From mboxrd@z Thu Jan 1 00:00:00 1970 X-Msuck: nntp://news.gmane.io/gmane.comp.tex.context/79939 Path: news.gmane.org!not-for-mail From: Zenlima Newsgroups: gmane.comp.tex.context Subject: Desperate help needed: Formular numbering and List of Formulas Date: Sun, 16 Dec 2012 20:16:15 +0100 Message-ID: <20121216201615.1f254d01@zenlima.eu> Reply-To: mailing list for ConTeXt users NNTP-Posting-Host: plane.gmane.org Mime-Version: 1.0 Content-Type: multipart/mixed; boundary="MP_/r1jb7s9kg==6rH_pJlkQqYB" X-Trace: ger.gmane.org 1355685389 16440 80.91.229.3 (16 Dec 2012 19:16:29 GMT) X-Complaints-To: usenet@ger.gmane.org NNTP-Posting-Date: Sun, 16 Dec 2012 19:16:29 +0000 (UTC) To: mailing list for ConTeXt users Original-X-From: ntg-context-bounces@ntg.nl Sun Dec 16 20:16:43 2012 Return-path: Envelope-to: gctc-ntg-context-518@m.gmane.org Original-Received: from balder.ntg.nl ([195.12.62.10]) by plane.gmane.org with esmtp (Exim 4.69) (envelope-from ) id 1TkJhX-0004wF-9u for gctc-ntg-context-518@m.gmane.org; Sun, 16 Dec 2012 20:16:39 +0100 Original-Received: from localhost (localhost [127.0.0.1]) by balder.ntg.nl (Postfix) with ESMTP id 57B731020E; Sun, 16 Dec 2012 20:16:25 +0100 (CET) X-Virus-Scanned: Debian amavisd-new at balder.ntg.nl Original-Received: from balder.ntg.nl ([127.0.0.1]) by localhost (balder.ntg.nl [127.0.0.1]) (amavisd-new, port 10024) with LMTP id BCrRfiVk6WZj; Sun, 16 Dec 2012 20:16:22 +0100 (CET) Original-Received: from balder.ntg.nl (localhost [IPv6:::1]) by balder.ntg.nl (Postfix) with ESMTP id 6B31810219; Sun, 16 Dec 2012 20:16:22 +0100 (CET) Original-Received: from localhost (localhost [127.0.0.1]) by balder.ntg.nl (Postfix) with ESMTP id 43F8910219 for ; Sun, 16 Dec 2012 20:16:21 +0100 (CET) X-Virus-Scanned: Debian amavisd-new at balder.ntg.nl Original-Received: from balder.ntg.nl ([127.0.0.1]) by localhost (balder.ntg.nl [127.0.0.1]) (amavisd-new, port 10024) with LMTP id pPDSHeKEOjcA for ; Sun, 16 Dec 2012 20:16:19 +0100 (CET) Original-Received: from filter1-til.mf.surf.net (filter1-til.mf.surf.net [194.171.167.217]) by balder.ntg.nl (Postfix) with ESMTP id D56321020E for ; Sun, 16 Dec 2012 20:16:19 +0100 (CET) Original-Received: from outgoing.selfhost.de (out.selfhost.de [82.98.82.95]) by filter1-til.mf.surf.net (8.14.3/8.14.3/Debian-9.4) with ESMTP id qBGJGIKL018675 for ; Sun, 16 Dec 2012 20:16:19 +0100 Original-Received: (qmail 2709 invoked from network); 16 Dec 2012 19:16:17 -0000 Original-Received: from unknown (HELO zenlima.eu) (post@zenlima.eu@31.18.179.213) by mailout.selfhost.de with ESMTPA; 16 Dec 2012 19:16:17 -0000 X-Mailer: Claws Mail 3.8.0 (GTK+ 2.24.10; i686-pc-linux-gnu) X-Bayes-Prob: 0.0001 (Score 0, tokens from: @@RPTN) X-CanIt-Geo: ip=82.98.82.95; country=DE; latitude=51.0000; longitude=9.0000; http://maps.google.com/maps?q=51.0000,9.0000&z=6 X-CanItPRO-Stream: uu:ntg-context@ntg.nl (inherits from uu:default, base:default) X-Canit-Stats-ID: 0RIAjgi2A - 51663e3cc89c - 20121216 (trained as not-spam) X-Scanned-By: CanIt (www . roaringpenguin . com) on 194.171.167.217 X-BeenThere: ntg-context@ntg.nl X-Mailman-Version: 2.1.14 Precedence: list List-Id: mailing list for ConTeXt users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , Errors-To: ntg-context-bounces@ntg.nl Original-Sender: ntg-context-bounces@ntg.nl Xref: news.gmane.org gmane.comp.tex.context:79939 Archived-At: --MP_/r1jb7s9kg==6rH_pJlkQqYB Content-Type: text/plain; charset=US-ASCII Content-Transfer-Encoding: 7bit Content-Disposition: inline Hi, I am closing my dissertation (finally) but I had to realize that subnumbering of formulas is still not working in mkiv. Unluckily going back to mkii is not an option for other reasons. For that I really need help to bring back a fully working formula numbering. I searched the entire wiki and mailing list for possible examples and put all in one test file - I got non to work but maybe I also made a mistake somewhere. Additionally I wrote everything on my talk page of the wiki: http://wiki.contextgarden.net/User_talk:Zenlima If every method has to be fixed my priority is the \NR[+][c]-method. Maybe someone can give additionally hints how to get a proper list of formulas. I attached the test file with its pdf result in addition to the wiki page. 