Return-Path: Received: (qmail 4438 invoked from network); 13 Apr 2002 08:22:54 -0000 Received: from unknown (HELO murphys-inbound.services.quay.plus.net) (212.159.14.225) by excalibur.plus.net with SMTP; 13 Apr 2002 08:22:54 -0000 X-Priority: 3 X-MSMail-Priority: Normal Received: (qmail 28060 invoked from network); 13 Apr 2002 08:22:50 -0000 X-MimeOLE: Produced By Microsoft MimeOLE V6.00.2800.1106 Received: from unknown (HELO post.thorcom.com) (212.172.148.70) by murphys.services.quay.plus.net with SMTP; 13 Apr 2002 08:22:50 -0000 Received: from majordom by post.thorcom.com with local (Exim 3.33 #2) id 16wK7i-0003Lm-00 for rsgb_lf_group-outgoing@blacksheep.org; Sat, 13 Apr 2002 10:47:10 +0100 Received: from imo-m10.mx.aol.com ([64.12.136.165]) by post.thorcom.com with esmtp (Exim 3.33 #2) id 16wK7Z-0003Lh-00 for rsgb_lf_group@blacksheep.org; Sat, 13 Apr 2002 10:47:01 +0100 Received: from DL4YHF@aol.com by imo-m10.mx.aol.com (mail_out_v32.5.) id l.c6.9e10a30 (4242) for ; Sat, 13 Apr 2002 04:08:22 -0400 (EDT) From: DL4YHF@aol.com Message-ID: Date: Sat, 13 Apr 2002 04:08:22 EDT Subject: Re: LF: Phase meter for propagation experiment To: rsgb_lf_group@blacksheep.org MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="------------090104010307000809070306" X-Mailer: AOL 6.0 for Windows XP DE sub 50 Precedence: bulk Reply-To: rsgb_lf_group@blacksheep.org X-Listname: rsgb_lf_group Sender: This is a multi-part message in MIME format. --------------090104010307000809070306 Content-Type: text/html; charset=windows-1252 Content-Transfer-Encoding: 8bit Hello group,

I made two phase plots of 1.5 hours length yesterday, the first with MSF (60kHz), the second with DCF77 (77.5kHz).
To calibrate sample rate and the receiver's LO, the 15625 Hz TV sync ("ZDF") and its harmonics at 62.5 kHz (for the MSF plot) and 78125 (for the DCF plot) were used.

The graphs are attached.
"Ampl1" (red) is the amplitude of the TV sync,
"Phase1" (green) its phase which shows that the software is not perfect,
"Ampl2" (blue) is the amplitude of the MSF- or DCF carrier,
"Phase2" (purple) shows the variation of the MSF- or DCF phase. The absolute value is meaningless, it depends on when the measurement started.

It appears that the long-term phase stability of the ZDF TV sync against MSF and DCF is very good. The phase graph shows some "ups and downs", the maximum phase deviation is 50° over the 1.5 hour observation period.
I expected a significantly lower phase variation in the DCF graph. The reason is still unknown, maybe the 'calibration' algorithm needs more tweaking.

Regards,
 Wolf

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