Return-Path: X-Spam-Checker-Version: SpamAssassin 3.4.0 (2014-02-07) on lipkowski.org X-Spam-Level: X-Spam-Status: No, score=-1.8 required=5.0 tests=FREEMAIL_FORGED_FROMDOMAIN, FREEMAIL_FROM,HEADER_FROM_DIFFERENT_DOMAINS,HTML_MESSAGE,RCVD_IN_DNSWL_MED, RCVD_IN_SORBS_SPAM,SPF_PASS,T_DKIM_INVALID autolearn=ham autolearn_force=no version=3.4.0 X-Spam-DCC: EATSERVER: mailn 1166; 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 uBCBU75o008930 for ; Mon, 12 Dec 2016 12:30:09 +0100 Received: from majordom by post.thorcom.com with local (Exim 4.14) id 1cGOk9-0006VL-HT for rs_out_1@blacksheep.org; Mon, 12 Dec 2016 11:26:05 +0000 Received: from [195.171.43.34] (helo=relay2.thorcom.net) by post.thorcom.com with esmtp (Exim 4.14) id 1cGOk8-0006VC-PO for rsgb_lf_group@blacksheep.org; Mon, 12 Dec 2016 11:26:04 +0000 Received: from omr-m014e.mx.aol.com ([204.29.186.13]) by relay2.thorcom.net with esmtps (TLSv1:DHE-RSA-AES256-SHA:256) (Exim 4.87) (envelope-from ) id 1cGOk3-0001ma-B6 for rsgb_lf_group@blacksheep.org; Mon, 12 Dec 2016 11:26:03 +0000 Received: from mtaomg-mbe01.mx.aol.com (mtaomg-mbe01.mx.aol.com [172.26.254.175]) by omr-m014e.mx.aol.com (Outbound Mail Relay) with ESMTP id DE02938000B4 for ; Mon, 12 Dec 2016 06:25:55 -0500 (EST) Received: from core-acx13g.mail.aol.com (core-acx13.mail.aol.com [10.76.18.2]) by mtaomg-mbe01.mx.aol.com (OMAG/Core Interface) with ESMTP id 3370338000087 for ; Mon, 12 Dec 2016 06:25:54 -0500 (EST) Received: from 80.146.228.75 by webprd-m41.mail.aol.com (10.74.51.131) with HTTP (WebMailUI); Mon, 12 Dec 2016 06:25:53 -0500 Date: Mon, 12 Dec 2016 06:25:53 -0500 From: Markus Vester To: rsgb_lf_group@blacksheep.org Message-Id: <158f2c8291d-6251-9748@webprd-m41.mail.aol.com> In-Reply-To: <158eff9f041-a9e-954a@webprd-a18.mail.aol.com> MIME-Version: 1.0 X-MB-Message-Source: WebUI X-MB-Message-Type: User X-Mailer: JAS STD X-Originating-IP: [80.146.228.75] x-aol-global-disposition: G X-AOL-VSS-INFO: 5800.7501/113366 X-AOL-VSS-CODE: clean DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=mx.aol.com; s=20150623; t=1481541955; bh=NezMxaeRaJ9mB/342RvpVsE4SI4Dp2UKQlATYe30rFI=; h=From:To:Subject:Message-Id:Date:MIME-Version:Content-Type; b=29UQzfqXY6qcdkYyf1QzWBoQ3yc3KFfnjUgmnJ1I1Axt7dT8AEmSpBh5O3jal389U aoCjKnRB6s8g+Uv92SgmclPmiorxtKVHsT6igHFhmFH8M2bg7Wzz/aaiDIElFoiQoy ZnxHkjU63T55xZE0Rq0nmkGT8ibFXYUSiSclPGjc= x-aol-sid: 3039ac1afeaf584e89426b3e X-Scan-Signature: 2ca5c5914fcf2100b01e785ba944b966 Subject: Re: LF: VO1NA received my EbNaut Content-Type: multipart/mixed; boundary="----=_Part_48538_67645470.1481541953819" 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: 9778 ------=_Part_48538_67645470.1481541953819 Content-Type: multipart/alternative; boundary="----=_Part_48537_1869708803.1481541953819" ------=_Part_48537_1869708803.1481541953819 Content-Type: text/plain; charset=utf-8 Content-Transfer-Encoding: quoted-printable Hi Joe, LF, after obtaining that first decode, I was able to improve the result signifi= cantly by tweaking time and frequency offsets. However during this optimiza= tion, the little blue peak in the spectrum-of-squares which had initially g= uided me disappeared completely. So this peak must have been just a lucky c= oincidence. Starting from these parameters, I could then get decodes from t= he 4 and 5 UT transmissions as well: =20 file df dt EbN0 hhmm Hz s sym carr 0408 -9.8832 556.1 2.6 -0.6 0508 -9.8832 556.0 -0.7 -3.5 =20 0608 -9.8831 555.9 5.4 0.5 So we know now that the PC clock was around 3.4 s late at the time, and you= r DDS pilot is 0.8 mHz below 137.5 kHz (albeit this assumes 12000.0 Hz samp= lerate which may not be correct). Let me suggest the next steps on the receiver side: 1. Align the PC clock to UT within say 0.2 s. There are several options for= NTP: Here I am using