7. LAMPIRAN. Pengolahan Data Sensoris Sayur Asin. Score : Sangat tidak suka : 1 Tidak suka : 2 Cukup suka : 3 Suka : 4 Sangat sekali : 5
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1 7. LAMPIRAN Lampiran 1. Pengolahan Data Sensoris Sayur Asin Crosstab SAMPEL ketela 150 ketela 175 ketela 200 ketela 225 RASA sangat tidak suka tidak suka cukup suka suka sangat suka % 36.0% 32.0% 12.0% 12.0% 100.0% % 48.0% 8.0% 4.0% 8.0% 100.0% % 52.0% 24.0% 12.0% 4.0% 100.0% % 20.0% 44.0% 28.0% 100.0% % 52.0% 32.0% 100.0% % 32.0% 44.0% 16.0% 100.0% % 30.0% 32.0% 22.0% 6.7% 100.0% Score : Sangat tidak suka : 1 Tidak suka : 2 Cukup suka : 3 Suka : 4 Sangat sekali : 5 Rata-rata total score paramater rasa : Beras : ((2 x 1) + (9 x 2) + (8 x 3) + (3 x 4) + (3 x 5)) / 25 = 2,84 Ketela 150 : ((8 x 1) + (12 x 2) + (2 x 3) + (1 x 4) + (2 x 5)) / 25 = 2,08 Ketela 175 : ((2 x 1) + (13 x 2) + (6 x 3) + (3 x 4) + (1 x 5)) / 25 = 2,52 Ketela 200 : ((2 x 1) + (5 x 2) + (11 x 3) + (7 x 4) + (0 x 5)) / 25 = 2,92 Ketela 225 : ((0 x 1) + (4 x 2) + (13 x 3) + (8 x 4) + (0 x 5)) / 25 = 3,16 Ketela 250 : ((0 x 1) + (2 x 2) + (8 x 3) + (11 x 4) + (4 x 5)) / 25 = 3,68 35
2 36 Crosstab SAMPEL ketela 150 ketela 175 ketela 200 ketela 225 AROMA sangat tidak suka tidak suka cukup suka suka sangat suka % 28.0% 28.0% 32.0% 8.0% 100.0% % 40.0% 8.0% 16.0% 8.0% 100.0% % 48.0% 28.0% 8.0% 100.0% % 28.0% 36.0% 24.0% 4.0% 100.0% % 24.0% 52.0% 20.0% 100.0% % 36.0% 20.0% 36.0% 100.0% % 29.3% 31.3% 18.7% 10.7% 100.0% Score : Sangat tidak suka : 1 Tidak suka : 2 Cukup suka : 3 Suka : 4 Sangat sekali : 5 Rata-rata total score paramater aroma : Beras : ((1 x 1) + (7 x 2) + (7 x 3) + (8 x 4) + (2 x 5)) / 25 = 3,12 Ketela 150 : ((7 x 1) + (10 x 2) + (2 x 3) + (4 x 4) + (2 x 5)) / 25 = 2,36 Ketela 175 : ((4 x 1) + (12 x 2) + (7 x 3) + (0 x 4) + (2 x 5)) / 25 = 2,36 Ketela 200 : ((2 x 1) + (7 x 2) + (9 x 3) + (6 x 4) + (1 x 5)) / 25 = 2,88 Ketela 225 : ((1 x 1) + (6 x 2) + (13 x 3) + (5 x 4) + (0 x 5)) / 25 = 2,88 Ketela 250 : ((0 x 1) + (2 x 2) + (9 x 3) + (5 x 4) + (9 x 5)) / 25 = 3,84
3 37 Crosstab SAMPEL ketela 150 ketela 175 ketela 200 ketela 225 WARNA sangat tidak suka tidak suka cukup suka suka sangat suka % 16.0% 28.0% 24.0% 28.0% 100.0% % 36.0% 16.0% 24.0% 8.0% 100.0% % 36.0% 40.0% 12.0% 4.0% 100.0% % 24.0% 36.0% 12.0% 100.0% % 48.0% 40.0% 100.0% % 16.0% 36.0% 20.0% 24.0% 100.0% % 24.0% 32.0% 26.0% 12.7% 100.0% Score : Sangat tidak suka : 1 Tidak suka : 2 Cukup suka : 3 Suka : 4 Sangat sekali : 5 Rata-rata total score paramater warna: Beras : ((1 x 1) + (4 x 2) + (7 x 3) + (6 x 4) + (7 x 5)) / 25 = 3,56 Ketela 150 : ((4 x 1) + (9 x 2) + (4 x 3) + (6 x 4) + (2 x 5)) / 25 = 2,72 Ketela 175 : ((2 x 1) + (9 x 2) + (10 x 3) + (3 x 4) + (1 x 5)) / 25 = 2,68 Ketela 200 : ((0 x 1) + (7 x 2) + (6 x 3) + (9 x 4) + (3 x 5)) / 25 = 3,32 Ketela 225 : ((0 x 1) + (3 x 2) + (12 x 3) + (10 x 4) + (0 x 5)) / 25 = 3,28 Ketela 250 : ((1 x 1) + (4 x 2) + (9 x 3) + (5 x 4) + (6 x 5)) / 25 = 3,44
