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Matlab Code For Latin Hypercube Sampling
matlab code for latin hypercube sampling























matlab code for latin hypercube sampling

Matlab Code For Latin Hypercube Sampling Code Is Written

Note to the user: all MatLab code is written in MatLab R2014, and some require additional toolboxes (e.g. Analytica financial modeling beyond. Practical numerical methods for chemical engineers using.

You can specify several name and value pair arguments in any order as Name1,Value1.,NameN,ValueN. Uncertainty propagation (independent input parameters)Specify optional comma-separated pairs of Name,Value arguments.Name is the argument name and Value is the corresponding value.Name must appear inside quotes. Both the ipython notebook and the python scripts are written in Python 3. In case you don’t have access to MatLab, there is a free alternative called Octave available.

Monte Carlo samplingRepresenting major soil variability at regional scale by constrained Latin. In additon, a Taylor approximation of the original model can be used to propogate the uncertainties analytically. To propagate the input uncertainties, simulation techniques can be used such as Monte Carlo sampling, but more exotic sampling techniques, such as Latin hypercube sampling ( Figure 1) can also be used. The method serves to enhance the space-filling properties of the sample design of the Latin hypercube sample by requiring it to place the samples in user-prescribed n-dimensional strata.Uncertainty propagation can be used to propagate uncertainties of input parameters through models to determine e.g.

To propagate the input uncertainties of parameters that are correlated, two techniques are used: normal random and a Taylor approximation of the original model can be used to propogate the uncertainties analytically. QMCS results in an uniform distributed grid, with 4 realizations in each cell.The MatLab/Octave code for performing Latin hypercube sampling (LHS) in matrix-based life cycle assessment can be found here: MATLAB code LHS LCAThe MatLab/Octave code for performing Quasi Monte Carlo sampling (QMCS) in matrix-based life cycle assessment can be found here: MATLAB code QMCS LCAThe MatLab/Octave code for performing Fuzzy interval arithmetic (FIA) in matrix-based life cycle assessment can be found here: MATLAB code FIA LCA Uncertainty propagation (correlated input parameters)Uncertainty propagation can be used to propagate uncertainties of input parameters, even if they are correlated. Other types of uncertainty propagation using samplingFigure 1: Density plot of Monte Carlo sampling (MCS), Latin hypercube sampling (LHS) and quasi-Monte Carlo sampling (QMCS) on a 16x16 grid sample size N=1024. Analytical uncertainty propagationCode for performing Analytical uncertainty propagation (AUP) in matrix-based life cycle assessment (LCA) can be found here:Python: Python code AUP LCA 3. De Bruina.Code for performing Monte Carlo sampling (MCS) in matrix-based life cycle assessment (LCA) can be found here:Python: Python code MCS LCA 2.

Analytical uncertainty propagationCode for performing Analytical uncertainty propagation (AUP) in matrix-based life cycle assessment (LCA) with correlated input parameters can be found here:Matlab/Octave: MatLab code AUP LCA (correlated)Source: PhD thesis Evelyne Groen, An uncertain climate: the value of uncertainty and sensitivity analysis in environmental impact assessment of food, 2016ISBN: 978-94-6257-755-8 DOI: 10.18174/375497The MatLab code for performing MCS, LHS, QMCS, FIA and AUP in LCA was used in Methods for uncertainty propagation in life cycle assessment, Environmental Modelling & Software, December 2014 (Volume 62, Pages 316 - 325).The MatLab code for performing MCS and AUP was used in Methods for global sensitivity analysis in life cycle assessment, accepted for publicaiton, 2016.The MatLab code for performing uncertainty propagation with correlated input parameters (both the analytic and the sampling approach) was used in Ignoring correlation in uncertainty and sensitivity analysis in life cycle assessment: what is the risk?, Environmental Impact Assessment Review, January 201x (Volume 62, Pages 98 - 109).The MatLab code for performing MCS was used in Benchmarking nutrient losses of dairy farms: the effect of epistemic uncertainty?, xxx, xxx.The MatLab code for performing uncertainty propagation in LCA with correlated input parameters was used in Assessing greenhouse gas emissions of milk prodution: which parameters are essential?, The international Journal of Life Cycle Assessment, First online: 31 July, 2016.

matlab code for latin hypercube sampling