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Self-learning Control of Load Changes in Motor-driven Load Simulator Using CMAC

机译:基于CMAC的电动负载模拟器中负载变化的自学习控制

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How to retain the high load precision of a motordriven load simulator in the case of great change in load gradient is one of its key problems. In the past, the compound PID control method was used to improve its load precision. However, because of the influence of its time-varying character and nonlinearity, the method does not produce ideal load speed or precision. Taking the characteristics of the load simulator into account, the paper applies the CMAC neural-network control structure to the load simulator and presents its control structure and algorithm. The analysis of the experimental results, given in Figs. 5 and 6 and Table 2,indicates preliminarily that our method overcomes the shortcomings of the sole use of PID control method and satisfies the requirements for high-precision in the case of great changes in load gradient.
机译:如何在负载梯度变化发生大的情况下,如何保留Motordriven Load模拟器的高负荷精度是其关键问题之一。过去,复合PID控制方法用于提高其负荷精度。然而,由于其时变特性和非线性的影响,该方法不会产生理想的负载速度或精度。考虑到负载模拟器的特点,本文将CMAC神经网络控制结构应用于负载模拟器并呈现其控制结构和算法。在图1和2中给出的实验结果分析。 5和6和表2,初步表明我们的方法克服了PID控制方法唯一使用的缺点,并在负载梯度变化的情况下满足高精度的要求。

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