Time Series
Time Series models are simple yet powerful techniques available
to develop supply chain forecasts. No where the cliché "History
repeats itself" is more true than in sales forecasting.
In Time-series modeling, we just postulate that all we need is
past values of the variable we are trying to forecast. So if we
are trying to predict the demand for a specific product over the
next six months, we use the monthly history of the product over
the past two to three years. We just ignore other factors such as
price elasticity, promotional sensitivity, macro-economic activity,
or Governmental policy changes or our own corporate policy decisions
that we may be aware of.
Time series forecasts can be good starting points before incorporating
other causal effects. Time series methodology examines the past
history for the following elements:
- Historical Average: This is also called as the level of sales
that you have achieved on average
- Trend: This is the growth or decline in Sales over time
- Seasonality: The tendency for sales to either peak in specific
periods or dip in specific periods during the week, month or the
quarter. You may have strong sales in the summer but weak sales
in the spring and fall, for example
- Cyclicality (less often): Sales volume may go through and be
affected by economic cycles. Typically, since supply chain forecasting
is more focused on a time window less than one month, this is often
ignored as a relevant factor affecting time-series forecasts
- Outliers: Sales may be subject to a one-time, sporadic event
that may not be expected to repeat
Popular Time Series Techniques:
- Moving average and growth models
- Simple Exponential Smoothing
- Winters Models
- Holt Winters Methodology
- Simple Trend Seasonal Models
- Logarithmic Models
- ARIMA models