Return-Path: Received: (qmail 15814 invoked from network); 2 Jan 2002 19:46:11 -0000 Received: from unknown (HELO warrior.services.quay.plus.net) (212.159.14.227) by excalibur-qfe1-smtp-plusnet.harl.plus.net with SMTP; 2 Jan 2002 19:46:11 -0000 X-Priority: 3 X-MSMail-Priority: Normal Received: (qmail 19905 invoked from network); 2 Jan 2002 19:46:08 -0000 X-MimeOLE: Produced By Microsoft MimeOLE V6.00.2800.1106 Received: from unknown (HELO post.thorcom.com) (212.172.148.70) by warrior.services.quay.plus.net with SMTP; 2 Jan 2002 19:46:08 -0000 Received: from majordom by post.thorcom.com with local (Exim 3.33 #2) id 16LrHj-0007Bi-00 for rsgb_lf_group-outgoing@blacksheep.org; Wed, 02 Jan 2002 19:42:47 +0000 Received: from hestia.herts.ac.uk ([147.197.200.9]) by post.thorcom.com with esmtp (Exim 3.33 #2) id 16LrHf-0007Bd-00 for rsgb_lf_group@blacksheep.org; Wed, 02 Jan 2002 19:42:43 +0000 Received: from gemini ([147.197.200.44] helo=gemini.herts.ac.uk) by hestia.herts.ac.uk with esmtp (Exim 3.22 #1) id 16LrGv-0001G5-00 for rsgb_lf_group@blacksheep.org; Wed, 02 Jan 2002 19:41:57 +0000 Received: from [147.197.232.252] (helo=rsch-15.herts.ac.uk) by gemini.herts.ac.uk with esmtp (Exim 3.33 #1) id 16LrGu-0003ku-00 for rsgb_lf_group@blacksheep.org; Wed, 02 Jan 2002 19:41:56 +0000 Message-ID: <5.1.0.14.0.20020102150917.00a4aa88@gemini.herts.ac.uk> X-Sender: mj9ar@gemini.herts.ac.uk X-Mailer: QUALCOMM Windows Eudora Version 5.1 Date: Wed, 02 Jan 2002 19:41:38 +0000 To: rsgb_lf_group@blacksheep.org From: "James Moritz" Subject: LF: Xmas tests MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="------------090308020401010209010109" Precedence: bulk Reply-To: rsgb_lf_group@blacksheep.org X-Listname: rsgb_lf_group Sender: This is a multi-part message in MIME format. --------------090308020401010209010109 Content-Type: text/plain; charset=windows-1252; format=flowed Content-Transfer-Encoding: 8bit Dear LF Group, Have returned to work this morning after the Christmas break, and have now waded through most of the 400 or so e-mails that had accumulated. I'm sure I have accidentally deleted a few, so if you don't get the response you expected, please e-mail me again. Thanks for the reports on the 7FSK "measles" mode - well, you have to admit it livened things up a bit. For the record, I transmitted the following signals: 25/12, 2230-0712, 135.923k, 30s dots, 0.2Hz tone spacing, 1W ERP 27/12, 0000-0640, 135.923k, 30s dots, 0.2Hz tone spacing, 1W ERP 27/12, 2230-0656, 135.923k, 60s dots, 0.1Hz tone spacing, 0.4W ERP 29/12, 0000-0715, 135.924k, 30s dots, 0.2Hz tone spacing, 1W ERP 29/12, 2245-0715, 135.925k, 30s dots, 0.2Hz tone spacing, 1W ERP 30/12, 2110-0730, 135.923k, 30s dots, 0.2Hz tone spacing, 1W ERP The message read CQ_M0BMU_M0BMU repeated 4 times an hour (or twice when sending 60s dots), together with 2 x 6wpm CW ID's per hour Not being in touch by E-mail over the period meant that I just selected frequencies which were not in use before I started; sorry if it was a frequency you were planning to use. It was nice to see lots of activity on the transatlantic front. The attached jpeg from last night shows, from the top, G4FTC (60s QRSS), DJ2LF(60s QRSS), G3YXM(60s QRSS), DF6NM(300s DFCW), IK5ZPV(30s QRSS) and G3AQC(60s DFCW) - I also copied OM2TW and G3KEV at various times. The 7FSK generator here is based on a 13MHz TCXO module I found in the junk box. It has a pin to connect to an external frequency trimming pot. Applying a variable voltage to this pin gives a reasonably linear frequency shift up to about +/- 20ppm. Providing the temperature does not change rapidly, stability of a few parts in 10^8 is obtained. The tuning voltage is supplied by a simple D/A converter consisting of a string of resistors and an analogue switch IC, followed by an adjustable gain amplifier to set the frequency shift. I settled on 0.2Hz spacing for 30s dots, and 0.1Hz for 60s because when viewed on a spectrogram, these spacings gave an easily identified separation between the tones, allowing for some drift in TX and RX. The 3 bit digital input at the moment comes from a suitably programmed EPROM, clocked through it's addresses with a long cascade of digital dividers. To get to 136kHz, the output is divided down to 1MHz and fed into the external reference input of my Racal 9084 synthesiser. Some gates allow the 7FSK output to be overdriven by a CW identification signal obtained via ON7YD's QRS software. I'm hoping someone will write a 7FSK program soon, so I don't have to blow a new EPROM every time I want to send a different message! It seems several people are missing the point of 7FSK - the idea at this stage of development is not to improve the signal to noise ratio of the received