Patent Data Analytics for Technology Forecasting of the Railway Main Transformer
Abstract
:1. Introduction
2. Literature Review
3. Methodology
3.1. Research Framework
3.2. Preprocessing and Patent-IPC Matrix Extraction
3.3. Technology Level Evaluation of IPC
3.3.1. Technology Mapping Analysis
3.3.2. Time Series Analysis
3.3.3. Social Network Analysis
3.4. Identification of Vacant Technology through Generative Topographic Mapping (GTM)
4. Analysis Results
4.1. Patent Data Collect and Technology Trend Analysis
4.1.1. Patent Data Collect
4.1.2. Technology Trend Analysis
4.2. Technology Level Evaluation of IPC
4.3. Forecasting of Vacant Technology
4.3.1. Identification of Vacant Technology Based on Promising Detailed IPC Technology Areas: Generative Topographic Mapping (GTM) Analysis
4.3.2. Forecasting of Vacant Technology in Each Group
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Year of Publication | Author | Technology | Methodology |
---|---|---|---|
2022 | Liu and Chen [21] 2 | Semiconductor industry | (A), (C) |
2022 | Mao et al. [22] 1 | Industrial wastewater treatment | (B) |
2022 | Park and Jun [23] 1 | Cognitive diagnosis model | |
2022 | Yang et al. [24] 1 | Hydrogen fuel cell | (A), (B), (C), (D) |
2022 | Choi and Woo [34] 2 | Hydrogen | (A), (B) |
2022 | Kwon et al. [40] 1 | Logistics | (A), (B), (C), (D) |
2022 | Du et al. [53] 1 | Train signal control | |
2022 | Anatolyevna [46] 2 | Labor market | (B), (C) |
2022 | Hingley and Dikta [48] 1 | Patent filings counts forecasts | (B), (C) |
2022 | Durmusoglu and Durmusoglu [43] 2 | Respiratory | (A), (B) |
2021 | Durmusoglu and Durmusoglu [44] 2 | Traffic control system for road vehicles | (A) |
2021 | Feng et al. [28] 1 | Mining machinery | (A), (B), (D) |
2021 | Yuan and Li [29] 1 | Battery electric vehicles | (A), (B), (C) |
2021 | Ferreira et al. [30] 2 | Cerrado plant species | (A), (B), (C) |
2021 | Sun et al. [41] 1 | High-speed railways | (A) |
2021 | Hanley et al. [42] 1 | High-speed railways | (A) |
2021 | Cho et al. [52] 2 | Electric motors of railway vehicles | (D) |
2020 | Karasev et al. [54] 1 | Foreign railway companies | |
2019 | Kim et al. [39] 1 | Wireless power transfer | (A), (B) |
2019 | Liu and Yang [51] 1 | High-speed rail industry | (C) |
2018 | Yoon and Magee [27] 1 | 3D printing | (B), (D) |
2018 | Cho et al. [38] 1 | High-rise building construction | (A), (C) |
2018 | Feng and Yu [55] 1 | China high-speed railway | |
2018 | Gou [56] 1 | Maglev transportation | |
2018 | Zhang and Zhang [57] 1 | Railway industry | |
2017 | Durmuşoğlu [50] 2 | Chemical industry | (B), (C) |
2017 | Suominen et al. [32] 2 | Telecommunication industry | (B) |
2016 | Madani and Weber [26] 1 | Pattern recognition | (B) |
2016 | Nikolopoulos et al. [47] 2 | Generic pharmaceuticals | (B), (C) |
