Examining the Patent Landscape of E-Fuel Technology
Abstract
:1. Introduction
2. Data and Methods
2.1. Data
2.2. Analytical Framework
2.3. Network Visualization and Centrality Analysis
2.4. Identification of Influential Key Knowledge Areas
3. Results
3.1. Descriptive Statistics
3.2. Network Analysis
3.3. Classification of Influential Knowledge Areas Based on a 2-by-2 Matrix
4. Discussion and Conclusions
- In terms of patent development, a rather inconsistent trend was observed, while the inventive activity was led by private firms owing the majority stake of patent families. Although a decrease in the number of patents does not necessarily reflect a falling-off in the rate of inventive achievements, it could imply a decline in the demand for patents on the inventor’s side. This behavior might be linked to the fact that the economics of e-fuel production are still inefficient, and the implementation of e-fuels currently only makes sense in sectors such as heavy-duty transport (long-haul truck transport, shipping and aviation), where direct electrification is hard to achieve [11]. Hence, the transition to e-fuels will require a strategic initiative that includes the installment of a required infrastructure roadmap [59]. Taken together, the findings provide the first indications about the patenting activity related to e-fuels.
- The derived knowledge network is largely characterized by knowledge areas related to the chemical engineering and production technique for liquid hydrocarbon mixture. In particular, the knowledge areas C10L 01 and C10J 03 showed high transitive influence. Furthermore, the analyzed knowledge flows are dominated by intra-technology knowledge flows. Hence, despite the diversity of involved knowledge areas, there are less convergent patterns among the related technology domains. To better address the technical feasibility and economic profitability of e-fuel production, either a breakthrough in catalytic chemical reaction or the pursuit of recombinant innovation, which accentuates the significance of technological diversity as a key feature of technological transitions, seems necessary [30]. Production of synthetic fuel still has comparably high costs, but has a niche market application for the right scenario [60].
- Instead of simply using the computed centrality metrics, this study positioned the individual knowledge areas into four quadrants, with each having a special role to perform. With regard to the matrix model, there is some degree of freedom for setting the demarcation criteria. This flexibility could be strategically exploited to generate a differentiated perspective on the functional roles of e-fuel innovation. Thus, R&D managers and policy makers could rely on such information to foster data-driven consensus building, as well as to formulate effective policies for maintaining balanced knowledge flows across boundary-spanning knowledge ties.
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Appendix A.1. Description of IPCs (International Patent Classification Codes)
Codes | Description |
C10L 01 | Liquid carbonaceous fuels |
C10J 03 | Production of gases containing carbon monoxide and hydrogen, e.g., synthesis gas or town gas, from solid carbonaceous materials by partial-oxidation processes involving oxygen or steam |
C01B 03 | Hydrogen; gaseous mixtures containing hydrogen; separation of hydrogen from mixtures containing it; purification of hydrogen |
C10G 02 | Production of liquid hydrocarbon mixtures of undefined composition from oxides of carbon |
C10L 05 | Solid fuels |
C10L 03 | Gaseous fuels; natural gas; synthetic natural gas obtained by processes not covered by subclasses C10G, C10K; liquefied petroleum gas |
C10G 01 | Production of liquid hydrocarbon mixtures from oil shale, oil sand, or nonmelting solid carbonaceous or similar materials |
B01D 53 | Separation of gases or vapors; recovering vapors of volatile solvents from gases; chemical or biological purification of waste gases, e.g., engine exhaust gases, smoke, fumes, flue gases, or aerosols |
B01J 19 | Chemical, physical or physicochemical processes in general; their relevant apparatus |
B01J 08 | Chemical or physical processes in general, conducted in the presence of fluids and solid particles; apparatus for such processes |
C07C 01 | Preparation of hydrocarbons from one or more compounds, none of them being a hydrocarbon |
C25B 01 | Electrolytic production of inorganic compounds or nonmetals |
B01J 23 | Catalysts comprising metals or metal oxides or hydroxides, not provided for in group B01J 21/00 (B01J 21/16 takes precedence) |
