Unlocking trends in secondary battery technologies: A model based on bidirectional encoder representations from transformers

Q1 Social Sciences
Hanjun Shin, Juyong Lee
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引用次数: 0

Abstract

Battery technology is widely used in various aspects of modern life, and efficient energy storage is becoming increasingly crucial. Secondary battery technology is continuously developing, and its market value is increasing. Therefore, data analysis is essential for the continued growth of technology in this field. Patent data is commonly analysed to identify technological trends, providing valuable information for technological innovation and competitiveness. Compared to traditional topic modelling techniques based on word occurrence frequency, Bidirectional Encoder Representations from Transformers (BERT) demonstrates superior natural language processing results in generating contextual word and sentence vector representations by considering the semantic similarities of the text. Therefore, this study utilised this model to extract topics. From a total of 6218 patent data, this study extracted core topics and the main keywords for secondary battery technologies between 2013 and 2022 were lithium-ion, electric vehicles, unmanned air vehicles, and solar panels, confirming the accuracy of BERT-based patent analysis. Additionally, this study selected the topics and present their main concepts and trend analysis to provide insights into future research on secondary battery technologies.

揭示二次电池技术的发展趋势:基于变压器双向编码器表示的模型
电池技术被广泛应用于现代生活的方方面面,高效储能变得越来越重要。二次电池技术在不断发展,其市场价值也在不断增加。因此,数据分析对该领域技术的持续发展至关重要。专利数据通常通过分析来确定技术趋势,为技术创新和竞争力提供有价值的信息。与传统的基于词出现频率的主题建模技术相比,来自变换器的双向编码器表示法(BERT)通过考虑文本的语义相似性,在生成上下文单词和句子向量表示方面展示了卓越的自然语言处理效果。因此,本研究利用这一模型来提取主题。本研究从总共 6218 项专利数据中提取了核心主题,2013 年至 2022 年间二次电池技术的主要关键词为锂离子、电动汽车、无人驾驶飞行器和太阳能电池板,这证实了基于 BERT 的专利分析的准确性。此外,本研究还对这些主题进行了筛选,并提出了其主要概念和趋势分析,为未来二次电池技术的研究提供了启示。
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来源期刊
Electricity Journal
Electricity Journal Business, Management and Accounting-Business and International Management
CiteScore
5.80
自引率
0.00%
发文量
95
审稿时长
31 days
期刊介绍: The Electricity Journal is the leading journal in electric power policy. The journal deals primarily with fuel diversity and the energy mix needed for optimal energy market performance, and therefore covers the full spectrum of energy, from coal, nuclear, natural gas and oil, to renewable energy sources including hydro, solar, geothermal and wind power. Recently, the journal has been publishing in emerging areas including energy storage, microgrid strategies, dynamic pricing, cyber security, climate change, cap and trade, distributed generation, net metering, transmission and generation market dynamics. The Electricity Journal aims to bring together the most thoughtful and influential thinkers globally from across industry, practitioners, government, policymakers and academia. The Editorial Advisory Board is comprised of electric industry thought leaders who have served as regulators, consultants, litigators, and market advocates. Their collective experience helps ensure that the most relevant and thought-provoking issues are presented to our readers, and helps navigate the emerging shape and design of the electricity/energy industry.
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