Core Technology Topic Identification and Evolution Analysis Based on Patent Text Mining—A Case Study of Unmanned Ship
Abstract
:1. Introduction
2. Literature Review
3. Methods
3.1. Research Framework
- Patent data collection and preprocessing. First, we collect and download patent data in unmanned ship technology, then clean the collected data, delete irrelevant and duplicate data, and standardize the data.
- Technical topic identification. Mining and identifying technical topics and keywords through the LDA topic model and TF-IDF text vectorization method, and drawing word cloud diagrams.
- Evolution results of technical theme intensity. Draw a heat map of technical topics based on the intensity of technical topics, and analyze the attention and rise and fall of technical topics at each stage.
- Evolution results of technical theme content. This paper divides technology development stages according to the technology life cycle theory, uses cosine distance to measure the similarity between technical topics, draws the content evolution diagram of technical topics, and analyzes the evolutionary relationship between technical topics at each stage.
3.2. Data Acquisition
3.3. Methods
3.3.1. LDA Topic Model
3.3.2. Technical Topic Extraction
3.3.3. Technical Theme Intensity
3.3.4. Evolution of Technical Theme Content
4. Results and Analysis
4.1. Technical Theme Identification
4.2. Technical Theme Intensity Evolution
4.3. Technical Theme Content Evolution
- In the embryonic stage (2013–2015), the number of annual patent applications in unmanned ships began to increase, and the annual growth rate increased slowly, indicating that the technology in unmanned ships was gradually developing.
- In the rapid development stage (2016–2019), the number of annual patent applications in unmanned ship technology increased rapidly, and the annual growth rate was relatively high, indicating that the technology in unmanned ships was developing rapidly.
- In the stable development stage (2020–2022), the annual number of patent applications in the unmanned ship field technology was at a high level, and the annual growth rate was low, indicating that after the rapid development stage of the unmanned ship field technology, unmanned ship technology technology was still evolving.
5. Discussion
- (A)
- Against the use of TF-IDF with LDA:
- (B)
- In favor of using TF-IDF with LDA:
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Paper | Model Used | Real Dataset | Special Features | Limitations | |
---|---|---|---|---|---|
Patent classification numbers | Zhang et al. [6] | LDA, text similarity calculation | blockchain field patents | Technological evolution | Inaccurate, Without objectivity |
Zhou et al. [7] | IPC co-category analysis | hydrogen fuel cell patents | map the knowledge map of hotspots | Inaccurate, Insufficient information | |
Patent citation networks | Liu et al. [8] | Main path analysis, Evolutionary trajectory | electric vehicles patents | co-opetition situation analysis | Inaccurate, Time lag |
Yang et al. [9] | structural holes, SAO network | Graphene patents | identifying technology development trends | maybe errors in explaining the relationship | |
Patent Text content | Wang et al. [10] | LDA | Communication patents | Increased institutional topic probability hierarchy | Without dynamic characteristics |
Dotsika et al. [11] | keyword network analysis, visualization approach | 3D Printing, Big Data, Bitcoin, Cloud Technologies, | Technical forecasts | Inaccurate | |
Xue et al. [12] | technology evolution path | hydrogen energy patent | visualization | Uncovered potential information | |
Lin et al. [13] | SAO, text similarity | mechanical structures patent | fast, accurate | Without dynamic characteristics | |
Altuntas et al. [14] | k-means, text mine | Renewable energy patent | data-driven analysis | Unclear evolutionary path | |
Di et al. [15] | topic modeling, clustering | scientific papers | Automated determination of parameters | take a long time, long text |
Type | Content |
---|---|
Database | Patsnap Database |
Search scope | 2013–2022 |
Patent search scope | Invention application patent, Utility model patent, Authorized invention patent, and Design patent |
Search expression | Key words = (unmanned ship) |
Topic | Topic Word |
---|---|
Topic #0. | Controller, Design, Velocity, Time, Error, Disturbance, Observer, Performance, Guidance, Surface |
Topic #1. | Wireless, Terminal, Robot, Base station, Ship, Cable, Technology, Communication, Transmission, User |
Topic #2. | Navigation, Ship, Command, Action, Experimentation, Status, Risk, Assessment, Status, Capability |
Topic #3. | Path, Planning, Obstacle, Steps, Route, Algorithm, Goal, Dynamic, Environment, Information |
Topic #4. | Hull, Structure, Power, Field, Technology, Tail, Water Surface, Anti-collision, Camera, Effect |
Topic #5. | Pump, Airbag, Pushrod, Bottom, Plate, Hydraulic, Fascia, Inflatable, Rod, Inlet, Pressure |
Topic #6. | Data, Intelligence, Servers, Environment, Networks, Analytics, Data Processing, Remote, Integrated, Transmission |
Topic #7. | Body, Spring, Active, Slider, Camera, Motor, Slot, Support, Rod, Slide, Slide Rail |
Topic #8. | Information, Shore-based, Video, Failure, Status, Transmission, Node, Oil, Spill Control Command, Messages |
