English

GreenPlanner: Practical Floorplan Layout Generation via an Energy-Aware and Function-Feasible Generative Framework

Artificial Intelligence 2025-12-02 v1 Machine Learning

Abstract

Building design directly affects human well-being and carbon emissions, yet generating spatial-functional and energy-compliant floorplans remains manual, costly, and non-scalable. Existing methods produce visually plausible layouts but frequently violate key constraints, yielding invalid results due to the absence of automated evaluation. We present GreenPlanner, an energy- and functionality-aware generative framework that unifies design evaluation and generation. It consists of a labeled Design Feasibility Dataset for learning constraint priors; a fast Practical Design Evaluator (PDE) for predicting energy performance and spatial-functional validity; a Green Plan Dataset (GreenPD) derived from PDE-guided filtering to pair user requirements with regulation-compliant layouts; and a GreenFlow generator trained on GreenPD with PDE feedback for controllable, regulation-aware generation. Experiments show that GreenPlanner accelerates evaluation by over 105×10^{5}\times with >>99% accuracy, eliminates invalid samples, and boosts design efficiency by 87% over professional architects.

Keywords

Cite

@article{arxiv.2512.00406,
  title  = {GreenPlanner: Practical Floorplan Layout Generation via an Energy-Aware and Function-Feasible Generative Framework},
  author = {Pengyu Zeng and Yuqin Dai and Jun Yin and Jing Zhong and Ziyang Han and Chaoyang Shi and ZhanXiang Jin and Maowei Jiang and Yuxing Han and Shuai Lu},
  journal= {arXiv preprint arXiv:2512.00406},
  year   = {2025}
}

Comments

11 pages, 6 figures

R2 v1 2026-07-01T08:00:40.978Z