Lampiran 1. Peta Jalur Penelitian di Stasiun Penelitian Hutan Batang Toru Blok Barat Tapanuli Utara

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1 56 Lampiran 1. Peta Jalur Penelitian di Stasiun Penelitian Hutan Batang Toru Blok Barat Tapanuli Utara

2 57 Lampiran 2. Tabulasi Data No Individu Jam Kegiatan Item Jenis Tinggi Kanopi (meter) 1 Beta 7.44 F Fr Syzigium sp Beta 7.46 F Fr Syzigium sp Beta 7.48 F Fr Syzigium sp Beta 7.5 F Fr Syzigium sp Beta 7.52 F Fr Syzigium sp Beta 7.54 M 20 7 Beta 7.56 F Pith Frecinetia sp Beta 7.58 F Pith Frecinetia sp Beta 8 F Pith Frecinetia sp Beta 8.02 F Pith Frecinetia sp Beta 8.04 F Fl Frecinetia sp Beta 8.06 F Fr Camnosperma auriculatum Beta 8.08 F Fr Camnosperma auriculatum Beta 8.1 F Fr Camnosperma auriculatum Beta 8.12 F Fr Camnosperma auriculatum Beta 8.14 F Fr Camnosperma auriculatum Beta 8.16 F Fr Camnosperma auriculatum Beta 8.18 F Pith Frecinetia sp Beta 8.2 F Pith Frecinetia sp Beta 8.22 M Beta 8.24 F Pith Frecinetia sp Beta 8.26 F Pith Frecinetia sp Beta 8.28 R Beta 8.3 M Beta 8.32 F Fr Camnosperma auriculatum Beta 8.34 F Fr Camnosperma auriculatum Beta 8.36 F Fr Camnosperma auriculatum Beta 8.38 F Fr Camnosperma auriculatum Beta 8.4 F Fr Camnosperma auriculatum Beta 8.42 F Fr Camnosperma auriculatum Beta 8.44 F Fr Camnosperma auriculatum Beta 8.46 F Fr Camnosperma auriculatum Beta 8.48 F Fr Camnosperma auriculatum Beta 8.5 F Fr Camnosperma auriculatum Beta 8.52 F Fr Camnosperma auriculatum Beta 8.54 F Fr Camnosperma auriculatum Beta 8.56 F Fr Camnosperma auriculatum Beta 8.58 F Fr Camnosperma auriculatum Beta 9 F Fr Camnosperma auriculatum Beta 9.02 F Fr Camnosperma auriculatum Beta 9.04 F Fr Camnosperma auriculatum Beta 9.06 F Fr Camnosperma auriculatum Beta 9.08 F Fr Camnosperma auriculatum Beta 9.1 F Fr Camnosperma auriculatum 20

3 58 45 Beta 9.12 F Fr Camnosperma auriculatum Beta 9.14 F Fr Camnosperma auriculatum Beta 9.16 F Fr Camnosperma auriculatum Beta 9.18 F Fr Camnosperma auriculatum Beta 9.2 F Fr Camnosperma auriculatum Beta 9.22 F Fr Camnosperma auriculatum Beta 9.24 M Beta 9.26 F Pith Frecinetia sp Beta 9.28 F Pith Frecinetia sp Beta 9.3 M Beta 9.32 M Beta 9.34 R Beta 9.36 M Beta 9.38 F Pith Frecinetia sp Beta 9.4 F Lv Liana Beta 9.42 F Lv Liana Beta 9.44 F Lv Liana Beta 9.46 F Lv Liana Beta 9.48 M Beta 9.5 M Beta 9.52 M Beta 9.54 F Fr Camnosperma auriculatum Beta 9.56 F Fr Camnosperma auriculatum Beta 9.58 M Beta 10 F Lv Cinnamomun iners Beta F Lv Cinnamomun iners Beta F Lv Cinnamomun iners Beta F Lv Cinnamomun iners Beta F Lv Cinnamomun iners Beta 10.1 M Beta R Beta F Pith Frecinetia sp Beta F Pith Frecinetia sp Beta M Beta 10.2 M Beta M Beta F Pith Frecinetia sp Beta F Pith Frecinetia sp Beta F Pith Frecinetia sp Beta F Pith Frecinetia sp Beta F Pith Frecinetia sp Beta F pith Frecinetia sp. 20

4 59 Lampiran 3. Foto Orangutan di Stasiun Penelitian Hutan Batang Toru Blok Barat Beti (estimasi umur 6-10 tahun) C (estimasi umur tahun) Ipank (estimasi umur tahun) Inda (estimasi umur tahun)

5 60 Gilang (Data tidak ada diambil) ` Beta (estimasi umur tahun) Riti (estimasi umur tahun)

6 61 Lampiran 4. Foto Pakan Orangutan Antiaris toxicaria Buah liana Eurya trichocarpa Xanthophyllum sp. Ficus sinuate Bambusa sp3. Daemonorops sp. Freycinetia imbricata Syzygium helferi

