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Posted 11-09-2015 09:59 AM
(877 views)

Hello,

I would like increase the gross requirement of a bill-of-materials by a certain scrap factor:

```
Data ProductStructure;
Input @3 Product $2. @ 7 Component $3. @11 Qty @16 RID $15. @32 ScrapFactor;
Datalines;
P2 C1 0.80 Component 0.1
P2 C4 0.20 Component 0
C1 C11 0.50 Component 0
C1 C12 0.50 Component 0
;
Run;
Data PartMaster;
Input @3 Descr $3. @7 Text $35. @45 LeadTime;
Datalines;
P2 Product_2 0
C1 Component_1 2
C4 Component_4 3
C11 Subcomponent_1 3
C12 Subcomponent_2 0
;
Run;
Proc BOM Data=ProductStructure
PMData=PartMaster
Out=BOM_Result;
Structure / Part=Descr
Parent=Product
Component=Component
Quantity=Qty
Factor=ScrapFactor
ID=(Text)
RID=(RID);
Run;
```

The value of qty_prod in bom_result should be 0.44 for both c11 and c12. However, no matter which scrap factor I choose, I always get the same result. In my example "factor" is working exactly like "rid" (I simply get an additional column) which does not really make sense to me.

Do I have to calculate the actual demand myself using a data step or is there a way to make proc bom do it for me?

Thanks&kind regards

1 ACCEPTED SOLUTION

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Hi user24feb,

The Qty_Prod (quantity per product) variable in Indent BOM data set denotes the quantity of the component required to make one unit of the product. It only uses quantity per assembly information and does not take into account the scrap factor. The gross requirement (Gros_Req) variable in Summarized Parts data set will use the scrap factor along with other information (such as quantity on hand and quantity per) in computing the value. You can use the SUMMARYOUT= option in PROC BOM statement to create a Summarized Parts data set and find the gross and net requirements from the data set.

I hope this will answer your question. Please feel free to contact me if you have any questions.

Thanks and best wish,

Danny

3 REPLIES 3

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Hi user24feb,

The Qty_Prod (quantity per product) variable in Indent BOM data set denotes the quantity of the component required to make one unit of the product. It only uses quantity per assembly information and does not take into account the scrap factor. The gross requirement (Gros_Req) variable in Summarized Parts data set will use the scrap factor along with other information (such as quantity on hand and quantity per) in computing the value. You can use the SUMMARYOUT= option in PROC BOM statement to create a Summarized Parts data set and find the gross and net requirements from the data set.

I hope this will answer your question. Please feel free to contact me if you have any questions.

Thanks and best wish,

Danny

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Sorry, I forgot the summary output (again; because I usually avoid it.

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Glad this answers your question! Please feel free to contact me if you have any questions.

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