"RobertMacy" wrote in message news:op.xm2o7w2c2cx0wh@ajm...
On Wed, 01 Oct 2014 13:13:28 -0700, Jim Thompson
<To-Email-Use-The-Envelope-Icon@on-my-web-site.com> wrote:
>> ...snip....
> If it says...
>
> .MODEL ModelName NPN(...
>
>> it's conventional BJT, and BJT parameters have been fitted to the
>> datasheet
>
>> If it says...
>
>> .SUBCKT ModelName Node(s) [PARAMS: ...]
>
>> it's behavioral
>
> ...Jim Thompson
>Oh, I always called them models [even if they're a subckt] and behavioural
>[because the subckt is based upon observation, not basic principles]
It gets into a grey area as, for example, there are parameters in standard
spice models that are there empirically, not because of a 3D physics based
analysis.
>For example, I always thought behavioural was made up of a conglomeration
>of mathematical components that 'acted' like the component. not based upon
>basic, deep down principles of a particular mask set using a semiconductor
>process.
Probably a bit of individual preferences for the name "behavioural". For me
I agree with what you say. I usually only refer to "behavioural" as
mathematical expressions and ideal components. However, in Spice this will
always be achieved by putting the description in a .subcuit. If one then
makes say, a diode by an exp() function, one might end up just using a
diode, so it morphs into mix of mathematics and Spice parts to make, what is
still, essentially, a "behavioural" description.
In SuperSpice I actually a set of components, like edged clocked d-types
using nothing more than tanh()
Kevin Aylward
www.kevinaylward.co.uk
www.anasoft.co.uk - SuperSpice
Reply Start a New Thread
Jim Thompson wrote:
> On Wed, 01 Oct 2014 19:14:35 -0700, Robert Baer
> <robertbaer@localnet.com> wrote:
>
>> Jim Thompson wrote:
>>> fitted to the
>>> datasheet
>> I disagree on the "fitted to the datasheet"; beta does not follow in
>> a linear manner WRT temperature, AND beta WRT Ic _also_ does not follow
>> in a linear manner WRT temperature.
>> The models look like fantasy.
>
> What models are you referring?
>
> My comment was that one can fit BJT model parameters to a datasheet.
>
> You jumped to a false conclusion.
>
> ...Jim Thompson
No i did not jump to ANY conclusion.
I was/am referring to any transistor in SPICE; 2N2219A, 2N3053,
2N2369A, 2N3904, and 2N3906 specifically.
Maybe someone might be able to fit BJT model parameters to a
datasheet, but one sure does not see those.
Reply Start a New Thread
On Wed, 01 Oct 2014 19:14:35 -0700, Robert Baer
<robertbaer@localnet.com> wrote:
>Jim Thompson wrote:
>> fitted to the
>> datasheet
> I disagree on the "fitted to the datasheet"; beta does not follow in
>a linear manner WRT temperature, AND beta WRT Ic _also_ does not follow
>in a linear manner WRT temperature.
> The models look like fantasy.
What models are you referring?
My comment was that one can fit BJT model parameters to a datasheet.
You jumped to a false conclusion.
...Jim Thompson
--
| James E.Thompson | mens |
| Analog Innovations | et |
| Analog/Mixed-Signal ASIC's and Discrete Systems | manus |
| San Tan Valley, AZ 85142 Skype: skypeanalog | |
| Voice:(480)460-2350 Fax: Available upon request | Brass Rat |
| E-mail Icon at http://www.analog-innovations.com | 1962 |
I love to cook with wine. Sometimes I even put it in the food.
Reply Start a New Thread
Jim Thompson wrote:
> fitted to the
> datasheet
I disagree on the "fitted to the datasheet"; beta does not follow in
a linear manner WRT temperature, AND beta WRT Ic _also_ does not follow
in a linear manner WRT temperature.
The models look like fantasy.
Reply Start a New Thread
RobertMacy wrote:
> On Wed, 01 Oct 2014 08:40:05 -0700, Jim Thompson
> <To-Email-Use-The-Envelope-Icon@on-my-web-site.com> wrote:
>
>> On Tue, 30 Sep 2014 07:08:06 -0700, RobertMacy
>> <robert.a.macy@gmail.com> wrote:
>>
>>> On Mon, 29 Sep 2014 13:15:03 -0700, Robert Baer
>>> <robertbaer@localnet.com>
>>> wrote:
>>>
>>>> Where can one get them, and is there a wide range of transistor type
>>>> represented?
>>>>
>>>> How good are they, eg: E-B breakdown correct, beta at given sets of
>>>> Ic VS temp correct?, Vbe VS temp and VS Ic correct?
