Today's events
Category: Thesis defences
Two Essays on the Impact of Affect on Users' Perception of Fake News on Social Media Platforms
Modeling, Analysis, and Control of Opinion Dynamics in Social Media Networks
Mathematical models and solution algorithms for resilient network design
Adaptive Grasping with Soft Robotics: Modeling and Implementation of Tendon-Driven Systems
Empowered for Action: The Coalition Project of the Evangelical Women's Caucus
Category: Thesis defences
Upcoming events
Category: Thesis defences
Investigating Methodological Considerations for Studying the Dynamics of Popularity and Acceptance in Pre-Adolescence
Comparative Study of Electrochemical Pretreatment of Sludge for Enhancing Green Energy Production
Labyrinths of Despair: Crime, Emotion, and the Racialized Courtroom in Nineteenth-Century Yucatán
Navigating my Way in, through, and out of PVE-Centered Instruction: Autoethnographic Reflections of Researching and Teaching PVE in CEGEP Literature Classrooms
Modeling Tauopathy Progression in the Brain
Design and Analysis of Hybrid Permanent Magnet Variable Flux Motors for Traction Applications
Cyber Security in Event-Triggered Cyber-Physical Systems: A System Theoretic Approach
Integrated Cost-Availability Based Maintenance Management Models for Data Centers
Individual difference characteristics and contextual factors affecting educational attainment
Permanent Magnet Condition Monitoring in Permanent Magnet Synchronous Machines
Deep Learning-Based Medical Image Analysis for Enhanced Diagnosis and Prognosis of Viral Pneumonia
Novel Deep Learning Models for Radar-Based Human Activity Recognition
Enhanced Video Tracking Based on Fusion of Visible and Infrared Images
Accurate Abstract Syntax Tree Differencing: Language-Aware Design, Benchmarking, and Empirical Assessment
Nb41: A Speculative Ethnography of the Element Niobium
ABSTRACT <br><br>Wind Loads On Non-Rectangular Flat-Roof Buildings: <br><br>Design Provisions And Application Of Machine Learning <br><br>Murad Aldoum <br><br>Concordia University, 2025 <br><br>Buildings with rectangular plans were, in the past 50 years, the main focus in the wind engineering field. Consequently, the wind design provisions of rectangular buildings are well established in the wind codes and standards. On the other hand, wind design provisions for non-rectangular buildings are generally not available in wind codes and standards. This study investigates wind pressures on roofs and walls of non-curved and non-rectangular buildings with four shapes L, U, T, and X with different plan dimensions and heights. This study aims to provide design guidelines for cladding and components of the envelope of non-rectangular low-rise buildings. <br><br>The experimental results of roofs and walls were analyzed and compared with the design provisions and guidelines of ​NBCC 2020​ and ​ASCE/SEI 7-22, 2022​ for rectangular buildings. The comparison with ​NBCC 2020​ indicated that roof design provisions are comparable to the experimental results in the corner zone and lower than the experimental peaks in the edge and interior zones. The comparison with ​ASCE/SEI 7-22, 2022​ shows that the standard roof design provisions of rectangular buildings are conservative and applicable for the design of non-rectangular buildings. The experimental results also indicate that the size of the roof pressure zone is mainly dependent on the roof height. <br><br>The wall pressures were also compared to the wall design peaks of the North American codes and standards. The experimental results indicate that relatively high suctions occur on the wall areas at the corners and the reentrant corners (wall edges) and lower suctions on the wall middle areas. The rectangular building provisions of ASCE 7-22 were satisfactory and can be used for the design of walls of non-rectangular buildings, while the rectangular building provisions of NBCC 2020 require further modifications to become applicable to non-rectangular buildings. <br><br>Furthermore, the wind tunnel measurements not only provided valuable data but also served as a dataset when applying Machine Learning (ML) as a tool to predict wind loads on non-rectangular buildings. This involved the utilization of ensemble ML and Artificial Neural Networks (ANN), using two data split approaches: random and structured splits. The ML models exhibit significant predictive accuracy, achieving minimal Mean Squared Error (MSE) and coefficients of determination (R-squared) of about 0.97 for wind pressure coefficients. In addition, the study demonstrated that a structured split of the dataset reflects a more realistic assessment of the ML models. <br><br>Keywords: non-rectangular buildings; wind tunnel testing; roof pressures; wall pressures; pressure zonal system; NBCC 2020; ASCE 7-22; ensemble Machine Learning; Artificial Neural Networks; wind-induced loads. <br><br> <br><br> <br><br>
Bioinspired Ceramic Composites
Next-Generation Bond Coats in Thermal Barrier Coating Systems Using High Entropy Alloys
Development and Tribological Performance of Thermally Sprayed Coatings Inspired by Glaze Layers
Artistic thinking and Embodied Cognition
Stochastic Programming Methods for Casualty Response Planning Problems with Different Classes of Patients, Blood Inventory Management, and Hospital Evacuations
Multistage Transit-Oriented Development (TOD) Assessment Method: Integrating Sustainability Analysis and Disaster Mitigation
Transdisciplinary Systems-Thinking in Climate-Resilient Real Estate: The Yield Development Framework
Harmonizing Divergence in Computational Discourse Analysis
Explainable AI Process, Algorithms and Service Architecture for Cloud and Open-Source AI Vision Models
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