Title: Forecasting in Supply Chains: Lecture 04
104. Forecasting in Supply Chains
- Dr. Arunachalam Rajagopal
2Forecasting
- Forecasting is one of the main functions of the
supply chain management. - Customer demand is the basis for all the supply
chain activities and the purpose for which it
exists. - An accurate estimation of customer demand will
enable better planning and smooth flow of
materials through the supply chain.
3Bullwhip Effect
- The customer demand forecast by the members of
the supply chain is influenced by the
availability of information. - The information on the actual customer demand
gets distorted at every stage of the supply chain
when it flows upstream to the supplier and to the
suppliers supplier. - This leads to higher inventory buildup at the
upstream end of the supply chain and this
phenomenon is called Bullwhip Effect.
4Position of forecasting in decisions
5Forecasting steps involved
6Forecast - Range
- The forecasts can be classified into the
following categories based on the time horizon
considered while the forecast is made - short-range (less than 1 year)
- medium-range (1 to 3 years)
- long-range (more than 3 years generally long
range forecast into future which is beyond 5
years).
7Type of forecasts
- Product demand forecast
- Technology forecast
- Weather forecast
8Forecasting Methods
9Qualitative Forecasting Techniques
- Judgmental forecasting
- Personal insight
- Panel Consensus
- Market survey
- Historical analogy
- Delphi method
10Quantitative Forecasting Techniques
- Projective Techniques (Time series analysis)
- constant series
- series with trend
- seasonal series
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12Projective Forecasting
- Projective forecasting is intrinsic, as it
examines historical values for demand and uses
these to forecast the future. - Projective forecasting ignores any external
influences and only looks at past values of
demand to suggest future values. - Simple averages
- Moving averages
- Exponential smoothing
13Simple Averages
14Moving Averages
15Exponential Smoothing
16Exponential Smoothing Example
17Exponential Vs. Moving Average
18Causal Forecasting
- This technique relates one or more intrinsic or
extrinsic variables to the demand for the
product. - For example, the demand for, say, Ford Ikon
passenger car may be related to - intrinsic variables such as product quality,
service, image of the product etc. - extrinsic variables such as disposal income, GDP,
or government policy on excise duty.
19Causal Forecasting
- Causal forecasting techniques are more accurate
than time series analysis. - Causal forecasting methods are Regression,
econometric models, simulation. - Causal forecasting looks for a cause or
relationship that can be used to forecast.
20Causal Forecasting - Regression
21Causal Forecasting - Regression
22Causal Forecasting - Regression
23Causal Forecasting - Regression
24Causal Forecasting - Regression
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26Contd.,
27Causal Forecasting - Regression
- a value of r1 indicates that the two variables
have a perfect linear relationship and the value
of one variable increases as the other variable
increases. - a low positive value indicates that there is a
weak linear relationship - When r0, there is no correlation at all between
the two variables and they are randomly
dispersed. - a low negative value of r, indicates that there
is a weak relationship and that the value of one
variable decreases as the other increases. - r -1 indicates that there is a strong negative
relationship between the variables.
28Model for Seasonality and Trend
- Underlying value (u) is the basic demand that
must be adjusted for seasonality and trend. - Trend (t) is the long term direction of a time
series. It is typically a steady upward or
downward movement. - Seasonal index (S) is the regular variation
around the trend. Typically this shows the
variation in demand over a year. - Noise (N) is the random noise whose effects can
not be explained. - Â
- Then, Demand D (ut) SN
29Model for Seasonality and Trend
- For calculations, it is easier to combine the
underlying value and trend into a single
variable, T, the underlying trend. Residual or
error is shown as e. The forecast model is as
given below -
- F T S e
30Model for Seasonality and Trend - Example
31Model for Seasonality and Trend Example
(contd.,)
32Model for Seasonality and Trend
Period Actual Demand Deseasonalised Trend value Seasonal Index
1 191 141.46 1.35
2 220 159.51 1.38
3 42 177.56 0.24
4 98 195.61 0.50
5 289 213.66 1.35
6 312 231.71 1.35
7 171 249.76 0.68
8 205 267.81 0.77
9 392 285.86 1.37
10 418 303.91 1.38
11 263 321.96 0.82
12 288 340.01 0.85
33Model for seasonality and trend
34Model for seasonal data with an underlying trend
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36Conclusion
- No single method will be able to give the best
forecast demand for the product (or)
organization. - The individual (or) panel responsible for
forecast may arrive at an initial forecast. - Then, the forecast made with selected model gets
refined by taking into consideration the
subjective opinions given by experts and also by
possibly use of brainstorming (or) discussions
with all those concerned with the forecast.
37Thank You