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Comparative study: FPA based response surface methodology ANOVA for the parameter optimization in process control

机译:比较研究:基于FPA的响应面方法和方差分析在过程控制中的参数优化

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© 2018 AMSE Press. All rights reserved.Optimization plays a key role in a process control industry to optimize and prediction of the system's performance. Most of the process control are multi-variable and to control the parameters to optimized the system performance through the classical method is inflexible, unreliable and time-consuming. Thus, an alternative method will be more effective for parameter optimization prediction. In this research investigates parameters affecting the liquid flow for the various studied. Design of Experiments based on metaheuristic algorithm is conducted for the analysis of influencing factors. Response surface methodology (RSM) ANOVA are widely used as a mathematical and statistical tool for system performance optimization. RSM can be employed to optimize and analyze the effects of several independent factors on a treatment process to obtain the maximum output. This paper is to present a comprehensive review on the usability effectiveness of RSM ANOVA based on flower pollination algorithm for process parameters modelling and optimization of liquid flow processes. From the appraisal it indicates that the FPA based RSM is gives the more predicted output than the FPA based ANOVA is approximately 9.0389e-6.
机译:© 2018 AMSE 出版社。保留所有权利。优化在过程控制行业中起着关键作用,可以优化和预测系统的性能。大多数过程控制是多变量的,通过传统方法控制参数以优化系统性能是不灵活、不可靠和耗时的。因此,另一种方法对于参数优化和预测将更有效。在这项研究中,研究了影响各种研究的液体流动的参数。基于元启发式算法的实验设计对影响因素进行分析。响应面方法(RSM)和方差分析被广泛用作系统性能优化的数学和统计工具。RSM可用于优化和分析几个独立因素对处理过程的影响,以获得最大产量。本文将全面综述基于花授粉算法的RSM和方差分析在液体流动过程的工艺参数建模和优化中的可用性和有效性。从评估中可以看出,基于 FPA 的 RSM 比基于 FPA 的方差分析给出的预测输出更多,约为 9.0389e-6。

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