4 38 Crosstab SAMPEL ketela 150 ketela 175 ketela 200 ketela 225 KESUKAAN sangat tidak suka tidak suka cukup suka suka sangat suka % 28.0% 32.0% 12.0% 100.0% % 44.0% 24.0% 4.0% 4.0% 100.0% % 36.0% 44.0% 12.0% 100.0% % 16.0% 36.0% 36.0% 8.0% 100.0% % 64.0% 16.0% 100.0% % 32.0% 36.0% 20.0% 100.0% % 26.0% 38.0% 22.7% 7.3% 100.0% Score : Sangat tidak suka : 1 Tidak suka : 2 Cukup suka : 3 Suka : 4 Sangat sekali : 5 Rata-rata total score paramater warna: Beras : ((0 x 1) + (7 x 2) + (7 x 3) + (8 x 4) + (3 x 5)) / 25 = 3,28 Ketela 150 : ((6 x 1) + (11 x 2) + (6 x 3) + (1 x 4) + (1 x 5)) / 25 = 2,2 Ketela 175 : ((2 x 1) + (9 x 2) + (11 x 3) + (3 x 4) + (0 x 5)) / 25 = 2,6 Ketela 200 : ((1 x 1) + (4 x 2) + (9 x 3) + (9 x 4) + (2 x 5)) / 25 = 3,28 Ketela 225 : ((0 x 1) + (5 x 2) + (16 x 3) + (4 x 4) + (0 x 5)) / 25 = 2,96 Ketela 250 : ((0 x 1) + (3 x 2) + (8 x 3) + (9 x 4) + (5 x 5)) / 25 = 3,64
5 39 Lampiran 2. Hasil Uji Normalitas, Uji Homogenitas dan Uji One Way Gula Reduksi Sebelum dan Sesudah Pemeraman Tests of Normality Kolmogorov-Smirnov a Shapiro-Wilk Statistic df Sig. Statistic df Sig. SEBELUM * SESUDAH * *. This is a lower bound of the true significance. a. Lilliefors Significance Correction Descriptives SEBELUM 150 ketela 150 ketela 175 ketela 200 ketela % Confidence Interval for Mean N Mean Std. Deviation Std. Error Lower Bound Upper Bound Minimum Maximum E Test of Homogeneity of Variances SEBELUM Levene Statistic df1 df2 Sig
6 40 Duncan a PERLAKUA ketela 150 ketela 175 ketela 200 ketela Sig. SEBELUM N Subset for alpha = Means for groups in homogeneous subsets are displayed. a. Uses Harmonic Mean Sample Size = Descriptives SESUDAH 150 ketela 150 ketela 175 ketela 200 ketela % Confidence Interval for Mean N Mean Std. Deviation Std. Error Lower Bound Upper Bound Minimum Maximum Test of Homogeneity of Variances SESUDAH Levene Statistic df1 df2 Sig
7 41 Duncan a PERLAKUA ketela 150 ketela 175 ketela 200 ketela Sig. SESUDAH N Means for groups in homogeneous subsets are displayed. a. Uses Harmonic Mean Sample Size = Subset for alpha =
8 42 Lampiran 3. Hasil Uji Normalitas, Uji Homogenitas dan Uji One Way Asam Sebelum dan Sesudah Pemeraman Tests of Normality Kolmogorov-Smirnov a Shapiro-Wilk Statistic df Sig. Statistic df Sig. ASM_SEBE * ASM_SESU * *. This is a lower bound of the true significance. a. Lilliefors Significance Correction Descriptives ASM_SEBE kontrol ketela250 95% Confidence Interval for Mean N Mean Std. Deviation Std. Error Lower Bound Upper Bound Minimum Maximum E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E Test of Homogeneity of Variances ASM_SEBE Levene Statistic df1 df2 Sig Duncan a PERLAKUA kontrol ketela250 Sig. ASM_SEBE Subset for alpha =.05 N E E E E E E Means for groups in homogeneous subsets are displayed. a. Uses Harmonic Mean Sample Size =
9 43 Descriptives ASM_SESU kontrol ketela250 95% Confidence Interval for Mean N Mean Std. Deviation Std. Error Lower Bound Upper Bound Minimum Maximum E E E E E E E E E E E E E Test of Homogeneity of Variances ASM_SESU Levene Statistic df1 df2 Sig Duncan a PERLAKUA kontrol ketela250 Sig. ASM_SESU N Means for groups in homogeneous subsets are displayed. a. Uses Harmonic Mean Sample Size = Subset for alpha =