Topic #9. | Boxes, Floats, Openings, Pipes, Grooves, Rings, Components, Rails Water, plants, Containers |
Topic #10. | Sensors, Positioning, Heading, Distance, Angle, Adjustment, Attitude, Speed, Information, Trajectory |
Topic #11. | Bracket, Circuit, Mode, Remote, Control, Power, Supply, Flexible, Work, Function, Voltage |
Topic #12. | Signal, Rescue, Status, Dock, Inertial, Rotor, Personnel, Momentary, Sensing, Gain |
Topic #13. | Module, Space, Ground, Power, Camera, Size, Object, Electric, Control, Body Management System |
Topic #14. | Component, Hull, Adjustment, Component, Driver, Tubing, Structure, Fuselage, Impact, Damping |
Topic #15. | Module, Controller, Positioning, Data, Communication, Attitude, Up, Drive, Transmission, Remote |
Topic #16. | Formation, Ship, Collaboration, Mothership, Buoyage, Orbit, Network, Distributed, Shelf, Formation |
Topic #17. | Measurement, Subsystem, River, Hydrology, Observation, Carrier, Data, Acoustic, Work Steps |
Topic #18. | Thruster, Automatic, Structure, Cabin, Direction, Deck, Helm, Horizontal, Motion, Field |
Topic #19. | Body, Limit, Battery, Support, Frame, Structure, Sheet, Elasticity, Function, Collection, Box, Technology |
Topic #20. | Unit, Mechanical, Attitude, Storage, Centre, Winch, Base, Crossbar, Automatic, Monitoring |
Topic #21. | Partial, task, processor, calibration, test, catheter, indicator, monitoring, point, computational, structure |
Topic #22. | Powerplant, Mast, Battery, Bow, Sludge, Central, Navigation, System, Electrode, Somewhat, Corresponding |
Topic #23. | Platform, Movement, Sonar, Emitter, Marker, Direction, Range, Adjustment, Motion, Terminal |
Topic #24. | Drives, Motors, Propellers, Power, Farming, Feeding, Shafts, Transmission, Fields, Feeding |
Topic #25. | Image, Ultrasound, Camera, Receiver, Image-processing, Pixel, Classification, Area, Object, Body |
Topic #26. | Equipment, Operation, Monitoring, Remote, Water, Area, Technology, Field, Communication, Method, Work |
Topic #27. | Surface, Case, Screw, thread, Slide, Motor, Map, Gear, Structure, Frame, Shaft |
Topic #28. | Model Move Trajectory Parameter Problem Environment Predict Optimization Algorithm State |
Topic #29. | Antenna Chassis Test Shell Cable Catamaran Connector Circuit Board Rotating Shaft Structure |
Topic #30. | Solar, Energy, Battery, Power, Generation, Electricity, Electric, Battery, Panel, Generator, Wind, Wave, Utilisation |
Topic #31. | Target, Water, surface, Detection, Radar, Features, Vision, Area, Cohesion, Data, Utilization |
Topic #32. | Mechanisms, Garbage, Surface, Float, Regulating, Drive, Field, Technology, Floaters, Dynamics |
Topic #33. | Detection, Monitor, Water, quality, Water, body, Waters, Analyze, Watery, Sensor, Automation, Pollution |
Topic #34. | Area, Guidance, Water, Preset, Bathymetry, Terrain, Technology, Surface, Water, Sample, Operations |
Stage 1 (2013–2015) | Stage 2 (2016–2019) | Stage 3 (2020–2022) |
---|---|---|
Theme Content | Theme Content | Theme Content |
(A-Topic 0) Remote control | (B-Topic 0) Power Battery | (C-Topic 0) Sampling technology |
(A-Topic 1) Sensor Technology | (B-Topic 1) Image Processing | (C-Topic 1) Solar Battery |
(A-Topic 2) Water monitoring | (B-Topic 2) Garbage removal | (C-Topic 2) Garbage removal |
(A-Topic 3) Autonomous navigation | (B-Topic 3) Water quality testing | (C-Topic 3) Path planning |
(A-Topic 4) Measurement technology | (B-Topic 4) Hull structure | (C-Topic 4) Intelligent Aquaculture |
(A-Topic 5) Hull structure | (B-Topic 5) Attitude control | (C-Topic 5) Speed control |
(A-Topic 6) Drive System | (B-Topic 6) Target Detection | (C-Topic 6) Hull structure |
(B-Topic 7) Remote control | (C-Topic 7) Remote control | |
(B-Topic 8) Solar battery | (C-Topic 8) Movable platform | |
(B-Topic 9) Advancing technology | (C-Topic 9) Water quality testing | |
(B-Topic 10) Path planning | (C-Topic 10) Propulsion equipment | |
(B-Topic 11) Surveillance system | (C-Topic 11) Surveying and mapping technology | |
(B-Topic 12) Autonomous navigation | (C-Topic 12) Positioning technology | |
(B-Topic 13) Motor drive | (C-Topic 13) Power Battery | |
(B-Topic 14) Surveying and mapping technology | (C-Topic 14) Simulation Technology |
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Lin, Y.; Wang, X.; Yang, J.; Wang, S. Core Technology Topic Identification and Evolution Analysis Based on Patent Text Mining—A Case Study of Unmanned Ship. Appl. Sci. 2024, 14, 4661. https://doi.org/10.3390/app14114661
Lin Y, Wang X, Yang J, Wang S. Core Technology Topic Identification and Evolution Analysis Based on Patent Text Mining—A Case Study of Unmanned Ship. Applied Sciences. 2024; 14(11):4661. https://doi.org/10.3390/app14114661
Chicago/Turabian StyleLin, Yan, Xuelei Wang, Jing Yang, and Shutian Wang. 2024. "Core Technology Topic Identification and Evolution Analysis Based on Patent Text Mining—A Case Study of Unmanned Ship" Applied Sciences 14, no. 11: 4661. https://doi.org/10.3390/app14114661
APA StyleLin, Y., Wang, X., Yang, J., & Wang, S. (2024). Core Technology Topic Identification and Evolution Analysis Based on Patent Text Mining—A Case Study of Unmanned Ship. Applied Sciences, 14(11), 4661. https://doi.org/10.3390/app14114661