signal, but simply to increase the speed of signalling that can be achieved with given signal strengths, as Rik has pointed out. From this point of view, it seems to work quite well, with the 7FSK covering the same distances under the same conditions, yet being a lot quicker. Trying to have even a minimalist QSO with 30 or 60s QRSS takes hours, and is rendered very difficult by fading. The majority of stations that have so far been detected across the Atlantic have had to resort to these long dot lengths in order to be detected at all, so anything that can speed things up has to be taken seriously. For beacon signals, the speed of signalling is not very important, since it is only necessary to transmit enough information to identify the beacon, rather than to have any actual exchange of information. So for beacons, QRSS is quite satisfactory, while for QSOs it isn't. I think those who say that 7FSK is an inefficient use of bandwidth have not really thought it through. Compared to QRSS, or aural CW for that matter, 7FSK uses 7 tone frequencies, whilst CW uses only 1. Therefore it needs 7 times the bandwidth when using the same dot length. For random alpha-numeric characters, I reckon morse code averages about 11 dot lengths per character, whilst 7FSK uses 2 dot lengths for all characters - so for the same dot length, 7FSK is 5.5 times quicker on average. So the relative efficiencies of this mode in spectrum usage, measured in characters/second/Hz or however you want to express it is about 5.5/7, or about 0.8 times that of CW - not very different, really. If you wanted to send the same messages using CW and 7FSK in the same length of time, you would have to use CW dots 5.5 times shorter than the 7FSK dots, so the bandwidth would be 5.5/7 = 0.8 times that of the 7FSK signal. So from the viewpoint of spectrum usage, it is swings and roundabouts - QRSS does use less bandwidth than 7FSK, but only when it is sending information more slowly. I am slightly amazed that 1.4Hz is considered by some as an excessive use of bandwidth. Over 1000 stations could operate on 136k simultaneously in this mode with the same parameters I have been using, even allowing for a generous guard band between them - many times more than could use, say, SSB on 80m. Bear in mind that most people are happily using normal hand CW on 136kHz - if you look at this on a spectrogram, you will see it takes up 50Hz or more, but I have never heard the band anywhere close to being full up - most of last year people complained about there being too few signals around. Most of the problem with frequencies seems to be due to the 3 1/2 Hz bandwidth that Argo has when used in 60s dot mode, which is a bit restrictive. I have been using Spectrum Lab, which allows you to set any bandwidth you like within the limits of the FFT. I usually use 10 - 20Hz - with the window expanded to fill the screen, this gives plenty of resolution. It also allows you to pan the frequency or alter any of the other parameters "on the fly", immediately showing the effect on the previous few minutes' signals, a very useful feature when a number of different modes are in use. I was actually transmitting 30s dots most of the time, so the displays people were getting were in many cases not optimum - with Argo in 60s mode the signal looks very wide, and causes the dots to overlap (I was not transmitting 2 frequencies at a time as someone suggested!), which makes the signal harder to copy and gives them the "measles" appearance. All the same, the improvement in speed over the neighboring QRSS sigs is obvious. At the moment, I'm trying to catch up on a bit of sleep, but if anyone would like to try experiments with this or other modes, please let me know. Happy new Year to all, Cheers, Jim Moritz, 73 de M0BMU --------------090308020401010209010109 Content-Type: image/jpeg; name="taslot2.jpg" Content-Transfer-Encoding: base64 Content-Disposition: inline; filename="taslot2.jpg" /9j/4AAQSkZJRgABAQAAAQABAAD/2wBDAAgGBgcGBQgHBwcJCQgKDBQNDAsLDBkSEw8UHRof Hh0aHBwgJC4nICIsIxwcKDcpLDAxNDQ0Hyc5PTgyPC4zNDL/2wBDAQkJCQwLDBgNDRgyIRwh MjIyMjIyMjIyMjIyMjIyMjIyMjIyMjIyMjIyMjIyMjIyMjIyMjIyMjIyMjIyMjIyMjL/wAAR CAD4ARQDASIAAhEBAxEB/8QAHAAAAgEFAQAAAAAAAAAAAAAABgcFAAIDBAgB/8QAUxAAAQIE BAMEBgMMBgcHBQAAAQIDAAQFEQYHEiETMUEiUWGBFDJxkaHBI7HRCBUWFyQzQlJigpLhQ3Ki stLwJTQ1RFOTwiYnVGNzo9M2ZIOz8f/EABoBAAMBAQEBAAAAAAAAAAAAAAMEBQIBAAb/xAA9 EQACAQMCAwQIAgoBBQEAAAABAgMABBESITFBUQUTYXEUIjKBkaGxwSPRFSQzNEJSYnLC8JIG gqLh8bL/2gAMAwEAAhEDEQA/AEXKA+lNW3UFpIHebw3Ma5Zz8xUmpmRlpp9Cmk34EkpQPaI5 jwsY1Th+ituMvMTDK3Gdw2JQp4h2sCSbQ2nc06Dh9DUjWHvRppLSboCFr6d6UkRh7lVlRYyd skjHGqlxbyWICyDUredKnD2D5rDVNrE5PyD/AGEpQ2JiVLerVYXBPcT0hVTF3J52+5U4SfaT 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