Creating a configuration file using WinConfig

The following table describes the dialog window entries; the “Statement” column specifies the corresponding statement that is generated by WinConfig when saving to a configura- tion file.

Parameter name

Value

Default

Statement

 

 

 

 

Access

Mode of access to the additional data area.

-

AREA

 

Possible values:

 

 

 

DIRECT

 

 

 

INDIRECT

 

 

 

Selected via a pull-down menu.

 

 

 

(This parameter only exists for OS_UNIX

 

 

 

or OS_WINNT.)

 

 

 

 

 

 

Load

Specifies when and where the data range

-

AREA

 

is to be loaded. Possible values:

 

 

 

STATIC

 

 

 

POOL

 

 

 

Selected via a pull-down menu.

 

 

 

You must specify a poolname with POOL.

 

 

 

(This parameter only exists for

 

 

 

OS_BS2000.)

 

 

 

 

 

 

Poolname

Name with which the data area in the com-

None

AREA

 

mon memory pool is loaded.

 

 

 

(This parameter only exists for

 

 

 

OS_BS2000.)

 

 

 

 

 

 

Load-Module

Name of the load module in which the

None

AREA

 

module (i.e. the data area which can be

 

 

 

used jointly) is linked.

 

 

 

(This parameter only exists for

 

 

 

OS_BS2000.)

 

 

 

 

 

 

Lib

Program library from which the module is

None

AREA

 

to be dynamically loaded or linked.

 

 

 

(This parameter only exists for

 

 

 

OS_BS2000.)

 

 

 

 

 

 

The buttons in the dialog window execute the following actions:

OK The entered additional parameter values are confirmed.

Delete All additional parameter values are deleted.

Cancel The modified parameters are discarded again.

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GINA V4.0 System Administrator Guide – September 2000

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Image 150
Siemens V 4.0 manual Area, Direct Indirect, Static Pool

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