Monte Carlo evaluation of biological variation: Random generation of correlated non-Gaussian model parameters

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When modelling the behaviour of horticultural products, demonstrating large sources of biological variation, we often run into the issue of non-Gaussian distributed model parameters. This work presents an algorithm to reproduce such correlated non-Gaussian model parameters for use with Monte Carlo simulations. The algorithm works around the problem of non-Gaussian distributions by transforming the observed non-Gaussian probability distributions using a proposed SKN-distribution function before applying the covariance decomposition algorithm to generate Gaussian random co-varying parameter sets. The proposed SKN-distribution function is based on the standard Gaussian distribution function and can exhibit different degrees of both skewness and kurtosis. This technique is demonstrated using a case study on modelling the ripening of tomato fruit evaluating the propagation of biological variation with time.

论文关键词:62P10,65C10,Biological variation,Covariance decomposition,Kurtosis,Model parameter distribution,Monte Carlo simulation,Skewness

论文评审过程:Received 1 August 2006, Revised 5 October 2007, Available online 23 December 2007.

论文官网地址:https://doi.org/10.1016/j.cam.2007.12.010