The Optimization of the Constant Flow Parallel Micropump Using RBF Neural Network

Chen-yang Ma, Boyuan Xu
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Abstract

The objective of this work is to optimize the performance of a constant flow parallel mechanical displacement micropump, which has parallel pump chambers and incorporates passive check valves. The critical task is to minimize the pressure pulse caused by regurgitation, which negatively impacts the constant flow rate, during the reciprocating motion when the left and right pumps interchange their role of aspiration and transfusion. Previous works attempt to solve this issue via the mechanical design of passive check valves. In this work, the novel concept of overlap time is proposed, and the issue is solved from the aspect of control theory by implementing a RBF neural network trained by both unsupervised and supervised learning. The experimental results indicate that the pressure pulse is optimized in the range of 0.15 – 0.25 MPa, which is a significant improvement compared to the maximum pump working pressure of 40 MPa.
基于RBF神经网络的恒流量并联微泵优化
本工作的目的是优化具有并联泵腔和被动止回阀的恒流量并联机械位移微泵的性能。关键任务是在左、右泵交换吸、输功能的往复运动中,尽量减小因反流引起的压力脉动,使其对恒流量产生负面影响。以往的工作都试图通过被动止回阀的机械设计来解决这一问题。本文提出了重叠时间的新概念,并通过实现无监督学习和监督学习相结合的RBF神经网络,从控制理论的角度解决了重叠时间的问题。实验结果表明,优化后的压力脉冲范围为0.15 ~ 0.25 MPa,较泵的最大工作压力40 MPa有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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