On the Possible Coding Principles of DNA & I Ching

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1 Sctfc GOD Joural May 015 Volum 6 Issu 4 pp Hu, H. & Wu, M., O th Possbl Codg Prcpls of DNA & I Chg 161 O th Possbl Codg Prcpls of DNA & I Chg Hupg Hu * & Maox Wu Rvw Artcl ABSTRACT I ths rvw artcl, w dscuss th possbl codg prcpls DNA ad I Chg th cotxt of th prcpl of xstc. Th sad codg prcpls produc th 4 3 =64 codos ad atcodos of DNA rspctvly. Furthr, smlar codg prcpls produc th 6 =64 hxagrams of I- Chg. Ky Words: God, DNA, I Chg, codg mchasm, prcpl of xstc. 1. Th Trascdtal Groud of Ralty God s both trascdt ad mmat as t s udrstood Hdusm. Th trascdtal aspct of God producs ad flucs ralty through slf-rfrtal sp as th tractv output of God. I tur, mmat aspct of God xprcs ralty as th tractv put to God also through slf-rfrtal sp [1]. Thus, th bgg thr was God by tslf =1matrally mpty ad sprtually rstlss. Ad t bga to mag through prmordal slf-rfrtal sp 1= 0 = M-M = M -M = -M / -M = M / M such that t cratd th xtral objct to b obsrvd ad tral objct as obsrvd, sparatd thm to xtral world ad tral world, causd thm to tract through slfrfrtal Matrx Law ad thus gav brth to th Uvrs whch t has sc passoatly lovd, sustad ad mad to volv [1]. I ths Uvrs, th body of God, as thr rprstd by Eulr umbr, s th groud of xstc ad ca form complmtary pars of objcts. W draw blow svral dagrams llustratg th hypothss of how God cratd th Uvrs comprsg of th xtral world ad th tral world (th dual-world) ad how th xtral objct ad tral objct ad th xtral world ad tral world tract. As show Fgur 1.1, a prmordal phas dstcto (dualzato) was mad th Godhad through magato. At th Body lvl, ths s 0 = M-M = M -M = -M / -M = M / M. Corrspodc: Hupg Hu, Ph.D., J.D., QuatumDram, Ic., P. O. Box 67, Stoy Brook, NY E-mal: hupghu@quatumbra.org ISSN: X Sctfc GOD Joural Publshd by Sctfc GOD, Ic.

2 Sctfc GOD Joural May 015 Volum 6 Issu 4 pp Hu, H. & Wu, M., O th Possbl Codg Prcpls of DNA & I Chg 16 Fgur1.1. Illustrato of prmordal phas dstcto Th prmordal phas dstcto Fgur 1.1 s accompad by matrxg of th Body to: (1) xtral ad tral objcts, ad () slf-actg ad slf-rfrtal Matrx Law, whch accompay th magatos of th Godhad so as to forc (mata) th accoutg prcpl of cosrvato of zro, as llustratd Fgur 1.. Fgur1.. God Equato Fgur 1.3 shows from aothr prspctv of th rlatoshp amog xtral objct, tral objct ad th slf-actg ad slf-rfrtal Matrx Law: Fgur 1.3. Slf-tracto btw xtral ad tral objcts ISSN: X Sctfc GOD Joural Publshd by Sctfc GOD, Ic.

3 Sctfc GOD Joural May 015 Volum 6 Issu 4 pp Hu, H. & Wu, M., O th Possbl Codg Prcpls of DNA & I Chg 163. Possbl DNA Codg Mchasm Basd o th prcpl of xstc [1], o may mathmatcally grat th DNA cods as follows []: 1 xx yy x y z x y z A T G T A C tc. Codo zz Atcod whr x, y & z ar hypothszd to b thr paramtrs for codg formato ach DNA strad/squc ad th followg slctos ad mappgs ar usd at th cod lvl: x s allowd to hav th valu +1, +, -1 or rspctvly at th cod lvl y s allowd to hav th valu +1, +, -1 or rspctvly at th cod lvl z s allowd to hav th valu +1, +, -1 or rspctvly at th cod lvl (.) -x s allowd to hav th valu -1, -, +1 or + rspctvly at th cod lvl -y s allowd to hav th valu -1, -, +1 or + rspctvly at th cod lvl -z s allowd to hav th valu -1, -, +1 or + rspctvly at th cod lvl Mappg: 1,, 1, A, C, T, G (.1) (.3) Also s Fgur.1 blow: Fgur.1 ISSN: X Sctfc GOD Joural Publshd by Sctfc GOD, Ic.

