Return-Path: X-Spam-Checker-Version: SpamAssassin 3.4.0 (2014-02-07) on lipkowski.org X-Spam-Level: X-Spam-Status: No, score=-2.3 required=5.0 tests=DC_PNG_UNO_LARGO, FREEMAIL_FORGED_FROMDOMAIN,FREEMAIL_FROM,HEADER_FROM_DIFFERENT_DOMAINS, HTML_MESSAGE,RCVD_IN_DNSWL_MED,SPF_PASS,T_DKIM_INVALID autolearn=ham autolearn_force=no version=3.4.0 X-Spam-DCC: dcc1: mailn 1182; Body=2 Fuz1=2 Fuz2=2 Received: from post.thorcom.com (post.thorcom.com [195.171.43.25]) by mailn.lipkowski.org (8.14.4/8.14.4/Debian-8+deb8u1) with ESMTP id uB3CVXuj001170 for ; Sat, 3 Dec 2016 13:31:34 +0100 Received: from majordom by post.thorcom.com with local (Exim 4.14) id 1cD9Qr-0006AU-2J for rs_out_1@blacksheep.org; Sat, 03 Dec 2016 12:28:45 +0000 Received: from [195.171.43.32] (helo=relay1.thorcom.net) by post.thorcom.com with esmtp (Exim 4.14) id 1cD9Qq-0006AL-JZ for rsgb_lf_group@blacksheep.org; Sat, 03 Dec 2016 12:28:44 +0000 Received: from mail-wm0-x234.google.com ([2a00:1450:400c:c09::234]) by relay1.thorcom.net with esmtps (TLSv1.2:ECDHE-RSA-AES256-GCM-SHA384:256) (Exim 4.87) (envelope-from ) id 1cD9Qm-0008BF-Ut for rsgb_lf_group@blacksheep.org; Sat, 03 Dec 2016 12:28:43 +0000 Received: by mail-wm0-x234.google.com with SMTP id t79so37521851wmt.0 for ; Sat, 03 Dec 2016 04:28:39 -0800 (PST) X-DKIM-Result: Domain=gmail.com Result=Good and Known Domain DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:in-reply-to:references:from:date:message-id:subject:to; bh=QM/KvjQlWlYX/EV37pXhhwSQm8oLc3bVFDFJO/znQ6Q=; b=pcXnG4xG6BG0/R6tCwnxB3S17o8Dt9fobJJB9khT8gzySkkTaRsodfrLZvsZLck4dt Jz6yjmIF8bAzHTPynxjGlkWkd2IC2f3mMvWFTL8eVPzhrqB4YTlS4oS3uA1o4lJWIptC y8YtmkaegT7K623nV9FWGXpzgk5I3ZlxPoHWEgFYavCELD97zDQfcljoR1/++sSaS9WT 0EX1k0Ehf1c02fg+rr3OVqIsPFZj3vPyYpzYI7vp8Q0Fq6Y2phP1r9rJDt7Ajh+JV/Zp pmqK6vsHEDtGSqP7yVIk2pW0bnpNh504ZqbGkx3Zps8gPkYXQohFBAh2JCK4/C4pze8P +vaA== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:in-reply-to:references:from:date :message-id:subject:to; bh=QM/KvjQlWlYX/EV37pXhhwSQm8oLc3bVFDFJO/znQ6Q=; b=Ui45pfTKEyZvBEeIwyPXOu1B0rgRSu9Wq4UbQaWbomone1Zbzek7AxseqLvcnuGCuL 99jWkA1Dqk5YfYw1Ey6rhHc5fAZPWR+nZ6WH7ChNaXEoMPQDv5fssGrByeQJJSjodlvn zjLd58mn5XeSiJQIxXVMjNqqZk2zqcBxZqdIxM1YAh+0C1qGIGF+F92TAAlkDlLcxMG0 +eTnMVzhg3clxeSgGsCXF4Vqs2071pbNoNpVKJbzuAmpceuvxu1RiU5QtYVLm+vLTI7e 21H+YGBnsKN1GaiW3wVOC6I60ERzvbccAlTUyJHicudoc0nUbuz2hg783didlnjWaqmE OB0w== X-Gm-Message-State: AKaTC01thopkWkOEeA/LyWMq5AyrJIbwvqBHs85LlSQRMV0RZzHm8ljQMRPkY+E+x20qnCVjNCSZP3oBCNxIDw== X-Received: by 10.28.168.137 with SMTP id r131mr1718618wme.16.1480768117786; Sat, 03 Dec 2016 04:28:37 -0800 (PST) MIME-Version: 1.0 Received: by 10.80.172.193 with HTTP; Sat, 3 Dec 2016 04:27:56 -0800 (PST) In-Reply-To: References: <158c17dc012-1cbc-28d9@webprd-a15.mail.aol.com> From: Domenico IZ7SLZ Date: Sat, 3 Dec 2016 13:27:56 +0100 Message-ID: To: "rsgb_lf_group@blacksheep.org" X-Scan-Signature: 08d7433bc0e245fdbbeb0592ad975948 Subject: Re: LF: EbNaut 137.477 kHz 1 Dec Content-Type: multipart/mixed; boundary=001a114ccb68a7f2ef0542c03190 X-SA-Exim-Scanned: Yes Sender: owner-rsgb_lf_group@blacksheep.org Precedence: bulk Reply-To: rsgb_lf_group@blacksheep.org X-Listname: rsgb_lf_group X-SA-Exim-Rcpt-To: rs_out_1@blacksheep.org X-SA-Exim-Scanned: No; SAEximRunCond expanded to false X-Scanned-By: MIMEDefang 2.75 Status: O X-Status: X-Keywords: X-UID: 9660 --001a114ccb68a7f2ef0542c03190 Content-Type: multipart/alternative; boundary=001a114ccb68a7f2ea0542c0318e --001a114ccb68a7f2ea0542c0318e Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: quoted-printable Hello Joe & all, With pleasure, i was able to decode VO1NA EbNaut message last night three times: UTC Eb/N0 [dB] Eb/N0 carrier [dB] 