Ugail Hassan, Aggarwal Riya, Iglesias Andrés, Howard Newton, Campuzano Almudena, Suárez Patricia, Maqsood Muazzam, Aadil Farhan, Mehmood Irfan, Gleghorn Sarah, Taif Khasrouf, Kadry Seifedine, Muhammad Khan
Centre for Visual Computing, University of Bradford, Bradford, UK.
School of Engineering, University of Newcastle, Newcastle, Australia.
Sustain Cities Soc. 2021 May;68:102791. doi: 10.1016/j.scs.2021.102791. Epub 2021 Feb 20.
As the COVID-19 pandemic unfolds, manually enhanced ad-hoc solutions have helped the physical space designers and decision makers to cope with the dynamic nature of space planning. Due to the unpredictable nature by which the pandemic is unfolding, the standard operating procedures also change, and the protocols for physical interaction require continuous reconsideration. Consequently, the development of an appropriate technological solution to address the current challenge of reconfiguring common physical environments with prescribed physical distancing measures is much needed. To do this, we propose a design optimization methodology which takes the dimensions, as well as the constraints and other necessary requirements of a given physical space to yield optimal redesign solutions on the go. The methodology we propose here utilizes the solution to the well-known mathematical circle packing problem, which we define as a constrained mathematical optimization problem. The resulting optimization problem is solved subject to a given set of parameters and constraints - corresponding to the requirements on the social distancing criteria between people and the imposed constraints on the physical spaces such as the position of doors, windows, walkways and the variables related to the indoor airflow pattern. Thus, given the dimensions of a physical space and other essential requirements, the solution resulting from the automated optimization algorithm can suggest an optimal set of redesign solutions from which a user can pick the most feasible option. We demonstrate our automated optimal design methodology by way of a number of practical examples, and we discuss how this framework can be further taken forward as a design platform that can be implemented practically.
随着新冠疫情的发展,手动增强的临时解决方案帮助实体空间设计师和决策者应对空间规划的动态特性。由于疫情发展的不可预测性,标准操作程序也在变化,实体互动的协议需要不断重新考虑。因此,迫切需要开发一种合适的技术解决方案,以应对当前在规定物理距离措施下重新配置公共物理环境的挑战。为此,我们提出一种设计优化方法,该方法考虑给定物理空间的尺寸、约束条件和其他必要要求,以便即时生成最佳的重新设计解决方案。我们在此提出的方法利用了著名的数学圆排列问题的解决方案,我们将其定义为一个约束数学优化问题。所得的优化问题是在一组给定的参数和约束条件下求解的,这些参数和约束条件对应于人与人之间社交距离标准的要求以及对物理空间施加的约束,如门、窗、走道的位置以及与室内气流模式相关的变量。因此,给定一个物理空间的尺寸和其他基本要求,自动优化算法得出的解决方案可以建议一组最佳的重新设计方案,用户可以从中选择最可行的选项。我们通过一些实际例子展示我们的自动优化设计方法,并讨论如何将这个框架进一步发展成为一个可以实际应用的设计平台。