2015 | Lee, et al. [31] 2 | Light-emitting diode (LED) | (A), (B), (C) |
2014 | Choi and Hwang [25] 1 | LED and wireless broadband | (B) |
2014 | Zhang and Zhang [58] 2 | Vibration-reduction control | |
2012 | Hidalgo and Gabaly [49] 1 | Spanish patents applications | (B), (C) |
2011 | Xiao [59] 1 | Train control system | |
2009 | Baser and Buchbauer [45] 1 | Art of eugenol | (B), (C) |
2009 | Salmi and Torkkeli [60] 1 | Satellite navigation systems |
Papers | TSA (A) | SNA (B) | TM (C) | GTM (D) |
---|---|---|---|---|
Our paper | ✓ | ✓ | ✓ | ✓ |
Sun et al. [41] | ✓ | |||
Hanley et al. [42] | ✓ | |||
Liu and Yang [51] | ✓ | |||
Cho et al. [52] | ✓ | |||
Du et al. [53] | ||||
Karasev et al. [54] | ||||
Feng and Yu [55] | ||||
Gou [56] | ||||
Zhang and Zhang [57] | ||||
Zhang and Zhang [58] | ||||
Xiao [59] | ||||
Salmi and Torkkeli [60] |
Patent | IPC_1 | IPC_2 | IPC_3 | IPC_4 | IPC_5 |
---|---|---|---|---|---|
1 | 1 | 1 | 1 | 0 | 0 |
2 | 0 | 1 | 0 | 1 | 1 |
3 | 0 | 0 | 0 | 1 | 1 |
4 | 1 | 0 | 0 | 1 | 1 |
5 | 0 | 1 | 1 | 0 | 1 |
IPC | IPC_1 | IPC_2 | IPC_3 | IPC_4 | IPC_5 |
---|---|---|---|---|---|
IPC_1 | 1 | −0.53452248 | −0.1336306 | −0.25 | −0.51449576 |
IPC_2 | −0.5345225 | 1 | 0.7857143 | −0.3118048 | 0.04583492 |
IPC_3 | −0.1336306 | 0.78571429 | 1 | −0.8017837 | −0.50418417 |
IPC_4 | −0.25 | −0.31180478 | −0.8017837 | 1 | 0.91465912 |
IPC_5 | −0.5144958 | 0.04583492 | −0.5041842 | 0.9146591 | 1 |
Rank | Applicant | Region/City | Number of Patents Filed (Patent Share) |
---|---|---|---|
1 | CRRC Co., Ltd. | China/Beijing | 59 (8.4%) |
2 | Mitsubishi Electric Corp. | Japan/Tokyo | 46 (6.5%) |
3 | ABB Group. | Europe/Zurich | 25 (3.5%) |
4 | Toshiba Corp. | Japan/Tokyo | 20 (2.8%) |
5 | Wolong Electric Group Co., Ltd. | China/Shaoxing | 18 (2.6%) |
6 | Hitachi, Ltd. | Japan/Tokyo | 16 (2.3%) |
7 | Southwest Jiaotong University | China/Chengdu | 15 (2.1%) |
8 | China Railway Engineering Equipment Group Co., Ltd. | China/Zhengzhou | 13 (1.8%) |
9 | Siemens AG. | Europe/Munich | 13 (1.8%) |
10 | Alstom S.A. | Europe/Saint-Ouen | 11 (1.6%) |
Rank | Applicant | Region/City | Number of Patents Filed (Patent Share) |
---|---|---|---|
1 | CRRC Co., Ltd. | China/Beijing | 35 (15%) |
2 | Southwest Jiaotong University | China/Chengdu | 15 (6.4%) |
3 | Hitachi, Ltd. | Japan/Tokyo | 14 (6%) |
4 | China Railway Engineering Equipment Group Co., Ltd. | China/Zhengzhou | 9 (3.8%) |
5 | Bombardier Inc. | Canada/Montreal | 7(3%) |
6 | Mitsubishi Electric Corp. | Japan/Tokyo | 6 (2.5%) |
7 | Zhuzhou Lince Group Co., Ltd | China/Zhengzhou | 5 (2.14%) |
8 | Wolong Electric Group Co., Ltd. | China/Shaoxing | 4 (1.7%) |
9 | Alstom S.A. | Europe/Saint-Ouen | 4 (1.7%) |
10 | Toshiba Corp. | Japan/Tokyo | 3 (1.28%) |
