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A Parameters Self-adjusting ANN-PI Controller Based on Homotopy BP Algorithm

机译:基于同伦BP算法的参数自适应ANN-PI控制器

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Back-Propagation neural network can record the fuzzy control rules efficiently, and utilize these experiences according to associative memory. But, all existing feedforward net learning algorithms have a local minimum problem inevitably. To solve above problem, a Homotopy continuation BP algorithm is adopted in this paper, which provides an effective method for BP network's global convergence and is of very fast convergent speed. For some complex nonlinear control systems, a parameters self-adjusting fuzzy-PI controller is ever adopted effectively. Because ANN has strongly nonlinear mapping power, so we can use ANN based on Homopy BP algorithm to replace fuzzy segment to reconstruct a new ANN-PI controller, which has a faster dynamic response, higher control accuracy, better disturbance-resisting ability, less sensitive to parameter changes, and robustness.
机译:反向传播神经网络可以有效地记录模糊控制规则,并根据联想记忆利用这些经验。但是,所有现有的前馈网络学习算法都不可避免地存在局部最小问题。为解决上述问题,本文采用了同伦连续BP算法,为BP网络的全局收敛提供了一种有效的方法,收敛速度非常快。对于某些复杂的非线性控制系统,曾经有效地采用了参数自调节模糊PI控制器。由于人工神经网络具有很强的非线性映射能力,因此可以使用基于同伦BP算法的人工神经网络代替模糊段来重建新的人工神经网络PI控制器,该控制器具有更快的动态响应,更高的控制精度,更好的抗干扰能力,敏感性较低。参数更改和鲁棒性。

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