a small utility called SNTP which G3PLX gave me some = years ago, which avoids clock jumps by gradually adjusting clock speed. Wol= f's rsNTP also worked fine for me, and is able to include a deliberate offs= et to compensate for long sound path latency. I haven't tried Dimension-4 s= oftware but it has been employed successfully by a number of LF amateurs. L= ast not least IZ7SLZ made his own clock-setting utility using serial NMEA f= rom a GPS. 2. Use the calibrated 12 kHz samplerate for decoding. This will minimize re= sidual symbol-timing errors, and allow us to accurately predict the frequen= cy offset for other transmit frequencies.=20 3. Let SpecLab's frequency offset detector track the pilot. This will make = the decoding process more comfortable, because we won't need to measure the= RX frequency offset individually for each run. All the best, and thanks again=20 73, Markus (DF6NM) -----Urspr=C3=BCngliche Mitteilung-----=20 Von: Markus Vester An: rsgb_lf_group Verschickt: So, 11 Dez 2016 11:21 pm Betreff: LF: VO1NA received my EbNaut Hi Joe, we made it! But only with a lot of luck. Using default frequency and samplerate parameters, I first looked for the D= DS pilot in your nine files and noted the frequency offsets: file pilot hhmm Hz 2208 .1157 (pilot turned on half-way) 2308 .1148 0008 .1147 0108 .1149 0208 .1156 0308 .1160 0408 .1162 0508 .1161 0608 .1161 Thus I concluded that your rx might have small enough drift over 22 minutes= . Then I took the file for my last transmission (12110608.txt) and calculat= ed nominal frequency and start time offsets: freq: +0.1161 - 10.000 =3D -9.9839 Hz, =20 time: 6:00:00.3 - 5:50:40.92 =3D 559.38 s. You said that your clock was about 5 seconds slow, so I started searching a= round 554.4 s offset. The signal is too weak to be seen directly, and I had= n't sent any plain carriers before or after which would have helped finding= at least the right frequency. After some playing around I focused on one o= f the nearby small blue peaks, and tweaked both offsets to center and maxim= ize it more, but no decode happened. Then I tried shifting the timing in 2 = second whole-symbol steps. Each time I waited for the decoder to work it's = way through all the phase combinations, loosing more and hope with only gib= berish decodes. Finally near the end of the third long run, suddenly my mes= sage "HELLO LF" stared back at me: Oh my god, we've really made it! =20 Congratulations, Joe!=20 Let's call it a day now, 73, Markus (DF6NM) Re: LF: EbNaut tests 137.490 kHz/OFFLINE =20 Von: Markus Vester =20 An: jcraig =20 Datum: So, 11 Dez 2016 8:53 pm=20 Hi Joe, thanks for the files! I have successfully downloaded them from your site, a= nd will now start looking for possible signals. Best 73, Markus (DF6NM) -----Urspr=C3=BCngliche Mitteilung-----=20 Von: jcraig An: Markus Vester Verschickt: So, 11 Dez 2016 6:50 pm Betreff: Re: LF: EbNaut tests 137.490 kHz/OFFLINE Hi Markus, The files are uploaded to http://www.ucs.mun.ca/~jcraig/ebnaut/ Lets hope my inexperience hasn't messed up this experiment completely! The screen dump appears to have been made 1317 utc this morning and the computer is set to utc but is slow by ~5s. These brief carriers are eigmatic -- I don't know what causes them. The pilot was generated using an ad9851 without the x6 multiplier and a 10 MHz clock. It seems the raspi python maths retains the full 32 bit precision for the frequency word. A 0.5 was added before the ratio was written to an integer from a float to minimise the rounding error. Please let me know if you need anything else. I'll review the hints you sent. Thank-you! 73 & Good Luck! Joe ... ------=_Part_48537_1869708803.1481541953819 Content-Type: text/html; charset=utf-8 Content-Transfer-Encoding: quoted-printable
Hi Joe, LF,

