Skip navigation

DSpace

機構典藏 DSpace 系統致力於保存各式數位資料(如:文字、圖片、PDF)並使其易於取用。

點此認識 DSpace
DSpace logo
English
中文
  • 瀏覽論文
    • 校院系所
    • 出版年
    • 作者
    • 標題
    • 關鍵字
    • 指導教授
  • 搜尋 TDR
  • 授權 Q&A
    • 我的頁面
    • 接受 E-mail 通知
    • 編輯個人資料
  1. NTU Theses and Dissertations Repository
  2. 工學院
  3. 土木工程學系
請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/99079
標題: 基於深度學習之混凝土坍度模型研究
Research on Concrete Slump Prediction Models On Deep Learning
作者: 翟宏彬
HONG-PIN CHAI
指導教授: 詹穎雯
Yin-Wen Chan
關鍵字: 深度學習,混凝土坍度,Resnet,卷積神經網路,
Deep learning,concrete collapse,Resnet,convolutional neural network,
出版年 : 2025
學位: 碩士
摘要: 混凝土坍度為衡量新拌混凝土工作性之關鍵指標,直接影響施工順利性與成品品質。傳統坍度試驗雖為現場常見的檢測方式,但其具備一次性、延遲性及人工誤差等限制,難以滿足現代工程對即時性與精準性的需求。為克服上述問題,本研究提出一套結合影像處理與深度學習之混凝土坍度自動預測系統,透過攝影機擷取拌合過程中之混凝土影像,並以卷積神經網路(CNN)為核心,建構基於 ResNet 架構之回歸預測模型。
本研究共蒐集42部不同坍度條件之拌合影片,進行影像裁切、資料標註與增強後,建立完整訓練、驗證與測試資料集。模型訓練中透過超參數組合、Early Stopping 與混合精度訓練等技術提升效能,並使用多種資料增強策略優化泛化能力。實驗結果顯示,最佳模型在測試集上預測平均絕對誤差最小可達0.7757cm,驗證其應用於即時坍度監控之潛力。
為提升模型可解釋性,本研究進一步導入 Grad-CAM視覺化技術,分析模型對於影像中關注區域與實際混凝土特徵之關聯性。結果指出,模型多聚焦於水泥漿與粗細骨材交界區域,能夠捕捉與坍度相關之視覺線索,惟於含有攪拌機設備背景或過度動態畫面時預測準確性略有下降。
本研究成功展示深度學習於混凝土坍度預測之可行性與實務應用潛力,未來可望應用於智慧工地即時品管與自動化混凝土生產控制系統中,提升施工效率與品質穩定性。
Slump is a key indicator for evaluating the workability of fresh concrete, directly impacting construction efficiency and the quality of the final product. While the traditional slump test is commonly used on construction sites, it suffers from limitations such as one-time measurement, delays, and human error, making it inadequate for the modern engineering demands of real-time and accurate monitoring. To address these challenges, this study proposes an automatic concrete slump prediction system that integrates image processing and deep learning. Using a camera to capture images during the mixing process, a regression model based on a convolutional neural network (CNN) architecture—specifically ResNet—is developed.
A total of 42 mixing videos under varying slump conditions were collected. After image cropping, data annotation, and augmentation, complete training, validation, and testing datasets were established. During model training, techniques such as hyperparameter tuning, early stopping, and mixed-precision training were employed to enhance performance, along with various data augmentation strategies to improve generalization. Experimental results showed that the best model achieved a minimum mean absolute error (MAE) of 0.7757 cm on the test set, demonstrating its potential for real-time slump monitoring.
To improve model interpretability, Grad-CAM visualization was introduced to analyze the relationship between the model’s attention regions and actual concrete features. Results indicate that the model primarily focuses on the interface between cement paste and aggregates, successfully capturing visual cues related to slump. However, prediction accuracy decreases slightly in images containing background mixing equipment or overly dynamic scenes.
This study successfully demonstrates the feasibility and practical potential of applying deep learning to concrete slump prediction, with promising applications in smart construction sites for real-time quality control and automated concrete production, ultimately enhancing construction efficiency and consistency.
URI: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/99079
DOI: 10.6342/NTU202503247
全文授權: 同意授權(全球公開)
電子全文公開日期: 2025-08-22
顯示於系所單位:土木工程學系

文件中的檔案:
檔案 大小格式 
ntu-113-2.pdf6.65 MBAdobe PDF檢視/開啟
顯示文件完整紀錄


系統中的文件,除了特別指名其著作權條款之外,均受到著作權保護,並且保留所有的權利。

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