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Comparative assessments of multivariate nonlinear fuzzy regression techniques for egg production curve

机译:多变量非线性模糊回归技术对鸡蛋生产曲线的比较评估

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摘要

The modelling process of egg production curves, where environmental and genetic factors are highly effective, is quite complex and difficult. In particular, the limitations of measurement and the errors encountered during the measurement process may cause uncertainty in the egg production process. In this study, multivariate nonlinear fuzzy regression analysis was used by configuring neural networks and least squares support vector machines in order to express the uncertainty in the system structure during the egg production process. This method was used to obtain the predicted values for egg production in the fuzzy frame. In the study, two different data sets were used which were measured for egg performance and egg weight variables in daily and weekly time periods. Multivariate nonlinear fuzzy regression analysis results were compared with both the observed values and the multivariate classical regression analysis results. Results of analysis show that multivariate nonlinear fuzzy regression analysis with neural networks is more successful than other methods and can be used as an alternative to classical methods in poultry farming.
机译:鸡蛋生产曲线的建模过程,环境和遗传因素高度有效,非常复杂和困难。特别地,测量过程的局限性和测量过程中遇到的误差可能导致鸡蛋生产过程中的不确定性。在该研究中,通过配置神经网络和最小二乘支持向量机使用多变量非线性模糊回归分析,以便在鸡蛋生产过程中表达系统结构中的不确定性。该方法用于获得模糊框架中的鸡蛋生产的预测值。在该研究中,使用了两组不同的数据集,用于在日常和每周时间段中测量蛋观和蛋体变量的测量。将多变量非线性模糊回归分析分析结果与观察到的值和多变量经典回归分析结果进行了比较。分析结果表明,具有神经网络的多变量非线性模糊回归分析比其他方法更成功,可以用作家禽养殖中的古典方法的替代方法。

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