>>>> Are there models for each manufacturer?
>>>
>>>
>>> the best I've seen in terms of accuracy and being able to converge when
>>> you use them comes from Alex Bordodynov. He posted all his models for
>>> people a while ago, some 35MB of zipped content! I'm pretty sure he
>>> matches the models very closely to data sheet.
>>>
>>> There's a Russian site you can download them from.
>>>
>>> if you can't find it let me know.
>>
>> Are they really "behavioral" models?
>>
>> ...Jim Thompson
>
> Don't know. Alex has designed semi's but he constantly discusses how to
> make the models fit a datasheet, so don't know.
I also think that fitting to a datasheet is almost the best way; far
easier than getting a bit of expensive equipment for a DIY on hundreds
of parts.
Gotta be rich and have lots of time for that...
Reply Start a New Thread
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josephkk wrote:
> On Tue, 30 Sep 2014 07:08:06 -0700, RobertMacy<robert.a.macy@gmail.com>
> wrote:
>
>> On Mon, 29 Sep 2014 13:15:03 -0700, Robert Baer<robertbaer@localnet.com>
>> wrote:
>>
>>> Where can one get them, and is there a wide range of transistor type
>>> represented?
>>>
>>> How good are they, eg: E-B breakdown correct, beta at given sets of
>>> Ic VS temp correct?, Vbe VS temp and VS Ic correct?
>>> Are there models for each manufacturer?
>>
>>
>> the best I've seen in terms of accuracy and being able to converge when
>> you use them comes from Alex Bordodynov. He posted all his models for
>> people a while ago, some 35MB of zipped content! I'm pretty sure he
>> matches the models very closely to data sheet.
>>
>> There's a Russian site you can download them from.
>>
>> if you can't find it let me know.
>
> I would like a copy of that myself.
>
> ?-)
>
Done.
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O Reply Start a New Thread
On Wed, 01 Oct 2014 15:39:22 -0700, RobertMacy
<robert.a.macy@gmail.com> wrote:
>On Wed, 01 Oct 2014 13:13:28 -0700, Jim Thompson
><To-Email-Use-The-Envelope-Icon@on-my-web-site.com> wrote:
>
>>> ...snip....
>> If it says...
>>
>> .MODEL ModelName NPN(...
>>
>> it's conventional BJT, and BJT parameters have been fitted to the
>> datasheet
>>
>> If it says...
>>
>> .SUBCKT ModelName Node(s) [PARAMS: ...]
>>
>> it's behavioral
>>
>> ...Jim Thompson
>
>
>Oh, I always called them models [even if they're a subckt] and behavioural
>[because the subckt is based upon observation, not basic principles]
Not necessarily... a .SUBCKT can be a conglomeration of individual
pieces, each described by a .MODEL statement or even other
subcircuits.
>
>For example, I always thought behavioural was made up of a conglomeration
>of mathematical components that 'acted' like the component. not based upon
>basic, deep down principles of a particular mask set using a semiconductor
>process. Fr me, a true model of an IC is a series of little components
>connected like the mask and all the pieces act like each little piece,
>even parasitics, which also can make for some huge subckts - but those
>subckts are pretty accurate during simulation.
>
>Again, an example of a 'behavioural' model for an IC is made of current
>sources, voltage sources, impossible feats like negative poles, and a lot
>of other crap just so the thing acts like the data sheet under most
>conditions [think Analog Devices Models, where they simply plcae stage
>gain after stage gain, oops except for this one thing, and oops except for
>this other thingy].
>
>I don't see how to make a true model of an OpAmp without using subckt etc.
>or maybe I missed the nuance of that (PARAMS: ...)
PARAMS is simply a way of customizing. An _excellent_ example is my
Configurable OpAmp on the Device Models & Subcircuits Page of my
website >:-}
There are LOTS of bad models out there... mostly constructed by the
manufacturers themselves... utilizing green PhD's just out of school,
or marketing "engineers" >:-}
...Jim Thompson
--
| James E.Thompson | mens |
| Analog Innovations | et |
| Analog/Mixed-Signal ASIC's and Discrete Systems | manus |
| San Tan Valley, AZ 85142 Skype: skypeanalog | |
| Voice:(480)460-2350 Fax: Available upon request | Brass Rat |
| E-mail Icon at http://www.analog-innovations.com | 1962 |
I love to cook with wine. Sometimes I even put it in the food.
Reply Start a New Thread
On Wed, 01 Oct 2014 13:13:28 -0700, Jim Thompson
<To-Email-Use-The-Envelope-Icon@on-my-web-site.com> wrote:
>> ...snip....
> If it says...
>
> .MODEL ModelName NPN(...
