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Human factor and computational intelligence limitations in resilient control systems

机译:弹性控制系统中的人为因素和计算智能限制

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Humans are very capable of solving many scientific and engineering problems, but during the solution process they have a tendency to make mistakes. For example, humans without computer aided tools, would not be able to design VLSI chips larger than 100 transistors. This imperfection of humans make them very unreliable elements in resilient control systems. There is a tendency of replacing humans with computers using artificial intelligence, expert systems, or methods of computational intelligence. The methods of computational intelligence can be most successful but they have to be used with great care. Limitations of fuzzy and neural networks are presented and it is shown how to avoid these limitations so resilient control systems can be developed. It turns out that often popular training algorithms are not capable of tuning neural networks to proper accuracy without losing generalization abilities. As a consequence, such system of computational intelligence may not work properly for cases which were not used in training. The comparison of different neural network architectures follows and also it is shown how to develop and train close to optimal topologies, so resilient control systems can be developed.
机译:人类非常有能力解决许多科学和工程问题,但是在解决过程中,他们倾向于犯错误。例如,没有计算机辅助工具的人将无法设计大于100个晶体管的VLSI芯片。人类的这种缺陷使他们成为弹性控制系统中非常不可靠的元件。有使用人工智能,专家系统或计算智能方法用计算机代替人类的趋势。计算智能方法可能是最成功的方法,但必须非常小心地使用它们。提出了模糊和神经网络的局限性,并说明了如何避免这些局限性,从而可以开发弹性控制系统。事实证明,通常流行的训练算法不能在不失去泛化能力的情况下将神经网络调整到适当的精度。结果,这种计算智能系统对于未在训练中使用的情况可能无法正常工作。接下来是对不同神经网络体系结构的比较,并显示了如何开发和训练接近最佳拓扑的拓扑,因此可以开发弹性控制系统。

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