Abstract
A great abundance of rural houses lacking design guidance exists in the cold regions of China, often accompanied by huge energy loss. Particularly, a courtyard-style dwelling (CSD) has more complex and diverse building elements than a common house, rendering the design optimization extremely costly. Sensitivity analysis (SA) can screen the significant parameters of energy consumption for prediction and optimization. In this paper, (1) the design variables related to CSDs and their data details were extracted; (2) a ranking of parameters sensitive to energy demand was formulated; (3) an energy prediction model was trained and (4) dual-objective optimization was carried out. Using the survey data from 150 units in nine villages, 25 control variables were extracted for sequential global sensitivity analysis (GSA). Thus, the ranking of sensitivity parameters was formulated with the two-stage-and-three-sort GSA method. Furthermore, an energy prediction model was then trained with Gaussian Process Regression (GPR) and compared with the other four high-precision models. Based on the obtained prediction model, optimization was then carried out on energy and economic concerns. Consequently, a GSA-based workflow for CSD optimization was proposed to help architectural designers figure out the most efficient energy-saving parameter strategy.
Funder
National Key R&D Program of China
Subject
Building and Construction,Civil and Structural Engineering,Architecture
Reference42 articles.
1. Building Performance Simulation for Design and Operation;Hensen,2011
2. Sensitivity Analysis in Practice: A Guide to Assessing Scientific Models;Saltelli,2004
3. A Review on Global Sensitivity Analysis Methods;Iooss;arXiv,2014
4. A review of techniques for parameter sensitivity analysis of environmental models
5. Choosing the appropriate sensitivity analysis method for building energy model-based investigations