Tracking Biofuel Innovation: A Graph-Based Analysis of Sustainable Aviation Fuel Patents
Abstract
:1. Introduction
2. Literature Review
2.1. Advances in Visualizing and Understanding Graphs and Complex Patent Networks
Degree Centrality
- is the degree centrality,
- is the degree of node v,
- v* is the vertex with the highest degree,
- .
2.2. A Synthesis of Feedstocks and Production Pathways
3. Materials and Methods
3.1. Data Collection
3.2. Data Retrieval and Preprocessing
- Patent Information Parsing: Patent documents were processed, with critical data elements extracted using processes such as patent assignees, international patent classification (IPC) codes, filing application dates, and patent families’ IDs. Table 3 also shows the renaming table.
- Data Filtering: A segregation approach was implemented to separate actual patent families from the exclusively “WO” applications (entries with no IDs other than those with the prefix).
- Data Manipulation: The patent assignee’s leading company was extracted from the field to aggregate companies that belong to the same organization; family size was created by the count of the individual patent numbers, excluding “WO” applications; patent year was extracted from the “Application Details and Date” field; and a column “Years until expiration” was created for patents (20 years from 14 May 2024) and “WO” applications (2.5 years from 14 May 2024).
3.3. Graph Generation
3.3.1. IPC–Assignee Network
3.3.2. IPC–Patent-Assignee Network
3.3.3. IPC–Assignee–Written Opinion Network
3.4. Python Libraries and Tools for Graph Analysis
- Pandas: Implemented for data management and processing.
- NetworkX: Employed to create graph structures and for graphics analysis.
- PyVis: Used to create the NetworkX graph as an HTML file for interactive analysis.
4. Analysis and Results
4.1. Contextualizing SAF Patent Data
4.2. SAF Complex Network Analysis
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Ref. | Year | Advantages | Limitations |
---|---|---|---|
[18] | 2019 | Provides a foundational understanding of graph theory and its applications in various fields | Not specifically focused on graph theory-based patent analysis |
[19] | 2021 | Offers a graph-theoretic method for visualizing and analyzing patents | Estimation intensive to model specification, potentially affecting the robustness of the results |
[20] | 2021 | Identifies transnational patents at the national level to depict the profiles of international technology diffusion | Difficulty tracking development trends in different technologies |
[22] | 2021 | Enables creation of patent networks using clustering algorithms, providing insights into connections between patents and companies | Difficulty extracting relevant information from technical patents |
[23] | 2020 | Uses graph embedding techniques to understand competitive dynamics between firms through patent networks | Rapid growth of patent data (big data) makes analysis complex |
[24] | 2019 | Proposes graph representation strategies for automatic semantic data extraction from patents, aiding intelligent patent analysis | Existing methods like text mining and keyword analysis for patent similarity have limitations |
[25] | 2023 | Efficiently searches technical documents and mimics work of professional patent examiners | Requires domain knowledge to analyze documents |
[26] | 2021 | Identifies and tags “issue sentences” (problems addressed by patents) | Complexity of understanding technical patents |
[27] | 2021 | Uses text mining and machine learning to automatically extract and visualize chemical processes from patents | Rapid growth of patent data (big data) |
[28] | 2015 | Proposes a graph model for visualizing patent data | Limitations of existing approaches like text mining and keyword analysis for patent similarity |
[29] | 2019 | Visualizes patent portfolio strategies and aids in identifying similar technologies and protecting intellectual property | Difficulty extracting relevant information from technical patents |
[30] | 2017 | Improves explanatory power of network on inventor and organization diversification paths through filtering weak links | The trade-off between removing weak links and maintaining the explanatory power of the network |
[31] | 2017 | Enables comparison of molecules from patents with other bioactive compounds, facilitates exploration of structure–activity relationships, and enhances understanding of patent information within the broader bioactive chemical space | Focuses on bioactive chemical patents; may not be generalizable |
