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Multi-objective optimization for designing of high-speed train cabin ventilation system using particle swarm optimization and multi-fidelity Kriging

机译:基于粒子群优化和多保真Kriging的高速列车车厢通风系统设计多目标优化

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摘要

Maintaining a high level of thermal comfort and indoor air quality for occupants while minimizing the system energy consumption is crucial for the long-haul High-speed train cabins. The traditional way of handling the multi-objective problem relies on the "trial and error" design which involves lengthy manual design parameter adjustment and performance evaluation based on on-site measurements or analytical and empirical models. To shorten design optimization process, a multi-objective optimization platform has been developed using the nondominated sorting-based particle swarm optimization (NSPSO) algorithm for searching the trade-off optimal design of the ventilation system in a fully occupied high-speed train (HST) cabin. A computational model of the HST cabin occupied by four full rows of passengers was constructed using ANSYS Fluent. To ensure the accuracy of the CFD model, high resolution computational thermal manikins were adopted to simulate the thermal and pollutant dispersion under influence of the passengers. Different combinations of ventilation operation parameters were evaluated against its performance in terms of thermal comfort, air quality and energy consumption. Furthermore, to reduce the computational cost of constructing the training sample, a Multi-fidelity Kriging technique is also proposed a surrogate method in replacing the time-consuming CFD simulations while maintaining acceptable accuracy. The result demonstrates that the presented approach is capable to perform a multi-objective optimization for indoor ventilation system design and yield accurate Pareto-front result with up to 35.61% saving of computational time.
机译:对于长途高速火车车厢而言,保持乘员的高水平热舒适性和室内空气质量,同时将系统能耗降至最低至关重要。处理多目标问题的传统方法依赖于“试验和错误”设计,该设计涉及冗长的手动设计参数调整以及基于现场测量或分析和经验模型的性能评估。为了缩短设计优化过程,使用非支配的基于排序的粒子群优化(NSPSO)算法开发了一个多目标优化平台,以搜索全占用高速列车(HST)中通风系统的折衷优化设计。 )机舱。使用ANSYS Fluent构建了四排乘客所占据的HST机舱的计算模型。为确保CFD模型的准确性,采用高分辨率计算热人体模型来模拟乘客影响下的热和污染物扩散。根据其在热舒适度,空气质量和能耗方面的性能,评估了通风操作参数的不同组合。此外,为了减少构造训练样本的计算成本,还提出了一种多保真克里格技术,以替代耗时的CFD模拟,同时保持可接受的准确性。结果表明,所提出的方法能够对室内通风系统设计进行多目标优化,并产生准确的Pareto前沿结果,最多可节省35.61%的计算时间。

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