7 62 Lampiran 5. Daftar Pakan Orangutan Yang Teridentifikasi No. No. Label Famili Spesies 1 ZB 01 Pandanaceae Freycinetia sumatrana Hamsky. 2 ZB 02 Pandanaceae Pandanus helicopus Kurz. 3 ZB 16 Pandanaceae Freycinetia imbricata Blume. 4 ZB 17 Pandanaceae Pandanus artocarpus GRIF. 5 ZB 18 Euphorbiaceae Baccaurea sp. 6 ZB 20 Alangiaceae Alangium sp. 7 ZB 22 Orchidaceae Dipodium sp. 8 ZB 23 Fagaceae Castanopsis costata A.DC. 9 ZB 25 Myrsinaceae Melaleuca sp. 10 ZB 27 Moraceae Ficus grossularioides Burm. 11 ZB 29 Orchidaceae Bulbophyllum sp. 12 ZB 30 Orchidaceae Spathoglottis sp. 13 ZB 31 Orchidaceae Dendrobium sp. 14 ZB 33 Arecaceae Daemonorops sp. 15 ZB 34 Sapotaceae Palaquim sp. 16 ZB 35 Myrtaceae Syzygium helferi Duthie. 17 ZB 36 Moraceae Ficus magnoliaefolia Bl. 18 ZB 37 Moraceae Ficus ribes Reinw. 19 ZB 38 Flacourticaceae Hydnocarpus sp. 20 ZB 39 Moraceae Ficus deltoidea Jack. 21 ZB 40 Arecaceae Korthalsia grandis RIDL. 22 ZB 41 Moraceae Ficus fistulosa Reinw. 23 ZB 42 Orchidaceae Cymbidium sp. 24 ZB 43 Pandanaceae Pandanus sp. 25 ZB 44 Arecaceae Calamus caesius Bl. 26 ZB 45 Poaceae Bambusa sp.1 27 ZB 46 Poaceae Bambusa sp.2 28 ZB 47 Poaceae Bambusa sp.3 29 ZB 48 Moraceae Ficus sinuata Thunb. 30 ZB 49 Marantaceae Clinogyne sp. 31 ZB 50 Anacardiaceae Dracontomelum mangiferum Bl. 32 ZB 51 Myrtaceae Syzygium cymosa LAM. 33 ZB 52 Moraceae Artocarpus elasticus Reinw. 34 ZB 53 Moraceae Antiaris toxicaria Lesch. 35 ZB 54 Flagellariaceae Flagellaria indica L. 36 ZB 56 Theaceae Eurya trichocarpa Korth. 37 ZB 57 Myrtaceae Syzygium claviflora Roxb. 38 ZB 59 Polygalaceae Xanthophyllum sp. 39 ZB 60 Lauraceae Cinnamomum sp.

8 63 40 ZB 80 Sapotaceae Madhuca sp. 41 ZB 3 Moraceae Arthocarpus sp. 42 ZB 4 Araucariaceae Agathis borneensis 43 ZB 5 Sapotaceae Palakium rostratum 44 ZB 6 Sapotaceae Maduca laurifolia 45 ZB 7 Myrsinaceae Labisia sp. 46 ZB 8 Ulmaceae Gironera parfivolia 47 ZB 9 Ulmaceae Gironera subaequalis 48 ZB 10 Anacardiaceae Camnosperma auriculatum 49 ZB 11 Casuarinaceae Gimnostoma sumaterana 50 ZB 12 Fagaceae Lithocarpus sp. 51 ZB 13 Sapotaceae Maduca kunstuleri 52 ZB 14 Fabaceae Parkia speciosa 53 ZB 15 Moraceae Ficus sp. 54 ZB 19 Myrtaceae Syzigium sp. 55 ZB 21 Myrtaceae Rhodomnia sp. 56 ZB 24 Lauraceae Cinnamomun iners 57 ZB 26 Clusiaceae Garcinia sp. 58 ZB 28 Podocarpaceae Dacrydium beccarii 59 ZB 32 Buah legume 60 ZB 55 Liana fog 61 ZB 58 Liana kantong 62 ZB 61 Liana sulur 63 ZB 62 Liana gitan 64 ZB 63 Formicidae Xenomyrmex sp. 65 ZB 64 Termitidae Macrotermes sp.

