Modelling of Liquid Flow control system Using Optimized Genetic Algorithm

P. Dutta, Asok Kumar
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引用次数: 11

Abstract

Estimation of a highly accurate model for liquid flow process industry and control of the liquid flow rate from experimental data is an important task for engineers due to its non linear characteristics. Efficient optimization techniques are essential to accomplish this task.In most of the process control industry flow rate depends upon a multiple number of parameters like sensor output,pipe diameter, liquid conductivity ,liquid viscosity ,liquid density etc. In traditional optimization technique its very time consuming for manually control the parameters to obtain the optimal flow rate from the process. Hence the alternative approach , computational optimization process is utilized by using the different computational intelligence technique.In this paper three different selection of Genetic Algorithm is proposed to taste against the present liquid flow process. The proposed algorithm is developed based on the mimic genetic evolution of species that allow the consecutive generations in population to adopt their environment. Equations for Response Surface Methodology (RSM) and Analysis of Variance (ANOVA) are being used as non-linear models and these models are optimized using the proposed different selection of Genetic optimization techniques. It can be observed that the among these three different selection of Genetic Algorithm ,Rank selected GA is better than the other two selection (Tournament ,Roulette wheel) in terms of the accuracy of final solutions, success rate, convergence speed, and stability.
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基于优化遗传算法的液体流量控制系统建模
由于其非线性特性,从实验数据中估计液体流动过程工业的高精度模型和控制液体流速对工程师来说是一项重要任务。高效的优化技术对于完成这项任务至关重要。在大多数过程控制工业中,流速取决于多个参数,如传感器输出、管径、液体电导率、液体粘度、液体密度等。在传统的优化技术中,手动控制参数以从过程中获得最佳流速非常耗时。因此,另一种方法是使用不同的计算智能技术来利用计算优化过程。针对目前的液体流动过程,本文提出了三种不同选择的遗传算法。所提出的算法是基于物种的模拟遗传进化开发的,允许种群中的连续几代适应它们的环境。响应面方法方程(RSM)和方差分析(ANOVA)被用作非线性模型,并且这些模型使用所提出的不同的遗传优化技术进行优化。可以观察到,在这三种不同的遗传算法选择中,秩选择遗传算法在最终解的准确性、成功率、收敛速度和稳定性方面优于其他两种选择(锦标赛、轮盘)。
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