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Application of Artificial Neural Network to Optimize the Evacuation Time in an Automotive Vacuum Pump

机译:人工神经网络在汽车真空泵中优化疏散时间的应用

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This paper presents the details of the study to optimize and arrive at a design base for a vacuum pump in an automotive engine using resilient back propagation algorithm for Artificial Neural Networking (ANN). The reason for using neural networks is to capture the accuracy of experimental data while saving computational time, so that system simulations can be performed within a reasonable time frame. Vacuum Pump is an engine driven part. Design and optimization of a vacuum pump in an automotive engine is crucial for development. The NN predicted values had a good correlation with the actual values of tested proto sample. The design optimization by means of this study has served the purpose of generating the data base for future development of different capacity vacuum pumps. The ANN approach has been applied to automotive vacuum brake for predicting the optimized evacuation time and the power for a vacuum pump of 110 cc capacity with vacuum tank capacity of 3 cc at pressure of 500 mbar. The ANN predictions for the evacuation time and power of the tested vacuum brake yielded a good statistical performance with mean square error of 8.21152 e-3 and regression value between 0.9904 e-01. Comparisons of the ANN predictions and the experimental results demonstrate that to automotive vacuum brake can accurately be modeled using ANNs. Consequently, with the use of ANNs, the evacuation time and power of the brake can easily be determined by performing only a limited number of tests instead of a detailed experimental study, thus saving both time and cost. As a result the proposed NN model has strong potential as a feasible tool for the prediction of evacuation time of a vacuum pump used in automobile brakes.
机译:本文介绍了研究的详细信息,以优化和到达用于使用用于人工神经网络(ANN)的弹性反向传播算法在汽车发动机中的真空泵设计底座。使用神经网络的原因是在节省计算时间的同时捕获实验数据的准确性,从而可以在合理的时间框架内执行系统仿真。真空泵是发动机驱动部件。汽车发动机中真空泵的设计和优化对于开发至关重要。 NN预测值与测试的PROLO样品的实际值具有良好的相关性。本研究的设计优化已经提供了为不同容量真空泵的未来发展产生数据库的目的。 ANN方法已应用于汽车真空制动器,用于预测110CC容量的真空泵的优化抽空时间和功率,真空罐容量为3cc为500毫巴的压力。对测试真空制动器的抽空时间和功率的ANN预测产生了良好的统计性能,其平均误差为8.21152 e-3和0.9904 e-01之间的回归值。 ANN预测和实验结果的比较表明,可以使用ANN准确地建模汽车真空制动器。因此,通过使用ANNS,可以通过仅执行有限数量的测试而不是详细的实验研究来容易地确定制动器的抽空时间和功率,从而节省时间和成本。结果,所提出的NN模型具有强大的潜力作为一种可行的工具,用于预测汽车制动器中使用的真空泵的抽空时间。

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