首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Iterative learning control with complex conjugate gradient optimization algorithm for multiaxial road durability test rig
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Iterative learning control with complex conjugate gradient optimization algorithm for multiaxial road durability test rig

机译:多轴公路耐久性试验台复合共轭梯度优化算法的迭代学习控制

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摘要

Service load replication performed on multiaxial hydraulic test rigs has been widely applied in automotive engineering for durability testing in laboratory. The frequency-domain off-line iterative learning control is used to generate the desired drive file, i.e. the input signals which drive the actuators of the test rig. During the iterations an experimentally identified linear frequency-domain system model is used. As the durability test rig and the specimen under test have a strong nonlinear behavior, a large number of iterations are needed to generate the drive file. This process will cause premature deterioration to the specimen unavoidably. In order to accelerate drive file construction, a method embedding complex conjugate gradient algorithm into the conventional off-line iterative learning control is proposed to reproduce the loading conditions. The basic principle and monotone convergence of the method is presented. The drive signal is updated according to the complex conjugate gradient and the optimal learning gain. An optimal learning gain can be obtained by an estimate loop. Finally, simulations are carried out based on the identified parameter model of a real spindle-coupled multiaxial test rig. With real-life spindle forces from the wheel force transducer in the proving ground test to be replicated, the simulation results indicate that the proposed conventional off-line iterative learning control with complex conjugate gradient algorithm allows generation of drive file more rapidly and precisely compared with the state-of-the-art off-line iterative learning control. Few have been done about the proposed method before. The new method is not limited to the durability testing and can be extended to other systems where repetitive tracking task is required.
机译:在多轴液压试验台上执行的服务负载复制已广泛应用于实验室耐用性测试的汽车工程中。频域离线迭代学习控制用于生成所需的驱动文件,即驱动试验台的致动器的输入信号。在迭代期间,使用实验识别的线性频率域系统模型。由于耐久性试验台和所测试的样本具有强烈的非线性行为,因此需要大量的迭代来生成驱动文件。该过程将不可避免地对样本造成过早恶化。为了加速驱动文件构造,提出将复杂共轭梯度算法嵌入传统的离线迭代学习控制的方法以再现装载条件。提出了该方法的基本原理和单调收敛。驱动信号根据复杂共轭梯度和最佳学习增益更新。可以通过估计循环获得最佳学习增益。最后,基于真实主轴耦合多轴试验台的识别参数模型进行模拟。利用来自车轮力传感器的现实寿命在证明地面测试中进行复制,模拟结果表明,具有复杂共轭梯度算法的提出的传统离线迭代学习控制允许更快,更快速地产生驱动文件最先进的离线迭代学习控制。之前已经有很少的方法完成了。新方法不限于耐用性测试,并且可以扩展到需要重复跟踪任务的其他系统。

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