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Keywords = living and dying trees

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17 pages, 4080 KiB  
Article
Girl Mossing, Rotting, and Resistance: Relational Naturalism and Dying Well Together
by Hannah Gould and Anna Halafoff
Religions 2025, 16(4), 447; https://doi.org/10.3390/rel16040447 - 31 Mar 2025
Viewed by 1584
Abstract
Living and dying well together in the Anthropocene, in the context of intensifying climate crises, global pandemics, and fast-paced hustle culture, is an increasingly daunting task. While many wellness movements call for strict regimes and vigorous activity, striving for largely unattainable bodily norms [...] Read more.
Living and dying well together in the Anthropocene, in the context of intensifying climate crises, global pandemics, and fast-paced hustle culture, is an increasingly daunting task. While many wellness movements call for strict regimes and vigorous activity, striving for largely unattainable bodily norms and longevity, an emerging trend centres on embracing natural processes and temporalities of resistance focused on relaxation, rest, and even decay. So-called ‘girl mossing’ and ‘girl rotting’ encourage women to be intentionally unproductive, and to spend time instead lying on a forest floor, staring up at a canopy of trees, caressing moss. Similarly, members of the ‘death positive’ and ‘new death’ movements advocate for sensorial connection with nature at the end of life, and for an embrace of practices of decay and decomposition. Both trends are dominated by women and influenced by Buddhist and Pagan traditions. They also exemplify spiritual complexity, particularly relating to biomedicine and consumerism. Examining these interconnected lifestyle and deathstyle movements, this article considers the uptake of ‘relational naturalism’ in contemporary societies as an antidote to the personal and planetary harms of neoliberal capitalism. Full article
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18 pages, 3615 KiB  
Article
Diffusion Mechanisms for Both Living and Dying Trees Across 37 Years in a Forest Stand in Lithuania’s Kazlų Rūda Region
by Edmundas Petrauskas and Petras Rupšys
Symmetry 2025, 17(2), 213; https://doi.org/10.3390/sym17020213 - 31 Jan 2025
Viewed by 568
Abstract
This study aimed to examine changes in the number of live and dying trees in central Lithuanian forests over time. Results were obtained using stochastic differential equations combined with the normal copula function. The examination of each tree’s individual size variables (height and [...] Read more.
This study aimed to examine changes in the number of live and dying trees in central Lithuanian forests over time. Results were obtained using stochastic differential equations combined with the normal copula function. The examination of each tree’s individual size variables (height and diameter) showed that the mean values of dead or dying trees’ size variables had significantly lower trajectories that were particularly pronounced in mature stands. According to the data set under examination, the tree mortality rate gradually declined with age, reaching approximately 7% after 10 years. Birch trees 60–70 years old were the first species to reach the 1% mortality rate, followed by spruce trees 70–80 years old and pine trees 80–90 years old. The Maple symbolic algebra system was used to implement all results. Full article
(This article belongs to the Special Issue Symmetry/Asymmetry of Differential Equations in Biomathematics)
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23 pages, 4586 KiB  
Article
Enhanced Preprocessing Approach Using Ensemble Machine Learning Algorithms for Detecting Liver Disease
by Abdul Quadir Md, Sanika Kulkarni, Christy Jackson Joshua, Tejas Vaichole, Senthilkumar Mohan and Celestine Iwendi
Biomedicines 2023, 11(2), 581; https://doi.org/10.3390/biomedicines11020581 - 16 Feb 2023
Cited by 71 | Viewed by 5612
Abstract
There has been a sharp increase in liver disease globally, and many people are dying without even knowing that they have it. As a result of its limited symptoms, it is extremely difficult to detect liver disease until the very last stage. In [...] Read more.