IPC | Betweenness (X) | Closeness (X) | Degree (X) | Priority |
---|---|---|---|---|
“B01D”, “B09B”, “B22D”, “B22F”, “B23K”, “B32B”, “B60L”, “B60M”, “B60R”, “B61C”, “B61D”, “B61L”, “B62D”, “C04B”, “C08G”, “C08J”, “C08K”, “C08L”, “C21D”, “C22C”, “C22F”, “F01D”, “F03D”, “F04D”, “F16F”, “F16M”, “F28D”, “G01D”, “G01N”, “G01R”, “G05D”, “G05F”, “G08B”, “H01B”, “H01F”, “H01H”, “H01L”, “H02B”, “H02H”, “H02J”, “H02K”, “H02M”, “H02P”, “H03H”, “H04L”, “H05B”, “H05K” | 100 < X | 40 < X | 5 < X | High |
“A61F”, “A61L”, “A61N”, “A62D”, “B01J”, “B21D”, “B29C”, “B60K”, “B61B”, “B61F”, “B61H”, “B66C”, “C01B”, “C07B”, “C07C”, “C08F”, “C09D”, “C09J”, “E04G”, “E04H”, “E21C”, “E21F”, “F02C”, “F27B”, “F27D”, “F28C”, “F28F”, “G01B”, “G01K”, “G01M”, “G05B”, “G06G”, “G09B”, “G10K”, “H01J”, “H03K”, “H04B”, “H04J” | 10 < X < 100 | 30 < X < 40 | 2 < X < 5 | Medium |
“B08B”, “B21B”, “B23D”, “B24B”, “B60C”, “B60H”, “B60P”, “B61K”, “B65D”, “B65G”, “B65H”, “B66D”, “C01G”, “C09K”, “C23C”, “C25C”, “C30B”, “E01H”, “F01K”, “F02B”, “F02P”, “F16D”, “F16H”, “F16K”, “F16L”, “F24S”, “G01F”, “G01P”, “G01V”, “G06F”, “G06K”, “G06Q”, “G08C”, “H01Q”, “H01R”, “H01S”, “H01T”, “H02G”, “H02S”, “H03M”, “H04N”, “H05G” | X < 10 | X < 30 | X < 2 | Low |
IPC | Technology Level |
---|---|
“A62D”, “B01D”, “B01J”, “B09B”, “B22D”, “B22F”, “B23K”, “B60L”, “B60M”, “B60R”, “B61H”, “B65D”, “C04B”, “C08F”, “C08G”, “C08J”, “C08K”, “C08L”, “C09K”, “C21D”, “C22C”, “C22F”, “E21F”, “F01K”, “F02C”, “F04D”, “F16K”, “F27B”, “F27D”, “G01B”, “G01N”, “G05F”, “H01B”, “H01H”, “H01L”, “H02G”, “H02H”, “H02J”, “H02K”, “H02M”, “H05B”, “H05K”, “H01F”, “F01D”, “F03D”, “H03H”, “B65H”, “F16H”, “F02P”, “H02B”, “B61C”, “H03K” | High |
“F16M”, “H02P”, “H03M”, “H04B”, “H04N”, “H05G” | Medium |
“A61F”, “A61L”, “A61N”, “B08B”, “B21B”, “B21D”, “B23D”, “B24B”, “B29C”, “B32B”, “B60C”, “B60H”, “B60K”, “B60P”, “B61B”, “B61C”, “B61D”, “B61F”, “B61K”, “B61L”, “B62D”, “B65G”, “B65H”, “B66C”, “B66D”, “C01B”, “C01G”, “C07B”, “C07C”, “C09D”, “C09J”, “C23C”, “C25C”, “C30B”, “E01H”, “E04G”, “E04H”, “E21C”, “F01D”, “F02B”, “F02P”, “F03D”, “F16D”, “F16F”, “F16H”, “F16L”, “F24S”, “F28C”, “F28D”, “F28F”, “G01D”, “G01F”, “G01K”, “G01M”, “G01P”, “G01R”, “G01V”, “G05B”, “G05D”, “G06F”, “G06G”, “G06K”, “G06Q”, “G08B”, “G08C”, “G09B”, “G10K”, “H01J”, “H01Q”, “H01R”, “H01S”, “H01T”, “H02B”, “H02S”, “H03H”, “H03K”, “H04J”, “H04L” | Low |
IPC | Fields |
---|---|
“B24B”, “B60L”, “B60M”, “B61C”, “C09D”, “E04G”, “E04D”, “F04D”, “F04H”, “F16H”, “F28C”, “F28F”, “G01D”, “G01R”, “G05F”, “G06F”, “G08B”, “G08C”, “H01B”, “H01F”, “H01R”, “H02H”, “H02J”, “H02K”, “H02M”, “H04L”, “H05K” | Hot |
“B01D”, “B61L”, “B66D”, “C08L”, “E01H”, “F03D”, “F16F”, “F28D”, “G01K”, “G01N”, “G05D”, “G06G”, “G09B”, “H02B”, “H02P”, “H05B” | Active |