9 64 Lampiran 6. Hasil Statistic Programme for Scientific and Social science (SPSS) 19,0 A. Crosstabs Aktifitas Harian Case Processing Summary Individu_Orangutan * Kegiatan Cases Valid Missing Total N Percent N Percent N Percent % 5.1% % Individu_Orangutan * Kegiatan Crosstabulation Aktifitas Harian Makan Bergerak Istirahat Sosial Total Individu Orangutan Betina_Dewasa 71.3% 16.9% 9.8% 2.0% 100.0% Betina_Remaja 59.1% 25.6% 9.5% 5.8% 100.0% Jantan_Remaja 65.7% 17.7% 15.7%.9% 100.0% Total 65.0% 21.0% 10.4% 3.6% 100.0% B. Kruskal-Wallis Test Aktifitas Harian Individu_Orangutan N Mean Rank Kegiatan Betina_Dewasa Betina_Remaja Jantan_Remaja Total 9980,b Kegiatan Chi-Square Df 2 Asymp. Sig..000 a. Kruskal Wallis Test b. Grouping Variable: Individu_Orangutan

10 65 C. Mann-Whitney Test Aktifitas Harian Orangutan Individu_Orangutan N Mean Rank Sum of Kegiatan Betina_Dewasa Betina_Remaja Total 8698 Kegiatan Mann-Whitney U Wilcoxon W 1.675E7 Z Asymp. Sig. (2-tailed).000 Mann-Whitney Test Individu_Orangutan N Mean Rank Sum of Kegiatan Betina_Dewasa Jantan_Remaja Total 5395 Kegiatan Mann-Whitney U Wilcoxon W 1.094E7 Z Asymp. Sig. (2-tailed).000 Mann-Whitney Test Individu_Orangutan N Mean Rank Sum of Kegiatan Betina_Remaja Jantan_Remaja Total 5867

11 66 Kegiatan Mann-Whitney U Wilcoxon W Z Asymp. Sig. (2-tailed).000 D. Crosstabs Persentase Jenis Makanan Case Processing Summary Cases Valid Missing Total N Percent N Percent N Percent Individu_Orangutan * Item % 0.0% % Individu_Orangutan * Item Crosstabulation Item Kulit seran bunga buah kayu gga daun Umbut Total Individu_Orangutan Betina_Dewasa 2.1% 65.5% 6.6% 2.1% 15.1% 8.6% 100.0% Betina_Remaja 12.3% 57.3% 1.2%.9% 15.3% 13.0% 100.0% Jantan_Remaja 2.4% 69.8% 1.5% 16.2% 10.1% 100.0% Total 6.4% 62.6% 3.5% 1.5% 15.3% 10.6% 100.0% D. Kruskal-Wallis Individu_Orangutan N Mean Rank Item Betina_Dewasa Betina_Remaja Jantan_Remaja Total 6540

12 67,b Item Chi-Square Df 2 Asymp. Sig..000 a. Kruskal Wallis Test b. Grouping Variable: Individu_Orangutan E. Mann-Whitney Test Individu_Oranguta n N Mean Rank Sum of Item Betina_Dewasa Betina_Remaja Total 5677 Item Mann-Whitney U Wilcoxon W Z Asymp. Sig. (2-tailed).000 Mann-Whitney Test Individu_Orangutan N Mean Rank Sum of Item Betina_Dewasa Jantan_Remaja Total 3800 Item Mann-Whitney U Wilcoxon W Z Asymp. Sig. (2-tailed).163

13 68 Mann-Whitney Test Individu_Orangutan N Mean Rank Sum of Item Betina_Remaja Jantan_Remaja Total 3603 Item Mann-Whitney U Wilcoxon W Z Asymp. Sig. (2-tailed).031 F. Penggunaan Kanopi Case Processing Summary Cases Valid Missing Total N Percent N Percent N Percent Individu_Orangutan * % 0.0% % Tinggi Chi-Square Tests Value Df Asymp. Sig. (2-sided) Pearson Chi-Square a Likelihood Ratio Linear-by-Linear Association N of Valid Cases 6540

14 69 Chi-Square Tests Value Df Asymp. Sig. (2-sided) Pearson Chi-Square a Likelihood Ratio Linear-by-Linear Association N of Valid Cases 6540 a. 0 cells (.0%) have expected count less than 5. The minimum expected count is G. Kruskal-Wallis Test Individu_Orangut an N Mean Rank Tinggi Betina_Dewasa Betina_Remaja Jantan_Remaja Total 6540,b Tinggi Chi-Square Df 2 Asymp. Sig..000 a. Kruskal Wallis Test b. Grouping Variable: Individu_Orangutan F. Mann-Whitney Test Individu_Orangut Mean Sum of an N Rank Tinggi Betina_Dewasa Jantan_Remaja Total 3800 Tinggi Mann-Whitney U Wilcoxon W Z Asymp. Sig. (2-tailed).001

15 70 Mann-Whitney Test Individu_Orangut Mean Sum of an N Rank Tinggi Betina_Dewasa Betina_Remaja Total 5677 Tinggi Mann-Whitney U Wilcoxon W Z Asymp. Sig. (2-tailed).000 Mann-Whitney Test Individu_Orangut Mean Sum of an N Rank Tinggi Betina_Remaja Jantan_Remaja Total 3603 Tinggi Mann-Whitney U Wilcoxon W Z Asymp. Sig. ( tailed) a. Grouping Variable: Individu_Orangutan

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