There has been a sharp increase in liver disease globally, and many people are dying without even knowing that they have it. As a result of its limited symptoms, it is extremely difficult to detect liver disease until the very last stage. In the event of early detection, patients can begin treatment earlier, thereby saving their lives. It has become increasingly popular to use ensemble learning algorithms since they perform better than traditional machine learning algorithms. In this context, this paper proposes a novel architecture based on ensemble learning and enhanced preprocessing to predict liver disease using the Indian Liver Patient Dataset (ILPD). Six ensemble learning algorithms are applied to the ILPD, and their results are compared to those obtained with existing studies. The proposed model uses several data preprocessing methods, such as data balancing, feature scaling, and feature selection, to improve the accuracy with appropriate imputations. Multivariate imputation is applied to fill in missing values. On skewed columns, log1p transformation was applied, along with standardization, min–max scaling, maximum absolute scaling, and robust scaling techniques. The selection of features is carried out based on several methods including univariate selection, feature importance, and correlation matrix. These enhanced preprocessed data are trained on Gradient boosting, XGBoost, Bagging, Random Forest, Extra Tree, and Stacking ensemble learning algorithms. The results of the six models were compared with each other, as well as with the models used in other research works. The proposed model using extra tree classifier and random forest, outperformed the other methods with the highest testing accuracy of 91.82% and 86.06%, respectively, portraying our method as a real-world solution for detecting liver disease. Full article
(This article belongs to the Topic Machine Learning Techniques Driven Medicine Analysis)
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11 pages, 2044 KiB  
Technical Note
Assessment of Canopy Health with Drone-Based Orthoimagery in a Southern Appalachian Red Spruce Forest
by Ryley C. Harris, Lisa M. Kennedy, Thomas J. Pingel and Valerie A. Thomas
Remote Sens. 2022, 14(6), 1341; https://doi.org/10.3390/rs14061341 - 10 Mar 2022
Cited by 13 | Viewed by 4116
Abstract
Consumer-grade drone-produced digital orthoimagery is a valuable tool for conservation management and enables the low-cost monitoring of remote ecosystems. This study demonstrates the applicability of RGB orthoimagery for the assessment of forest health at the scale of individual trees in a 46-hectare plot [...] Read more.
Consumer-grade drone-produced digital orthoimagery is a valuable tool for conservation management and enables the low-cost monitoring of remote ecosystems. This study demonstrates the applicability of RGB orthoimagery for the assessment of forest health at the scale of individual trees in a 46-hectare plot of rare southern Appalachian red spruce forest on Whitetop Mountain, Virginia. We used photogrammetric Structure from Motion software Pix4Dmapper with drone-collected imagery to generate a mosaic for point cloud reconstruction and orthoimagery of the plot. Using 3-band RBG digital orthoimagery, we visually classified 9402 red spruce individuals, finding 8700 healthy (92.5%), 251 declining/dying (2.6%), and 451 dead (4.8%). We mapped individual spruce trees in each class and produced kernel density maps of health classes (live, dead, and dying). Our approach provided a nearly gap-free assessment of the red spruce canopy in our study site, versus a much more time-intensive field survey. Our maps provided useful information on stand mortality patterns and canopy gaps that could be used by managers to identify optimal locations for selective thinning to facilitate understory sapling regeneration. This approach, dependent mainly on an off-the-shelf drone system and visual interpretation of orthoimagery, could be applied by land managers to measure forest health in other spruce, or possibly spruce-fir, communities in the Appalachians. Our study highlights the usefulness of drone-produced orthoimagery for conservation monitoring, presenting a valid and accessible protocol for the monitoring and assessment of forest health in remote spruce, and possibly other conifer, populations. Adoption of drone-based monitoring may be especially useful in light of climate change and the possible displacement of southern Appalachian red spruce (and spruce-fir) ecosystems by the upslope migration of deciduous trees. Full article
(This article belongs to the Special Issue Drones for Ecology and Conservation)
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17 pages, 1367 KiB  
Article
The Effects of Crown Scorch on Post-fire Delayed Mortality Are Modified by Drought Exposure in California (USA)
by Jason S. Barker, Andrew N. Gray and Jeremy S. Fried
Fire 2022, 5(1), 21; https://doi.org/10.3390/fire5010021 - 2 Feb 2022
Cited by 15 | Viewed by 4570
Abstract
Accurately predicting the mortality of trees that initially survive a fire event is important for management, such as planning post-fire salvage, planting, and prescribed fires. Although crown scorch has been successfully used to predict post-fire mortality (greater than one-year post-fire), it remains unclear [...] Read more.
