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首页> 外文期刊>International Journal of Electrical and Computer Engineering >Optimization of Fuzzy Tsukamoto Membership Function using Genetic Algorithm to Determine the River Water
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Optimization of Fuzzy Tsukamoto Membership Function using Genetic Algorithm to Determine the River Water

机译:确定河流水质的遗传算法模糊冢本隶属函数优化。

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摘要

Some aquatic ecosystems in rivers depend on the river water, so it needs to be maintained by measuring and analyzing the river water quality. STORET is one of the methods used to measure the river water quality, but it takes a quite high of time and costs. Fuzzy Tsukamoto is an alternative method that works by grouping the river water data, but it is difficult to determine the membership function value. The solution offered in this study is the use of genetic algorithm to determine the membership function value of each criterion. Based on the test results, the optimization of fuzzy membership function using genetic algorithm provides higher accuracy value that is 95%, while the accuracy value without optimization process is 90%. The parameters used in genetic algorithm are as follows: population size is 80, generation number is 175, crossover rate ( cr ) is 0.6, and mutation rate ( mr ) is 0.4.
机译:河流中的某些水生生态系统依赖于河水,因此需要通过测量和分析河水水质来对其进行维护。 STORET是用于测量河水水质的方法之一,但是它花费了大量的时间和成本。 Fuzzy Tsukamoto是通过对河水数据进行分组来工作的另一种方法,但是很难确定隶属函数值。本研究提供的解决方案是使用遗传算法确定每个准则的隶属函数值。根据测试结果,使用遗传算法对模糊隶属度函数进行优化,可得到较高的准确度值95%,而未经优化的准确度值为90%。遗传算法中使用的参数如下:种群大小为80,世代数为175,交叉率(cr)为0.6,突变率(mr)为0.4。

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