Skip navigation

DSpace JSPUI

DSpace preserves and enables easy and open access to all types of digital content including text, images, moving images, mpegs and data sets

Learn More
DSpace logo
English
中文
  • Browse
    • Communities
      & Collections
    • Publication Year
    • Author
    • Title
    • Subject
    • Advisor
  • Search TDR
  • Rights Q&A
    • My Page
    • Receive email
      updates
    • Edit Profile
  1. NTU Theses and Dissertations Repository
  2. 管理學院
  3. 資訊管理學系
Please use this identifier to cite or link to this item: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/99078
Title: 基於深度學習的物聯網設備容量限制服務業之碳足跡排放預測 - 以自助洗衣業為例
Deep Learning-Based Prediction of Carbon Footprint Emissions for IoT-enabled Capacitated Service Industry
Authors: 鍾靖詮
Ching-Chuan Chung
Advisor: 陳靜枝
Ching-Chin Chern
Keyword: 碳足跡,容量限制服務業,物聯網,時間序列分析,分群模型,
carbon footprint,capacitated service industry,Internet of Things,time-series analysis,clustering model,
Publication Year : 2025
Degree: 碩士
Abstract: 面對全球減碳壓力與淨零排放目標,碳足跡管理及預測議題漸趨重要;雖然製造業等領域在過去存在相關研究,但對於如餐廳、自助洗衣店等容量限制服務業,相關研究仍相對稀少,使產業難以量化自身碳足跡排放量,也使政策制定缺乏實證依據。

本研究以自助洗衣業為範例,提出一個碳足跡計算及管理與預測的框架。透過業者提供的IoT 資料,整合機台的電力、水與廢水三項主要耗用量,並提出以排放係數為基礎的碳足跡計算方式;其次,再以歷史營運紀錄訓練時間序列模型,預測未來十二個月碳足跡的趨勢;考量新店面或新機台常面臨資料不足,本研究也設計分群模型,依設備使用型態與環境條件尋找相似群組,而分開處理不同量級的資源,則可以進一步提供模型穩定度及精確度。

研究結果顯示,所建構的碳足跡時間序列模型與分群模型均具良好準確度,該框架不僅可協助自助洗衣業據此制定減排策略,也能進一步延伸至餐廳、電動車充電椿等其他容量限制服務領域,做為永續營運之參考。
Facing growing global pressure to reduce carbon emissions and achieve net-zero targets, carbon-footprint management and forecasting have become increasingly important. Although previous studies exist in sectors such as manufacturing, research on capacitated service industries—such as restaurants and self-service laundromats—remains relatively scarce, making it difficult for these industries to quantify their own carbon-footprint emissions and leaving policymakers without empirical evidence.

Using the self-service laundry industry as an example, this study proposes a framework for carbon-footprint calculation, management, and forecasting. IoT data supplied by operators are used to integrate the three main resource consumptions of each machine—electricity, water, and wastewater—and an emission-factor-based method for calculating the carbon footprint is presented. Historical operational records then train a time-series model to predict carbon-footprint trends for the next twelve months. Because new stores or newly installed machines often lack sufficient data, a clustering model is designed to identify similar groups based on equipment usage patterns and environmental conditions; handling resources of different scales separately further enhances model stability and accuracy.

The results show that both the time-series model and the clustering model achieve good accuracy. The framework can not only help the self-service laundry industry develop emission-reduction strategies but can also be extended to other capacitated service sectors—such as restaurants and EV charging stations—as a reference for sustainable operations.
URI: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/99078
DOI: 10.6342/NTU202503664
Fulltext Rights: 同意授權(限校園內公開)
metadata.dc.date.embargo-lift: 2030-08-04
Appears in Collections:資訊管理學系

Files in This Item:
File SizeFormat 
ntu-113-2.pdf
  Restricted Access
854.34 kBAdobe PDFView/Open
Show full item record


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

社群連結
聯絡資訊
10617臺北市大安區羅斯福路四段1號
No.1 Sec.4, Roosevelt Rd., Taipei, Taiwan, R.O.C. 106
Tel: (02)33662353
Email: ntuetds@ntu.edu.tw
意見箱
相關連結
館藏目錄
國內圖書館整合查詢 MetaCat
臺大學術典藏 NTU Scholars
臺大圖書館數位典藏館
本站聲明
© NTU Library All Rights Reserved