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nMZUYL+UP7ESInkKZW5kc3RyZWFtCmVuZG9iagpzdGFydHhyZWYKMjU0MDIKJSVFT0YK --MP_/r1jb7s9kg==6rH_pJlkQqYB Content-Type: text/x-tex Content-Transfer-Encoding: 7bit Content-Disposition: attachment; filename=context-test-mathe.tex \usemodule[newmath] \setupformulas[way=bytext,prefix=no] \setupsubformulas[conversion=romannumerals] \starttext \title{List of formulas} \placelist[formula][criterium=all,alternative=c] \framed{not ok} \chapter{Chapter One} \chapter{Chapter Two} \subject{math - formula} Expected formular number: (1): \placenamedformula[one]{Der einfache Test} \startformula c^2 = a^2 + b^2. \stopformula \framed{ok} \subject{math - subformula} Expected formular numbers: (2a) and (2b): \startsubformulas[eq:1] \placeformula[eq:first] \startformula PM \xrightarrow R_{PM} \xrightarrow PM \stopformula \placeformula[eq:second] \startformula R_{PM} = \{ K, F, Z, U, I, J\} \stopformula \stopsubformulas \framed{not ok} \subject{math - align - formula} Expected formular numbers: (3a) and (3b) and a reference to formular (3b): \startsubformulas \startformulas \placeformula \startformula \startalign[n=3, align={right,middle,left}] \NC PM \xrightarrow \NC R_{PM} \NC \xrightarrow PM \NR[+] \NC R_{PM} \NC = \NC \{ A, B, C, D, E\} \NR[a] \stopalign \stopformula \stopformulas \stopsubformulas \framed{not ok} Expected formular numbers: (4) and (5) \placeformula \startformula \startalign[n=3, align={right,middle,left}] \NC PM \xrightarrow \NC R_{PM} \NC \xrightarrow PM \NR[+] \NC R_{PM} \NC = \NC \{ A, B, C, D, E\} \NR[+] \stopalign \stopformula \framed{ok} \subject{math - align - subformula} Expected formular numbers: (6.1), (6.2) and (6.c) plus referece on (6.1) and (6.2): \placesubformula \startformula \startalign[n=3, align={right,middle,left}] \NC PM \xrightarrow \NC R_{PM} \NC \xrightarrow PM \NR[gleichung1a][.1] \NC R_{PM} \NC = \NC \{ A, B, C, D, E\} \NR[gleichung1b][.2] \NC R_{PM} \NC = \NC \{ A, B, C, D, E\} \NR[+][c] \stopalign \stopformula \framed{not ok} Expected formular numbers: (8a) and (8b) plus reference on (8a and 8b): \placesubformula \startformula \startalign[n=3, align={right,middle,left}] \NC PM \xrightarrow \NC R_{PM} \NC \xrightarrow PM \NR[gleichung1a][+] \NC R_{PM} \NC = \NC \{ A, B, C, D, E\} \NR[gleichung1b][] \stopalign \stopformula \framed{not ok} \subject{math - eqalignno - formula} Taken from wiki and removed the subformulanumber. Expected formular numbers: (11), (12), (13) and (14): \placeformula \startformula \eqalignno{ c^2 &= a^2 + b^2 &\formulanumber \cr c &= \left(a^2 + b^2\right)^{\vfrac{1}{2}} &\formulanumber\cr a^2 + b^2 &= c^2 &\formulanumber \cr d^2 &= e^2 &\formulanumber \cr} \stopformula \framed{ok} \subject{math - eqalignno - subformula} Directly taken form wiki. Expected formular numbers: %\placeformula %\startformula %\eqalignno{ % c^2 &= a^2 + b^2 &\formulanumber{a} \cr % c &= \left(a^2 + b^2\right)^{\vfrac{1}{2}} &\subformulanumber{b}\cr % a^2 + b^2 &= c^2 &\subformulanumber{c} \cr % d^2 &= e^2 &\formulanumber\cr} %\stopformula \framed{not ok (does not work. subformularnumber is unknown)} \stoptext --MP_/r1jb7s9kg==6rH_pJlkQqYB Content-Type: text/plain; charset="us-ascii" MIME-Version: 1.0 Content-Transfer-Encoding: 7bit Content-Disposition: inline ___________________________________________________________________________________ If your question is of interest to others as well, please add an entry to the Wiki! maillist : ntg-context@ntg.nl / http://www.ntg.nl/mailman/listinfo/ntg-context webpage : http://www.pragma-ade.nl / http://tex.aanhet.net archive : http://foundry.supelec.fr/projects/contextrev/ wiki : http://contextgarden.net ___________________________________________________________________________________ --MP_/r1jb7s9kg==6rH_pJlkQqYB--