Real-Time Monitoring of Fecal Nitrogen Excretion to the Environment Using Near-Infrared Reflectance Spectroscopy: A Preliminary Study in Rabbits

被引:0
作者
Fortatos, Efstathios [1 ]
Hadjigeorgiou, Ioannis [1 ]
Mountzouris, Konstantinos C. [1 ]
Papadomichelakis, George [1 ]
机构
[1] Agr Univ Athens, Sch Anim Biosci, Dept Anim Sci, Lab Nutr Physiol & Feeding, 75 Iera Odos St, Athens 11855, Greece
关键词
artificial neural networks; environment; fecal nitrogen excretion; near-infrared reflectance spectroscopy; rabbits; LIFE-CYCLE ASSESSMENT; CHEMICAL-COMPOSITION; COMPOUND FEEDS; DIGESTIBILITY; NIRS; PREDICTION; REGRESSION; EMISSIONS; SYSTEM; ENERGY;
D O I
10.3390/environments10120210
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The excessive excretion of nitrogen (N) by farm animals can pose severe environmental risks. In this study, near-infrared reflectance (NIR) spectroscopy (NIRS) was used to explore the feasibility of developing a real-time in situ monitoring tool for fecal N excretion in rabbits. A total of 70 feed and 282 fecal samples from an in vivo digestibility experiment were used. Feed and fecal NIR spectra were employed to develop chemometric models using modified partial least squares (MPLS) for feed and feces, and artificial neural networks (ANN) for feces to predict dietary and fecal N content and fecal N digestibility. Very good accuracy was achieved in predicting feed N (R2val = 0.96; standard error of prediction, SEP = 0.15) and fecal N (R2val = 0.88; SEP = 0.44) content, whereas N digestibility models from wet fecal spectra had a relatively low precision (R2val = 0.70; SEP = 0.018) with MPLS methodology. In contrast, ANNs yielded more robust prediction models for fecal (R2val = 0.98; SEP = 0.25) N content and N digestibility (R2val = 0.91; SEP = 0.012) using wet feces. In conclusion, NIRS calibration with ANNs can be a suitable tool for monitoring the environmental load of N with high precision and accuracy.
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页数:12
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共 50 条
[1]   Prediction model for true metabolizable energy of feather meal and poultry offal meal using group method of data handling-type neural network [J].
Ahmadi, H. ;
Golian, A. ;
Mottaghitalab, M. ;
Nariman-Zadeh, N. .
POULTRY SCIENCE, 2008, 87 (09) :1909-1912
[2]   Application of Artificial Neural Network and Support Vector Machines in Predicting Metabolizable Energy in Compound Feeds for Pigs. [J].
Ahmadi, Hamed ;
Rodehutscord, Markus .
FRONTIERS IN NUTRITION, 2017, 4
[3]  
[Anonymous], 1984, Official methods of analysis, V14th
[4]   A life cycle assessment of the environmental impacts of a beef system in the USA [J].
Asem-Hiablie, Senorpe ;
Battagliese, Thomas ;
Stackhouse-Lawson, Kimberly R. ;
Rotz, C. Alan .
INTERNATIONAL JOURNAL OF LIFE CYCLE ASSESSMENT, 2019, 24 (03) :441-455
[5]   Near infrared reflectance spectroscopy to predict energy value of compound feeds for swine and ruminants [J].
Aufrere, J ;
Graviou, D ;
Demarquilly, C ;
Perez, JM ;
Andrieu, J .
ANIMAL FEED SCIENCE AND TECHNOLOGY, 1996, 62 (2-4) :77-90
[6]  
Baeten V., 2020, Near-Infrared Spectroscopy, P347
[7]   STANDARD NORMAL VARIATE TRANSFORMATION AND DE-TRENDING OF NEAR-INFRARED DIFFUSE REFLECTANCE SPECTRA [J].
BARNES, RJ ;
DHANOA, MS ;
LISTER, SJ .
APPLIED SPECTROSCOPY, 1989, 43 (05) :772-777
[8]   Predicting feed digestibility from NIRS analysis of pig faeces [J].
Bastianelli, D. ;
Bonnal, L. ;
Jaguelin-Peyraud, Y. ;
Noblet, J. .
ANIMAL, 2015, 9 (05) :781-786
[9]  
Bastianelli D., 2007, P 12 INT C NEAR INFR, P626
[10]   Nitrification in agricultural soils: impact, actors and mitigation [J].
Beeckman, Fabian ;
Motte, Hans ;
Beeckman, Tom .
CURRENT OPINION IN BIOTECHNOLOGY, 2018, 50 :166-173