ERRATA THERMAL RADIATION HEAT TRANSFER, 5 TH Edition, 1 st Printing John R. Howell, Robert Siegel, M. Pinar Mengüç

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1 //05 ERRATA THERMAL RADIATION HEAT TRANSFER, 5 TH Edto, st Prt Joh R. Howell, Robert Seel, M. Par Meüç Pae 5 Three les before Eq. (.7), I b should be I b, 7 I Eq.., ( ) should be ( ). I last equato o pae, cetral term should be 5 4,388/ W m / m 8 4 m e sr 8 Example., the equato, I (0.55 m) should be I b (0.55 m) 9 O Fure., label o vertcal axs should be Spectral blackbody emssve power ( W / m m) Le before Eq. (.5), (Equato.) should be (Equato.4) ; two les after Eq. (.5), max should be I max b 4 Example.7, the uts o s should be W/m K 4 6 Secod le, E T T should be F T T 3 Le before Eq. (.36), (Equato.35) should be (Equato.34) 3 I footote, (Equato.3) should be (Equato.37) 33 Frst setece Secto.6.3: (Equato.40) should be (Equato.37) 34-5 F..7 should be replaced wth fure below: 36 Le 6, testy drecto ( ) should be chaed to testy drecto () Le below Equato.57, reword as the scatter phase fucto, whch s a, that s redrected measure of the amout of radat eery propaat to,, ad ca be 8/30/04

2 //05 I Equato.59, mddle term, chae di (S) to di,s (S), ad chae fal term from s,, I ( S) ds to s, I( S) ds I equatos (.63) ad (.64), the last mus s (o the teral terms) should be chaed to plus. 38 Frst pararaph, secod le, chae Equato.63 to Equato Frst pararaph, last le: chae I S / I S I S / I S,, to,, 58 I the terals frst ad secod row, the upper lmt o the secod teral should be 000, ot ; the lower ad upper lmts o the thrd teral should be 000 ad 6000, ot ad 6; ad the lower lmt o the last teral should be 6000, ot I the capto to Fure.7, chae da e to da 65 I Example.7, the frst equato should be ( ) ( ) cos 0 ( ) ε T CIb T d d T ( ) ( ) 4 0 ( ) ε T Eb T d cos T CIb T d 0 d 69 I the secod teral equato: multply the teral o the RHS by dad I Secto.4.6., 4th le, delete the from the mddle term of the equato. 89 I Eq. (3.), θ should be θ 90 Eq. (3.4a) should be: ρ ta(θ χ) ta(θ χ) Eq. (3.7a) should be: ρθ s θ χ cos θ χ s θ χ cos θ χ Eq. (3.7b) should be: ρ ρ( 0) / / 93 I Eq. (3.8), the thrd term o the rht should be ( ) l 3 ( ) 94 I Eq. (3.0), θ should be θ Eq. (3.a) should be: a b a s ta s ta,, a b a s ta s ta 8/30/04

3 //05 Eq. (3.b) should be: {[( ) 4 ] / ( b k s k k s )]} 99 I Eq. (3.0), The + be the secod le should be a mus s. 0 Eq. (3.8) should be ε T T r e.73 3 Frst equato, replace ε 0 wth ε Last equato: replace q wth q sol 8 Frst pararaph, Equato 6.8 should be Equato Top equato, 4 th le T 3 should be 35 I Problem 6.5, Frst le should read I Fure 6.5, 39 The thrd equato o the pae should be R cos s d ε Frst le after Eq. (9.), the relato 0 = should be 0 = I the frst three les of the secod pararaph, all k symbols should be. 450 Eq. (9.5) should be l l exp j η, j S j D D 463 Eq.(9.33a) should be ( T) m exp u T k k k 0 m exp u T 0, 0 k k k 464 I Table 9., the 0 values for CO should be.47x0-9 ad.48x0-9b 465 Eqs. (9.33c,d) should be: ( T) ( T)!/!! e ukk!/!! e m k k0, k k k k k k m k k 0 k k k k m k k0, k k k k k k m k k0, k k k k k k ukk!/!! e ukk!/!! e ukk / 8/30/04

