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Broiler weight forecasting using dynamic neural network models with input variable selection

机译:使用动态神经网络模型进行肉体重量预测输入变量选择

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The global demand for poultry meat is predicted to increase by 18% between 2015-17 and 2027, which motivates the need for better tools for production monitoring, planning and optimization. This paper presents the first results on broiler (chicken for meat production) weight forecasting intended for production planning and monitoring using environmental broiler house conditions - such as heating, ventilation, and temperature. We investigate the dynamic impact of environmental conditions on broiler growth, which is known to be highly significant but unexplored in scientific literature. The forecasting is carried out using ensemble dynamic neural network models trained on past production data with mutual information based input variable selection. To investigate the potential of the proposed method, an extensive case study on almost 3.5 years of industrial farm scale production data from a state-of-the-art broiler house is carried out. The dynamic impact of environmental conditions on broiler growth is found to be significant and useful broiler weight forecasts are obtained - effectively providing a foundation for future research on optimization of broiler production.
机译:预计2015 - 17年和2027年之间的全球对家禽肉的需求将增加18%,这激励了对生产监测,规划和优化的更好工具的需求。本文介绍了肉鸡(鸡肉生产鸡)重量预测的第一个结果,用于生产规划和监测使用环境肉鸡房屋条件 - 例如加热,通风和温度。我们调查了环境条件对肉鸡生长的动态影响,已知在科学文献中是非常重要的,但在科学文献中也是未开发的。预测是使用在过去的生产数据上培训的集合动态神经网络模型进行,其基于相互信息的输入变量选择。为探讨拟议方法的潜力,对来自最先进的肉鸡房屋的近35年的工业农场规模生产数据进行了广泛的案例研究。发现环境条件对肉鸡生长的动态影响是显着的,有效的肉鸡重量预测是 - 有效地为未来的肉鸡生产优化研究提供了基础。

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