22.30 3.5 3.9 23.00 1.0 1.7 02.00 0.7 1.0 time and frequency offsets used are pratically the nominals values. My locator is JN80nu so QRB is 5426 km: not bad for a message of 63 characters on LF sent in less than 30 minutes ! Antenna used here: inv-L 8 meters (my TX ant used untuned), receiver JRC NRD-92M. In the qsl.net folder: http://qsl.net/iz7slz/VO1NA i have uploaded the .wave files related to the above listed decodes. So whom is interested, can try and test EbNaut-rx program. There are also some txt files. These are the FFT raw data coming from the Spectrum Lab OPDS session recordered last night. These files can be converted in "EbNaut-ready" audio files by using DF6NM's program ebnaut_ifft3.exe. In the folder, this program is included together with the configuration file sr.txt in use on my setup. So Joe, again thanks for your EbNaut activity, hoping to get soon an Rx operator from the other side of the pond. 73, Domenico iz7slz On 3 December 2016 at 00:57, wrote: > Hi Markus, group. > > Just confrimed that it is indeed 4K19A being transmitted. > Sorry for the careless proofreading of my emails! > > Thank-you very much for the pilot tone suggestion. That > simplifies things greatly and with any luck there will be > an EbNaut RX here soon. > > Cheers > Joe > > > On Fri, 2 Dec 2016, Markus Vester wrote: > > Hi Joe, >> >> a fax of Tangles' forehead >>> >> >> Yes those lines on the narrow spectrogram were indeed reminiscent of >> cat's whiskers ;-) >> >> use the stable DOXCO to divide out or synthesise an LO signal and mix it >>> in an SBL-3 as Stefan has done >>> >> >> But that would imply building a complete LF receiver from scratch, >> including an image reject filter and some gain stages. A possibly quicke= r >> alternative might be to use your existing receiver and only inject an we= ak >> pilot tone from your DDS (eg. 137500 Hz) to the antenna, and then engage >> SpecLab's frequency offset detector to eliminate any receiver drift. Tha= t >> way soundcard samplerate drift won't be corrected, but that will have >> little effect as long as the difference between the pilot and the desire= d >> signal frequencies is less than a couple of 100 Hz. I have successfully >> employed that method on MF to compensate the significant drift of my >> freerunning FiFi-SDR, and was able to decode a number of EbNaut >> transmissions (including yours) around 477.7 kHz. >> >> Best 73, >> Markus (DF6NM) >> >> >> -----Urspr=C3=BCngliche Mitteilung----- >> Von: jcraig >> An: rsgb_lf_group >> Verschickt: Fr, 2 Dez 2016 7:15 pm >> Betreff: Re: LF: EbNaut 137.477 kHz 1 Dec >> >> >> Hi Markus and Stefan, >> >> Thank-you for for your efforts in receiving and decoding the message. Th= is >> is encouraging -- it's good to know everyhing still works after the >> hardware clean-up in the shack. I'll take care of forwarding the message >> to Poldhu. >> >> The slope and bends in the high res bpsk specrogram were intentional. >> The element period T increased as a function of time and the bends are >> actually curves due to the 1/T relation of the sideband deviation >> from the carrier frequency I think. >> >> It was a (poor) attempt to send a fax of Tangles' forehead (see >> attached). She has been reminding me that she is interested in >> getting a message from Gizmo and so I've been giving some thought >> about reception. An idea is to use the stable DOXCO to divide out or >> synthesise an LO signal and mix it in an SBL-3 as Stefan has done, >> then to feed the product and a reference into the Spectrum Lab. >> >> 73 & TNX AGN >> Joe VO1NA > > --001a114ccb68a7f2ea0542c0318e Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
Hello Joe & all,

