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断奶仔猪养殖场 CO 排放的进化与神经网络预测。

Evolution and Neural Network Prediction of CO Emissions in Weaned Piglet Farms.

机构信息

Department of Agroforestry Engineering, Higher Polytechnic Engineering School, University of Santiago de Compostela, 27002 Lugo, Spain.

Centro de Investigaciones Agrarias de Mabegondo, Xunta de Galicia, 15318 A Coruña, Spain.

出版信息

Sensors (Basel). 2022 Apr 11;22(8):2910. doi: 10.3390/s22082910.

Abstract

This paper aims to study the evolution of CO concentrations and emissions on a conventional farm with weaned piglets between 6.9 and 17.0 kg live weight based on setpoint temperature, outdoor temperature, and ventilation flow. The experimental trial was conducted during one transition cycle. Generally, the ventilation flow increased with the reduction in setpoint temperature throughout the cycle, which caused a reduction in CO concentration and an increase in emissions. The mean CO concentration was 3.12 g m. Emissions of CO had a mean value of 2.21 mg s per animal, which is equivalent to 0.195 mg s kg. A potential function was used to describe the interaction between 10 min values of ventilation flow and CO concentrations, whereas a linear function was used to describe the interaction between 10 min values of ventilation flow and CO emissions, with values of 0.82 and 0.85, respectively. Using such equations allowed for simple and direct quantification of emissions. Furthermore, two prediction models for CO emissions were developed using two neural networks (for 10 min and 60 min predictions), which reached values of 0.63 and 0.56. These results are limited mainly by the size of the training period, as well as by the differences between the behavior of the series in the training stage and the testing stage.

摘要

本研究旨在基于设定温度、室外温度和通风流量,研究断奶仔猪体重为 6.9 至 17.0 公斤的常规农场中 CO 浓度和排放的演变。试验在一个过渡周期内进行。通常,整个周期中随着设定温度的降低,通风流量增加,导致 CO 浓度降低和排放增加。CO 的平均浓度为 3.12 g m。CO 的排放平均值为每头动物 2.21 毫克 s,相当于 0.195 毫克 s kg。使用势函数描述了通风流量和 CO 浓度 10 分钟值之间的相互作用,而线性函数用于描述通风流量和 CO 排放 10 分钟值之间的相互作用, 值分别为 0.82 和 0.85。使用这些方程可以简单直接地量化排放。此外,还使用两个神经网络(用于 10 分钟和 60 分钟预测)开发了两种 CO 排放预测模型, 值分别为 0.63 和 0.56。这些结果主要受到训练期大小以及训练阶段和测试阶段系列行为差异的限制。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/60b2/9024589/c57e5dbc42b1/sensors-22-02910-g001.jpg

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