Accurately predicting the mortality of trees that initially survive a fire event is important for management, such as planning post-fire salvage, planting, and prescribed fires. Although crown scorch has been successfully used to predict post-fire mortality (greater than one-year post-fire), it remains unclear whether other first-order fire effect metrics (e.g., stem char) and information on growing conditions can improve such predictions. Droughts can also elevate mortality and may interact, synergistically, with fire effects to influence post-fire tree survival. We used logistic regression to test whether drought exposure, as indicated by summarized monthly Palmer Drought Severity Index (PDSI) over ten-years could improve predictions of delayed mortality (4–9 years post-fire) at the individual tree level in fire-affected forest inventory and analysis (FIA) plots in California (USA). We included crown scorch, bark thickness, stem char, soil char, slope, and aspect in the model as predictors. We selected the six most prevalent species to include in the model: canyon live oak, Douglas-fir, Jeffrey pine, incense-cedar, ponderosa pine, and white fir. Mean delayed mortality, based on tree count, across all FIA plots across all tree species and plots was 17%, and overall accuracy was good (AUC = 79%). Our model performed well, correctly predicting survivor trees (sensitivity of 0.98) but had difficulty correctly predicting the smaller number of mortality trees (specificity of 0.27) at the standard probability=0.5 mortality threshold. Crown scorch was the most influential predictor of tree mortality. Increasing crown scorch was associated with greater risk of delayed mortality for all six species, with trees exhibiting over 75% crown scorch having a probability of dying that exceeded 0.5. Increasing levels of stem char and soil char (first order indicators) were associated with increasing mortality risk but to less effect than crown scorch. We expected that greater drought exposure would increase delayed post-fire mortality, but we found that increasing drought exposure (median and minimum PDSI) was associated with a modest decrease in post-fire mortality. However, we did find that trees with high levels of crown scorch were less likely to survive with increasing drought exposure (median PDSI). Delayed mortality risk decreased as terrain slope increased. Taken together, our results suggest that trees with substantial crown damage may be more vulnerable to delayed mortality if exposed to drought and that crown scorch is an effective post-fire mortality predictor up to 10 years post-fire. Full article
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21 pages, 2313 KiB  
Article
Modeling of Dead Wood Potential Based on Tree Stand Data
by Ninni Mikkonen, Niko Leikola, Panu Halme, Einari Heinaro, Ari Lahtinen and Topi Tanhuanpää
Forests 2020, 11(9), 913; https://doi.org/10.3390/f11090913 - 20 Aug 2020
Cited by 9 | Viewed by 5980
Abstract
Here we present a framework for identifying areas with high dead wood potential (DWP) for conservation planning needs. The amount and quality of dead wood and dying trees are some of the most important factors for biodiversity in forests. As they [...] Read more.
Here we present a framework for identifying areas with high dead wood potential (DWP) for conservation planning needs. The amount and quality of dead wood and dying trees are some of the most important factors for biodiversity in forests. As they are easy to recognize on site, it is widely used as a surrogate marker for ecological quality of forests. However, wall-to-wall information on dead wood is rarely available on a large scale as field data collection is expensive and local dead wood conditions change rapidly. Our method is based on the forest growth models in the Motti forest simulator, taking into account 168 combinations of tree species, site types, and vegetation zones as well as recommendations on forest management. Simulated estimates of stand-level dead wood volume and mean diameter at breast height were converted into DWP functions. The accuracy of the method was validated on two sites in southern and northeastern Finland, both consisting of managed and conserved boreal forests. Altogether, 203 field plots were measured for living and dead trees. Data on living trees were inserted into corresponding DWP functions and the resulting DWPs were compared to the measured dead wood volumes. Our results show that DWP modeling is an operable tool, yet the accuracy differs between areas. The DWP performs best in near-pristine southern forests known for their exceptionally good quality areas. In northeastern areas with a history of softer management, the differences between near-pristine and managed forests is not as clear. While accurate wall-to-wall dead wood inventory is not available, we recommend using DWP method together with other spatial datasets when assessing biodiversity values of forests. Full article
(This article belongs to the Section Forest Ecology and Management)
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