform | Complete the standardization of interface types for various intelligent modules within inland ships, enabling the integration of existing module information of intelligent ships, with the integration platform being open-ended | (1) Integration of local area network systems within the ship (2) Formation of a unified digital twin system by various intelligent modules (3) Preliminary data processing function (4) Integration of information and data between existing modules |
Functional Module | Goal of Intelligence | Division of Intelligent Functional Stages |
---|---|---|
Intelligent Navigation | Achieve the intelligent motion requirements of various ships for safe and efficient navigation, anchoring, and berthing/departing in various navigation scenarios | (1) Integration of multiple functions of the 2030 intelligent navigation module (2) Autonomous navigation function for regular routes (3) Fully autonomous navigation function for the entire navigation (4) Automatic berthing and unberthing |
Intelligent Hull | Achieve three-dimensional modeling and maintenance of the hull, providing auxiliary decision-making for the maintenance and replacement of hull and deck machinery during the operational phase of the ship | (1) Hull structure and deck machinery monitoring function (2) Formulation of hull structure and deck machinery maintenance plans (3) Record and evaluation of hull structure condition (4) Formulation of structure replacement plans |
Intelligent Engine Room | Achieve fully autonomous operation and realize the goal of a fully intelligent engine room system | (1) Integration of multiple functions of the 2030 intelligent engine room module, adapting to the development of engine rooms in new energy-powered ships (LNG, electric, etc.) (2) Continuous normal operation of engine room equipment within unmanned duty cycles |
Intelligent Energy Efficiency Management | Achieve real-time monitoring, evaluation, and optimization of ship energy efficiency, realizing the goal of complete intelligence | (1) Integration of multiple functions of the 2030 intelligent energy efficiency management module (2) Fully automated energy efficiency management |
Intelligent Cargo Management | Implement fully intelligent cargo management, including automatic generation and optimization of cargo stowage plans, as well as autonomous loading and unloading | (1) Integration of multiple functions of the 2030 intelligent cargo module (2) Automatic generation and optimization of cargo loading plans (3) Automatic loading and unloading functions (4) Intelligent ballast water management functions |
Intelligent Integration Platform | Integrate the newly added information management system with the capability of data exchange among multiple modules | (1) Integration of multiple functions of the 2030 intelligent integration platform module (2) Ship-shore information data communication (3) Information data communication among multiple modules |
Functional Module | Goal of Intelligence | Division of Intelligent Functional Stages |
---|---|---|
Intelligent Hull | Achieve the goal of fully intelligent ship hull, including self-diagnosis, and autonomous handling capabilities | (1) Integration of multiple functions of the 2035 intelligent hull module (2) Local strength monitoring of the hull, real-time monitoring of overall longitudinal strength, and stability calculation (3) Intelligent adjustment of ballast water, heading, and speed to ensure the ship is always in a safe state (4) Fully autonomous hull maintenance and upkeep |
Intelligent Integration Platform | Realize comprehensive monitoring and intelligent management of various ships, including engineering and research ships, and achieve real-time two-way data exchange with shore-based systems | (1) Integration of multiple functions of the 2035 intelligent integration platform module (2) Information sharing and presentation function (3) Providing support for other intelligent applications on the basis of meeting its own information display and data diagnosis functions |
Remote Control | Capable of being controlled by a remote control station or control position outside the ship, enabling unmanned operation of the ship | (1) Stable and applicable wireless communication equipment for ships with sufficient bandwidth (2) Beyond-line-of-sight control, scene perception, and real-time sharing of video information (3) Intelligent detection, alarm, and control processing functions |
Autonomous Operation | Fully autonomous operation throughout the entire navigation | (1) Achieve fully autonomous navigation and comprehensive analysis decision-making from berth to berth (2) Real-time monitoring, evaluation, decision-making, and intelligent control of all ship systems |
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Hao, G.; Xiao, W.; Huang, L.; Chen, J.; Zhang, K.; Chen, Y. The Analysis of Intelligent Functions Required for Inland Ships. J. Mar. Sci. Eng. 2024, 12, 836. https://doi.org/10.3390/jmse12050836
Hao G, Xiao W, Huang L, Chen J, Zhang K, Chen Y. The Analysis of Intelligent Functions Required for Inland Ships. Journal of Marine Science and Engineering. 2024; 12(5):836. https://doi.org/10.3390/jmse12050836
Chicago/Turabian StyleHao, Guozhu, Wenhui Xiao, Liwen Huang, Jiahao Chen, Ke Zhang, and Yaojie Chen. 2024. "The Analysis of Intelligent Functions Required for Inland Ships" Journal of Marine Science and Engineering 12, no. 5: 836. https://doi.org/10.3390/jmse12050836
APA StyleHao, G., Xiao, W., Huang, L., Chen, J., Zhang, K., & Chen, Y. (2024). The Analysis of Intelligent Functions Required for Inland Ships. Journal of Marine Science and Engineering, 12(5), 836. https://doi.org/10.3390/jmse12050836