Research has shown that Neural Networks (NNs) when trained appropriately are the best forecasting system compared to conventional techniques. Research has shown that there is no system to accurately forecast sudden changes in demand for a given product. This paper reports on the development of a recovery method when a sudden change in demand has taken place. This error in forecasting demand leads to either excessive inventories of the product or shortages of it and can lead to substantial financial losses for the company producing or marketing the product. Two recovery methods have been developed and described in this paper: RZ recovery and Exponential Smoothing (ES). In the RZ recovery once a sudden change has taken place, a ‘soft’ Poke-...
This paper develops an artificial neural network (ANN) model to forecast the optimum demand as a fun...
Background: Enterprises’ decision-making could be facilitated by properly creating or choosing and i...
This paper develops an artificial neural network (ANN) model to forecast the optimum demand as a fun...
Forecasting is predicting or estimating a future event or trend. Supply chains have been constantly ...
Forecasting accuracy drives the performance of inventory management. This study is to investigate an...
Adverse effects of inaccurate demand forecasts; stockouts, overstocks, customer loss have led academ...
Adverse effects of inaccurate demand forecasts; stockouts, overstocks, customer loss have led academ...
Adverse effects of inaccurate demand forecasts; stockouts, overstocks, customer loss have led academ...
Demand forecasting is a crucial part of managing any supply chain network, since inaccurate forecast...
The importance of demand forecasting as a management tool is a well documented issue. However, it is...
For many clothing companies the range of goods sold is renewed twice a year. Each new collection inc...
For many clothing companies the range of goods sold is renewed twice a year. Each new collection inc...
Purpose: This work aims to evaluate demand forecasting models to determine if using exogenous factor...
For many clothing companies the range of goods sold is renewed twice a year. Each new collection inc...
Purpose: This work aims to evaluate demand forecasting models to determine if using exogenous factor...
This paper develops an artificial neural network (ANN) model to forecast the optimum demand as a fun...
Background: Enterprises’ decision-making could be facilitated by properly creating or choosing and i...
This paper develops an artificial neural network (ANN) model to forecast the optimum demand as a fun...
Forecasting is predicting or estimating a future event or trend. Supply chains have been constantly ...
Forecasting accuracy drives the performance of inventory management. This study is to investigate an...
Adverse effects of inaccurate demand forecasts; stockouts, overstocks, customer loss have led academ...
Adverse effects of inaccurate demand forecasts; stockouts, overstocks, customer loss have led academ...
Adverse effects of inaccurate demand forecasts; stockouts, overstocks, customer loss have led academ...
Demand forecasting is a crucial part of managing any supply chain network, since inaccurate forecast...
The importance of demand forecasting as a management tool is a well documented issue. However, it is...
For many clothing companies the range of goods sold is renewed twice a year. Each new collection inc...
For many clothing companies the range of goods sold is renewed twice a year. Each new collection inc...
Purpose: This work aims to evaluate demand forecasting models to determine if using exogenous factor...
For many clothing companies the range of goods sold is renewed twice a year. Each new collection inc...
Purpose: This work aims to evaluate demand forecasting models to determine if using exogenous factor...
This paper develops an artificial neural network (ANN) model to forecast the optimum demand as a fun...
Background: Enterprises’ decision-making could be facilitated by properly creating or choosing and i...
This paper develops an artificial neural network (ANN) model to forecast the optimum demand as a fun...