Demand forecasting:-
- refers to the predictionor estimation of a future situation under given constraints.
- Stuff Forecasting is the process of estimation in unknown situations and Prediction.
- Demand forecasting is the activity of estimating the quantity of a product orservice that consumers will purchase.
- Forecasting customer demand for products and services is a proactive process of determining what products are needed where, when, and in what quantities. Consequently, demand forecasting is a customer–focused activity.
- Demand forecasting is also the foundation of a company’s entire logistics process. It supports other planning activities such as capacity planning, inventory planning, and even overall business planning.
Types
of forecasting:-
there are following types of forecasting which are below:-
1.short
term forecasting:
- Short-term( 1 day to 3 months), managers are interested in forecasts for disaggregated demand( for specific product, for specific geography, etc)
- Little time to react to errors in demand forecast, so the forecasts need to be as accurate as possible.
- Time series analysis is often used.
- In absence of historical data managers use judgment methods.eg., clothes. Strategic decisions. Extending or reducing the limits of resources.
2. medium term
forecasting:
- Time horizon for medium-term( 3 months to 24 months).
- Relates to aggregate planning(sales & operations planning).
- Medium term forecast is used to build up seasonal inventory.
- Both time-series and causal methods are used.
3. long term
forecasting:
- Time horizon exceeding two years.
- Long term forecasts are used for process selection, capacity planning & location decisions.
- Judgment models & causal models are used.
eg., petroleum, paper, shipping.
Tactical decisions. Within the limits of resources already available.
Forecasting could be done in the
following ways:-
1) Active and Passive.
2) Total Market and Market
Segmentation.
3) Company Forecast and Industry
Forecast.
4) Short Term and Long Term
Forecasting.
Purpose of Demand
Forecasting:-
1.Better planning and allocation
of resources.
2. Appropriate production scheduling.
3. Inventory control.
4. Determining appropriate pricing
policies.
5. Setting s les targets and
establishing controls and Incentives.
6. Planning a new unit or expanding
existing one.
7. Planning long term financial
requirements.
8. Planning Human Resource Development
strategies.
Objective of demand
forecasting:-
1. Helping for continuous production
2. Regular supply of commodities
3. Formulation of price policy
4. Arrangement of finance
5. Labor requirement.
IMPORTANCE OF DEMAND
FORECASTING:-
- Planning and scheduling production
- Budgeting of costs and sales revenue
- Controlling inventories
- Making policies for long term investment
- Helps in achieving targets of the firm
Methods of demand
forecasting:
- Qualitative Methods (Survey Methods):
1. Survey method:
Survey methods constitute another
important forecasting tool, especially for short-term projections.
The consumers are directly approached
and are asked to give their opinions about the particular product.
The questionnaire must be carefully prepared bearing in mind the
qualities of a good questionnaire. It must be simple and interesting
so as to evoke consumers’ response.
Consumers’ Survey may acquire three
forms:
a) Complete Enumeration Survey
b) Sample Survey
c) End-Use Method.
a)
Complete Enumeration Survey:
Complete
Enumeration Survey covers all the consumers. It resembles the Census
Data Collection which considers the entire population. In this case
all the consumers are covered and information is obtained from all
regarding the prospective demand for the product under
consideration.in this methode consumer opinions are concerned.
We can obtain
complete information by contacting every possible present, past or
would be consumers of the product. No doubt it is not very easy to
carry out the survey on such a large scale. Even the collected
information will be difficult and too tedious to be analyzed. The
reliability on such consumers’ information may be questionable, if
the opinions are not authentic.
b)
Sample Survey:
In case of the
sample survey method, few consumers are selected to represent the
entire population of the consumers of the commodity consumed. The
total demand for the product in the market is then projected on the
basis of the opinion collected from the sample. The most important
advantage of this method is that it is less expensive and less
tedious compared to the method of complete enumeration. The sample
chosen should not be too small or too large. This method if applied
carefully will yield reliable results especially in case of new
brands and new products.
c)
End –Use Method:
A given product
may have different end uses. For example: milk may have different end
uses such as milk powder, chocolates, sweet -meats like ‘barfi’
etc. Therefore the end users of milk are identified. A survey is
planned of the end users and the estimated demands from all segments
of end users are added. This method of demand forecasting is easy to
manage if the number of end-users is limited. In this method the
investigator expects the end- users to provide correct information
well in advance of their respective production schedules.
- Delphi Method:
This is a variant
of the opinion poll or survey method.
Here we invite
different experts and take their opinion and they finally try to find
an average of their ideas. We again intimate the experts about the
average opinion, and give them an opportunity to revise their
forecast. Delphi is useful when you want to have an overall
subjective assessment about complex business environment. All the
experts are distant and they dont know each other, therefore each one
tries to give the best possible estimate.
- Nominal Group Technique:
It is similar to
Delphi, but here we ask experts to sit together and explain their
perspective to others so that others can also give their opinion.
People frame their estimates individually, but thereafter they give
justification for their opinion.
