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Inverse hygric property determination based on dynamic measurements and swarm-intelligence optimisers

机译:基于动态测量和群智能优化器的反hygric属性确定

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To accelerate the hygric characterisation of porous building materials, dynamic flow and storage measurements in combination with inverse parameter estimation show a lot of promise. Therein though, the processing and interpretation of the experimental output can be challenging. This paper demonstrates the applicability of two swarm-intelligence (SI) optimisers, i.e. the Particle Swarm Optimiser (PSO) and the Grey Wolf Optimiser (GWO), for determining the vapour resistance factor and the sorption isotherm of porous building materials. The methodology is presented for a fictitious dynamic vapour sorption experiment on a calcium silicate insulation sample. The identifiability of the unknown parameters and the reliability of the estimated properties is investigated via a profile likelihood (PL) analysis. By use of the proposed methodology, the measurement time required to determine the hygric properties is reduced strongly compared to standard techniques such as the steady-state cup and sorption tests, and at the same time the uncertainty propagated in the parameter estimation can be characterised. A close agreement with the target values is obtained. Though, to avoid an unreliable parameter estimation it is recommended to not limit the optimisation process to a single run. Furthermore, also the results obtained during the PL analysis can help improving the estimation. Finally, for the current case study, the SI optimisers are found to outperform the Genetic Algorithm (GA) and the Covariance Matrix Adaptation Evolution Strategy (CMA-ES).
机译:为了加快多孔建筑材料的hygric表征,动态流量和存储量测量与逆参数估计相结合显示了广阔的前景。然而,在其中,对实验输出的处理和解释可能具有挑战性。本文演示了两种群智能(SI)优化器,即粒子群优化器(PSO)和灰狼优化器(GWO),用于确定多孔建筑材料的耐蒸汽系数和吸附等温线的适用性。提出了该方法用于在硅酸钙绝缘样品上进行虚拟动态蒸气吸附实验。通过配置文件似然(PL)分析研究未知参数的可识别性和估计属性的可靠性。通过使用所提出的方法,与标准技术(例如稳态杯和吸附测试)相比,确定水合特性所需的测量时间大大减少,并且同时可以表征参数估计中传播的不确定性。获得与目标值的紧密一致。但是,为避免参数估计不可靠,建议不要将优化过程限制为一次运行。此外,在PL分析过程中获得的结果也可以帮助改善估计。最后,对于当前案例研究,发现SI优化器的性能优于遗传算法(GA)和协方差矩阵适应进化策略(CMA-ES)。

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