首页> 外文期刊>Fresenius environmental bulletin >DETERMINING THE BEST NORMALIZATION TECHNIQUE FOR ESTIMATION USING ARTIFICIAL NEURAL NETWORKS: CASE OF BRUSHTOOTH LIZARDFISH
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DETERMINING THE BEST NORMALIZATION TECHNIQUE FOR ESTIMATION USING ARTIFICIAL NEURAL NETWORKS: CASE OF BRUSHTOOTH LIZARDFISH

机译:使用人工神经网络确定估计的最佳标准化技术:刷牙蜥蜴鱼的情况

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In this study, the bodyweight of Brushtooth liz- ardfish was estimated through the use of artificial neural networks (ANNs) by applying various normalization techniques to the morphometric data (total length, fork length, standard length) of the fish, and the best normalization method was selected based on the results. Z-Score, Median, Sigmoid, Min-max and D-Min-Max methods were applied in the given order, and the best MAPE and MSE values in the ANNs were calculated to be 3.187-0.001 for D-Min-Max and 3.784-0.001 for Min-max. Since the estimates obtained from the application of these two methods will turn out to be more accurate according to the results of ANN analyses, they are the methods recommended to be employed.
机译:在这项研究中,通过使用人工神经网络(ANNS)通过将各种归一化技术应用于鱼类(总长度,叉长度,标准长度)和最佳标准化来估计刷牙Liz-Ard-Ardfish的体重。基于结果选择方法。在给定的顺序中施加Z分数,中值,乙状胺,MIN-MAX和D-MIN-MAX方法,并计算ANNS中的最佳MAPE和MSE值,为D-MIN-MAX和3.784的3.187-0.001 -0.001用于min-max。由于从应用这两种方法的应用获得的估计,根据ANN分析的结果,它们将更加准确,因此它们是建议采用的方法。

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