论文标题
估算智能家禽房屋的行动计划
Estimating action plans for smart poultry houses
论文作者
论文摘要
在家禽种植中,系统的选择,更新和实施定期(T)行动计划定义了饲料转换率(FCR [t]),这是成功生产的可接受措施。适当的行动计划为肉鸡提供了量身定制的资源,使它们能够在所谓的热舒适区内生长,而不会浪费或缺乏资源。尽管采取行动计划的实施是自动的,但其配置取决于专家的知识,除了为每个家禽室带来不同的FCR [T],往往易于效率且容易出错。在本文中,我们声称可以通过计算智能在某种程度上复制专家的看法。通过结合深度学习和遗传算法技术,我们可以根据以前的成功计划来展示行动计划如何随着时间的推移调整其性能。我们还实施了一个分布式网络基础架构,该基础架构允许将我们的方法复制到分布式家禽室,以供其智能,互连和自适应控制。向用户提供监督系统作为接口。通过真实数据进行的实验表明,我们的方法在最有生产力的专家的表现上提高了5%,并且非常接近最佳FCR [t]。
In poultry farming, the systematic choice, update, and implementation of periodic (t) action plans define the feed conversion rate (FCR[t]), which is an acceptable measure for successful production. Appropriate action plans provide tailored resources for broilers, allowing them to grow within the so-called thermal comfort zone, without wast or lack of resources. Although the implementation of an action plan is automatic, its configuration depends on the knowledge of the specialist, tending to be inefficient and error-prone, besides to result in different FCR[t] for each poultry house. In this article, we claim that the specialist's perception can be reproduced, to some extent, by computational intelligence. By combining deep learning and genetic algorithm techniques, we show how action plans can adapt their performance over the time, based on previous well succeeded plans. We also implement a distributed network infrastructure that allows to replicate our method over distributed poultry houses, for their smart, interconnected, and adaptive control. A supervision system is provided as interface to users. Experiments conducted over real data show that our method improves 5% on the performance of the most productive specialist, staying very close to the optimal FCR[t].