Return-Path: X-Spam-DCC: paranoid 1170; Body=2 Fuz1=2 Fuz2=1 X-Spam-Checker-Version: SpamAssassin 3.1.3 (2006-06-01) on lipkowski.org X-Spam-Level: X-Spam-Status: No, score=-0.9 required=5.0 tests=BAYES_00,DNS_FROM_AHBL_RHSBL, EXTRA_MPART_TYPE,HTML_50_60,HTML_MESSAGE,RCVD_ILLEGAL_IP autolearn=no version=3.1.3 Received: from post.thorcom.com (post.thorcom.com [195.171.43.25]) by paranoid.lipkowski.org (8.13.7/8.13.7) with ESMTP id t091L7lS020194 for ; Fri, 9 Jan 2015 02:21:07 +0100 Received: from majordom by post.thorcom.com with local (Exim 4.14) id 1Y9OA0-0000tt-4R for rs_out_1@blacksheep.org; Fri, 09 Jan 2015 01:14:44 +0000 Received: from [195.171.43.32] (helo=relay1.thorcom.net) by post.thorcom.com with esmtp (Exim 4.14) id 1Y9O9z-0000tk-IA for rsgb_lf_group@blacksheep.org; Fri, 09 Jan 2015 01:14:43 +0000 Received: from smtpout5.wanadoo.co.uk ([80.12.242.80] helo=smtpout.wanadoo.co.uk) by relay1.thorcom.net with esmtp (Exim 4.84) (envelope-from ) id 1Y9O9y-0002TI-7k for rsgb_lf_group@blacksheep.org; Fri, 09 Jan 2015 01:14:42 +0000 Received: from AGB ([2.31.67.1]) by mwinf5d61 with ME id ddEf1p00E01e2ES03dEgVs; Fri, 09 Jan 2015 02:14:41 +0100 X-ME-Helo: AGB X-ME-Date: Fri, 09 Jan 2015 02:14:41 +0100 X-ME-IP: 2.31.67.1 Message-ID: <9170CBE1F5A942A48E1BD765C7A9CAD0@AGB> From: "Graham" To: References: <46D2E1AF22D14849AD1095081F7613AB@AGB>, , <54AD702F.1009.1A52347@mike.dennison.ntlworld.com> <54AE61EB.7134.397DF4@mike.dennison.ntlworld.com> <000c01d02b55$440817e0$6401a8c0@JAYDELL> <8592571821BB4496B94ADC934CBC0555@AGB> <002801d02b85$7089ace0$6d01a8c0@DELL4> <001c01d02b96$6048b1d0$6401a8c0@JAYDELL> In-Reply-To: <001c01d02b96$6048b1d0$6401a8c0@JAYDELL> Date: Fri, 9 Jan 2015 01:14:39 -0000 MIME-Version: 1.0 X-Priority: 3 X-MSMail-Priority: Normal Importance: Normal X-Mailer: Microsoft Windows Live Mail 14.0.8117.416 X-MimeOLE: Produced By Microsoft MimeOLE V14.0.8117.416 Subject: Re: LF: New version OPERA >> ''Opera Dynamic'' << Content-Type: multipart/related; type="multipart/alternative"; boundary="----=_NextPart_000_01A3_01D02BA9.A431AA10" 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 2.56 on 10.1.3.10 Status: O X-Status: X-Keywords: X-UID: 1897 This is a multi-part message in MIME format. ------=_NextPart_000_01A3_01D02BA9.A431AA10 Content-Type: multipart/alternative; boundary="----=_NextPart_001_01A4_01D02BA9.A431AA10" ------=_NextPart_001_01A4_01D02BA9.A431AA10 Content-Type: text/plain; charset="iso-8859-1" Content-Transfer-Encoding: quoted-printable Jay , noted, >From past experience , the introduction of new technology via news = groups has been proved to be counter productive for all involved = , Take the introduction of the ROS-HF mode , combining direct = sequence and cdma , to give parallel access to a single channel = combined with low power requirements and qso ability akin to = packet in the connected state , with no loss of throughput , ie = 2G mobile phone technology=20 The usa , now suffering from lack of bandwidth and over crowded = data sections of the bands , still has no access to technology = that would solve the problem , those who did try to resolve the = problem , where branded un patriotic by other users inside the usa = , the latest JT modes are smaller b/w but still support only = pre-formatted text on a one to one qso basis . meanwhile , rest = of world makes good use of the technology , stats from the = psk-map show 665 uses in a 7 day period , even the 27MHz CB = users use it for long haul dx , bright green on the map. As the = 24 Hr shot shows , saturation usage inside EU especially on 14.103 = -yellow- Ive noted the posts and comments etc, may be true from an = observers point of view, but from a engineering design aspect the = comments are merely observations on engineering facts , simple as = that , development continues .. 73-G,=20 From: jrusgrove@comcast.net=20 Sent: Thursday, January 08, 2015 10:56 PM To: rsgb_lf_group@blacksheep.org=20 Subject: Re: LF: New version OPERA >> ''Opera Dynamic'' <<=20 Graham The shift last night on my transmission was 2 minutes - significantly = under the 4 or 5 minutes that has been stated as 'processing time'. With = no OPDS reception at DK7FC, DF6NM or anywhere else in EU, and with all = of the false detections appearing on the screen I would not put any = trust in those detections. From here, SV is an incredibly difficult = shot. IIRC my signal has never been received there and I have received = SV8CS only one time ... ever!=20 You can try and belittle DF6NM OPDS setup procedure but it's becoming = clear from the posts here, and in private e mails I've received from = users of both 'systems', that there's a serious problem with false = decodes in Jose's system. I agree with LA4ANA's comments about how = important it is to keep false detections to an absolute minimum. The = responsible thing to do would be to pull OP 1.5.5 from circulation and = encourage stations not to use it until a better functioning version is = available.