
| ID | 69420 |
| フルテキストURL | |
| 著者 |
Kotama, I Nyoman Darma
Graduate School of Natural Science and Technology, Okayama University
Funabiki, Nobuo
Graduate School of Natural Science and Technology, Okayama University
Kaken ID
publons
researchmap
Panduman, Yohanes Yohanie Fridelin
Graduate School of Information Science and Technology, The University of Osaka
Brata, Komang Candra
Graduate School of Natural Science and Technology, Okayama University
Pradhana, Anak Agung Surya
Graduate School of Natural Science and Technology, Okayama University
Noprianto
Graduate School of Natural Science and Technology, Okayama University
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| 抄録 | Nowadays, Internet of Things (IoT) application systems are broadly applied to various sectors of society for efficient management by monitoring environments using sensors, analyzing sampled data, and giving proper feedback. For their fast deployment, we have developed Smart Environmental Monitoring and Analysis in Real Time (SEMAR) as an integrated IoT application server platform and implemented the input setup assistance service using prompt engineering and a generative AI model to assist connecting sensors to SEMAR with step-by-step guidance. However, the current service cannot assist in connections of the sensors not learned by the AI model, such as newly released ones. To address this issue, in this paper, we propose an extension to the service for handling unlearned sensors by utilizing datasheets with four steps: (1) users input a PDF datasheet containing information about the sensor, (2) key specifications are extracted from the datasheet and structured into markdown format using a generative AI, (3) this data is saved to a vector database using chunking and embedding methods, and (4) the data is used in Retrieval-Augmented Generation (RAG) to provide additional context when guiding users through sensor setup. Our evaluation with five generative AI models shows that OpenAI’s GPT-4o achieves the highest accuracy in extracting specifications from PDF datasheets and the best answer relevancy (0.987), while Gemini 2.0 Flash delivers the most balanced results, with the highest overall RAGAs score (0.76). Other models produced competitive but mixed outcomes, averaging 0.74 across metrics. The step-by-step guidance function achieved a task success rate above 80%. In a course evaluation by 48 students, the system improved the student test scores, further confirming the effectiveness of our proposed extension.
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| キーワード | Internet of Things
artificial intelligence
Retrieval-Augmented Generation
review
application server platform
SEMAR
sensor input
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| 発行日 | 2025-09-08
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| 出版物タイトル |
IoT
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| 巻 | 6巻
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| 号 | 3号
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| 出版者 | MDPI AG
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| 開始ページ | 52
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| ISSN | 2624-831X
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| 資料タイプ |
学術雑誌論文
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| 言語 |
英語
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| OAI-PMH Set |
岡山大学
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| 著作権者 | © 2025 by the authors.
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| 論文のバージョン | publisher
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| DOI | |
| Web of Science KeyUT | |
| 関連URL | isVersionOf https://doi.org/10.3390/iot6030052
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| ライセンス | https://creativecommons.org/licenses/by/4.0/
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| Citation | Kotama, I.N.D.; Funabiki, N.; Panduman, Y.Y.F.; Brata, K.C.; Pradhana, A.A.S.; Noprianto. An Extension of Input Setup Assistance Service Using Generative AI to Unlearned Sensors for the SEMAR IoT Application Server Platform. IoT 2025, 6, 52. https://doi.org/10.3390/iot6030052
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