With= pleasure, i was able to decode VO1NA EbNaut message last night three times= :

UTC=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0 Eb/N0 [dB] =C2=A0=C2= =A0 Eb/N0 carrier [dB]
22.30=C2=A0=C2=A0=C2=A0=C2=A0 3.5=C2= =A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0= =C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0 3.9
23.00=C2=A0=C2=A0=C2=A0=C2=A0 1= .0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0= =C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0 1.7
02.00=C2=A0=C2=A0=C2=A0= =C2=A0 0.7=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2= =A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0 1.0

= time and frequency offsets used are pratically the nominals values.
My locator is JN80nu so QRB is 5426 km: not bad for a message of 63 char= acters on LF sent in less than 30 minutes !

Antenna= used here: inv-L 8 meters (my TX ant used untuned), receiver JRC NRD-92M.<= br>
In the qsl.net folder:
=
http://qsl.net/iz7slz/VO1NA=

i have uploaded the .wave files related to the above listed decodes= . So whom is interested,=C2=A0 can try and test EbNaut-rx program. There ar= e also some txt files. These are the FFT raw data coming from the Spectrum = Lab OPDS session recordered last night. These files can be converted in &q= uot;EbNaut-ready" audio files by using DF6NM's program ebnaut_ifft= 3.exe. In the folder,=C2=A0 this program is included together with the conf= iguration file sr.txt in use on my setup.


So Joe, aga= in thanks for your EbNaut activity, hoping to get soon an Rx operator from = the other side of the pond.

73, Domenico iz7slz
=


On 3 December 2016 at 00:57, <jcraig@mun.ca> wrote:
Hi Markus, group.

Just confrimed that it is indeed 4K19A being transmitted.
Sorry for the careless proofreading of my emails!

Thank-you very much for the pilot tone suggestion.=C2=A0 That
simplifies things greatly and with any luck there will be
an EbNaut RX here soon.

Cheers
Joe


On Fri, 2 Dec 2016, Markus Vester wrote:

Hi Joe,

a fax of Tangles' forehead

Yes those lines on the narrow spectrogram were indeed reminiscent of cat= 9;s whiskers ;-)

use the stable DOXCO to divide out or synthesise an LO signal and mix it in= an SBL-3 as Stefan has done

But that would imply building a complete LF receiver from scratch, includin= g an image reject filter and some gain stages. A possibly quicker alternati= ve might be to use your existing receiver and only inject an weak pilot ton= e from your DDS (eg. 137500 Hz) to the antenna, and then engage SpecLab'= ;s frequency offset detector to eliminate any receiver drift. That way soun= dcard samplerate drift won't be corrected, but that will have little ef= fect as long as the difference between the pilot and the desired signal fre= quencies is less than a couple of 100 Hz. I have successfully employed that= method on MF to compensate the significant drift of my freerunning FiFi-SD= R, and was able to decode a number of EbNaut transmissions (including yours= ) around 477.7 kHz.

Best 73,
Markus (DF6NM)


-----Urspr=C3=BCngliche Mitteilung-----
Von: jcraig <jcraig@m= un.ca>
An: rsgb_lf_group <rsgb_lf_group@blacksheep.org>
Verschickt: Fr, 2 Dez 2016 7:15 pm
Betreff: Re: LF: EbNaut 137.477 kHz 1 Dec


Hi Markus and Stefan,

Thank-you for for your efforts in receiving and decoding the message. This<= br> is encouraging -- it's good to know everyhing still works after the
hardware clean-up in the shack. I'll take care of forwarding the messag= e
to Poldhu.

The slope and bends in the high res bpsk specrogram were intentional.
The element period T increased as a function of time and the bends are
actually curves due to the 1/T relation of the sideband deviation
from the carrier frequency I think.

It was a (poor) attempt to send a fax of Tangles' forehead (see
attached). She has been reminding me that she is interested in
getting a message from Gizmo and so I've been giving some thought
about reception. An idea is to use the stable DOXCO to divide out or
synthesise an LO signal and mix it in an SBL-3 as Stefan has done,
then to feed the product and a reference into the Spectrum Lab.

73 & TNX AGN
Joe VO1NA

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