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Fuzzy-genetic approaches to knowledge discovery and decision making: Estimation of the cloacal temperature of chicks exposed to different thermal conditions

机译:知识发现与决策的模糊遗传方法:估算不同热条件下雏鸡的群体温度

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Behaviour and physiological responses (e.g. respiratory rate and cloacal temperature) could be an indication of the thermal comfort or discomfort of broilers chicks. This study aimed to estimate the cloacal temperature (CT) of chicks in response to different intensities and durations of thermal exposure during the first week of life using a fuzzy inference system (FIS) and a fuzzy genetic algorithm (Fuzzy-GA). The experiment was conducted in four temperature-controlled wind tunnels located at the environmental laboratory of the Federal University of Lavras (UFLA; Minas Gerais, Brazil). The experimental database is composed of 114 laboratory-based observations. The duration of thermal challenge (CD; days) and dry bulb temperature (t(db); degrees C) were used as input variables for FIS. This paper proposes a theoretical framework for the development of Fuzzy-GA systems via two different approaches: the Mogul approach and the Pittsburgh approach. According to our results, the predicted CT values for both models (FIS and Fuzzy-GA) were similar to the experimentally-observed CT values. However, we noted that the model based on Fuzzy-GA exhibited better statistical results than the manual FIS in terms of CT-predicting capability. Thus, the model based on Fuzzy-GA can be used to predict CT for chicks exposed to thermal challenges and can therefore aid in decision-making processes. (C) 2020 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:行为和生理反应(例如,呼吸率和阶段温度)可能是肉鸡雏鸡热舒适或不适的指示。本研究旨在估计响应于使用模糊推理系统(FIS)和模糊遗传算法(Fuzzy-Ga)的生命的第一周内热暴露的不同强度和热暴露持续时间的雏鸡的延长和持续时间。该实验是在四个温度控制的风隧道中进行,位于拉夫拉斯联邦拉夫拉斯大学环境实验室(UFLA; Minas Gerais,Brazil)。实验数据库由114个基于实验室的观察结果组成。热攻击(CD;天)和干泡温度(T(dB);℃)的持续时间用作FIS的输入变量。本文通过两种不同的方法提出了一种用于开发模糊-GA系统的理论框架:Mogul方法和匹兹堡方法。根据我们的结果,模型(FIS和FIZZY-GA)的预测CT值类似于实验观察到的CT值。然而,我们指出,基于模糊-GA的模型在CT预测能力方面表现出比手动FIS更好的统计结果。因此,基于模糊-Ga的模型可用于预测暴露于热攻击的小鸡的CT,因此可以帮助决策过程。 (c)2020 IAGRE。 elsevier有限公司出版。保留所有权利。

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