CHICKEN BANDA PERFORMANCE IMPROVEMENT UTILIZING NEURO-FUZZY LOGIC TECHNIQUE

Patrick O. M. Ogutu, N. Oyie, Dr Winston Ochieng Ojenge
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Abstract

This study is on improvement of performance of the chicken Banda, using indoor change in environmental conditions for temperature control. The differential change in climatic conditions is technically used to put on the fan and the Banda so as to realize the right comfortable indoor conditions. The chicken chicks’ Banda Mathematical model is created, prototype designed, temperature controller to depict a two systems simulation of neuro fuzzy logic and fuzzy logic .The performance is analyzed by the use of Matlab Simulink latest edition. To monitor the temperature of the Chicken cage the neural fuzzy logic technique is utilized. As far as the prototype is concerned the chicks’ cage set temperature is fixed at 26.50C. The study will show that the reference input can be kept on track by the process controller hence proving the principle that the neural fuzzy control is much superior in optimizing performance compared to the fuzzy only controllers. The Back propagation (BP) and least square estimator (LSE) are the hybrid optimization methods which are used. For data training the gradient descent method (GDM) is used. The research reveal that  there is drastic performance improvement in the behavior response where  result show that there settling time is reduced from 0.75 to 0.48 seconds while the percentage  overshoot is also reduced down  from 29.9% to 0.9345%.
利用神经模糊逻辑技术改进鸡班达性能
本研究旨在利用室内环境条件的变化进行温度控制,提高班达鸡的生产性能。技术上利用气候条件的差异变化,对风扇和班达进行调节,以实现合适的舒适室内条件。建立了鸡的班达数学模型,设计了样机,对温度控制器进行了神经模糊逻辑和模糊逻辑两种系统的仿真描述,并利用Matlab Simulink最新版对其性能进行了分析。利用神经模糊逻辑技术对鸡笼温度进行监测。就原型而言,小鸡笼的设定温度固定在26.50摄氏度。研究表明,参考输入可以通过过程控制器保持在轨道上,从而证明了神经模糊控制在优化性能方面比纯模糊控制器优越的原理。反向传播(BP)和最小二乘估计(LSE)是一种混合优化方法。数据训练采用梯度下降法(GDM)。研究表明,在行为响应方面有显著的性能提升,沉降时间从0.75秒减少到0.48秒,超调百分比也从29.9%减少到0.9345%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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