首页> 外文会议>ASME international mechanical engineering congress;IMECE'03 >AUTOMOTIVE HYDRAULIC VALVE FLUID FIELD ESTIMATOR BASED ON NON-DIMENSIONAL ARTIFICIAL NEURAL NETWORK (NDANN)
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AUTOMOTIVE HYDRAULIC VALVE FLUID FIELD ESTIMATOR BASED ON NON-DIMENSIONAL ARTIFICIAL NEURAL NETWORK (NDANN)

机译:基于无量纲人工神经网络的汽车液压阀流场估计器(NDANN)

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A conventional automatic transmission (AT) hydraulic control system includes many spool-type valves that have highly asymmetric flow geometry. An accurate analysis of their flow fields typically requires a time-consuming computational fluid dynamics (CFD) technique. A simplified flow field model that is based on a lumped geometry is computationally efficient. However, it often fails to account for asymmetric flow characteristics, leading to an inaccurate analysis. In this work, a new hydraulic valve fluid field model is developed based on a non-dimensional neural network (NDANN) to provide an accurate and numerically efficient tool in AT control system design applications. A "grow-and-trim" procedure is proposed to identify critical non-dimensional inputs and optimize the network architecture. A hydraulic valve testing bench is designed and built to provide data for neural network model development. NDANN-based fluid force and flow rate estimator are established based on the experimental data. The NDANN models provide more accurate predictions of flow force and flow rates under broad operating conditions compared with conventional lumped flow field models. The NDANN fluid field estimator also exhibits input-output scalability. This capability allows the NDANN model to estimate the fluid force and flow rate even when the design geometry parameters are outside the range of the training data.
机译:传统的自动变速箱(AT)液压控制系统包括许多具有高度不对称流动几何形状的滑阀型阀。对其流场的准确分析通常需要耗时的计算流体动力学(CFD)技术。基于集总几何的简化流场模型在计算上是有效的。但是,它通常无法解决流动特性不对称的问题,从而导致分析不准确。在这项工作中,基于无量纲神经网络(NDANN)开发了一种新的液压阀流场模型,以在AT控制系统设计应用程序中提供准确且数字高效的工具。提出了“增长和修剪”过程,以识别关键的无量纲输入并优化网络体系结构。设计并建造了液压阀测试台,以为神经网络模型开发提供数据。基于实验数据建立了基于NDANN的流体力和流量估计器。与传统的集总流场模型相比,NDANN模型可在较宽的工作条件下提供更准确的流体力和流量预测。 NDANN流场估计器还具有输入输出可伸缩性。即使设计几何参数不在训练数据范围内,此功能也可使NDANN模型估算流体力和流速。

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