“A61F”, “A61L”, “A61N”, “A62D”, “B01J”, “B08B”, “B09B”, “B21B”, “B21D”, “B22D”, “B22F”, “B23D”, “B23K”, “B29C”, “B32B”, “B60C”, “B60H”, “B60K”, “B60P”, “B60R”, “B61B”, “B61D”, “B61F”, “B61H”, “B61K”, “B62D”, “B65D”, “B65G”, “B65H”, “B66C”, “C01B”, “C01G”, “C04B”, “C07B”, “C07C”, “C08F”, “C08G”, “C08J”, “C08K”, “C09J”, “C09K”, “C21D”, “C22C”, “C22F”, “C23C”, “C25C”, “C30B”, “E21C”, “E21F”, “F01D”, “F01K”, “F02B”, “F02C”, “F02P”, “F16D”, “F16K”, “F16L”, “F16M”, “F24S”, “F27B”, “F27D”, “G01B”, “G01F”, “G01M”, “G01P”, “G01V”, “G05B”, “G06K”, “G06Q”, “G10K”, “H01H”, “H01J”, “H01L”, “H01Q”, “H01S”, “H01T”, “H02G”, “H02S”, “H03H”, “H03K”, “H03M”, “H04B”, “H04J”, “H04N”, “H05G” | Cold |
IPC | Qualitative Evaluation | Quantitative Evaluation | Priority | |
---|---|---|---|---|
Technology Mapping Analysis | Social Network Analysis | Time Series Analysis | ||
“B60L”, “B60M”, “F04D”, “G05F”, “H01B”, “H01F”, “H02H”, “H02J”, “H02K”, “H02M”, “H05K” | High | High | Hot | 1 |
“B01D”, “C08L”, “G01N”, “H05B” | High | High | Active | 2 |
“B61C”, “G01D”, “G01R”, “G08B”, “H04L” | Low | High | Hot | 3 |
“B09B”, “B22D”, “B22F”, “B23K”, “B60R”, “C04B”, “C08G”, “C08J”, “C08K”, “C21D”, “C22C”, “C22F”, “H01H”, “H01L” | High | High | Cold | 3 |
“H02P” | Medium | High | Active | 3 |
“C09D”, “E04G”, “E04H”, “F28C”, “F28F” | Low | Medium | Hot | 4 |
“A62D”, “B01J”, “B61H”, “C08F”, “E21F”, “F02C”, “F27B”, “F27D”, “G01B” | High | Medium | Cold | 4 |
“F16M” | Medium | High | Cold | 4 |
“B61L”, “F03D”, “F16F”, “F28D”, “G05D”, “H02B” | Low | High | Active | 4 |
“B24B”, “F16H”, “G06F”, “G08C”, “H01R” | Low | Low | Hot | 5 |
“B65D”, “C09K”, “F01K”, “F16K”, “H02G” | High | Low | Cold | 5 |
“B32B”, “B61D”, “B62D”, “F01D”, “H03H” | Low | High | Cold | 5 |
“H04B” | Medium | Medium | Cold | 5 |
“G01K”, “G06G”, “G09B” | Low | Medium | Active | 5 |
“A61F”, “A61L”, “A61N”, “B21D”, “B29C”, “B60K”, “B61B”, “B61F”, “B66C”, “C01B”, “C07B”, “C07C”, “C09J”, “E21C”, “G01M”, “G05B”, “G10K”, “H01J”, “H03K”, “H04J” | Low | Medium | Cold | 6 |
“H03M”, “H04N”, “H05G” | Medium | Low | Cold | 6 |
“B66D”, “E01H” | Low | Low | Active | 6 |
“B08B”, “B21B”, “B23D”, “B60C”, “B60H”, “B60P”, “B61K”, “B65G”, “B65H”, “C01G”, “C23C”, “C25C”, “C30B”, “F02B”, “F02P”, “F16D”, “F16L”, “F24S”, “G01F”, “G01P”, “G01V”, “G06K”, “G06Q”, “H01Q”, “H01S”, “H01T”, “H02S” | Low | Low | Cold | 7 |
IPC | Title |
---|---|
B60L | (1) Propulsion of electric vehicles. (2) Power the auxiliary equipment for electric propulsion. (3) Generally, electrodynamic braking systems for vehicles. (4) Vehicle magnetic suspension or injury. (5) Monitoring of operating variables of electric propulsion vehicles. (6) Electrical safety equipment for electric propulsion vehicles. |
B60M | (1) Electric propulsion vehicle power supply lines. (2) A device along rails. |
