天美传媒

ISSN: 2168-9717

Journal of Architectural Engineering Technology
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  • Mini Review   
  • J Archit Eng Tech 2023, Vol 12(1): 320
  • DOI: 10.4172/2168-9717.1000320

An Examination of Physics-based Machine Learning in Civil Engineering

Michael Baxter*
Department of Architecture, College of Colchester, United Kingdom
*Corresponding Author : Michael Baxter, Department of Architecture, College of Colchester, United Kingdom, Email: Michael33@gmail.com

Received Date: Jan 03, 2023 / Published Date: Jan 30, 2023

Abstract

The potential are expanding across all industries thanks to the recent advancements in machine learning (ML) and deep learning (DL). Although ML is a useful tool that may be used in many different fields, it can be difficult to directly apply it to civil engineering issues. Lab-simulated ML for civil engineering applications frequently fails in real-world assessments. This is typically linked to a phenomenon known as data shift, which occurs when the data used to train and test the ML model differ from the data it meets in the real world. To address data shift issues, a physics-based ML model integrates data, partial differential equations (PDEs), and mathematical models. In order to accomplish supervised learning problems while adhering to any given laws, physics-based ML models are trained. Physics-based Fluid dynamics, quantum physics, computational resources, and data storage are among the many scientific fields where machine learning (ML) is taking centre stage. This essay examines the development of physics-based machine learning and its use in civil engineering.

Citation: Baxter M (2023) An Examination of Physics-based Machine Learning inCivil Engineering. J Archit Eng Tech 12: 320. Doi: 10.4172/2168-9717.1000320

Copyright: © 2023 Baxter M. This is an open-access article distributed under theterms of the Creative Commons Attribution License, which permits unrestricteduse, distribution, and reproduction in any medium, provided the original author andsource are credited.

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