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smartel
2023-10-02, 11:26 PM
Hi guys,
Does anyone have a step by step procedure to import beamforming antennas into Atoll?
Not all beamforming antenna models match Atoll's requirements for 3D beamforming, beams and beam sets.
BR

slava121
2023-10-03, 07:05 PM
Hi!
There is a document : 3D Beamforming Models Import User Manual
BR

vasili_koslov
2023-10-13, 08:30 PM
Hi bro,

can you please share it?

Hi!
There is a document : 3D Beamforming Models Import User Manual
BR

subway
2024-03-07, 07:00 PM
Hi!
There is a document : 3D Beamforming Models Import User Manual
BR

Would you care to share it please?

I am also trying to import a Huawei AAU but there are a lot of unclear things.

I have the broadcast beam file, but under conventional BF antenna the max element number is 16, and this is a 32T32R version.

Another question is the antenna port number. Does that needs to be 32 receive and 32 transmit, or this should be set according to CRS (2 or 4)?

Under cell the "max power" and "RS ERPE per port" are both per port values, or the "max power" should be the complete output of the AAU, or the complete output per carrier?

subway
2024-03-11, 03:02 AM
Just to keep this topic afloat: the "3D Beamforming Antennas" section of the Atoll manual does not contain any useful information about how to import a massive mimo antenna... The whole 1300 page Atoll user manual does not contain a single hit to "AAU" or "active antenna".

slava121
2024-03-11, 04:03 AM
can you send me your Huawei AAU pattern?

subway
2024-03-18, 06:44 PM
This is the one I want to use.

The problem is the underlying config: the cell is 32T32R, CRS2 (2x2 MIMO), and it is totally unclear in Atoll, where to set which parameter.

The "number of antenna ports" under Transmitter seems to be the CRS related part (set to "2" for both transmit and receive), but then where sould we configure the actual transmit/receive antenna element numbers?

As the MSI pattern is for a single antenna element, somewhere the 32T32R part needs to be set, otherwise the uplink and downlink diversity gains are not accounted for. And given the fact Atoll wants the single antenna element (or with other words: per port) power, this is rather important to set correctly.

Much appreciate your help.

44077

subway
2024-03-20, 12:22 AM
Interesting: changing the "Number of antenna ports" from 2x2 to 4x4 under Transmitter tab does increase the RSRP DL coverage prediction (as expected), but changing it from 4x4 to 8x8 or from 8x8 to 32x32 does not...

slava121
2024-03-20, 04:45 AM
As I understand it, you created an atl project for band n78 for 32 antenna ports?

can you send me the complete pattern for the AAU5339W_3500_ antenna in msi format?

subway
2024-03-20, 04:52 PM
As I understand it, you created an atl project for band n78 for 32 antenna ports?


Can you elaborate on how and where to do that? This is TD-LTE not NR by the way, but from a broadcast beam coverage point of view, that should not matter. I am using Atoll 3.4.0 15641

In regards of the AAU patterns, Huawei is still measuring this for TD-LTE, they just quickly measured the most possible pattern for us so we can do some level of planning. Once we receive the full set, I can share it with you, although dont exepect anything fancy: these AAU pattern files look exactly the same as normal antenna patterns (broadcast beam).

MOD:

For reference: https://zhuanlan.zhihu.com/p/606033815

I think I see where the problem is. The project is set "TD-LTE rural", and it should be set to "5G Multi-RAT" then select 5G NR and LTE, then the relevant config options will show up on the network and parameters tab. As it is ont possible to convert one template to another, it might take a while before I convert the existing project. Will report back once it is done.

Wenzel
2024-03-20, 05:03 PM
What version of Atoll are you using in this project?

slava121
2024-03-20, 06:18 PM
I understood you. Very busy today. I'll answer by evening
You can look at online Help - Calculating 3D Beamforming Patterns

slava121
2024-03-20, 11:53 PM
In order to set up a project, you need to complete the following procedures:
1. Import the AAU5339W_3500 pattern and fill in the fields in the Antennas table correctly.
2. In the “3D Beamforming Models” folder, select New, set the model name and configure the parameters in accordance with the AAU5339W system.
3. In the “Beams” folder, select New, select the model name and configure the parameters.
4. In the “Beams” folder, click on the model name and Generates Beams, in which you need to select the antenna pattern AAU5339W_3500.
5. Click the Generates and ADD Beams button. The calculation will be completed.
6. In the project, open the transmitters table, select the number of transmitters and receivers equal to 32.
7. Select in the Beamforming Model column the name of your model for AAU5339W_3500.


If you did everything correctly, it will work out.
It is important to have the AAU5339w Description to understand the correct configuration.
All. Maybe my colleagues can add to the above.



Can you elaborate on how and where to do that? This is TD-LTE not NR by the way, but from a broadcast beam coverage point of view, that should not matter. I am using Atoll 3.4.0 15641

In regards of the AAU patterns, Huawei is still measuring this for TD-LTE, they just quickly measured the most possible pattern for us so we can do some level of planning. Once we receive the full set, I can share it with you, although dont exepect anything fancy: these AAU pattern files look exactly the same as normal antenna patterns (broadcast beam).

MOD:

For reference: https://zhuanlan.zhihu.com/p/606033815

I think I see where the problem is. The project is set "TD-LTE rural", and it should be set to "5G Multi-RAT" then select 5G NR and LTE, then the relevant config options will show up on the network and parameters tab. As it is ont possible to convert one template to another, it might take a while before I convert the existing project. Will report back once it is done.

subway
2024-03-21, 06:09 AM
Hi Slava,

I much appreciate your help, but I cannot create 3D beamforming antenna with the limited data I have about the AAU. I only have broadcast beam patterns, no traffic beam patterns.

But even for a broadcast beam pattern: if I change the default 4 transmit 4 receive transmitter to 8x8 or 32x32, I should see a significant increase in DL coverage. But that does not happen.

slava121
2024-03-21, 03:42 PM
Data for the AAU5339w antenna system is here:
1. 44084
2. 44085
3. 44086

There is enough data.
The specification states that Number of antenna elements is 192.
I don't quite understand this parameter. those. 192 antenna ports? Maybe I'm wrong.


in reality, I need to understand which RRU this antenna system is used with.
Is this antenna system actually used?

Boraa
2024-03-22, 03:01 PM
no RRU , it integrated

slava121
2024-03-22, 03:52 PM
yes. Understood.

subway
2024-03-22, 07:08 PM
The AAU is 32T32R, which has 8 columns of 12 cross polarized elements, which adds up to 96 cross polarized, 192 total antenna elements. Each antenna column has two independent RF channels.

44088
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But this information is still not helping on the fact that if you have a single broadcast channel MSI like the one I attached previously, how can it be that the coverage increases when I change the 2 transmit 2 received to 4 transmit 4 receive, but it does not change if I change it to 8T8R or 32T32R? Should be simple diversity gain.

slava121
2024-03-22, 07:56 PM
you need to create the Beamforming antenna again with the specified parameters.
I'll try. all the parameters are already there.
I'll do it later today

subway
2024-03-30, 10:32 PM
I am really curious how to do this. And I have no doubt that others are interested in it as well.

slava121
2024-03-31, 01:56 PM
I'll try to create a project again for this antenna system AAU5339w

slava121
2024-03-31, 08:48 PM
I sent you a link to the project in the mail, take a look.




I am really curious how to do this. And I have no doubt that others are interested in it as well.