The role of reinforcement learning in autonomous architectural optimization and energy efficiency

Satish Chitimoju *

Worked in Amex, Masters in USA - Trine University.
 
Research Article
World Journal of Advanced Research and Reviews, 2024, 24(03), 3358-3373
Article DOI: 10.30574/wjarr.2024.24.3.3907
 
Publication history: 
Received on 10 November 2024; revised on 03 December 2024; accepted on 05 December 2024
 
Abstract: 
The surge of worldwide energy requirements and the necessity of sustainable architecture have made artificial intelligence optimization methods more important than ever. Reinforcement Learning (RL) is a fundamental method to develop better energy performance in architecture through data-based adaptive decision systems. Real-time operation capabilities of RL models allow them to change architectural parameters dynamically, optimizing energy consumption and building performance output. Autonomous architectural design benefits from applying RL technology, which enhances sustainability, improves material efficiency and minimizes environmental effects.
This research analyzes different RL optimization methods that enhance building efficiency through their capacity to produce energy-efficient designs. Various case studies demonstrate how RL technology leads to successful results in smart HVAC control systems, daylight optimization systems, and material selection processes. This research examines different implementation obstacles in RL utilization in architecture, such as sophisticated algorithms, difficulty achieving stable results, and real-time adjustments. This study examines how RL operates with IoT-enabled smart buildings, particularly in intelligent energy management.
RL develops crucial possibilities for sustainable architecture through its ability to create learning structures that improve themselves automatically. The study demonstrates how architectural advances from RL need combined efforts between architects, engineers, and AI researchers to produce effective solutions. RL-based research explores potential solutions and future growth to demonstrate its potential for building the next generation of intelligent energy-efficient buildings. The research boosts sustainable architectural development by discovering efficient methods to defend environmental responsibility during urban modernization. 
 
Keywords: 
Reinforcement Learning; Architectural Optimization; Energy Efficiency; Smart Buildings; AI In Architecture; Sustainable Design; Autonomous Optimization; Deep Learning for Energy Management
 
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This paper has received Best Paper award in the Volume 24 - Issue 3 (December 2024)

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