Short-term prediction of ammonia levels in goose houses via combined feature selector and random forest
Abstract
Keywords: ammonia concentration prediction, random forest, combined feature selector, goose houses
DOI: 10.25165/j.ijabe.20231606.6378
Citation: Huang J D, Hassan S G, Xu L Q, Liu S Y. Short-term prediction of ammonia levels in goose houses via combined feature selector and random forest. Int J Agric & Biol Eng, 2023; 16(6): 77–84.
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National Bureau of Statistics, China. Statistical Communique of the People’s Republic of China on the 2019 National Economic and Social Development.
Zhao Q, Boomer G S, Kendall W L. The non-linear, interactive effects of population density and climate drive the geographical patterns of waterfowl survival. Biological Conservation, 2018; 221: 1–9.
Wei F X, Hu X F, Xu B, Zhang M H, Li S Y, Sun Q Y, et al. Ammonia concentration and relative humidity in poultry houses affect the immune response of broilers. Genetics and Molecular Research, 2015; 14(2): 3160–3169.
Kearney G D, Shaw R, Prentice M, Tutor-Marcom R. Evaluation of respiratory symptoms and respiratory protection behavior among poultry workers in small farming operations. Journal of Agromedicine, 2014; 19(2): 162–170.
Nemer M, Sikkeland L I B, Kasem M, Kristensen P, Nijem K, Bjertness E, et al. Airway inflammation and ammonia exposure among female Palestinian hairdressers: A cross-sectional study. Occupational & Environmental Medicine, 2015; 72(6): 428–434.
Xiong Y, Tang X F, Meng Q S, Zhang H F. Differential expression analysis of the broiler tracheal proteins responsible for the immune response and muscle contraction induced by high concentration of ammonia using iTRAQ-coupled 2D LC-MS/MS. Science China Life Sciences, 2016; 59: 1166–1176.
Soliman E S, Moawed S A, Hassan R A. Influence of microclimatic ammonia levels on productive performance of different broilers’ breeds estimated with univariate and multivariate approaches. Veterinary World, 2017; 10(8): 880–887.
Tao Z Y, Xu W J, Zhu C H, Zhang S J, Shi Z H, Song W T, et al. Effects of ammonia on intestinal microflora and productive performance of laying ducks. Poultry Science, 2019; 98: 1947–1959.
Bai Y, Li Y, Wang X X, Xie J J, Li C. Air pollutants concentrations forecasting using back propagation neural network based on wavelet decomposition with meteorological conditions. Atmospheric Pollution Research, 2016; 7(3): 557–566.
Lim Y, Moon Y-S, Kim T-W. Artificial neural network approach for prediction of ammonia emission from field-applied manure and relative significance assessment of ammonia emission factors. European Journal of Agronomy, 2007; 26(4): 425–434.
Qiao J F, Quan L M, Yang C L. Design of modeling error PDF based fuzzy neural network for effluent ammonia nitrogen prediction. Applied Soft Computing, 2020; 91: 106239.
Xie Q, Ni J, Su Z. A prediction model of ammonia emission from a fattening pig room based on the indoor concentration using adaptive neuro fuzzy inference system. Journal of Hazardous Materials, 2017; 325: 301–309.
Stamenkovic L J, Antanasijevic D Z, Ristic M D J, Peric-Grujic A A, Pocajt V. Modeling of methane emissions using artificial neural network approach. Journal of the Serbian Chemical Society, 2015; 80(3): 421–433.
Yu H H, Chen Y Y, Hassan S G, Li D L. Prediction of the temperature in a Chinese solar greenhouse based on LSSVM optimized by improved PSO. Computers and Electronics in Agriculture, 2016; 122: 94–102.
Barzegar R, Fijani E, Moghaddam A A, Tziritis E. Forecasting of groundwater level fluctuations using ensemble hybrid multi-wavelet neural network-based models. Science of The Total Environment, 2017; 599-600: 20–31.
Qiu X H, Zhang L, Nagaratnam Suganthan P, Amaratunga G A J. Oblique random forest ensemble via Least Square Estimation for time series forecasting. Information Sciences, 2017; 420: 249–262.
Rubal, Kumar D. Evolving differential evolution method with random forest for prediction of air pollution. Procedia Computer Science, 2018; 132: 824–833.
Wen L, Yuan X Y. Forecasting CO2 emissions in China’s commercial department, through BP neural network based on random forest and PSO. Science of The Total Environment, 2020; 718: 137194.
Zhu K H, Wu S Y, Li Q. Prediction model for piggery ammonia concentration based on genetic algorithm and optimized BP neural network. Metallurgical and Mining Industry, 2015; 11: 6–12.
Li R, Nielsen P V, Bjerg B, Zhang G Q. Summary of best guidelines and validation of CFD modeling in livestock buildings to ensure prediction quality. Computers and Electronics in Agriculture, 2016; 121: 180–190.
Wang J L, Xu C Q, Zhang J, Zhong R. Big data analytics for intelligent manufacturing systems: A review. Journal of Manufacturing Systems, 2022; 62: 738–752.
Sun L, Wang L Y, Ding W P, Qian Y H, Xu J C. Feature selection using fuzzy neighborhood entropy-based uncertainty measures for fuzzy neighborhood multigranulation rough sets. IEEE Transactions on Fuzzy Systems, 2021; 29(1): 19–33.
Qian W B, Huang J T, Xu F K, Shu W H, Ding W P. A survey on multi-label feature selection from perspectives of label fusion. Information Fusion, 100: 101948.
Sun L, Yin T Y, Ding W P, Qian Y H, Xu J C. Multilabel feature selection using ML-ReliefF and neighborhood mutual information for multi-label neighborhood decision systems. Information Sciences, 2020; 537: 401–424.
Kira K, Rendell LA. The feature selection problem: traditional methods and a new algorithm. In: Proceedings of the tenth national conference on Artificial Intelligence, 1992; pp.129–134.
Kononenko I. Estimating attributes: Analysis and extensions of RELIEF. In: Machine Learning: ECML-94. ECML 1994 Lecture Notes in Computer Science, 1994; 784: 171–182.
Kraskov A, Stögbauer H, Grassberger P. Estimating mutual information. Physical Review E, 2004; 69: 066138.
Breiman L. Random forests. Machine Learning, 2001; 45: 5–32.
Zhang J W, Song W L, Jiang B, Li M B. Measurement of lumber moisture content based on PCA and GS-SVM. Journal of Forestry Research, 2018; 29: 557–574.
Probst P, Boulesteix A-L. To tune or not to tune the number of trees in random forest. The Journal of Machine Learning Research, 2017; 18(1): 6673–6690.
Ortin F, Facundo G, Garcia M. Analyzing syntactic constructs of Java programs with machine learning. Expert Systems with Applications, 2023; 215: 119398.
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