=20 At this point I have little interest in transmitting OP so as not to = contribute to this problem. Jay W1VD WD2XNS WE2XGR/2 =20 ----- Original Message -----=20 From: Graham=20 To: rsgb_lf_group@blacksheep.org=20 Sent: Thursday, January 08, 2015 5:11 PM Subject: Re: LF: New version OPERA >> ''Opera Dynamic'' <<=20 There 1000 miles apart and exactly the same time , the 4 min = shift is not a timed function , this shows 5 tonight=20 19:10 136 G8HUH de SV8RV-14 Op32 Deep Search 1487 mi -42 dB in = Zakynthos(Zante) isl. GREECE 19:05 136 G8HUH de GW0EZY Op32 94 mi -8 dB F:21% in Welshpool IO82ho yes I have the opds system , even edited the file paths in = the config.sys or what ever , bit like old bike , needs a few = adjustments to get it going , all the decision making logic is = contained with in the package . So far tonight , everything looks ok =20 73-G, From: jrusgrove@comcast.net=20 Sent: Thursday, January 08, 2015 8:55 PM To: rsgb_lf_group@blacksheep.org=20 Subject: Re: LF: New version OPERA >> ''Opera Dynamic'' <<=20 Graham DF6NM's OPDS is much closer to perfection. I take it you've never used = OPDS ... so you're not aware of the differences in performance. =20 Those two spots look good at first glance but they didn't adhere to = the 4 minute time differential from standard mode reception. What is one = to use to judge the likelyhood of a real spot? Unlike DF6NMs OPDS = there's no correlation % and dB 'certainty' indicator, an accurate time = indicator or an accurate frequency readout that can be compared to other = grabbers for corroboration.=20 With so many bogus spots in Jose's deep search it's hard to trust any = of them. Jay W1VD WD2XNS WE2XGR/2 =20 ----- Original Message -----=20 From: Graham=20 To: rsgb_lf_group@blacksheep.org=20 Sent: Thursday, January 08, 2015 12:35 PM Subject: Re: LF: New version OPERA >> ''Opera Dynamic'' <<=20 Jay,=20 Well nothing is perfect , all the beacon systems produce = strange spots =20 I don't even have a 136 Tx and am regularly spotted on 136=20 2015-01-01 19:01:38 G0NBD 2056km 137513.376Hz 3mHz -36.6dBOp = 95% 15.4dB This looks convincing to me, two at the same time into UK/SV=20 00:34 136 WD2XNS de SV8CS Op32 Deep Search 4722 mi -42 dB in = Zakynthos Island with 1w +=20 00:34 136 WD2XNS de 2E0ILY Op32 Deep Search 3245 mi -42 dB in = Shropshire IO82qv with 1w +=20 As for the pdf , I got the impression the 11 dB claim in = the opds document was a little optimistic, I note Markus talked = of 9 dB in a recent post, I assume that was perceived as a = challenge ?, other than that content is solely under the control of = the artistic director.=20 One thing this is 100% certain technical issues still take on = a east / west divide ,=20 73-Graham G0NBD 24 Hour wspr on LF =20 24 Hours Opera LF=20 -------------------------------------------------- From: Sent: Thursday, January 08, 2015 3:10 PM To: Subject: Re: LF: New version OPERA >> ''Opera Dynamic'' << =20 > Graham >=20 > I won't be quite a 'charatable' as Mike ... >=20 > There were at least two false detections on my transmitted signal = (WD2XNS) last night that I saw ...=20 > one into G and one into SV. About the only way to tell they were = false detections was the time lag=20 > between actual and the 'Deep Search' output - it wasn't the = expected 4 minutes. Had there been no=20 > 'real' receptions during that time period one might have actually = believed what was reported ... as=20 > you did and reported on the Yahoo reflector. >=20 > On receive from here last night from there were false detections = of VO1NA. >=20 > I saw one detection of a G station in JA make the list! This was = clearly a false detection. No doubt=20 > there were plenty of other false detections but after this couple = hour 'outing' with 1.5.5 I gave up=20 > on it. It's clearly not ready for prime time and should be pulled = from circulation and return to the=20 > drawing board! >=20 > Perhaps the author, instead of taking the time to write a = 'propaganda' .pdf page about DF6NM's OPDS=20 > and include it with the download, should spend more time actually = making his software work as well=20 > as Markus's. In almost a year of using OPDS I have identified only = one false detection. This is=20 > severly at odds with Jose's test of OPDS. Since Jose seems to now = like the idea of Deep Search,=20 > maybe he should 'borrow' more ideas from Markus ... like the = correlation % and dB 'certainty'=20 > indicator, an accurate time indicator and a highly accurate = frequency readout. These indicators,=20 > especially when correlated with other OPDS users grabbers, makes = the very rare false detection with=20 > OPDS obvious. >=20 > At this point Markus's OPDS runs circles around Jose's Deep Search = ... regardless of what his=20 > 'propaganda' page says. >=20 > Jay W1VD WD2XNS WE2XGR/2 >=20 >=20 > ------=_NextPart_001_01A4_01D02BA9.A431AA10 Content-Type: text/html; charset="iso-8859-1" Content-Transfer-Encoding: quoted-printable
Jay , noted,
 
