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Automatic Shift with 4-parameter of Construction Vehicle based on Neural Network Model

机译:基于神经网络模型的工程车辆四参数自动换挡

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A new shift schedule with 4-parameter of construction vehicle was discussed and analyzed. The power train model of construction vehicle is vital to automatic shift and difficult to be expressed with mathematic model, while intelligent control is effective for solving the problem. A multi-layer back-propagation neural network (BPNN) model was proposed to describe the model of construction vehicle. The BPNN was trained based on input/output dada taken from experiment before that. Based on the BPNN, improved algorithms were proposed to accelerate calculation of optical shift point and control approach. Experimental results showed that the shift strategy with 4-parameter was better than that with 3-parameter and could improve the efficiency of torque converter and save energy, and BPNN was effective to improve shift decisions intelligence of construction vehicle.
机译:讨论并分析了一种新的四参数工程车辆换挡计划。工程车辆的动力总成模型对于自动换挡至关重要,很难用数学模型来表达,而智能控制对于解决这一问题是有效的。提出了一种多层反向传播神经网络(BPNN)模型来描述工程车辆模型。在此之前,BPNN是基于从实验中获取的输入/输出数据进行训练的。基于BPNN,提出了改进的算法来加速光学位移点的计算和控制方法。实验结果表明,四参数换挡策略优于三参数换挡策略,可以提高液力变矩器的效率,节约能源,而BPNN可以有效提高工程车辆的换挡决策智能。

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