Exponential Smoothing 1 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Chapter 7 Demand Forecasting in a Supply Chain Forecasting -2 Exponential Smoothing.

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Presentation transcript:

Exponential Smoothing 1 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Chapter 7 Demand Forecasting in a Supply Chain Forecasting -2 Exponential Smoothing Ardavan Asef-Vaziri Based on Operations management: Stevenson Operations Management: Jacobs and Chase Supply Chain Management: Chopra and Meindl

Exponential Smoothing 2 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Time Series Methods  Moving Average  Discard old records  Assign same weight for recent records  Assign different weights  Weighted moving average  Exponential Smoothing

Exponential Smoothing 3 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Exponential Smoothing

Exponential Smoothing 4 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Exponential Smoothing α=0.2 t At Ft A1  F Since I have no information for F1, I just enter A1 which is 100. Alternatively we may assume the average of all available data as our forecast for period F3 =(1-α)F2 + α A2 F3 =0.8(100) + 0.2(150) F3 = = F2 & A2  F3 A1  F2A1 & A2  F3 F3 =(1-α)F2 + α A2

Exponential Smoothing 5 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Exponential Smoothing α=0.2 t At Ft F4 =(1-α)F3 + α A3 F4 =0.8(110) + 0.2(120) F4 = = 112 A3 & F3  F4 A1 & A2  F3A1& A2 & A3  F F4 =(1-α)F3 + α A3

Exponential Smoothing 6 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Example: Forecast for week 9 using  = 0.1 WeekDemand Forecast

Exponential Smoothing 7 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Week 4 WeekDemandForecast

Exponential Smoothing 8 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Exponential Smoothing WeekDemandForecast

Exponential Smoothing 9 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Two important questions  How to choose  ? Large  or Small  When does it work? When does it not?  What is better exponential smoothing OR moving average?

Exponential Smoothing 10 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 The Same Example:  = 0.4 WeekDemandForecast

Exponential Smoothing 11 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Comparison

Exponential Smoothing 12 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Comparison  As  becomes larger, the predicted values exhibit more variation, because they are more responsive to the demand in the previous period.  A large  seems to track the series better.  Value of stability  This parallels our observation regarding MA: there is a trade-off between responsiveness and smoothing out demand fluctuations.

Exponential Smoothing 13 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Comparison WeekDemand Forecast for 0.1 alpha AD Forecast for 0.4 alphaAD Choose the forecast with lower MAD.

Exponential Smoothing 14 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Which  to choose?  In general want to calculate MAD for many different values of  and choose the one with the lowest MAD.  Same idea to determine if Exponential Smoothing or Moving Average is preferred.  Note that one advantage of exponential smoothing requires less data storage to implement.

Exponential Smoothing 15 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 All Pieces of Data are Taken into Account in ES F t = a A t–1 + (1 – a) F t–1 F t–1 = a A t–2 + (1 – a) F t–2 F t = aA t–1 +(1–a)aA t–2 +(1–a) 2 F t–2 F t–2 = a A t–3 + (1 – a) F t–3 F t = aA t–1 +(1–a)aA t–2 +(1–a) 2 a A t–3 + (1 – a) 3 F t–3 = aA t–1 +(1–a)aA t–2 +(1–a) 2 aA t–3 +(1–a) 3 aA t–4 +(1–a) 4 aA t–5 +(1–a) 5 aA t–6 +(1–a) 6 aA t–7 +… A large number of data are taken into account– All data are taken into account in ES.

Exponential Smoothing 16 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 What is better? Exponential Smoothing or Moving Average  Age of data in moving average is (1+ n)/2   Age of data in exponential smoothing is about    n)/2 = 1/    = 2/(n+1)  If we set  = 2/(n +1), then moving average and exponential smoothing are approximately equivalent.  It does not mean that the two models have the same forecasts.  The variances of the errors are identical.

Exponential Smoothing 17 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Compute MAD & TS

Exponential Smoothing 18 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Data Table Excel Data, what if, Data table Min, conditional formatting This is a one variable Data Table

Exponential Smoothing 19 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Office Button

Exponential Smoothing 20 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Add-Inns

Exponential Smoothing 21 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Not OK, but GO, then Check Mark Solver

Exponential Smoothing 22 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Data Tab/ Solver

Exponential Smoothing 23 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Target Cell/Changing Cells

Exponential Smoothing 24 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Optimal  Minimal MAD

Exponential Smoothing 25 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 NOTE – The following pages are not recorded Note: The following discussion – from the next page up to the end of this set of slides – are not recorded.

Exponential Smoothing 26 Ardavan Asef-Vaziri 6/4/2009 Forecasting-2 Measures of Forecast Error; Additional Indices Error: difference between predicted value and actual value (E)  Mean Absolute Deviation (MAD)  Tracking Signal (TS)  Mean Square Error (MSE)  Mean Absolute Percentage Error (MAPE)

Exponential Smoothing 27 Ardavan Asef-Vaziri 6/4/2009 Forecasting Measures of Forecast Error