- opinion poll method :
Here we collect
information about the issue from people using opinion poll. We may
take interview, we may collect data using questionnaire, or we may
organise meeting / conference to find opinion of people. Variants of
opinion poll are : focus group discussion – which is used in
marketing to know about consumer opinions.
- Expert opinion method
- PANEL OF EXPERTS IN SAME FIELD WITH EXPERIENCE & WORKING KNOWLEDGE.
- COMBINES INPUT FROM KEY INFORMATION SOURCES.
- EXCHANGE OF IDEAS AND CLAIMS.
- FINAL DECISION IS BASED ON MAJORITY OR CONSENSUS, REACHED FROM EXPERT’S FORECASTS
B.
Quantitative Methods (Statistical Methods):-
1.
Time Series Analysis (Trend Projection):
Time Series
Analysis is used to estimate future demand. The Time Series Method is
based on obtaining the historical data regarding the demand for the
product.
The Time Series
forecasting models are based on historical observations of the values
of the variable that is being forecast.
- The time series relating to sales represent the past pattern of effective demand for a particular product. Such data can be presented either in a tabular form or graphically for further analysis. The most popular method of analysis of the time series is to project the trend of the time series.a trend line can be fitted through a series either visually or by means of statistical techniques. The analyst chooses a plausible algebraic relation (linear, quadratic, logarithmic, etc.) between sales and the independent variable, time. The trend line is then projected into the future by extrapolation.
- Its Popular because: simple, inexpensive, time series data often exhibit a persistent growth trend.
- Its Disadvantage: this technique yields acceptable results so long as the time series shows a persistent tendency to move in the same direction. Whenever a turning point occurs, however, the trend projection breaks down.
2.
Moving Averages:
- Moving averages method can be used when the forecast period is either odd or even.
- ]The method of Moving Average is useful when the market demand is assumed to remain fairly steady over time. The Moving Average for ‘n’ months is found by simply summing up the demand during the past ‘n’ months and then dividing this total by ‘n’.
Moving Average =
Demand in the previous ‘n’ months/ n.
moving
average method. Here we take moving average of either 3 days or 5
days or 7 days and try to forecast using this moving average. We may
also use smoothing to remove exceptional fluctuations Moving average
is a case where data can be used to forecast on the basis of past
trend
Example
of moving average : Period data 3 year moving average 2001 300 2002
400 400 2003 500 434 2004 400 500 2005 600 600 2006 800 700 2007 700
3.
Exponential Smoothing:
Here we use the
past data to smooth the data. Here we use the past data to predict
the future.
In this technique
more recent data are given more weight age. This is based on the
argument that the more recent the observations, the more its impacton
future and therefore is given relatively more weight than the earlier
observations.
4.
Index Numbers:
The Index Numbers
offer a device to measure changes in a group of related variables
over a period of time. In case of index numbers we select a Base Year
which is given the value of 100 and then express all subsequent
changes as a movement of this number. The most commonly used is the
Laspeyres’ Price Index.
5.
Regression Analysis:
This Statistical
method is undertaken to measure the relationship between two
variables where correlation appears to exist. For example: we can
establish a relationship between the age of the air condition machine
and the annual repairs expenses. However this is purely based on the
availability of statistical data irrespective of the actual causes of
damage for which the repair expenses have to be incurred.
6.
Econometric Models:
- The Econometric Models used in forecasting takes the form of an equation or system of equation which seems best to express the most probable interrelationship between a set of economic.
- The Econometric Models can be quantitatively and qualitatively formulated.
- One of the first steps in the construction of an Econometric Model is to determine all or most of the factors influencing the series to be forecast. Then the influence of these factors is reflected in the form of an equation. These models are generally used by econometricians. One of the major limitations of Econometric Model approach is the assumption that the relationships established in the past will continue to prevail in the future. The Econometric Models have failed in many cases but this does not imply that we should abandon them. Being analytical in nature and process oriented in approach they throw more light on problems of a theoretical and statistical nature provided the statistical data are reliable.
7.
Input-Output Analysis:
- The Input-Output Analysis provides perhaps the most complete examination of all the complex inter-relationships within an economic system.
- The Input-Output forecasting is based on a set of tables that explain the inter-relationship among the various components of the economy.
- The Input-Output Analysis shows how an increase or decrease in the demand for cars will lead to increase in production of steel, glass, tyres etc. The increase in demand for these materials will have second line effect. The Input-Output Analysis helps us to understand the inter-industry relationships to provide information about the total impact on all industries as a result of the original increase in demand forecast.
There is no
unique method for forecasting the demand for any product
Casual
method:
- Causal forecasting model show the cause for demand and its relation to other variables. Usually, regression is used for modeling the cause-and-effect behavior.
Examples: Soft
drink can be related to the average summer temperature.
Rainfall can give
us an estimate of crop and in turn an estimate of the estimate of the
demand for consumer durables in the rural areas.
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DeleteDemand forecasting is a dynamic process that requires continuous refinement and adjustment based on real-time data and market insights. By implementing robust forecasting methods and practices, businesses can better anticipate demand fluctuations, optimize their operations, and improve overall business performance. Best Cash Flow Forecasting Software | Financial Forecasting Strategy
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