Exploring and Predicting the Knowledge Development in the Field of Energy Storage: Evidence from the Emerging Startup Landscape
The distribution and deployment of energy storage systems on a larger scale will be a key element of successfully managing the sustainable energy transition by balancing the power generation capability and load demand. In this context, it is crucial for researchers and policy makers to understand th...
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doaj-8926c631f13a45f3bf86ecbd7bdd37882021-09-26T00:05:23ZengMDPI AGEnergies1996-10732021-09-01145822582210.3390/en14185822Exploring and Predicting the Knowledge Development in the Field of Energy Storage: Evidence from the Emerging Startup LandscapeChie Hoon Song0Endicott College of International Studies, Woosong University, 171 Dongdaejeon-ro, Jung-gu, Daejeon 34606, KoreaThe distribution and deployment of energy storage systems on a larger scale will be a key element of successfully managing the sustainable energy transition by balancing the power generation capability and load demand. In this context, it is crucial for researchers and policy makers to understand the underlying knowledge structure and key interaction dynamics that could shape the future innovation trajectory. A data-driven approach is used to analyze the evolving characteristics of knowledge dynamics from static, dynamic and future-oriented perspective. To this end, a network analysis was performed to determine the influence of individual knowledge areas. Subsequently, an interaction trend analysis based on emergence indicators was conducted to highlight the promising relations. Finally, the formation of new knowledge interactions is predicted using a link prediction technique. The findings show that ensuring the energy efficiency is a key issue that has persisted over time. In future, knowledge areas related to digital technologies are expected to gain relevance and lead the transformative change. The derived insights can assist R&D managers and policy makers to design more targeted and informed strategic initiatives to foster the adoption of energy storage solutions.https://www.mdpi.com/1996-1073/14/18/5822batteryenergy storagetechnological developmentnetwork analysisco-classificationlink prediction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Chie Hoon Song |
spellingShingle |
Chie Hoon Song Exploring and Predicting the Knowledge Development in the Field of Energy Storage: Evidence from the Emerging Startup Landscape Energies battery energy storage technological development network analysis co-classification link prediction |
author_facet |
Chie Hoon Song |
author_sort |
Chie Hoon Song |
title |
Exploring and Predicting the Knowledge Development in the Field of Energy Storage: Evidence from the Emerging Startup Landscape |
title_short |
Exploring and Predicting the Knowledge Development in the Field of Energy Storage: Evidence from the Emerging Startup Landscape |
title_full |
Exploring and Predicting the Knowledge Development in the Field of Energy Storage: Evidence from the Emerging Startup Landscape |
title_fullStr |
Exploring and Predicting the Knowledge Development in the Field of Energy Storage: Evidence from the Emerging Startup Landscape |
title_full_unstemmed |
Exploring and Predicting the Knowledge Development in the Field of Energy Storage: Evidence from the Emerging Startup Landscape |
title_sort |
exploring and predicting the knowledge development in the field of energy storage: evidence from the emerging startup landscape |
publisher |
MDPI AG |
series |
Energies |
issn |
1996-1073 |
publishDate |
2021-09-01 |
description |
The distribution and deployment of energy storage systems on a larger scale will be a key element of successfully managing the sustainable energy transition by balancing the power generation capability and load demand. In this context, it is crucial for researchers and policy makers to understand the underlying knowledge structure and key interaction dynamics that could shape the future innovation trajectory. A data-driven approach is used to analyze the evolving characteristics of knowledge dynamics from static, dynamic and future-oriented perspective. To this end, a network analysis was performed to determine the influence of individual knowledge areas. Subsequently, an interaction trend analysis based on emergence indicators was conducted to highlight the promising relations. Finally, the formation of new knowledge interactions is predicted using a link prediction technique. The findings show that ensuring the energy efficiency is a key issue that has persisted over time. In future, knowledge areas related to digital technologies are expected to gain relevance and lead the transformative change. The derived insights can assist R&D managers and policy makers to design more targeted and informed strategic initiatives to foster the adoption of energy storage solutions. |
topic |
battery energy storage technological development network analysis co-classification link prediction |
url |
https://www.mdpi.com/1996-1073/14/18/5822 |
work_keys_str_mv |
AT chiehoonsong exploringandpredictingtheknowledgedevelopmentinthefieldofenergystorageevidencefromtheemergingstartuplandscape |
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1717367128518033408 |