Abstract
In
recent years, the needs for intermittent demand forecasting are increasing
because of the constraints of strict Supply Chain Management. How to improve
the forecasting accuracy is an important issue. There are many researches made
on this. But there are rooms for improvement. In this paper, a new method for
cumulative forecasting method is proposed. The data is cumulated and to this
cumulated time series, the following method is applied to improve the
forecasting accuracy. Focusing that the equation of exponential smoothing
method(ESM) is equivalent to (1,1) order ARMA model equation, the new method of
estimation of smoothing constant in exponential smoothing method is proposed
before by us which satisfies minimum variance of forecasting error. Generally,
smoothing constant is selected arbitrarily. But in this paper, we utilize above
stated theoretical solution. Firstly, we make estimation of ARMA model
parameter and then estimate smoothing constants. Thus theoretical solution is
derived in a simple way and it may be utilized in various fields. Furthermore,
combining the trend removing method with this method, we aim to improve the
forecasting accuracy. An approach to this method is executed in the following
method. Trend removing by the combination of linear and 2nd order non-linear function and 3rd order non-linear function is
executed to the production data of Emission CT apparatus and Superconducting
magnetic resonance imaging system. The weights for these functions are set 0.5
for two patterns at first and then varied by 0.01 increment for three patterns
and optimal weights are searched. For the comparison, monthly trend is removed
after that. Theoretical solution of smoothing constant of ESM is calculated for
both of the monthly trend removing data and the non monthly trend removing
data. Then forecasting is executed on these data. The forecasting result is
compared with those of the non-cumulative forecasting method. The new method
shows that it is useful for the forecasting of intermittent demand data. The
effectiveness of this method should be examined in various cases.