From past experience ,  the  introduction  of = new =20 technology via  news  groups  has been  proved = to =20 be  counter  productive  for  all  involved = , =20 Take the  introduction  of  the  ROS-HF mode=20 ,  combining   direct  sequence  and  = cdma ,=20 to  give  parallel  access  to a  single =20 channel combined with  low power  requirements  = and =20 qso ability  akin to  packet  in the  = connected =20 state , with  no loss  of  throughput , ie  2G = mobile =20 phone technology
 
The  usa ,  now  suffering  from  lack = of =20 bandwidth  and  over crowded  data  sections  = of=20 the  bands ,  still  has no  access  to =20 technology  that  would solve  the  problem = , =20 those who  did  try  to  resolve the  problem , = where  branded  un patriotic  by  other  = users=20 inside the  usa , the  latest  JT modes are  = smaller =20 b/w  but  still  support only  pre-formatted =20 text  on a  one to  one  qso  basis=20 .  meanwhile , rest  of  world  makes =20 good   use of  the  technology , stats  from = the =20 psk-map  show   665  uses  in a   = 7 =20 day  period , even the  27MHz CB users  use it  = for =20 long haul dx ,  bright  green on the  map. As the  = 24=20 Hr  shot  shows ,  saturation usage inside  EU=20 especially  on 14.103 -yellow-
 