4 // I Example 9., secod pararaph of soluto, frst le, Equato 9.3c should be Equato 9. 33c; ext to last le, same pararaph, same correcto; last le, Equato 9.3a should be Equato 9. 33a. I thrd pararaph of soluto, last le, Equato 9.3d should be Equato 9. 33d ad Equato 9.3b should be Equato 9. 33b. 4 th pararaph the soluto, T T 0 T should be 0 0 T0 I ffth pararaph of soluto, u= should be u=x / P P ad, 6 th Pe pararaph, b P0 P0 should be Pe b P P P P Frst le Secto should read: To fd solutos for total radatve eery trasfer, the trasfer equatos descrbed Chapter 468 I Eq. (9.44), the coeffcet preced the teral should be l, ot l I Eq. (9.45), all a should be 470 I colum heads to Tables 9.3 ad 9.4, should be l 477 I Table 9.7, for the value for l =-, m =, =, delete the mus s o I the follow pararaph, the uts o R should be (kj/kmol.k), ad the value for N should be. mol/m Eq. (9.6), sert rht pare before the rht bracket 48 F. 9.4, I capto, bar/cm should be bar cm 48 F. 9.5, I capto, bar/cm should be bar cm 483 I Example 9.5, 4th le of soluto, labels a, a, a 3 should be a 0, a, a. Thrd le from bottom, (bar atm) should be (bar cm) 485 I the le after Eq. (9.7), the k should be. 495 Frst setece Secto 0.3. should refer to (Equato.63) ad ot (Equato.4). 506 Le after Eq. 0.39, Equato 0.6 should be Equato I Eq. 0.44, frst I sde brackets should be I ˆ. 54 I Eq. 0.75b, the ext to last term, the E b, should read E b, so the equato becomes: ε, F t, q, q, F t, Eb, F, Eb, Eb, ε ε,, 58 I Table 0., the fal expoetal teral term the secod ad thrd table etres should be 8/30/04

5 //05 E 3 h R / h 57 Example 0.6, fal equato should be Q GA є T A (00) 6 709kW CO 536 Le before Equato.3a: equato, replace d wth d 537 I Eq. (.9a), the lmts o the last teral should o from = to = I Eq. (.), the fal teral should be postve, ot eatve. 588 I Eq. (.9), the tem o the left should be eatve. 590 I Eq. (.30), delete the d. 597 I text le after Eq..47, Equato 5.38 should be Equato I Eq. (.6), umerator o the LHS, delete the subscrpt. 66 Two les after Eq. (3.9), the I coordate should be coordate Eq. (3.90) should be T T / ε/ qr 668 Oe le above Eq. (3.34: Equato 7.7 should be Equato Ler Eq. (3.56), Equato 7.49 should be Equato I Homework Problem 4-4, ( = 0.54 mm) should be = 0.54 m) 75 Eq. (5.5) should be C C, C, s Q Q, Q, s 753 Secod pararaph, le 3, replace x wth. 755 Frst pararaph Secto 5.3., secod le, replace x wth. 756 Frst pararaph, le 3: Replace :cross secto wth coeffcet. 765 I Eq. (5.4), top relato should be V k k 4 k 36 k Cs, 4 k k 77 Two les above Eq. (5.37), replace absorpto effcecy wth absorpto crosssecto 776 I requremet (), le, replace decrease wth decreases 785 Solutos to HW 5. should be: Aswer:.35x0-5 m ; 3.90x0 9 cm -3 ;.64x0-8 ; 3.6x pararaph, le 6. Add (RTE) after radatve trasfer equato. pararaph 3, les ad 3. Should read I addto, the RTE ca be derved from [ ] stead of I addto, the radatve trasfer equato (RTE) ca be derved from [ ]. pararaph 3, le 3. Chae EM to electromaetc. pararaph 3, le 4. Chae Secto 4.5 to Secto pararaph 4, le 3. Should read [ ] by exct surface waves hav a hh deree [ ] stead of [ ] by exct surface waves a hav a hh deree [ ]. pararaph 5, le 3. Chae mcro electro-mechacal systems to mcro-electromechacal systems. 794 Equato (6.). The left-had sde of Eq. (6.) should be u(,t) ad ot u(t). 795 pararaph, le 3. Remove the before ear-feld thermal radato. 8/30/04

6 //05 80 Equato (6.6). There s a error the last -term o the rht-had sde of Eq. (6.6). The subscrpt should be sl stead of sl. For clarty, the correct Eq. (6.6) s ve below: q, sl (, T s ) ReK s ( ) E sl dz, z, z, ) H* k0 c sl ( zc ) kdk E H* z sl ( k, zc, z, ) 0 sl ( k ( k, zc, z, ) ( k, z c, z, ) 80 pararaph 3, le 5. The referece should be Kttel et al. (005b) ad ot Kttel et al. (005). 85 Homework problem 6.7. The referece should be Greffet et al. (00) ad ot Greffet et al. (998). 885 I Factor 4, fpr Factor F-, the term L/R should be -/LR 8/30/04

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