Passive design explorer
收藏DataCite Commons2025-04-01 更新2025-04-16 收录
下载链接:
https://data.mendeley.com/datasets/v5rf8ryc63
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资源简介:
A Python package and Grasshopper example files for running a pre-trained Mixture of Experts (MoE) surrogate model to predict building heating and cooling EUI in real time.
The generalized and modular MoE model is developed to support complex, multi-zone office building designs under various climatic conditions.
1. Python Package:
The dataset includes a snapshot of the initial release of the Python package and MoE model (v0.1.0), which is still under development.
The package contains:
- A pre-trained surrogate model file
- A scaler object for input feature normalization
- Source code for parametric model translation, features extraction, prediction, and integration with Grasshopper.
Refer to the README.md file for full installation and usage instructions.
2. Grasshopper example files:
These example files demonstrate a unified modeling and prediction platform.
The parametric models follow the Honeybee modeling workflow and can be evaluated using either EnergyPlus or the surrogate model.
Ladybug Tools and Hops plugins for Grasshopper are required.
The final model is serialized into a '.hbpkl' file and passed to the 'hops' component for processing.
Note: The parametric model is designed to predict a single building (comprising multiple zones) at a time. To enable batch prediction for multiple buildings (e.g., for evolutionary optimization), the Grasshopper definition and the server.py script can be modified accordingly.
Refer to the README.md file for usage instructions.
提供机构:
Mendeley Data
创建时间:
2025-03-21