Ive noted the  posts  and comments  etc,  = may  be=20 true  from  an observers  point of  view, but  = from=20 a  engineering design aspect  the  comments  are=20  merely   observations  on engineering facts , = simple =20 as that , development  continues  ..
 
73-G,
 

 
 
 

From: jrusgrove@comcast.net
Sent: Thursday, January 08, 2015 10:56 PM
To: rsgb_lf_group@blacksheep.org= =20
Subject: Re: LF: New version OPERA >> ''Opera = Dynamic''=20 <<

Graham
 
The shift last night on my transmission = was 2=20 minutes - significantly under the 4 or 5 minutes that has been stated as = 'processing time'. With no OPDS reception at DK7FC, DF6NM or = anywhere else=20 in EU, and with all of the false detections appearing on the screen I = would not=20 put any trust in those detections. From here, SV is an incredibly = difficult=20 shot. IIRC my signal has never been received there and I have received = SV8CS=20 only one time ... ever! 
 
You can try and belittle DF6NM OPDS = setup procedure=20 but it's becoming clear from the posts here, and in private e mails = I've=20 received from users of both 'systems', that there's a serious = problem=20 with false decodes in Jose's system. I agree with LA4ANA's comments = about=20 how important it is to keep false detections to an absolute = minimum. The=20 responsible thing to do would be to pull OP 1.5.5 from circulation = and=20 encourage stations not to use it until a better functioning version is=20 available. 
 
At this point I have little interest in = transmitting OP so as not to contribute to this problem.
 
Jay W1VD  WD2XNS =20 WE2XGR/2    
----- Original Message -----
From:=20 Graham
Sent: Thursday, January 08, = 2015 5:11=20 PM
Subject: Re: LF: New version = OPERA=20 >> ''Opera Dynamic'' <<

There  1000  miles  apart and  exactly =20 the  same time , the 4  min  shift  is not =20 a   timed  function  , this  shows 5 tonight =
 
19:10 136 G8HUH de SV8RV-14 Op32 Deep Search 1487 mi -42 = dB in=20 Zakynthos(Zante) isl. GREECE

19:05 136 G8HUH de GW0EZY Op32 94 mi -8 dB F:21% in = Welshpool=20 IO82ho

yes  I have  the  opds  system ,  = even =20 edited the  file  paths  in the  config.sys  = or what=20 ever ,  bit  like old   bike , needs a  = few =20 adjustments to get it  going ,  all  the =20 decision  making  logic  is  contained  with = in=20 the  package .
 
So far tonight ,  everything  looks ok 
 
73-G,
 
 
 
 

From: jrusgrove@comcast.net
Sent: Thursday, January 08, 2015 8:55 PM
To: rsgb_lf_group@blacksheep.org= =20
Subject: Re: LF: New version OPERA >> ''Opera = Dynamic''=20 <<

Graham
 
DF6NM's OPDS is much closer = to perfection. I=20 take it you've never used OPDS ... so you're not aware of = the=20 differences in performance.  
 
Those two spots look good at = first glance=20 but they didn't adhere to the 4 minute time differential from standard = mode=20 reception. What is one to use to judge the likelyhood of a real spot? = Unlike=20 DF6NMs OPDS there's no correlation %=20 and dB 'certainty' indicator, an accurate time indicator or = an=20 accurate frequency readout that can be compared to other grabbers for=20 corroboration
 
With so many bogus spots in Jose's = deep search=20 it's hard to trust any of them.
 