F04D | (1) Non-positive-displacement pumps (engine fuel-injection pumps; electrodynamic pumps; cooling; diminishing heat transfer; heating; ion pumps). |
G05F | (1) A system for adjusting electrical or magnetic variables. |
H01B | (1) Material selection for cable, conductor, insulator, conductive insulation, or dielectric properties. |
H01F | (1) Magnet inductance; transformer; selection of materials for magnetic properties. |
H02H | (1) Emergency protective circuit device. |
H02J | (1) A circuit device or system for power supply or distribution. (2) Electrical energy storage system. |
H02K | (1) Dynamo electromechanical. |
H02M | (1) Equipment for conversion between AC and AC, between AC and DC, or between DC and DC, and for use in mains or similar power supply systems. (2) Convert DC or AC input power into surge output power. (3) Control or regulation. |
H05K | (1) Printed circuit. (2) Casings or structural details of electrical equipment. (3) Manufacture of electrical assembly. |
Group | Forecasted Vacant Technology | Technology Keywords for Each Identified Group |
---|---|---|
1 | Blowerless Technology in Main Transformer | fanless, blowerless, inverter, cooling, nature |
2 | Oil-Free Technology in Main Transformer | refrigerant, insulating, dry, leak, oilfree |
3 | Solid-State Technology in Main Transformer | solid-state, highfrequency, semiconductor, converter, modular, electronic, multilevel |
Forecasted Vacant Technology | International Union of Railways (UIC) Rail Technical Strategy Europe | Railway Technical Research Institute (RTRI) Master Plan Research 2020 | Korea Railroad Research Institute (KRRI) National Transportation Research and Planning Project |
---|---|---|---|
Blowerless Technology in Main Transformer | √ | √ | √ |
Oil-Free Technology in Main Transformer | √ | √ | √ |
Solid-State Technology in Main Transformer | √ | √ | √ |
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Lee, Y.-J.; Han, Y.J.; Kim, S.-S.; Lee, C. Patent Data Analytics for Technology Forecasting of the Railway Main Transformer. Sustainability 2023, 15, 278. https://doi.org/10.3390/su15010278
Lee Y-J, Han YJ, Kim S-S, Lee C. Patent Data Analytics for Technology Forecasting of the Railway Main Transformer. Sustainability. 2023; 15(1):278. https://doi.org/10.3390/su15010278
Chicago/Turabian StyleLee, Yong-Jae, Young Jae Han, Sang-Soo Kim, and Chulung Lee. 2023. "Patent Data Analytics for Technology Forecasting of the Railway Main Transformer" Sustainability 15, no. 1: 278. https://doi.org/10.3390/su15010278
APA StyleLee, Y.-J., Han, Y. J., Kim, S.-S., & Lee, C. (2023). Patent Data Analytics for Technology Forecasting of the Railway Main Transformer. Sustainability, 15(1), 278. https://doi.org/10.3390/su15010278