Analysing and modelling efforts on production throughput are getting more complex due to random variables in today’s dynamic production systems. The objective of this study is to take multiple random variables of production into account when aiming for production throughput with higher accuracy of prediction. In the dynamic manufacturing environment, production lines have to cope with changes in set-up time, machinery breakdown, lead time of manufacturing, demand, and scrap. This study applied a Bayesian method to tackle the problem. Later, the prediction of production throughput under random variables is improved by the Seasonal Autoregressive Integrated Moving Average (SARIMA) method. The integrated Bayesian-SARIMA model consists of mult...
The object of research is heteroskedastic processes that affect the production of military goods of ...
Time series modeling is an effective approach for studying and analyzing the future performance of t...
The purpose of this research is the development of an accurate model of cycle time based on data col...
Throughput is an important measure of performance of production system. Analyzing and modeling of pr...
Analysis by modelling production throughput is an efficient way to provide information for productio...
Uncertainties of a serial production line affect on the production throughput. The uncertainties can...
Forecasting the production of technology industries is important to entrepreneurs and governments, b...
The research in this dissertation proposes Bayesian-based predictive analytics for modeling and pred...
A flexible Bayesian periodic autoregressive model is used for the prediction of quarterly and monthl...
A Bayesian Model Averaging approach to the estimation of lag structures is introduced, and applied t...
In this article we present a Bayesian prediction of multiplicative seasonal autoregressive moving av...
This work assesses the forecasts of three nonlinear methods — Markov Switching Autoregressive Model,...
This study proposes a forecasting method that combines the clustering effect and non-informative dif...
An actual demand-forecasting problem of the US apparel dealers is studied. Demand is highly fluctuat...
The work presented in this article constitutes a contribution to modeling and forecasting the demand...
The object of research is heteroskedastic processes that affect the production of military goods of ...
Time series modeling is an effective approach for studying and analyzing the future performance of t...
The purpose of this research is the development of an accurate model of cycle time based on data col...
Throughput is an important measure of performance of production system. Analyzing and modeling of pr...
Analysis by modelling production throughput is an efficient way to provide information for productio...
Uncertainties of a serial production line affect on the production throughput. The uncertainties can...
Forecasting the production of technology industries is important to entrepreneurs and governments, b...
The research in this dissertation proposes Bayesian-based predictive analytics for modeling and pred...
A flexible Bayesian periodic autoregressive model is used for the prediction of quarterly and monthl...
A Bayesian Model Averaging approach to the estimation of lag structures is introduced, and applied t...
In this article we present a Bayesian prediction of multiplicative seasonal autoregressive moving av...
This work assesses the forecasts of three nonlinear methods — Markov Switching Autoregressive Model,...
This study proposes a forecasting method that combines the clustering effect and non-informative dif...
An actual demand-forecasting problem of the US apparel dealers is studied. Demand is highly fluctuat...
The work presented in this article constitutes a contribution to modeling and forecasting the demand...
The object of research is heteroskedastic processes that affect the production of military goods of ...
Time series modeling is an effective approach for studying and analyzing the future performance of t...
The purpose of this research is the development of an accurate model of cycle time based on data col...