2009
DOI: 10.1016/j.compag.2009.06.003
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A prediction model for population occurrence of paddy stem borer (Scirpophaga incertulas), based on Back Propagation Artificial Neural Network and Principal Components Analysis

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Cited by 51 publications
(24 citation statements)
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“…Agrophys., 2014Agrophys., , 28, 73-83 doi: 10.2478Agrophys., /intag-2013 Modelling and analysis of compressive strength properties of parboiled paddy and milled rice The artificial neural network (ANN) method has recently been of interest to researches and engineers in various research areas and industries. ANN is increasingly being applied to process control and other areas, including the dynamic modelling of process operations, process prediction, optimizing, non-linear transformation, remote sensing technology and parameter estimation for the design of controllers (Yang et al, 2009). ANNs and rice producing have been coupled by many researchers.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Agrophys., 2014Agrophys., , 28, 73-83 doi: 10.2478Agrophys., /intag-2013 Modelling and analysis of compressive strength properties of parboiled paddy and milled rice The artificial neural network (ANN) method has recently been of interest to researches and engineers in various research areas and industries. ANN is increasingly being applied to process control and other areas, including the dynamic modelling of process operations, process prediction, optimizing, non-linear transformation, remote sensing technology and parameter estimation for the design of controllers (Yang et al, 2009). ANNs and rice producing have been coupled by many researchers.…”
Section: Introductionmentioning
confidence: 99%
“…An ANN model was established to predict the flow rate of paddy rice grains through orifices on horizontal rotating cylindrical drum of a hand or tractor-drawn or self-propelled drum seeder (Kumar et al, 2009). Yang et al (2009) successfully used back propagation neural network (BP-ANN) and principal components analysis (PCA) to build a prediction model for the population occurrence of paddy stem borer. A three-layer BP-ANN model which could rapidly and objectively predict the grades of milled rice based on the surface lipid content was revealed by Chen and Huang (2010).…”
Section: Introductionmentioning
confidence: 99%
“…In addition to commonly considered temperature variables, rainfall and the associated ambient humidity can also greatly affect survival, development, fecundity, and behavior (Willmer 1982;Guarneri et al 2002;Broufas et al 2009) and the population dynamics of insects (Barlow and Mutchmor 1963;King 1972;Mullens and Peterson 2005;Day 2006). Because of their great effects on insect populations, temperature, rainfall, and the associated ambient humidity have been widely used to forecast the likelihood and extent of pest infestation (Zhang and Zhang 2006;Yang et al 2009;Feng et al 2010), to develop strategies for establishing biocontrol agents (Fenoglio and Trumper 2007), and even to predict long-term shifts of insect populations and distribution under global climate change (Williams and Liebhold 2002;Vanhanen et al 2007;Seidl et al 2009). …”
Section: Introductionmentioning
confidence: 99%
“…In addition, it also shows its complexity and randomness in a system. Many different methods of chaos recognition have appeared, such as the power spectrum method [8], the Lyapunov method [9], the Poincaré section method [10] and the principal component analysis method [11]. Comparative studies show that the principal component analysis method can obtain a preferable performance among alternatives.…”
Section: A Summary Of the Chaos Recognition Methodsmentioning
confidence: 98%