4 Sctfc GOD Joural May 015 Volum 6 Issu 4 pp Hu, H. & Wu, M., O th Possbl Codg Prcpls of DNA & I Chg 164 Th abov slctos ad mappgs produc th 4 3 =64 codos ad at-codos of DNA rspctvly. I ths codg systm, {A, C, T, G} as a st hav th followg algbrac proprts: A T A A T T C G 0 C... C G G 0 0 (4.4) whr =1,,3,4, Furthr hypothszg that x, y & z ar thr paramtrs codg spatal formato of a prot a DNA strad, o may fd mag for ach cod posto of th trplt codo ad possbl cocto btw th trplt codo ad th thr dmsoalty of spac. Howvr, ths ar just prlmary hypothss/spculatos at ths pot. 3. Grato of Hxagrams of I Chg Thr ar may mtaphyscal dscussos about th coctos of DNA cod ad th Chs I Chg. Applyg th prcpl of xstc [1], o may grat th hxagrams of I Chg as follows: 1 x x y y z z xx yy zz x y z x y z Uppr Trgram Lowr Trgram tc. whr x, y & z ar hypothszd to b thr paramtrs for codg formato I-Chg bfor th sparato of th outr aspct ad th r aspct; α, β & γ ar thr paramtrs for codg (3.1) ISSN: X Sctfc GOD Joural Publshd by Sctfc GOD, Ic.

5 Sctfc GOD Joural May 015 Volum 6 Issu 4 pp Hu, H. & Wu, M., O th Possbl Codg Prcpls of DNA & I Chg 165 formato of outr aspct; ψ, φ & χ ar thr paramtrs for codg formato of r aspct; ad th followg slctos ad mappgs ar usd at th hxagram/cod lvl: α s allowd to hav th valu (collaps to) +1, or -1 rspctvly at th cod lvl β s allowd to hav th valu (collaps to) +1, or -1 rspctvly at th cod lvl γ s allowd to hav th valu (collaps to) +1, or -1 rspctvly at th cod lvl (3.) -ψ s allowd to hav th valu (collaps to) +1, or -1 rspctvly at th cod lvl -φ s allowd to hav th valu (collaps to) +1, or -1 rspctvly at th cod lvl -χ s allowd to hav th valu (collaps to) +1, or -1 rspctvly at th cod lvl 1, 1 Yag, Y (3.3) Th abov slctos ad mappgs produc th 6 =64 hxagrams of I-Chg. I ths codg systm, {Yag, Y} as a st hav th followg algbrac proprts: Yag + Y = 0 (3.4) To accommodat Chagg Yag ad Chagg Y, th followg xpadd slctos ad mappg ca b usd: α s allowd to hav th valu (collaps to) +1, +, -1 or rspctvly at th cod lvl β s allowd to hav th valu (collaps to) +1, +, -1 or rspctvly at th cod lvl γ s allowd to hav th valu (collaps to) +1, +, -1 or rspctvly at th cod lvl (3.5) -ψ s allowd to hav th valu (collaps to) +1, +, -1 or rspctvly at th cod lvl -φ s allowd to hav th valu (collaps to) +1, +, -1 or rspctvly at th cod lvl -χ s allowd to hav th valu (collaps to) +1, +, -1 or rspctvly at th cod lvl 1,, 1, Yag, ChaggYag, Y, ChaggY (3.6) Th abov slctos ad mappgs produc th 4 6 =4096 hxagrams of I-Chg whch clud th Chagg Yag ad Chagg Y. Thrfor, th 64 DNA Codos ad thr corrspodg at-codos blog to a subst of th 4096 hxagram st. ISSN: X Sctfc GOD Joural Publshd by Sctfc GOD, Ic.

6 Sctfc GOD Joural May 015 Volum 6 Issu 4 pp Hu, H. & Wu, M., O th Possbl Codg Prcpls of DNA & I Chg 166 I ths xpadd codg systm, {Yag, Chagg Yag, Y, Chagg Y} as a st hav th followg algbrac proprts: Yag Y ChaggYag ChaggY 0 Yag Yag Y... Y ChaggYag ChaggY 0 ChaggYag ChaggY 0 (3.7) whr =1,,3,4, Rfrcs 1. Hu, H. & Wu, M. (010), Th Prcpl of Exstc: Toward a Sctfc Thory of Evrythg. Sctfc God Joural, 1(1): pp Hu, H. & Wu, M. (011), Dcphrmt of th Scrts of DNA. DNA Dcphr Joural, 1(1): pp ISSN: X Sctfc GOD Joural Publshd by Sctfc GOD, Ic.

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