z-logo
open-access-imgOpen Access
[ANT]: A Machine Learning Approach for Building Performance Simulation: Methods and Development
Author(s) -
Mahmoud Abdelrahman,
Ahmed Mohamed Yousef Toutou
Publication year - 2019
Publication title -
archive-sr
Language(s) - English
Resource type - Journals
eISSN - 2537-0162
pISSN - 2537-0154
DOI - 10.21625/archive.v3i1.442
Subject(s) - computer science , plug in , python (programming language) , machine learning , artificial intelligence , cluster analysis , usability , software engineering , programming language , human–computer interaction
In this paper, we represent an approach for combining machine learning (ML) techniques with building performance simulation by introducing four methods in which ML could be effectively involved in this field i.e. Classification, Regression, Clustering and Model selection . Rhino-3d-Grasshopper SDK was used to develop a new plugin for involving machine learning in design process using Python programming language and making use of scikit-learn module, that is, a python module which provides a general purpose high level language to nonspecialist user by integration of wide range supervised and unsupervised learning algorithms with high performance, ease of use and well documented features. ANT plugin provides a method to make use of these modules inside Rhino\Grasshopper to be handy to designers. This tool is open source and is released under BSD simplified license. This approach represents promising results regarding making use of data in automating building performance development and could be widely applied. Future studies include providing parallel computation facility using PyOpenCL module as well as computer vision integration using scikit-image.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here