LAMPIRAN. Ket. tn = tidak berbeda nyata

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1 LAMPIRAN Lampiran 1.Tabel. Analisis Sidik Ragam Konsumsi ahan Kering analisis sidik ragam Sk Db JK KT Fhit Ftabel Periode tn Sapi tn Perlakuan tn Galat Total 18 Ket. tn = tidak berbeda nyata Lampiran 2.Tabel. Analisis Konsumsi ahan Organik analisis sidik ragam Sk Db JK KT Fhit Ftabel Periode tn Sapi tn Perlakuan tn Galat Total 18 Ket. tn = tidak berbeda nyata Lampiran 3.Tabel. Analisis Sidik Ragam Kecernaan ahan Kering analisis sidik ragam Sk Db JK KT Fhit Ftabel Periode Sapi Perlakuan * Galat Total 18 Ket.* = erbeda nyata

2 Lampiran 4.Tabel. Analisis Sidik Ragam Kecernaan ahan Organik analisis sidik ragam Sk Db JK KT Fhit Ftabel Periode Sapi Perlakuan * Galat Total 18 Ket.* = erbeda nyata Analisis Sidik Ragam Kecernaan ahan Kering (SAS System) Thursday, October 5, Class Level Information Values Class Levels P2 P3 4 P0 P :03 Thursday, October 5, Dependent Variable: KCK Number of Observations Read Number of Observations Used Sum of Source DF Squares Mean Square F Value Pr > F Model Error Corrected Total

3 KCK Mean R-Square Coeff Var Root MSE Source DF Type I SS Mean Square F Value Pr > F Source DF Type III SS Mean Square F Value Pr > F :03 Thursday, October 5, t Tests (LSD) for KCK NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate Alpha Error Degrees of Freedom Error Mean Square Critical Value of t Least Significant Difference Means with the same letter are not significantly different. t Grouping Mean N A P1 A A P P0

4 P2 12:03 Thursday, October 5, for KCK Duncan's Multiple Range Test NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate Alpha Error Degrees of Freedom Error Mean Square Number of Means 2 Critical Range Means with the same letter are not significantly different. Duncan Grouping Mean N A P1 A A P P P2 12:03 Thursday, October 5, Test for KCK Tukey's Studentized Range (HSD) NOTE: This test controls the Type I experimentwise error rate, but it generally has a higher Type II error rate than REGWQ Alpha

5 Range Error Degrees of Freedom Error Mean Square Critical Value of Studentized Minimum Significant Difference Means with the same letter are not significantly different. Tukey Grouping Mean N A P1 A A P P P2 12:03 Thursday, October 5, Least Squares Means LSMEAN Pr > t Standard KCK LSMEAN Error Number P < P < P < P < Pr > t KCK 3 4 Least Squares Means for Effect t for H0: LSMean(i)=LSMean(j) / Dependent Variable: i/j 1 2

6 NOTE: To ensure overall protection level, only probabilities associated with pre-planned comparisons should be used. 12:03 Thursday, October 5, Class Level Information Values Class Levels P2 P3 4 P0 P Number of Observations Read Number of Observations Used 12:03 Analisis Sidik Ragam Kecernaan ahan Kering (SAS System) Thursday, October 5, Class Level Information Values Class Levels P2 P3 4 P0 P1

7 :03 Thursday, October 5, Dependent Variable: KCO Number of Observations Read Number of Observations Used Sum of Source DF Squares Mean Square F Value Pr > F Model Error Corrected Total KCO Mean R-Square Coeff Var Root MSE Source DF Type I SS Mean Square F Value Pr > F Source DF Type III SS Mean Square F Value Pr > F :03 Thursday, October 5, t Tests (LSD) for KCO NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate.

8 Alpha Error Degrees of Freedom Error Mean Square Critical Value of t Least Significant Difference Means with the same letter are not significantly different. t Grouping Mean N A P1 A A P P P2 12:03 Thursday, October 5, for KCO Duncan's Multiple Range Test NOTE: This test controls the Type I comparisonwise error rate, not the experimentwise error rate Alpha Error Degrees of Freedom Error Mean Square Number of Means 2 Critical Range Means with the same letter are not significantly different.

9 Duncan Grouping Mean N A P1 A A P P P2 12:03 Thursday, October 5, Test for KCO Tukey's Studentized Range (HSD) NOTE: This test controls the Type I experimentwise error rate, but it generally has a higher Type II error rate than REGWQ Range Alpha Error Degrees of Freedom Error Mean Square Critical Value of Studentized Minimum Significant Difference Means with the same letter are not significantly different. Tukey Grouping Mean N A P1 A A P P P2 12:03 Thursday, October 5, Least Squares Means

10 LSMEAN Pr > t Standard KCO LSMEAN Error Number P < P < P < P < Pr > t KCO 3 4 Least Squares Means for Effect t for H0: LSMean(i)=LSMean(j) / Dependent Variable: i/j

11 Lampiran 5.Tabel. Formula Ransum Nama ahan Formulasi (%) Harga PK SK LK TDN Pelepah KS Terolah Fisik IS Dedak Molases Ultra Mineral Garam Urea Total 100 Nama ahan Formulasi (%) Harga PK SK LK TDN Amoniasi IS Dedak Molases Ultra Mineral Garam Urea Total 100 Nama ahan Formulasi (%) Harga PK SK LK TDN FERMENTASI IS Dedak Molases Ultra Mineral Garam Urea Total 100 Nama ahan Formulasi (%) Harga PK SK LK TDN Amoniasi + Fermentasi IS Dedak Molases Ultra Mineral Garam Urea Total 100

12 Lampiran 6. Pertumbuhan obot adan Sapi(kg) SAPI PERIODE/ULAN/MINGGU I II III IV a ak a ak a ak a ak

T-test: means of Spock's judge versus all other judges 1 12:10 Wednesday, January 5, judge1 N Mean Std Dev Std Err Minimum Maximum

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