Yudaputra, Angga and Munawaroh, Esti and Usmadi, Didi and Purnomo, Danang Wahyu and Astuti, Inggit Puji and Puspitaningtyas, Dwi Murti and Handayani, Tri and Garvita, R. Vitri and Aprilianti, Popi and Wawangningrum, Hary and Renjana, Elga and Handini, Elizabeth and Angio, Melisnawati H. and Firdiana, Elok Rifqi and Witono, Joko Ridho and Juswara, Lina Susanti and Fijridiyanto, Izu Andry and Ariati, Siti Roosita and Yuzammi, Yuzammi and Sudarmono, Sudarmono and Wanda, Irvan Fadli and Wibowo, Aninda Retno Utami and Wati, Richa Kusuma and Hutabarat, Prima Wahyu Kusuma and Raharjo, Puguh Dwi and Mar'atus Solihah, Saniyatun and Saputra, Reza and Cropper, Wendell P. (2024) Vulnerability of lowland and upland orchids in their spatially response to climate change and land cover change. Ecological Informatics, 80. p. 102534. ISSN 15749541
Full text not available from this repository. (Request a copy)Abstract
Climate change and land cover change often interactively affect plant species distributions. This study addresses the vulnerability of lowland and upland orchids to climate change and land cover change. Endemic orchids of New Guinea were grouped into four classes (lowland epiphyte, lowland terrestrial, upland epiphyte, upland terrestrial) based on their life form and elevation range. Forty occurrence records of endemic orchids were selected for each class, totaling 160 occurrence records. Ensemble modelling combining two machine learning algorithms was used to generate predictive current and future suitable areas for orchid classes. Model performance was evaluated using the AUC and TSS metrics. Suitable areas for both lowland and upland orchids (epiphyte and terrestrial) were predicted decrease in the future due to climate change and land cover change. The loss of suitable areas for upland terrestrial orchids was predicted to be most significant in the worst-case climate change scenario (SSP 5–8.5). Both lowland and upland orchids (epiphyte and terrestrial) tend to shift to higher elevation ranges from the present distributions. The predictive models have AUC values >0.90 and TSS value >0.80, indicating the models have excellent potential for predicting the impact of climate change and land cover change on orchid distributions.
| Item Type: | Article |
|---|---|
| Uncontrolled Keywords: | Ensemble model, Climate change, Species distribution model, Orchids, Lowland, Upland, New Guinea |
| Subjects: | Natural Resources & Earth Sciences Medicine & Biology |
| Depositing User: | Rizzal Rosiyan |
| Date Deposited: | 05 Nov 2025 02:52 |
| Last Modified: | 05 Nov 2025 02:52 |
| URI: | https://karya.brin.go.id/id/eprint/54746 |


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