>
> it's conventional BJT, and BJT parameters have been fitted to the
> datasheet
>
> If it says...
>
> .SUBCKT ModelName Node(s) [PARAMS: ...]
>
> it's behavioral
>
> ...Jim Thompson
Oh, I always called them models [even if they're a subckt] and behavioural
[because the subckt is based upon observation, not basic principles]
For example, I always thought behavioural was made up of a conglomeration
of mathematical components that 'acted' like the component. not based upon
basic, deep down principles of a particular mask set using a semiconductor
process. Fr me, a true model of an IC is a series of little components
connected like the mask and all the pieces act like each little piece,
even parasitics, which also can make for some huge subckts - but those
subckts are pretty accurate during simulation.
Again, an example of a 'behavioural' model for an IC is made of current
sources, voltage sources, impossible feats like negative poles, and a lot
of other crap just so the thing acts like the data sheet under most
conditions [think Analog Devices Models, where they simply plcae stage
gain after stage gain, oops except for this one thing, and oops except for
this other thingy].
I don't see how to make a true model of an OpAmp without using subckt etc.
or maybe I missed the nuance of that (PARAMS: ...)
Reply Start a New Thread
On Wed, 01 Oct 2014 10:16:06 -0700, RobertMacy
<robert.a.macy@gmail.com> wrote:
>On Wed, 01 Oct 2014 08:40:05 -0700, Jim Thompson
><To-Email-Use-The-Envelope-Icon@on-my-web-site.com> wrote:
>
>> On Tue, 30 Sep 2014 07:08:06 -0700, RobertMacy
>> <robert.a.macy@gmail.com> wrote:
>>
>>> On Mon, 29 Sep 2014 13:15:03 -0700, Robert Baer
>>> <robertbaer@localnet.com>
>>> wrote:
>>>
>>>> Where can one get them, and is there a wide range of transistor type
>>>> represented?
>>>>
>>>> How good are they, eg: E-B breakdown correct, beta at given sets of
>>>> Ic VS temp correct?, Vbe VS temp and VS Ic correct?
>>>> Are there models for each manufacturer?
>>>
>>>
>>> the best I've seen in terms of accuracy and being able to converge when
>>> you use them comes from Alex Bordodynov. He posted all his models for
>>> people a while ago, some 35MB of zipped content! I'm pretty sure he
>>> matches the models very closely to data sheet.
>>>
>>> There's a Russian site you can download them from.
>>>
>>> if you can't find it let me know.
>>
>> Are they really "behavioral" models?
>>
>> ...Jim Thompson
>
>Don't know. Alex has designed semi's but he constantly discusses how to
>make the models fit a datasheet, so don't know.
If it says...
.MODEL ModelName NPN(...
it's conventional BJT, and BJT parameters have been fitted to the
datasheet
If it says...
.SUBCKT ModelName Node(s) [PARAMS: ...]
it's behavioral
...Jim Thompson
--
| James E.Thompson | mens |
| Analog Innovations | et |
| Analog/Mixed-Signal ASIC's and Discrete Systems | manus |
| San Tan Valley, AZ 85142 Skype: skypeanalog | |
| Voice:(480)460-2350 Fax: Available upon request | Brass Rat |
| E-mail Icon at http://www.analog-innovations.com | 1962 |
I love to cook with wine. Sometimes I even put it in the food.
Reply Start a New Thread
On Wed, 01 Oct 2014 08:40:05 -0700, Jim Thompson
<To-Email-Use-The-Envelope-Icon@on-my-web-site.com> wrote:
> On Tue, 30 Sep 2014 07:08:06 -0700, RobertMacy
> <robert.a.macy@gmail.com> wrote:
>
>> On Mon, 29 Sep 2014 13:15:03 -0700, Robert Baer
>> <robertbaer@localnet.com>
>> wrote:
>>
>>> Where can one get them, and is there a wide range of transistor type
>>> represented?
>>>
>>> How good are they, eg: E-B breakdown correct, beta at given sets of
>>> Ic VS temp correct?, Vbe VS temp and VS Ic correct?
>>> Are there models for each manufacturer?
>>
>>
>> the best I've seen in terms of accuracy and being able to converge when
>> you use them comes from Alex Bordodynov. He posted all his models for
>> people a while ago, some 35MB of zipped content! I'm pretty sure he
>> matches the models very closely to data sheet.
>>
>> There's a Russian site you can download them from.
>>
>> if you can't find it let me know.
>
> Are they really "behavioral" models?
>
> ...Jim Thompson
Don't know. Alex has designed semi's but he constantly discusses how to
make the models fit a datasheet, so don't know.
Reply Start a New Thread