The file attached to this record is the author's final peer reviewed version. The Publisher's final version can be found by following the DOI linkTo analyse the time lag effects between independent variables and dependent variables, we propose a discrete time-delay grey multivariable model . There are three improvements in this new model compared to the existing models. First, the time lag parameters are assigned different values for each independent variable. A linear correction term expands the new model. Second, with the given time lag, the least square method can be used to calculate the parameter vector. The time response function of is generated, which has the advantage of eliminating the jumping errors between discrete and continu...
The purpose of this paper is to explore modeling mechanism of a nonhomogeneous multivariable grey pr...
AbstractAlthough the grey forecasting models have been successfully utilized in many fields and demo...
In this study, the authors aim to solve the time series prediction problem through pre-predicting mu...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
This paper is a generation step for developing a novel control methodology based on a variable sampl...
In this work, a novel time-delayed polynomial grey prediction model with the fractional order accumu...
As a tool for analyzing time series, grey prediction models have been widely used in various fields ...
The estimation and compensation of processes with time delays have been of interest to academics and...
Grey prediction models for time series have been widely applied to demand forecasting because only l...
In recent years, the nonhomogeneous grey model has received much attention owing to its flexibility ...
[[abstract]]In grey prediction controller, there are two factors will effect the performance in cont...
AbstractIn order to solve the problem of flight delay forecasting including the characteristics of a...
Accurate estimations can provide a solid basis for decision-making and policy-making that have exper...
[[abstract]]Grey theory is an effective method to solve uncertainty problems with discrete data and ...
Grey theory is an approach that can be used to construct a model with limited samples to provide bet...
The purpose of this paper is to explore modeling mechanism of a nonhomogeneous multivariable grey pr...
AbstractAlthough the grey forecasting models have been successfully utilized in many fields and demo...
In this study, the authors aim to solve the time series prediction problem through pre-predicting mu...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
This paper is a generation step for developing a novel control methodology based on a variable sampl...
In this work, a novel time-delayed polynomial grey prediction model with the fractional order accumu...
As a tool for analyzing time series, grey prediction models have been widely used in various fields ...
The estimation and compensation of processes with time delays have been of interest to academics and...
Grey prediction models for time series have been widely applied to demand forecasting because only l...
In recent years, the nonhomogeneous grey model has received much attention owing to its flexibility ...
[[abstract]]In grey prediction controller, there are two factors will effect the performance in cont...
AbstractIn order to solve the problem of flight delay forecasting including the characteristics of a...
Accurate estimations can provide a solid basis for decision-making and policy-making that have exper...
[[abstract]]Grey theory is an effective method to solve uncertainty problems with discrete data and ...
Grey theory is an approach that can be used to construct a model with limited samples to provide bet...
The purpose of this paper is to explore modeling mechanism of a nonhomogeneous multivariable grey pr...
AbstractAlthough the grey forecasting models have been successfully utilized in many fields and demo...
In this study, the authors aim to solve the time series prediction problem through pre-predicting mu...