TRNSYS公司
恒温器
人工神经网络
遗传算法
热舒适性
暖通空调
能源消耗
多目标优化
计算机科学
航程(航空)
工程类
数学优化
能量(信号处理)
模拟
人工智能
空调
机器学习
数学
机械工程
统计
物理
电气工程
热力学
航空航天工程
作者
Laurent Magnier,Fariborz Haghighat
标识
DOI:10.1016/j.buildenv.2009.08.016
摘要
Building optimization involving multiple objectives is generally an extremely time-consuming process. The GAINN approach presented in this study first uses a simulation-based Artificial Neural Network (ANN) to characterize building behaviour, and then combines this ANN with a multiobjective Genetic Algorithm (NSGA-II) for optimization. The methodology has been used in the current study for the optimization of thermal comfort and energy consumption in a residential house. Results of ANN training and validation are first discussed. Two optimizations were then conducted taking variables from HVAC system settings, thermostat programming, and passive solar design. By integrating ANN into optimization the total simulation time was considerably reduced compared to classical optimization methodology. Results of the optimizations showed significant reduction in terms of energy consumption as well as improvement in thermal comfort. Finally, thanks to the multiobjective approach, dozens of potential designs were revealed, with a wide range of trade-offs between thermal comfort and energy consumption.
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