AUTHOR : LIDYA ( 26406077 ) UNDER THE GUIDANCE OF: YULIA, M. KOM. TANTI OCTAVIA, M. ENG. Designing and Making forecast Application to determine rate of.

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AUTHOR : LIDYA ( ) UNDER THE GUIDANCE OF: YULIA, M. KOM. TANTI OCTAVIA, M. ENG. Designing and Making forecast Application to determine rate of Purchase In "X" construction store with ARIMA Method

Background Out of stock for particular item.

Main Goal Make application sales forecasting with ARIMA method. Help owner to determine the purchase item quantity.

Problem Statement How to make a system with ARIMA method. How to determine purchase items from forecast result

ARIMA ARIMA models are, in theory, the most general class of models for forecasting a time series which can be stationarized by differencing. Step forecasting with ARIMA  Identification temporary model using past data to obtain the ARIMA model.  Estimation parameters of ARIMA models using past data.  Diagnostic check to examine feasibility of the model.  Implementation.

DFD (Contex Diagram)

DFD (Level 0)

Flowchart Forecasting

Flowchart Forecasting(cont.)

ACF

PACF

AR

MA

ARMA

ARIMA

ERD ( Conceptual Data Model )

ERD ( Physical Data Model )

EXPERIMENTAL RESULT Program Validation Data used to test program validation is: PeriodeJumlah Penjualan

Determine Model ACF Interval = ±( 1,96 * (1/ (6) 1/2 )) = ±0,799 lagACFSACFTACF

Determine Model PACF ordoPACFSPACFTPACF P =1, d =0, q =1

Forecasting AR X t = 1 + ε t +0,833* X t-1 dataForcasterror MSE = 1,167

Forecasting MA X t = 2,423+ ε t - -0,961* ε t-1 dataForcasterror MSE = 0,667

Forecasting ARMA X t = 1 + ε t +0,833* X t-1 -0,961* ε t-1 dataForcasterror MSE = 8,33

Diagnostic Check dataerrorACF(error) Q = 0,658 χ 2 (0.5,4) = Q< χ 2 (0.5,4)

EXPERIMENTAL RESULT Result with manual calculation MA dataForcasterror Result with Program

EXPERIMENTAL RESULT Experimental for kind of Data This Experimental use 2 type data. First is roller brush and secondary is paint brush. Data of paint brush.Data of roller brush. Periode Jumlah Penjualan Periode Jumlah Penjualan

EXPERIMENTAL RESULT Result from Data of roller brush.

EXPERIMENTAL RESULT Result from Data of paint brush.

Conclusion Applications tested on users in design, completeness of features, ease of use of the application, the accuracy of forecasting, and the overall program.  Aspects of the application design, 50% user answered fairly, 33.3% said both, and 16.7% said less.  Aspects of the completeness of features, 50% user said good, and 50% said enough.  Aspect easy to use program, users answered 50% moderate, and 50% say unfavorable.  Aspect of program correctness, the user answered 73.3% moderate and 16.7% unfavorable.  Overall assessment of the program, users answered 73.3% moderate, and 16.7% is good.

Sugestion Need a development with Hybrid method

THANKS FOR YOUR ATTENTION

EXPERIMENTAL RESULT Experimental for Data PeriodeData PenjualanPeriodeData Penjualan This experimental using data of Metrolite 3lt

EXPERIMENTAL RESULT Result forecasting in random period PeriodeHasil PeramalanData Penjualan Sebenarnya