Production Pathway | Feedstock | Brief Description | Year of Approval |
---|---|---|---|
Fischer–Tropsch Synthetic Paraffinic Kerosene (FT-SPK) | Municipal solid waste, agricultural and forest wastes, energy crops | Conversion of feedstock to syngas using gasification, then a Fischer–Tropsch synthesis reaction converts the syngas to jet fuel. | 2009 |
Hydroprocessed Esters and Fatty Acids (HEFA-SPK) | Oil-based feedstocks | Triglyceride feedstocks are hydroprocessed to break apart the long chain of fatty acids, followed by hydroisomerization and hydrocracking. | 2011 |
Hydroprocessed Fermented Sugars to Synthetic Isoparaffins (HFS-SIP) | Sugars | Microbial conversion of sugars to hydrocarbons. | 2014 |
FT-SPK with Aromatics | Municipal solid waste, agricultural and forest wastes, energy crops | Biomass is converted to syngas, then to synthetic paraffinic kerosene and aromatics by FT synthesis. This process is similar to FT-SPK but with the addition of aromatic components. | 2015 |
Alcohol-to-Jet Synthetic Paraffinic Kerosene (ATJ-SPK) | Cellulosic biomass | Conversion of cellulosic or starchy alcohol into a drop-in fuel through a series of chemical reactions—dehydration, hydrogenation, oligomerization, and hydro treatment. | 2016 |
Catalytic Hydrothermolysis Synthesized Kerosene (CH-SK or CHJ) | Fatty acids or fatty acid esters or lipids from fat oil greases | Clean-free fatty acid oil from processing waste oils or energy oils is combined with preheated feed water and then passed to a catalytic hydrothermolysis reactor. | 2020 |
Hydrocarbon-Hydroprocessed Esters and Fatty Acids (HC-HEFA-SPK) | Algal oil | Conversion of the triglyceride oil, derived from Botryococcus braunii, into jet fuel and other fractionations. Botryococcus braunii is a high-growth alga that produces triglyceride oil. | 2020 |
Derwent Code | Description |
---|---|
PN | Patent Number |
TI | Title |
AU | Authors or Inventors |
AE | Patent Assignee |
GA | IDS Number |
AB | Abstract/BHTD Critical Abstract |
TF | Technology Focus Abstract |
EA | Early access date; Equivalent Abstract |
DC | Derwent Class Code(s) |
MC | Major Concepts or Derwent Manual Code(s) |
IP | International Patent Classification |
PD | Publication Date; Patent Details |
AD | Application Details and Date |
FD | Further Application Details |
PI | Publisher City; Patent Priority Information |
DS | Designated States |
FS | Field of Search |
CP | Cited Patent(s) |
CR | Cited References |
DN | DCR Number |
MN | Markush Number |
RI | Researcher IDs; Ring Index Number |
CI | Derwent Compound Number |
RG | Derwent Registry Number |
IPC Node | Degree Centrality |
---|---|
C10G | 0.2021 |
B01D | 0.1596 |
C01B | 0.1383 |
C10L | 0.1170 |
B01J | 0.1064 |
Assignee Node | Degree Centrality |
---|---|
RORO-C | 0.1702 |
UNBA-C | 0.1277 |
KEPL-Non-standard | 0.0638 |
PARA-Non-standard | 0.0532 |
CAEC-C | 0.0426 |
Patent Node ID | Degree Centrality |
---|---|
68 | 0.0779 |
50 | 0.0584 |
48 | 0.0455 |
67 | 0.0390 |
0 | 0.0325 |
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Share and Cite
de Oliveira, M.N.; Mosquéra, L.R.; Martins, P.H.d.S.; Serrano, A.L.M.; Bispo, G.D.; Vergara, G.F.; Saiki, G.M.; Neumann, C.; Gonçalves, V.P. Tracking Biofuel Innovation: A Graph-Based Analysis of Sustainable Aviation Fuel Patents. Energies 2024, 17, 3683. https://doi.org/10.3390/en17153683
de Oliveira MN, Mosquéra LR, Martins PHdS, Serrano ALM, Bispo GD, Vergara GF, Saiki GM, Neumann C, Gonçalves VP. Tracking Biofuel Innovation: A Graph-Based Analysis of Sustainable Aviation Fuel Patents. Energies. 2024; 17(15):3683. https://doi.org/10.3390/en17153683
Chicago/Turabian Stylede Oliveira, Matheus Noschang, Letícia Rezende Mosquéra, Patricia Helena dos Santos Martins, André Luiz Marques Serrano, Guilherme Dantas Bispo, Guilherme Fay Vergara, Gabriela Mayumi Saiki, Clovis Neumann, and Vinícius Pereira Gonçalves. 2024. "Tracking Biofuel Innovation: A Graph-Based Analysis of Sustainable Aviation Fuel Patents" Energies 17, no. 15: 3683. https://doi.org/10.3390/en17153683
APA Stylede Oliveira, M. N., Mosquéra, L. R., Martins, P. H. d. S., Serrano, A. L. M., Bispo, G. D., Vergara, G. F., Saiki, G. M., Neumann, C., & Gonçalves, V. P. (2024). Tracking Biofuel Innovation: A Graph-Based Analysis of Sustainable Aviation Fuel Patents. Energies, 17(15), 3683. https://doi.org/10.3390/en17153683