Jay W1VD  WD2XNS =20 WE2XGR/2  
----- Original Message -----
From:=20 Graham
To: rsgb_lf_group@blacksheep.org= =20
Sent: Thursday, January 08, = 2015 12:35=20 PM
Subject: Re: LF: New version = OPERA=20 >> ''Opera Dynamic'' <<

Jay,

Well  nothing is  perfect ,  = all =20 the  beacon systems produce  strange  spots   =

I=20 don't even   have  a  136  Tx  = and =20 am  regularly  spotted on 136

2015-01-01 19:01:38=20 G0NBD   2056km 137513.376Hz   3mHz = -36.6dBOp  95%=20 15.4dB

This looks  convincing to  me, two  at  = the  same time into  UK/SV

00:34    = 136=20 WD2XNS de SV8CS Op32 Deep Search 4722 mi -42 dB in Zakynthos Island = with 1w=20 +
00:34    136 WD2XNS de 2E0ILY Op32 Deep Search = 3245 mi=20 -42 dB in Shropshire IO82qv with 1w +

As for   = the =20 pdf ,  I got  the  impression  the  11 = dB =20 claim  in the  opds  document  was a  = little =20 optimistic, I note  Markus  talked  of  9 dB in = a =20 recent  post, I assume that was perceived  as a  = challenge ?,=20 other than that content is  solely  under the  = control =20 of the  artistic  director. 

One  = thing =20 this  is 100% certain  technical  issues = still =20 take  on a  east / west  divide ,
 
73-Graham
G0NBD
 
24 Hour  wspr  on LF 
 
 
 
24 Hours  Opera  LF
=


--------------------------------------------------
From: = <jrusgrove@comcast.net>
Sent: Thursday, January 08, 2015 = 3:10=20 PM
To: <rsgb_lf_group@blacksheep.org>
Subject: Re: LF: = New=20 version  OPERA  >>  ''Opera Dynamic'' = << =20

> Graham
>
> I won't be quite a 'charatable' = as Mike=20 ...
>
> There were at least two false detections on my=20 transmitted signal (WD2XNS) last night that I saw ...
> one = into G=20 and one into SV. About the only way to tell they were false = detections was=20 the time lag
> between actual and the 'Deep Search' output - = it=20 wasn't the expected 4 minutes. Had there been no
> 'real' = receptions=20 during that time period one might have actually believed what was = reported=20 ... as
> you did and reported on the Yahoo reflector.
> =
> On receive from here last night from there were false = detections of=20 VO1NA.
>
> I saw one detection of a G station in JA = make the=20 list! This was clearly a false detection. No doubt
> there = were=20 plenty of other false detections but after this couple hour 'outing' = with=20 1.5.5 I gave up
> on it. It's clearly not ready for prime = time and=20 should be pulled from circulation and return to the
> drawing = board!
>
> Perhaps the author, instead of taking the = time to=20 write a 'propaganda' .pdf page about DF6NM's OPDS
> and = include it=20 with the download, should spend more time actually making his = software work=20 as well
> as Markus's. In almost a year of using OPDS I have=20 identified only one false detection. This is
> severly at = odds with=20 Jose's test of OPDS. Since Jose seems to now like the idea of Deep = Search,=20
> maybe he should 'borrow' more ideas from Markus ... like = the=20 correlation % and dB 'certainty'
> indicator, an accurate = time=20 indicator and a highly accurate frequency readout. These indicators, =
> especially when correlated with other OPDS users grabbers, = makes=20 the very rare false detection with
> OPDS obvious.
> =
>=20 At this point Markus's OPDS runs circles around Jose's Deep Search = ...=20 regardless of what his
> 'propaganda' page says.
> =
> Jay=20 W1VD  WD2XNS  WE2XGR/2
>
>=20
>
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