Date: Thu, 28 Mar 2024 19:11:08 +0000 (GMT)
Message-ID: <1822027587.11.1711653068463@[172.30.0.157]>
Subject: Exported From Confluence
MIME-Version: 1.0
Content-Type: multipart/related;
boundary="----=_Part_10_1251919465.1711653068463"
------=_Part_10_1251919465.1711653068463
Content-Type: text/html; charset=UTF-8
Content-Transfer-Encoding: quoted-printable
Content-Location: file:///C:/exported.html
Summary
If your API application displays any sort of User Interface (UI) you may=
find that you need display numeric values to the user. By default the API =
works directly in base MKS units but the user may be more familiar with som=
e project specific units. For example when working on chip design the user =
may want to work with lengths in terms of microns (1e-6 meters) and if they=
are working on board designs they may prefer mils (1/1000 inch). Since the=
API always deals in base units you may want to convert numeric values to u=
ser units before displaying them. And when getting values from the user you=
may want to convert them back from user units to base units.
In order to facilitate these types of conversions the API supports a Pro=
ject.Units collection which provides multiplication factors for converting =
between base units and user units. In addition items in the collection also=
contain unit strings which provide a text representation of the unit facto=
r to be placed after the numeric value. For example, lets say we have a pro=
ject that has length units in Microns and we want to present 5e-6 meters in=
user units. Lets use the immediate window in the scripting environment and=
try a conversion.
Code Snippets
? 5e-6 / Project.Units(mwUT_Length).MultValue & Project.Units(mwUT=
_Length).UnitString
"5um"
So that gave us 5um or 5 microns. Lets look at the parts. First we used =
the used the units collection off the project Project.Units. This from this=
collection we used an index defined by mwUT_Length to get the unit entry f=
or length. And then we asked for the MultValue of that unit. The MultValue =
is the value needed to go from user units to base units so:
Base Units =3D User Units * Mult Value
Or in the case of the example above:
User Units =3D Base Units / Mult Value
Next we added the UnitString on to the end so the user would know that t=
his value is being presented in microns which gives us the "um" part of the=
output.
One of the other neat features about the 'Units' collection is that the =
index variable of the Units.Item() method is a mwUnitType so intellisense i=
n the scripting environment will help you pick the correct value:
In addition all the unit types available this table:
Unit Type |
Type Index |
mwUT_None |
0 |
mwUT_Frequency |
1 |
mwUT_Capacitance |
2 |
mwUT_Inductance |
3 |
mwUT_Resistance |
4 |
mwUT_Conductance |
5 |
mwUT_Length |
6 |
mwUT_LengthEnglish |
7 |
mwUT_Temperature |
8 |
mwUT_Angle |
9 |
mwUT_Time |
10 |
mwUT_Voltage |
11 |
mwUT_Current |
12 |
mwUT_PowerLog |
13 |
mwUT_Power |
14 |
mwUT_DB |
15 |
mwUT_String |
16 |
mwUT_Scaler |
17 |
mwUT_DBOnlyPower |
18 |
mwUT_WattsOnlyPower |
19 |
------=_Part_10_1251919465.1711653068463
Content-Type: application/octet-stream
Content-Transfer-Encoding: base64
Content-Location: file:///C:/e5dfd41530d0d6e29a4d3cb9cbea6d0d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------=_Part_10_1251919465.1711653068463--