Leveraging Generative AI to Learn Impact of Climate Change on Buildings inUrban Areas

Abstract

Climate change, global warming, and pollution are intensifying daily. As urbanization increases, understanding the reciprocal impact between buildings and the environment becomes increasingly important. Most research focuses on building monitoring using Internet of Things (IoT), such as energy consumption, data collection, etc., but still, overlooks the outdoor environmental impacts on buildings and vice versa and often lacks comprehensive reports explaining the results. This work aims to expand our understanding of environmental influences on buildings, indoor environments, and residents. It also seeks to generate comprehensive reports on these impacts, providing actionable recommendations to mitigate and minimize them with the help of Generative Artificial Intelligence. Specifically, we fine-tuned Large Language Models (LLMs) such as Generative Pre-trained Transformer 2 (GPT-2) and Large Language Model Meta AI 2 (LLAMA2-7b), using the Nous Research LLAMA2-7b-hf version from Hugging Face, on a custom dataset compiled from diverse online sources. Our research examines the effects of environmental factors, including temperature, humidity, and air quality, on urban buildings and indoor environments, and generate the reports with actionable recommendations. The generated reports offer a clear understanding of environmental impacts on buildings and suggest strategies to minimize these effects. These insights are intended to support effective urban planning and sustainable development. By following these recommendations or best practices, we can enhance indoor environmental quality while reducing contributions to global warming. Future work will involve continuous monitoring of buildings' indoor environments, energy consumption, and greenhouse gas (GHG) emissions, further reducing GHG emissions and addressing global warming.

Authors and Affiliations

Abdul Rauf, Muhammad Farrukh Shahid, Syed Hassan Ali, M. Hassan Tanveer

Keywords

Related Articles

Enhanced Emotion Recognition on the FER-2013 Dataset by Training VGG from Scratch

Recognizing facial emotions is still a major obstacle in computer vision, particularly when dealing with complex datasets such as FER-2013. Advancements in deep learning have simplified the process of achieving high ac...

Numerical Simulation of Flow Past a Square Object Detached with Controlling Object at Various Reynolds Number

A two-dimensional (2-D) numerical study has been conducted for flow past of two different configurations of square objects by using the numerical technique Lattice Boltzmann Method (LBM). In these configurations, one o...

Bitcoin Price Forecasting: A Comparative Study of Machine Learning, Statistical and Deep Learning Models

Introduction/Importance of Study: Cryptocurrency price prediction is crucial for investors and researchers, given the market's nonlinear nature and the potential for significant financial implications. Novelty: This...

An Artificial Intelligence VisionTransformer Model for Classification of Bacterial Colony

The application of AI and machine learning, particularly the vision transformer method, in bacterial detection presents a promising solution to overcome limitations of traditional methods, offering faster and more accu...

Challenges and Practices Identification via Systematic Literature Review in the Design of Green/Energy-Efficient Embedded Real-Time Systems

As most embedded devices are portable, that is they are operated by batteries, early battery exhaustion is likely to cause the failure of the embedded real-time systems (ERTS). Therefore, developers and users enjoy the...

Download PDF file
  • EP ID EP761764
  • DOI -
  • Views 24
  • Downloads 0

How To Cite

Abdul Rauf, Muhammad Farrukh Shahid, Syed Hassan Ali, M. Hassan Tanveer (2024). Leveraging Generative AI to Learn Impact of Climate Change on Buildings inUrban Areas. International Journal of Innovations in Science and Technology, 6(7), -. https://www.europub.co.uk/articles/-A-761764