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- 2024
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Mark
Artificial Intelligence Applications for Sustainable Construction
Nehdi, Moncef L. ; Arora, Harish Chandra ; Kumar, Krishna LU ; Damaševičius, Robertas and Kumar, Aman (2024)
- Book/Report › Anthology (editor)
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Mark
Development of Efficient Prediction Model of FRP-to-Concrete Bond Strength Using Curve Fitting and ANFIS Methods
(
- Contribution to journal › Article
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Mark
Performance monitoring of kaplan turbine based hydropower plant under variable operating conditions using machine learning approach
(
- Contribution to journal › Article
- 2023
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Mark
Performance prognosis of FRCM-to-concrete bond strength using ANFIS-based fuzzy algorithm
(
- Contribution to journal › Article
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Mark
Prognosis of compressive strength of fly-ash-based geopolymer-modified sustainable concrete with ML algorithms
(
- Contribution to journal › Article
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Mark
Development of a Reliable Machine Learning Model to Predict Compressive Strength of FRP-Confined Concrete Cylinders
(
- Contribution to journal › Article
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Mark
Neural Network Based Algorithm to Estimate the Axial Capacity of Corroded RC Columns
2023) 5th International Conference on Information Systems and Management Science, ISMS 2022 In Lecture Notes in Networks and Systems 671 LNNS. p.219-230(
- Chapter in Book/Report/Conference proceeding › Paper in conference proceeding
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Mark
Effective monitoring of Pelton turbine based hydropower plants using data-driven approach
(
- Contribution to journal › Article
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Mark
ML-Based Computational Model to Estimate the Compressive Strength of Sustainable Concrete Integrating Silica Fume and Steel Fibers
2023) 5th International Conference on Information Systems and Management Science, ISMS 2022 In Lecture Notes in Networks and Systems 671 LNNS. p.231-244(
- Chapter in Book/Report/Conference proceeding › Paper in conference proceeding
-
Mark
Machine learning intelligence to assess the shear capacity of corroded reinforced concrete beams
(
- Contribution to journal › Article