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模糊逻辑在奶牛状态自动监测中的应用。

Application of fuzzy logic in automated cow status monitoring.

作者信息

de Mol R M, Woldt W E

机构信息

Institute of Agricultural and Environmental Engineering (IMAG), Wageningen, The Netherlands.

出版信息

J Dairy Sci. 2001 Feb;84(2):400-10. doi: 10.3168/jds.S0022-0302(01)74490-6.

Abstract

Sensors that measure yield, temperature, electrical conductivity of milk, and animal activity can be used for automated cow status monitoring. The occurrence of false-positive alerts, generated by a detection model, creates problems in practice. We used fuzzy logic to classify mastitis and estrus alerts; our objective was to reduce the number of false-positive alerts and not to change the level of detected cases of mastitis and estrus. Inputs for the fuzzy logic model were alerts from the detection model and additional information, such as the reproductive status. The output was a classification, true or false, of each alert. Only alerts that were classified true should be presented to the herd manager. Additional information was used to check whether deviating sensor measurements were caused by mastitis or estrus, or by other influences. A fuzzy logic model for the classification of mastitis alerts was tested on a data set from cows milked in an automatic milking system. All clinical cases without measurement errors were classified correctly. The number of false-positive alerts over time from a subset of 25 cows was reduced from 1266 to 64 by applying the fuzzy logic model. A fuzzy logic model for the classification of estrus alerts was tested on two data sets. The number of detected cases decreased slightly after classification, and the number of false-positive alerts decreased considerably. Classification by a fuzzy logic model proved to be very useful in increasing the applicability of automated cow status monitoring.

摘要

测量产奶量、温度、牛奶电导率以及动物活动的传感器可用于自动监测奶牛状态。检测模型产生的假阳性警报在实际应用中会引发问题。我们使用模糊逻辑对乳腺炎和发情警报进行分类;我们的目标是减少假阳性警报的数量,且不改变检测到的乳腺炎和发情病例数量。模糊逻辑模型的输入是检测模型发出的警报以及其他信息,如繁殖状态。输出结果是对每个警报的分类,即真或假。只有被分类为真的警报才应呈现给牛群管理者。其他信息用于检查传感器测量值的偏差是由乳腺炎、发情还是其他影响因素导致的。在一个自动挤奶系统中挤奶的奶牛数据集上测试了用于乳腺炎警报分类的模糊逻辑模型。所有无测量误差的临床病例都被正确分类。通过应用模糊逻辑模型,25头奶牛子集中随时间出现的假阳性警报数量从1266减少到了64。在两个数据集上测试了用于发情警报分类的模糊逻辑模型。分类后检测到的病例数量略有下降,假阳性警报数量大幅减少。事实证明,模糊逻辑模型分类在提高自动奶牛状态监测的适用性方面非常有用。

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