Folowing data reps the weekly demand for wings at a restaura

Folowing data reps the weekly demand for wings at a restaurant during the past 6 weeks:

Forecast demand for week 7 using a 5PMA or five-period moving average.

Forecast demand for week 7 using a 3PWMA three-period weighted moving average. Use the these weights

W1 = 0.5

W2 = 0.3

W3 = 0.2

Forecast demand for week 7 using exponential smoothing.

value is 0.1

Just assume forecast for wk 6 was 600 units

What can you say about each of the forecasts?

Week 1 2 3 4 5 6
Demand 650 521 563 735 514 596

Solution

We have given the following data reps the weekly demand for wings at a restaurant during the past 6 weeks:

Forecast demand for week 7 using a 5PMA or five-period moving average.

This we can done in MINITAB.

The path will be :

STAT --> Time series --> Moving average -->variable demand --> MA length 5 --> center the moving averages --> Storage moving average, fits , residuals --> Results summary rable and result table --> ok

This will gives us the following output.

Welcome to Minitab, press F1 for help.

Moving Average for demand

Data demand
Length 6
NMissing 0


Moving Average

Length 5


Accuracy Measures

MAPE 8.09
MAD 41.60
MSD 3411.56


Time demand MA Predict Error
1 650 * * *
2 521 * * *
3 563 596.6 * *
4 735 585.8 * *
5 514 * 596.6 -82.6
6 596 * 596.6 -0.6

week   demand   AVER1   FITS1   RESI1
1   650   *   *   *
2   521   *   *   *
3   563   596.6   *   *
4   735   585.8   *   *
5   514   *   596.6   -82.6
6   596   *   596.6   -0.6

Forecast demand for week 7 using a 3PWMA three-period weighted moving average. Use the these weights

W1 = 0.5

W2 = 0.3

W3 = 0.2

Weighte moving aversge can be calculate by using the formula,

Weighte moving average = sum ( weight for period * value in period) / sum(weights)

= (735 * 0.5) + (514 * 0.3) + (596 * 0.2) / ( 0.5 + 0.3 +0.2)

= 640.9 / 1 = 640.9

Forecast demand for week 7 using exponential smoothing. value is 0.1

This can be done by using MINITAB command will be,

STAT --> Time series -->Single exponential smoothing -->variable emand -->Weight to use in smoothing use 0.1 -->Storage moving average, fits , residuals --> Results summary rable and result table --> ok

Single Exponential Smoothing for demand

Data demand
Length 6


Smoothing Constant

Alpha 0.1


Accuracy Measures

MAPE 11.10
MAD 66.76
MSD 6579.01


Time demand Smooth Predict Error
1 650 601.850 596.500 53.500
2 521 593.765 601.850 -80.850
3 563 590.689 593.765 -30.765
4 735 605.120 590.689 144.311
5 514 596.008 605.120 -91.120
6 596 596.007 596.008 -0.008

When the value of week 6 change to 600 then output will be

Single Exponential Smoothing for demand

Data demand
Length 6


Smoothing Constant

Alpha 0.1


Accuracy Measures

MAPE 11.22
MAD 67.43
MSD 6581.15


Time demand Smooth Predict Error
1 650 602.450 597.167 52.833
2 521 594.305 602.450 -81.450
3 563 591.175 594.305 -31.305
4 735 605.557 591.175 143.826
5 514 596.401 605.557 -91.557
6 600 596.761 596.401 3.599

When deman of the week 6 is 600 then all the value of smooth will bbe change by 1unit.

Folowing data reps the weekly demand for wings at a restaurant during the past 6 weeks: Forecast demand for week 7 using a 5PMA or five-period moving average. F
Folowing data reps the weekly demand for wings at a restaurant during the past 6 weeks: Forecast demand for week 7 using a 5PMA or five-period moving average. F
Folowing data reps the weekly demand for wings at a restaurant during the past 6 weeks: Forecast demand for week 7 using a 5PMA or five-period moving average. F

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