peer reviewedUncertainties are ubiquitous and unavoidable in process design and modeling. Because they can significantly affect the safety, reliability and economic decisions, it is important to quantify these uncertainties and reflect their propagation effect to process design. This paper proposes the application of generalized polynomial chaos (gPC)-based approach for uncertainty quantification and sensitivity analysis of complex chemical processes. The gPC approach approximates the dependence of a process state or output on the process inputs and parameters through expansion on an orthogonal polynomial basis. All statistical information of the interested quantity (output) can be obtained from the surrogate gPC model. The proposed me...
In this work we address the problem of performing uncertainty and sensitivity analysis of complex ph...
Time delay is ubiquitous in many real-world physical and biological systems. It typically gives rise...
Abstract—A computationally efficient approach is presented that quantifies the influence of paramete...
Uncertainties are ubiquitous and unavoidable in process design and modeling. Because they can signif...
Uncertainties associated with estimates of model parameters are inevitable when simulating and model...
AbstractUncertainty in the model input parameters are to be taken into account in order to assess th...
Uncertainty is a common feature in first-principles models that are widely used in various engineeri...
International audienceIn this work we address the problem of performing uncertainty and sensitivity ...
The use of epidemic modelling in connection with spread of diseases plays an important role in under...
Many industrial and environmental processes are characterized as complex spatiotemporal systems. Suc...
This paper concerns the implementation of the generalized polynomial chaos (gPC) approach for parame...
peer reviewedThe stability and performance of a system can be inferred from the evolution of statist...
International audienceGlobal sensitivity analysis is now established as a powerful approach for dete...
We present an enriched formulation of the Least Squares (LSQ) regression method for Uncertainty Quan...
In the field of computer experiments sensitivity analysis aims at quantifying the relative importanc...
In this work we address the problem of performing uncertainty and sensitivity analysis of complex ph...
Time delay is ubiquitous in many real-world physical and biological systems. It typically gives rise...
Abstract—A computationally efficient approach is presented that quantifies the influence of paramete...
Uncertainties are ubiquitous and unavoidable in process design and modeling. Because they can signif...
Uncertainties associated with estimates of model parameters are inevitable when simulating and model...
AbstractUncertainty in the model input parameters are to be taken into account in order to assess th...
Uncertainty is a common feature in first-principles models that are widely used in various engineeri...
International audienceIn this work we address the problem of performing uncertainty and sensitivity ...
The use of epidemic modelling in connection with spread of diseases plays an important role in under...
Many industrial and environmental processes are characterized as complex spatiotemporal systems. Suc...
This paper concerns the implementation of the generalized polynomial chaos (gPC) approach for parame...
peer reviewedThe stability and performance of a system can be inferred from the evolution of statist...
International audienceGlobal sensitivity analysis is now established as a powerful approach for dete...
We present an enriched formulation of the Least Squares (LSQ) regression method for Uncertainty Quan...
In the field of computer experiments sensitivity analysis aims at quantifying the relative importanc...
In this work we address the problem of performing uncertainty and sensitivity analysis of complex ph...
Time delay is ubiquitous in many real-world physical and biological systems. It typically gives rise...
Abstract—A computationally efficient approach is presented that quantifies the influence of paramete...