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用于评估在线传感器采集的牛奶电导率信号以监测奶山羊乳腺炎的改进模糊逻辑系统。

Improved Fuzzy Logic System to Evaluate Milk Electrical Conductivity Signals from On-Line Sensors to Monitor Dairy Goat Mastitis.

作者信息

Zaninelli Mauro, Tangorra Francesco Maria, Costa Annamaria, Rossi Luciana, Dell'Orto Vittorio, Savoini Giovanni

机构信息

Università Telematica San Raffaele Roma, Via di Val Cannuta 247, 00166 Rome, Italy.

Department of Health, Animal Science and Food Safety (VESPA), Università degli Studi di Milano, Via Celoria 10, 20133 Milan, Italy.

出版信息

Sensors (Basel). 2016 Jul 13;16(7):1079. doi: 10.3390/s16071079.

Abstract

The aim of this study was to develop and test a new fuzzy logic model for monitoring the udder health status (HS) of goats. The model evaluated, as input variables, the milk electrical conductivity (EC) signal, acquired on-line for each gland by a dedicated sensor, the bandwidth length and the frequency and amplitude of the first main peak of the Fourier frequency spectrum of the recorded milk EC signal. Two foremilk gland samples were collected from eight Saanen goats for six months at morning milking (lactation stages (LS): 0-60 Days In Milking (DIM); 61-120 DIM; 121-180 DIM), for a total of 5592 samples. Bacteriological analyses and somatic cell counts (SCC) were used to define the HS of the glands. With negative bacteriological analyses and SCC < 1,000,000 cells/mL, glands were classified as healthy. When bacteriological analyses were positive or showed a SCC > 1,000,000 cells/mL, glands were classified as not healthy (NH). For each EC signal, an estimated EC value was calculated and a relative deviation was obtained. Furthermore, the Fourier frequency spectrum was evaluated and bandwidth length, frequency and amplitude of the first main peak were identified. Before using these indexes as input variables of the fuzzy logic model a linear mixed-effects model was developed to evaluate the acquired data considering the HS, LS and LS × HS as explanatory variables. Results showed that performance of a fuzzy logic model, in the monitoring of mammary gland HS, could be improved by the use of EC indexes derived from the Fourier frequency spectra of gland milk EC signals recorded by on-line EC sensors.

摘要

本研究的目的是开发并测试一种用于监测山羊乳房健康状况(HS)的新型模糊逻辑模型。该模型将通过专用传感器在线采集的每个乳腺的牛奶电导率(EC)信号、记录的牛奶EC信号的傅里叶频谱的带宽长度以及第一个主峰的频率和幅度作为输入变量进行评估。在早晨挤奶时从八只萨能山羊身上采集了两个前乳样本,为期六个月(泌乳阶段(LS):挤奶0 - 60天(DIM);61 - 120 DIM;121 - 180 DIM),共5592个样本。采用细菌学分析和体细胞计数(SCC)来定义乳腺的HS。细菌学分析为阴性且SCC < 1,000,000个细胞/毫升时,乳腺被分类为健康。当细菌学分析为阳性或SCC > 1,000,000个细胞/毫升时,乳腺被分类为不健康(NH)。对于每个EC信号,计算估计的EC值并获得相对偏差。此外,评估傅里叶频谱并确定第一个主峰的带宽长度、频率和幅度。在将这些指标用作模糊逻辑模型的输入变量之前,开发了一个线性混合效应模型,以将HS、LS和LS×HS作为解释变量来评估所采集的数据。结果表明,通过使用由在线EC传感器记录的乳腺牛奶EC信号的傅里叶频谱得出的EC指标,可以提高模糊逻辑模型在监测乳腺HS方面的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c008/4970125/29a3c337f903/sensors-16-01079-g001.jpg

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