Department of Engineering and Applied Sciences
基本情報
- 所属
- 上智大学 理工学部 機能創造理工学科 助教
- 学位
- 学士(工学)(2019年7月 上海海事大学)修士(工学)(2021年9月 上智大学)博士(工学)(2024年9月 上智大学)
- 連絡先
- d-kong-9a6
sophia.ac.jp - 研究者番号
- 31013758
- ORCID ID
https://orcid.org/0000-0002-4671-5920- J-GLOBAL ID
- 202401021336486427
- researchmap会員ID
- R000076492
経歴
1-
2024年9月 - 現在
学歴
3-
2021年9月 - 2024年9月
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2019年9月 - 2021年9月
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2015年9月 - 2019年7月
論文
9-
IET Intelligent Transport Systems 20(1) 2026年1月ABSTRACT Energy‐efficient operation is a fundamental objective for intelligent urban rail transit. However, conventional train scheduling approaches typically assume a constant train mass, overlooking the influence of passenger flow on traction energy consumption. This paper presents a comprehensive scheduling framework that explicitly models the interaction among passenger flow, train mass, and energy consumption. The model focuses on the effect of reducing traction energy consumption rather than the overall energy consumption and dynamically updates train mass according to time‐varying passenger demand and determines the optimal distribution of section times to minimise general energy consumption while satisfying operational and service constraints. A dynamic programming (DP) algorithm is developed to obtain the optimal schedule efficiently without encountering dimensionality issues, enabling near‐real‐time applicability in the train scheduling approach. The proposed approach is validated through case studies on an actual subway line. Results show that the proposed schedule achieves significant energy savings by accounting for passenger‐flow‐induced mass variation, while the multi‐train schedule further adapts to time‐varying demand. Compared with the original and passenger‐flow‐independent optimal schedules, the proposed method reduces energy consumption by 10.83% and 1.56%, respectively, while maintaining passenger transport capacity and ensuring constraints. Analysis results based on power flow also show that this method can reduce system‐side energy, which demonstrates that integrating passenger flow into train scheduling enables more accurate modelling and yields substantial energy savings for urban rail systems.
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Applied Energy Symposium: Low-Carbon Cities & Urban Energy Systems (CUE2025) 2025年7月
担当経験のある科目(授業)
6-
2025年9月 - 現在基礎科学実験・演習* (上智大学)
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2025年9月 - 現在先端電気電子工学1 (上智大学)
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2025年4月 - 現在グリーン工学特論3 (上智大学)
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2025年4月 - 現在工学応用科学3 (上智大学)
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2024年9月 - 現在グリーン工学実験3* (上智大学)
所属学協会
2-
2025年6月 - 現在
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2020年9月 - 現在