10 44 Lampiran 4. Hasil Uji Normalitas, Uji Homogenitas dan Uji One Way Jumlah Bakteri Asam Laktat, ph Sebelum dan Sesudah Pemeraman Tests of Normality Kolmogorov-Smirnov a Shapiro-Wilk Statistic df Sig. Statistic df Sig. BAL ** PHSEBEL * PHSESUD * **. This is an upper bound of the true significance. *. This is a lower bound of the true significance. a. Lilliefors Significance Correction Descriptives PHSEBEL 95% Confidence Interval for Mean N Mean Std. Deviation Std. Error Lower Bound Upper Bound Minimum Maximum E E E E E E E E E E E E E E Test of Homogeneity of Variances PHSEBEL Levene Statistic df1 df2 Sig
11 45 Duncan a PERLAKUA Sig. PHSEBEL Subset for alpha =.05 N Means for groups in homogeneous subsets are displayed. a. Uses Harmonic Mean Sample Size = Descriptives PHSESUD 95% Confidence Interval for Mean N Mean Std. Deviation Std. Error Lower Bound Upper Bound Minimum Maximum E E E E E E E E E E E E Test of Homogeneity of Variances PHSESUD Levene Statistic df1 df2 Sig
12 46 Duncan a PERLAKUA Sig. PHSESUD N Subset for alpha = Means for groups in homogeneous subsets are displayed. a. Uses Harmonic Mean Sample Size = Descriptives BAL 95% Confidence Interval for Mean N Mean Std. Deviation Std. Error Lower Bound Upper Bound Minimum Maximum E E E E E E E E E E E E E Test of Homogeneity of Variances BAL Levene Statistic df1 df2 Sig Duncan a PERLAKUA Sig. BAL N Means for groups in homogeneous subsets are displayed. a. Uses Harmonic Mean Sample Size = Subset for alpha =
13 47 Lampiran 5. Perkiraan harga Sawi hijau (600 g) Rp 4800 Beras (150 g) Rp 570 Garam (18 g) Rp 108 Lain lain Air Listrik Gas Rp 200 Rp 5678 Sawi hijau (600 g) Rp 4800 Ketela (150 g) Rp 150 Garam (18 g) Rp 324 Lain lain Air Listrik Gas Rp 200 Rp 5474 Sawi hijau (600 g) Rp 4800 Ketela (175 g) Rp 175 Garam (18 g) Rp 108 Lain lain Air Listrik Gas Rp 200 Rp 5283
14 48 Sawi hijau (600 g) Rp 4800 Ketela (200 g) Rp 200 Garam (18 g) Rp 108 Lain lain Air Listrik Gas Rp 200 Rp 5308 Sawi hijau (600 g) Rp 4800 Ketela (225 g) Rp 225 Garam (18 g) Rp 108 Lain lain Air Listrik Gas Rp 200 Rp 5333 Sawi hijau (600 g) Rp 4800 Ketela (250 g) Rp 250 Garam (18 g) Rp 108 Lain lain Air Listrik Gas Rp 200 Rp 5358
15 49 Lampiran 6. Kuesioner Uji Organoleptik KUESIONER UJI ORGANOLEPTIK Nama : Jenis Kelamin : Umur : Tanggal Pelaksanaan : Instruksi: Berikan penilaian Anda terhadap produk Sayur Asin dihadapan anda sesuai skor yang telah diberikan. Penilaian dilakukan untuk masing masing produk dan tiap tiap parameter. Pengisian dalam tabel disesuaikan dengan kode yang tercantum pada produk. SAMPEL PARAMETER Rasa Aroma Warna Kesukaan Penilaian : 5 : Sangat Suka 4 : Suka 3 : Cukup Suka 2 : Tidak Suka 1 : Sangat Tidak Suka
16 Lampiran 7. Perhitungan Jumlah Bakteri Asam Laktat Suspensi Ulangan Rata-rata log Beras (kontrol) E spreader Spreader E Spreader E Telo Spreader E E Spreader E Telo Spreader E Spreader E Spreader E Telo Spreader Spreader E E Spreader E telo Spreader Spreader E Spreader E Spreader E telo Spreader E Spreader E Spreader E
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