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首页> 外文期刊>International Journal of Advanced Robotic Systems >Research on Duct Flow Field Optimisation of a Robot Vacuum Cleaner
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Research on Duct Flow Field Optimisation of a Robot Vacuum Cleaner

机译:机器人真空吸尘器管道流场优化研究

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The duct of a robot vacuum cleaner is the length of the flow channel between the inlet of the rolling brush blower and the outlet of the vacuum blower. To cope with the pressure drop problem of the duct flow field in a robot vacuum cleaner, a method based on Pressure Implicit with Splitting of Operators (PRISO) algorithm is introduced and the optimisation design of the duct flow field is implemented. Firstly, the duct structure in a robot vacuum cleaner is taken as a research object, with the computational fluid dynamics (CFD) theories adopted; a three-dimensional fluid model of the duct is established by means of the FLUENT solver of the CFD software. Secondly, with the k-epsilon turbulence model of three-dimensional incompressible fluid considered and the PRISO pressure modification algorithm employed, the flow field numerical simulations inside the duct of the robot vacuum cleaner are carried out. Then, the velocity vector plots on the arbitrary plane of the duct flow field are obtained. Finally, an investigation of the dynamic characteristics of the duct flow field is done and defects of the original duct flow field are analysed, the optimisation of the original flow field has then been conducted. Experimental results show that the duct flow field after optimisation can effectively reduce pressure drop, the feasibility as well as the correctness of the theoretical modelling and optimisation approaches are validated.
机译:机器人真空吸尘器的管道是滚动刷鼓风机的入口和真空鼓风机的出口之间的流动通道的长度。为了应对机器人真空吸尘器中的管道流场的压降问题,引入了一种基于透射算子分裂(PRISO)算法的压力的方法,并实现了管道流场的优化设计。首先,将机器人吸尘器中的管道结构作为研究对象,采用计算流体动力学(CFD)理论;通过CFD软件的流畅求解器建立了管道的三维流体模型。其次,利用所考虑的三维不可压液流体的K-ePsilon湍流模型和所采用的PRISO压力改性算法,进行了机器人吸尘器的管道内的流场数值模拟。然后,获得管道流场的任意平面上的速度矢量图。最后,完成了对管道流场的动态特性的研究,并且分析了原始管道流场的缺陷,然后进行了原始流场的优化。实验结果表明,优化后的管道流场可以有效降低压降,可行性以及理论建模和优化方法的正确性。

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