Return-Path: Received: from post.thorcom.com (post.thorcom.com [195.171.43.25]) by klubnl.pl (8.14.4/8.14.4/Debian-8+deb8u2) with ESMTP id v9FKhKln014394 for ; Sun, 15 Oct 2017 22:43:23 +0200 Received: from majordom by post.thorcom.com with local (Exim 4.14) id 1e3pZ6-0002Zt-La for rs_out_1@blacksheep.org; Sun, 15 Oct 2017 21:31:16 +0100 Received: from [195.171.43.32] (helo=relay1.thorcom.net) by post.thorcom.com with esmtp (Exim 4.14) id 1e3pZ5-0002Zk-OV for rsgb_lf_group@blacksheep.org; Sun, 15 Oct 2017 21:31:15 +0100 Received: from omr-a010e.mx.aol.com ([204.29.186.54]) by relay1.thorcom.net with esmtps (TLSv1:DHE-RSA-AES256-SHA:256) (Exim 4.89) (envelope-from ) id 1e3pZ1-0001nR-R5 for rsgb_lf_group@blacksheep.org; Sun, 15 Oct 2017 21:31:14 +0100 Received: from mtaomg-aag02.mx.aol.com (mtaomg-aag02.mx.aol.com [172.26.126.80]) by omr-a010e.mx.aol.com (Outbound Mail Relay) with ESMTP id 9D737380004F for ; Sun, 15 Oct 2017 16:31:09 -0400 (EDT) Received: from core-acd01b.mail.aol.com (core-acd01.mail.aol.com [172.27.22.11]) by mtaomg-aag02.mx.aol.com (OMAG/Core Interface) with ESMTP id 0F03C38000081 for ; Sun, 15 Oct 2017 16:31:08 -0400 (EDT) Received: from 188.192.44.165 by webjas-vaa133.srv.aolmail.net (10.96.33.136) with HTTP (WebMailUI); Sun, 15 Oct 2017 16:31:06 -0400 Date: Sun, 15 Oct 2017 16:31:07 -0400 From: Markus Vester To: rsgb_lf_group@blacksheep.org Message-Id: <15f21bba67d-c15-4e89b@webjas-vaa133.srv.aolmail.net> In-Reply-To: <59DE3B9F.70705@posteo.de> MIME-Version: 1.0 X-MB-Message-Source: WebUI X-MB-Message-Type: User X-Mailer: JAS STD X-Originating-IP: [188.192.44.165] x-aol-global-disposition: G X-AOL-VSS-INFO: 5800.7501/122079 X-AOL-VSS-CODE: clean DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=mx.aol.com; s=20150623; t=1508099469; bh=i5XigmjND3H6bC7jT0pDUOqZsgQnuX7mvNk7L++XhEs=; h=From:To:Subject:Message-Id:Date:MIME-Version:Content-Type; b=4tf4cpv9aXYA3C8f/luw++ty5dT0Se6jeGkCD2EJjYPm/0BeCmrGwCd3YgcATe7iM r31eTOsUpPih1VWZrQNfoqdnOd3OAM7an4luR/esB/QVr3he9ynz8lmCsO5dzyl4fh h43W5c1sLZyTigS23glgjj3f8hQTCByVe1TgXoTc= x-aol-sid: 3039ac1a7e5059e3c58c3c41 X-Spam-Score: 0.0 (/) X-Spam-Report: Spam detection software, running on the system "relay1.thorcom.net", has NOT identified this incoming email as spam. The original message has been attached to this so you can view it or label similar future email. If you have any questions, see the administrator of that system for details. Content preview: Stefan's single character transmission was received well by DL0AO and DF9RB - guess it's ok for everyone to share the decode result now. Note that the export-data from our 31.4 uHz FFTs are slightly shorter than the sequence, producing a little SNR loss. Here are the carrier-based Eb/N0 results: [...] Content analysis details: (0.0 points, 5.0 required) pts rule name description ---- ---------------------- -------------------------------------------------- 0.0 FREEMAIL_FROM Sender email is commonly abused enduser mail provider (markusvester[at]aol.com) -0.0 RP_MATCHES_RCVD Envelope sender domain matches handover relay domain 0.0 HTML_MESSAGE BODY: HTML included in message 0.0 T_DKIM_INVALID DKIM-Signature header exists but is not valid X-Scan-Signature: 045692ed76b7f7d8ad07ac3322683f29 Subject: Re: VLF: Trying the impossible, once more - received by DL0AO and DF9RB Content-Type: multipart/mixed; boundary="----=_Part_394129_50496569.1508099466877" X-Spam-Checker-Version: SpamAssassin 2.63 (2004-01-11) on post.thorcom.com X-Spam-Level: X-Spam-Status: No, hits=0.0 required=5.0 tests=HTML_MESSAGE autolearn=no version=2.63 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 ------=_Part_394129_50496569.1508099466877 Content-Type: multipart/alternative; boundary="----=_Part_394128_305406838.1508099466877" ------=_Part_394128_305406838.1508099466877 Content-Type: text/plain; charset=utf-8 Content-Transfer-Encoding: quoted-printable Stefan's single character transmission was received well by DL0AO and DF9RB= - guess it's ok for everyone to share the decode result now. Note that the= export-data from our 31.4 uHz FFTs are slightly shorter than the sequence,= producing a little SNR loss. Here are the carrier-based Eb/N0 results:=20 DL0AO E-W-earthloop in Amberg: date dB 12th 9.4 13th 12.1 14th 12.8 sum 16.0 (three days stacked with equal weighting) sum 16.3 (12th down-weighted by -4.2 dB) DF9RB urban E-probe in Vilseck: date dB 12th 3.0 13th 2.3 14th (no data) sum 4.0 (two days with equal weighting) The big downer for myself was that nothing at all was received here in Nure= mberg. Even after stacking three days (26.7 hours total, equivalent to 10.5= uHz) and undoing the now-known PSK sequence, not the slightest peak appear= ed in the noise, implying a combined Eb/N0 of less than -7.5 dB. This means= that at 6.47 kHz, my E-field antenna with local railway QRM is at least 24= dB worse than the DL0AO earth loop. Pretty hopeless it seems... Next I will try to look at the nighttime 16 char transmissions in DL0AO dat= a. Best 73, Markus (DF6NM) -----Urspr=C3=BCngliche Mitteilung-----=20 Von: DK7FC An: rsgb_lf_group ; Verschickt: Mi, 11. Okt 2017 17:43 Betreff: VLF: Trying the impossible, once more Hi VLF,=20 The recent 1 character message on 6470 Hz was received at RN3AUS in nearly= 2000 km distance, a land path, with very good Eb/N0. 4 characters would ha= ve been possible. That was a night time transmission. Now since a few days there is a SpecLab instance 'listening' on 6470.1 Hz = at RC4HAA in 2877 km distance (LO53CF) from here, configured for EbNaut rec= eption. The daily 16 character night time transmission is still going on, now 6 da= ys are completed. After 4 days, there was no result at RN3AUS and obviously= not at SQ5BPF. So there is some free time for a next experiment during daytime. Stacking = EbNaut messages works very well with the tool by DF6NM. So one could try to= get a result over many daytime transmissions. I have the idea to run a few more single-character transmissions. This is = also a good chance for newcomers to get a first decode in EbNaut on VLF. With some luck, RN3AUS may decode them over the day time path, as well as = SQ5BPF. And with even more luck, a decode at RC4HAA? Trying the impossible:=20 f =3D 6470.100000 Hz Start time: 12.October.2017 06:00:00 UTC Symbol period: 180 s Characters: 1 CRC bits: 0 Coding 8K19A Duration: 9h36min Antenna current: 300 mA 73, Stefan ------=_Part_394128_305406838.1508099466877 Content-Type: text/html; charset=utf-8 Content-Transfer-Encoding: quoted-printable
Stefan's single character transmission was received well= by DL0AO and DF9RB - guess it's ok for everyone to share the decode result= now. Note that the export-data from our 31.4 uHz FFTs are slightly shorter= than the sequence, producing a little SNR loss. Here are the carrier-based= Eb/N0 results:

