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Search Word: Network analysis, Search Result: 5
1
Ju-Duk Yoon(Research Center for Endangered Species, National Institute of Ecology) ; Kwanik Kwon(Research Center for Endangered Species, National Institute of Ecology) ; Jeongwoo Yoo(Research Center for Endangered Species, National Institute of Ecology) ; Nakyung Yoo(Research Center for Endangered Species, National Institute of Ecology) 2021, Vol.2, No.4, pp.247-258 https://doi.org/10.22920/PNIE.2021.2.4.247
초록보기
Abstract

To understand restoration and conservation projects conducted in Korea for endangered freshwater fishes and amphibians/reptiles, information about Request for Protocols-related studies on restoration, breeding, and release were collected. Trends of studies were visualized via word clouds and VOSviewer program using a text mining technique. Analysis of restoration projects for endangered freshwater fishes elucidated that most research studies conducted to date were focused on genetics and release through captive breeding that could be classified into captive breeding and habitat environments. As for research projects related to amphibians/reptiles, monitoring projects had the highest number, followed by genetic, translocation, and monitoring studies. In addition, restoration projects for amphibians/reptiles included a large number of post-capture translocation projects. Thus, many projects were confirmed by public institutions rather than by the Ministry of Environment. Network analysis revealed that it was largely classified into capture, translocation, and Kaloula borealis. Based on these results, limitations, achievements, and challenges associated with projects conducted thus far are highlighted. Research directions for future restoration and conservation of endangered freshwater fishes and amphibians/reptiles in South Korea are also suggested.


2
Hyunjin Seo(National Institute of Ecology) ; Haejin Bae(National Institute of Ecology) ; Sun-Joong Kim(HomoMimicus Co. Ltd.) ; Jinhee Kim(National Institute of Ecology) 2022, Vol.3, No.3, pp.178-186 https://doi.org/10.22920/PNIE.2022.3.3.178
초록보기
Abstract

In order to support biomimicry technology development, it is necessary to develop an omnidirectional service platform which can recommend principles of biomimicry and business ideas, providing experts’ networks and carrying out their relevant education and promotion on the ground of baseline data and application research materials related to biomimicry. This study was conducted to establish any probable plans for construction and utilization of the future open-platform which will collect and serve the technology of biomimicry. Accordingly, biological and ecological information databases were examined along with the appreciation of construction and management of major biomimicry DB, and, based on the materials from the interview of related experts, a customer journey map was schematized. Lastly, in order to suggest a mid-to-long-term target-model, the roles of a future biomimicry knowledge service-platform were determined along with the potential plans for its construction and management based on case analysis and customers’ needs.


3
Seung Woo Son(Department of Land and Water Environment Research, Korea Environment Institute) ; Jae Jin Yu(Department of Land and Water Environment Research, Korea Environment Institute) ; Dong Woo Kim(Department of Land and Water Environment Research, Korea Environment Institute) ; Hyun Su Park(Team of Ecosystem Service, National Institute of Ecology) ; Jeong Ho Yoon(Department of Land and Water Environment Research, Korea Environment Institute) 2021, Vol.2, No.4, pp.298-304 https://doi.org/10.22920/PNIE.2021.2.4.298
초록보기
Abstract

This study aimed to determine the applicability of drones and air quality sensors in environmental monitoring of air pollutant emissions by developing and testing two new methods. The first method used orthoimagery for precise monitoring of pollutant-emitting facilities. The second method used atmospheric sensors for monitoring air pollutants in emissions. Results showed that ground sample distance could be established within 5 cm during the creation of orthoimagery for monitoring emissions, which allowed for detailed examination of facilities with naked eyes. For air quality monitoring, drones were flown on a fixed course and measured the air quality in point units, thus enabling mapping of air quality through spatial analysis. Sensors that could measure various substances were used during this process. Data on particulate matter were compared with data from the National Air Pollution Measurement Network to determine its future potential to leverage. However, technical development and applications for environmental monitoring of pollution-emitting facilities are still in their early stages. They could be limited by meteorological conditions and sensitivity of the sensor technology. This research is expected to provide guidelines for environmental monitoring of pollutant-emitting facilities using drones.


4
Deokjin Joo(Hashed) ; Jungmin You(Research Institute of Ecoscience, Ewha Womans University) ; Yong-Jin Won(Division of EcoScience, Ewha Womans University) 2022, Vol.3, No.2, pp.67-72 https://doi.org/10.22920/PNIE.2022.3.2.67
초록보기
Abstract

Ecological research relies on the interpretation of large amounts of visual data obtained from extensive wildlife surveys, but such large-scale image interpretation is costly and time-consuming. Using an artificial intelligence (AI) machine learning model, especially convolution neural networks (CNN), it is possible to streamline these manual tasks on image information and to protect wildlife and record and predict behavior. Ecological research using deep- learning-based object recognition technology includes various research purposes such as identifying, detecting, and identifying species of wild animals, and identification of the location of poachers in real-time. These advances in the application of AI technology can enable efficient management of endangered wildlife, animal detection in various environments, and real-time analysis of image information collected by unmanned aerial vehicles. Furthermore, the need for school education and social use on biodiversity and environmental issues using AI is raised. School education and citizen science related to ecological activities using AI technology can enhance environmental awareness, and strengthen more knowledge and problem-solving skills in science and research processes. Under these prospects, in this paper, we compare the results of our early 2013 study, which automatically identified African cichlid fish species using photographic data of them, with the results of reanalysis by CNN deep learning method. By using PyTorch and PyTorch Lightning frameworks, we achieve an accuracy of 82.54% and an F1-score of 0.77 with minimal programming and data preprocessing effort. This is a significant improvement over the previous our machine learning methods, which required heavy feature engineering costs and had 78% accuracy.

5
Saro Lee(Geoscience Platform Division, Korea Institute of Geoscience and Mineral Resources (KIGAM)) ; Fatemeh Rezaie(Department of Geophysical Exploration, Korea University of Science and Technology) 2021, Vol.2, No.1, pp.1-14 https://doi.org/10.22920/PNIE.2021.2.1.1
초록보기
Abstract

The study has been carried out with an objective to prepare Siberian roe deer habitat potential maps in South Korea based on three geographic information system-based models including frequency ratio (FR) as a bivariate statistical approach as well as convolutional neural network (CNN) and long short-term memory (LSTM) as machine learning algorithms. According to field observations, 741 locations were reported as roe deer’s habitat preferences. The dataset were divided with a proportion of 70:30 for constructing models and validation purposes. Through FR model, a total of 10 influential factors were opted for the modelling process, namely altitude, valley depth, slope height, topographic position index (TPI), topographic wetness index (TWI), normalized difference water index, drainage density, road density, radar intensity, and morphological feature. The results of variable importance analysis determined that TPI, TWI, altitude and valley depth have higher impact on predicting. Furthermore, the area under the receiver operating characteristic (ROC) curve was applied to assess the prediction accuracies of three models. The results showed that all the models almost have similar performances, but LSTM model had relatively higher prediction ability in comparison to FR and CNN models with the accuracy of 76% and 73% during the training and validation process. The obtained map of LSTM model was categorized into five classes of potentiality including very low, low, moderate, high and very high with proportions of 19.70%, 19.81%, 19.31%, 19.86%, and 21.31%, respectively. The resultant potential maps may be valuable to monitor and preserve the Siberian roe deer habitats.


Proceedings of the National Institute of Ecology of the Republic of Korea