after obtaining that fi= rst decode, I was able to improve the result significantly by tweaking time= and frequency offsets. However during this optimization, the little blue p= eak in the spectrum-of-squares which had initially guided me disappeared co= mpletely. So this peak must have been just a lucky coincidence. Starting fr= om these parameters, I could then get decodes from the 4 and 5 UT transmiss= ions as well: 

file     = ;     df       dt   =     EbN0
hhmm    Hz    &nbs= p;  s      sym  carr

040= 8  -9.8832  556.1  2.6  -0.6
0508  -9.8832 = ; 556.0 -0.7  -3.5 
0608  -9.8831  555.9  5.4&= nbsp;  0.5

So we know now that the PC clock was a= round 3.4 s late at the time, and your DDS pilot is 0.8 mHz below 137.5 kHz= (albeit this assumes 12000.0 Hz samplerate which may not be correct).

Let me suggest the next steps on the receiver side:
<= div style=3D"color: black; font-family: arial,helvetica,sans-serif; font-si= ze: 10pt;">
1. Align the PC clock to UT within say 0.2 s. There are seve= ral options for NTP: Here I am using a small utility called SNTP which G3PL= X gave me some years ago, which avoids clock jumps by gradually adjusting c= lock speed. Wolf's rsNTP also worked fine for me, and is able to include a = deliberate offset to compensate for long sound path latency. I haven't trie= d Dimension-4 software but it has been employed successfully by a number of= LF amateurs. Last not least IZ7SLZ made his own clock-setting utility usin= g serial NMEA from a GPS.

2. Use the calibrated 12 kHz= samplerate for decoding. This will minimize residual symbol-timing errors,= and allow us to accurately predict the frequency offset for other transmit= frequencies.

3. Let SpecLab's frequency offset detec= tor track the pilot. This will make the decoding process more comfortable, = because we won't need to measure the RX frequency offset individually for e= ach run.

All the best, and thanks again

73, Markus (DF6NM)



-----Urspr=C3=BCngliche Mitteilun= g-----
Von: Markus Vester <markusvester@aol.com>
An: rsgb_lf_g= roup <rsgb_lf_group@blacksheep.org>
Verschickt: So, 11 Dez 2016 11= :21 pm
Betreff: LF: VO1NA received my EbNaut

Hi Joe,
we made it! But only with a lot of luck.

Usin= g default frequency and samplerate parameters, I first looked for the DDS p= ilot in your nine files and noted the frequency offsets:
<= br> file      pilot
hhmm    Hz
2208  .1157 (pilot turned on half-way)
2308  .= 1148
0008  .1147
0108  .1149
0208  .1156
0308&nb= sp; .1160
0408  .1162
0508  .1161
0608  .1161
=

Thus I concluded that your rx might have small enough drift= over 22 minutes. Then I took the file for my last transmission (12110608.t= xt) and calculated nominal frequency and start time offsets:

freq: += 0.1161 - 10.000 =3D -9.9839 Hz, 
time: 6:00:00.3 - 5:50:40.92 =3D = 559.38 s.

You said that your clock was about 5 seconds= slow, so I started searching around 554.4 s offset. The signal is too weak= to be seen directly, and I hadn't sent any plain carriers before or after = which would have helped finding at least the right frequency. After some pl= aying around I focused on one of the nearby small blue peaks, and tweaked b= oth offsets to center and maximize it more, but no decode happened. Then I = tried shifting the timing in 2 second whole-symbol steps. Each time I waite= d for the decoder to work it's way through all the phase combinations, loos= ing more and hope with only gibberish decodes. Finally near the end of the = third long run, suddenly my message "HELLO LF" stared back at me: Oh my god= , we've really made it!  

Congratulations, = Joe!

Let's call it a day now,
73, Markus (DF6NM)


Re: LF: EbNaut tests 137.490 kHz/OFFLINE 
= Von: Markus Vester <markusvester= @aol.com>
An: jcraig <jcraig= @mun.ca>
Datum: So, 11 Dez 2016 8:53 pm

Hi= Joe,

thanks for the files! I have successfully downlo= aded them from your site, and will now start looking for possible signals.<= /div>

Best 73,
Markus (DF6NM)



-----Urspr= =C3=BCngliche Mitteilung-----
Von: jcraig <jcraig@mun.ca>
An: Markus Vester <markusvester@aol.com>
Verschickt: So, 11 Dez = 2016 6:50 pm
Betreff: Re: LF: EbNaut tests 137.490 kHz/OFFLINE

Hi Markus,
The files are uploaded to http://www= .ucs.mun.ca/~jcraig/ebnaut/
Lets hope my inexperience hasn't messed = up this experiment completely!

The screen dump appears to have been = made 1317 utc this morning and
the computer is set to utc but is slow by= ~5s. These brief carriers
are eigmatic -- I don't know what causes th= em.

The pilot was generated using an ad9851 without the x6 multiplie= r
and a 10 MHz clock. It seems the raspi python maths retains
the fu= ll 32 bit precision for the frequency word. A 0.5 was
added before the r= atio was written to an integer from a float to
minimise the rounding err= or.

Please let me know if you need anything else. I'll review thehints you sent. Thank-you!

73 & Good Luck!

Joe
...<= br>

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