DL0AO E-W-earthloop in Amberg:
&nb= sp;date       dB
 12th  &nb= sp;    9.4
 13th      12.1<= br> 14th      12.8
 sum  &n= bsp;   16.0 (three days stacked with equal weighting)
 su= m      16.3 (12th down-weighted by -4.2 dB)
<= div style=3D"color: black; font-family: arial,helvetica,sans-serif; font-si= ze: 10pt;">
DF9RB urban E-probe in Vilseck:
 date  &nb= sp;    dB
 12th       = 3.0
 13th       2.3
 14th&nbs= p;    (no data)
 sum      4= .0  (two days with equal weighting)

The big downe= r for myself was that nothing at all was received here in Nuremberg. Even a= fter stacking three days (26.7 hours total, equivalent to 10.5 uHz) and und= oing the now-known PSK sequence, not the slightest peak appeared in the noi= se, implying a combined Eb/N0 of less than -7.5 dB. This means that at 6.47= kHz, my E-field antenna with local railway QRM is at least 24 dB= worse than the DL0AO earth loop. Pretty hopeless it seems...

Next I will try to look at the nighttime 16 char transmissions in D= L0AO data.

Best 73,
Markus (DF6NM)


-----= Urspr=C3=BCngliche Mitteilung-----
Von: DK7FC <selberdenken@posteo.d= e>
An: rsgb_lf_group <rsgb_lf_group@blacksheep.org>;<rd4hu@m= ail.ru>
Verschickt: Mi, 11. Okt 2017 17:43
Betreff: VLF: Trying th= e impossible, once more

Hi VLF,

The recent 1 character message on 6470 Hz was received at RN3AUS in nearly 2000 km distance, a land path, with very good Eb/N0. 4 characters would have been possible. That was a night time transmission. Now since a few days there is a SpecLab instance 'listening' on 6470.1 Hz at RC4HAA in 2877 km distance (LO53CF) from here, configured for EbNaut reception.
The daily 16 character night time transmission is still going on, now 6 days are completed. After 4 days, there was no result at RN3AUS and obviously not at SQ5BPF.

So there is some free time for a next experiment during daytime. Stacking EbNaut messages works very well with the tool by DF6NM. So one could try to get a result over many daytime transmissions.
I have the idea to run a few more single-character transmissions. This is also a good chance for newcomers to get a first decode in EbNaut on VLF.
With some luck, RN3AUS may decode them over the day time path, as well as SQ5BPF. And with even more luck, a decode at RC4HAA?
Trying the impossible:

f =3D 6470.100000 Hz
Start time: 12.October.2017  06:00:00 UTC
Symbol period: 180 s
Characters: 1
CRC bits: 0
Coding 8K19A
Duration: 9h36min
Antenna current: 300 mA


73, Stefan

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