Uncertainties can have a large influence on building performance and cause deviations between predicted performance and performance during operation. It is therefore important to quantify this influence and identify robust designs that have potential to deliver the desired performance under uncertainties. Generally, robust building designs are identified by assessing the performance of multiple design configurations under various uncertainties. When exploring a large design space, this approach becomes computationally expensive and infeasible in practice. Therefore, we propose a simulation framework based on multi-objective optimization and sampling strategies to find robust optimal designs at low computational costs. The genetic algorithm ...
4In this work, a design optimisation strategy is presented for expensive and uncertain single- and m...
AbstractEffective optimization of unconstrained building optimization problem involves coupling a bu...
Within the robust design optimization, the statistical variability of the design parameter is consid...
Uncertainties can have a large influence on building performance and cause deviations between predic...
Design exploration is a vital part of the building design process that aims at identifying the best-...
Multi-objective optimization algorithms are used in the building design process to find optimal solu...
Accounting for uncertainties is crucial in the design of engineering systems. Various techniques hav...
Uncertainties in occupant behaviour and climate change can have a large influence on future building...
Dwelling design needs to consider multiple objectives and uncertainties to achieve effective and rob...
This paper investigates the robustness of a Genetic Algorithm (GA) search method in solving an uncon...
Many uncertainties lie in the early design phase of a zero energy building which can affect the reli...
Building design optimization process is associated with uncertainties due to climate change, unpred...
Building design optimization process is associated with uncertainties due to climate change, unpredi...
Recent progress in computer science and stringent requirements of the design of “greener” buildings ...
Uncertainties in building operation and external factors such as occupant behavior, climate change, ...
4In this work, a design optimisation strategy is presented for expensive and uncertain single- and m...
AbstractEffective optimization of unconstrained building optimization problem involves coupling a bu...
Within the robust design optimization, the statistical variability of the design parameter is consid...
Uncertainties can have a large influence on building performance and cause deviations between predic...
Design exploration is a vital part of the building design process that aims at identifying the best-...
Multi-objective optimization algorithms are used in the building design process to find optimal solu...
Accounting for uncertainties is crucial in the design of engineering systems. Various techniques hav...
Uncertainties in occupant behaviour and climate change can have a large influence on future building...
Dwelling design needs to consider multiple objectives and uncertainties to achieve effective and rob...
This paper investigates the robustness of a Genetic Algorithm (GA) search method in solving an uncon...
Many uncertainties lie in the early design phase of a zero energy building which can affect the reli...
Building design optimization process is associated with uncertainties due to climate change, unpred...
Building design optimization process is associated with uncertainties due to climate change, unpredi...
Recent progress in computer science and stringent requirements of the design of “greener” buildings ...
Uncertainties in building operation and external factors such as occupant behavior, climate change, ...
4In this work, a design optimisation strategy is presented for expensive and uncertain single- and m...
AbstractEffective optimization of unconstrained building optimization problem involves coupling a bu...
Within the robust design optimization, the statistical variability of the design parameter is consid...