C10G 03 | Production of liquid hydrocarbon mixtures from oxygen-containing organic materials, e.g., fatty oils, fatty acids |
F02D 41 | Electrical control of supply of combustible mixture or its constituents |
C10K 03 | Modifying the chemical composition of combustible gases containing carbon monoxide to produce an improved fuel, e.g., one of different calorific value, which may be free from carbon monoxide |
C07C 29 | Preparation of compounds having hydroxy or O-metal groups bound to a carbon atom not belonging to a six-membered aromatic ring |
G06Q 50 | Systems or methods specially adapted for specific business sectors, e.g., utilities or tourism (healthcare informatics G16H) |
B01J 29 | Catalysts comprising molecular sieves |
C01B 32 | Carbon; compounds thereof (C01B 21/00, C01B 23/00 take precedence; percarbonates C01B 15/10; carbon black C09C 1/48) |
Appendix A.2. Description of Four-Digit IPCs
Codes | Description |
C10G | Cracking hydrocarbon oils; production of liquid hydrocarbon mixtures, e.g., by destructive hydrogenation, oligomerization, or polymerization |
C10L | Fuels not otherwise provided for; natural gas; synthetic natural gas obtained by processes not covered by subclasses C10G or C10K; liquefied petroleum gas; use of additives to fuels or fires |
C07C | Acyclic or carbocyclic compounds |
B01J | Chemical or physical processes, e.g., catalysis or colloid chemistry; their relevant apparatus |
C01B | Nonmetallic elements; compounds thereof |
G06Q | Data processing systems or methods, specially adapted for administrative, commercial, financial, managerial, supervisory, or forecasting purposes; systems or methods specially adapted for administrative, commercial, financial, managerial, supervisory, or forecasting purposes, not otherwise provided for |
Appendix A.3. Description of IPCs
Codes | Description |
C10G 45 | Refining of hydrocarbon oils using hydrogen or hydrogen-generating compounds |
C12P 05 | Preparation of hydrocarbons |
G06Q 30 | Commerce, e.g., shopping or e-commerce |
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Countries | Assignees from Public Sector | Assignees from Private Sector |
---|---|---|
CN | 45 | 212 |
US | 18 | 199 |
JP | 3 | 73 |
DE | 3 | 54 |
KR | 35 | 14 |
Interconnected Knowledge Pairs | Number of Knowledge Flows | |
---|---|---|
C10G | C10L | 102 |
C10G | C07C | 101 |
C10G | B01J | 90 |
B01J | B01J | 86 |
C07C | C07C | 84 |
B01J | C07C | 78 |
C10G | C10G | 77 |
B01J | C01B | 72 |
C10G | C01B | 61 |
C10L | C10L | 51 |
C01B | C07C | 51 |
C07C | C10L | 47 |
C25B | C25B | 38 |
C10G | G06Q | 34 |
G06Q | G06Q | 33 |
Knowledge Area | Betweenness Centrality | Eigenvector Centrality |
---|---|---|
C10G 02 | 0.0374 | 0.4020 |
C01B 03 | 0.0708 | 0.4008 |
C10L 01 | 0.2592 | 0.3639 |
C10J 03 | 0.1296 | 0.2562 |
C10L 03 | 0.0438 | 0.2516 |
C07C 01 | 0.0185 | 0.2124 |
B01J 08 | 0.0173 | 0.1781 |
C10K 03 | 0.0054 | 0.1696 |
C10G 03 | 0.0124 | 0.1577 |
C07C 29 | 0.0964 | 0.1467 |
C10G 45 | 0.0182 | 0.1417 |
B01J 19 | 0.0376 | 0.1414 |
G06Q 50 | 0.0497 | 0.1368 |
G06Q 30 | 0.0214 | 0.1323 |
C12P 05 | 0.0024 | 0.1227 |
B01D 53 | 0.1362 | 0.1181 |
B01J 23 | 0.0039 | 0.1164 |
C25B 01 | 0.0671 | 0.1160 |
C01B 32 | 0.0485 | 0.1115 |
C10G 01 | 0.0225 | 0.1028 |
Roles | Knowledge Areas | Number of Knowledge Areas |
---|---|---|
Influencer | C10G 02, C01B 03, C10L 01, C10J 03, C10L 03, C07C 29, B01J 19, G06Q 50, B01D 53, C25B 01, C01B 32, B01J 29, B01J 35 | 13 |
Brokerage | C25B 09, C12M 01, G06Q 10, C10L 05, F01D 15, F23G 07, G01F 01, F23K 05, F02D 19, F23D 11, F02M 25, F02D 41 | 12 |
Prominence | C07C 01, B01J 08, C10K 03, C10G 03, C10G 45, G06Q 30, C12P 05, B01J 23, C10G 01, C10G 65, C10G 47, C10L 10 | 12 |
No specific role | C07C 05, C10K 01, C07C 41, B01J 37, C07B 61, B01J 07, C07C 02, C10B 49, C10G 69, C10G 50, C07C 31, C10B 53, C07C 11, C07C 27, C25B 15, C01C 01, C10G 11 […] | 453 |
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Song, C.H. Examining the Patent Landscape of E-Fuel Technology. Energies 2023, 16, 2139. https://doi.org/10.3390/en16052139
Song CH. Examining the Patent Landscape of E-Fuel Technology. Energies. 2023; 16(5):2139. https://doi.org/10.3390/en16052139
Chicago/Turabian StyleSong, Chie Hoon. 2023. "Examining the Patent Landscape of E-Fuel Technology" Energies 16, no. 5: 2139. https://doi.org/10.3390/en16052139
APA StyleSong, C. H. (2023). Examining the Patent Landscape of E-Fuel Technology. Energies, 16(5), 2139. https://doi.org/10.3390/en16052139