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Keywords = American black cherry

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12 pages, 2498 KB  
Article
Simulating the Sawing of Beech (Fagus grandifolia) and Birch (Betula papyrifa) Logs
by Urs Buehlmann and R. Edward Thomas
Forests 2026, 17(6), 665; https://doi.org/10.3390/f17060665 - 30 May 2026
Viewed by 215
Abstract
One of the most important metrics for analyzing hardwood sawmill performance with respect to profitability is knowing the expected yield from any specific log. The Log Recovery Analysis Tool (LORCAT) is a spreadsheet-based sawmill simulation and analysis tool that was developed to provide [...] Read more.
One of the most important metrics for analyzing hardwood sawmill performance with respect to profitability is knowing the expected yield from any specific log. The Log Recovery Analysis Tool (LORCAT) is a spreadsheet-based sawmill simulation and analysis tool that was developed to provide this information. As such, LORCAT depends on recorded grade recovery data to determine the quality and volume using the NHLA grade of the sawn lumber. Recently, the grade recovery data of LORCAT was expanded to include beech (Fagus grandifolia) and paper birch (Betula papyrifa), allowing the software to simulate sawing and analysis of these species. While the data are based on North American species, grading systems, and economic assumptions, with differences in species, silvicultural, logging (bucking), and sawing practices acknowledged, LORCAT can be used to emulate the sawing of European logs. Overall, LORCAT can simulate and analyze the sawing of 13 common North American hardwood species (red oak, white oak, black oak, scarlet oak, chestnut oak, red maple, sugar maple, yellow poplar, American beech, paper birch, yellow birch, black cherry, and basswood) for small-end diameters ranging from 20 cm to 90 cm, and report the volume and the quality of lumber produced, as well as the volume and weight of residual products. Full article
(This article belongs to the Special Issue 12th Hardwood Conference—Sopron)
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12 pages, 2334 KB  
Article
CentralBark Image Dataset and Tree Species Classification Using Deep Learning
by Charles Warner, Fanyou Wu, Rado Gazo, Bedrich Benes, Nicole Kong and Songlin Fei
Algorithms 2024, 17(5), 179; https://doi.org/10.3390/a17050179 - 27 Apr 2024
Cited by 6 | Viewed by 7294
Abstract
The task of tree species classification through deep learning has been challenging for the forestry community, and the lack of standardized datasets has hindered further progress. Our work presents a solution in the form of a large bark image dataset called CentralBark, which [...] Read more.
The task of tree species classification through deep learning has been challenging for the forestry community, and the lack of standardized datasets has hindered further progress. Our work presents a solution in the form of a large bark image dataset called CentralBark, which enhances the deep learning-based tree species classification. Additionally, we have laid out an efficient and repeatable data collection protocol to assist future works in an organized manner. The dataset contains images of 25 central hardwood and Appalachian region tree species, with over 19,000 images of varying diameters, light, and moisture conditions. We tested 25 species: elm, oak, American basswood, American beech, American elm, American sycamore, bitternut hickory, black cherry, black locust, black oak, black walnut, eastern cottonwood, hackberry, honey locust, northern red oak, Ohio buckeye, Osage-orange, pignut hickory, sassafras, shagbark hickory silver maple, slippery elm, sugar maple, sweetgum, white ash, white oak, and yellow poplar. Our experiment involved testing three different models to assess the feasibility of species classification using unaltered and uncropped images during the species-classification training process. We achieved an overall accuracy of 83.21% using the EfficientNet-b3 model, which was the best of the three models (EfficientNet-b3, ResNet-50, and MobileNet-V3-small), and an average accuracy of 80.23%. Full article
(This article belongs to the Special Issue Recent Advances in Algorithms for Computer Vision Applications)
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14 pages, 3491 KB  
Article
Invasive Pest and Invasive Host: Where Might Spotted-Wing Drosophila (Drosophila suzukii) and American Black Cherry (Prunus serotina) Cross Paths in Europe?
by Yefu Zhou, Chunhong Wu, Peixiao Nie, Jianmeng Feng and Xiaokang Hu
Forests 2024, 15(1), 206; https://doi.org/10.3390/f15010206 - 19 Jan 2024
Cited by 5 | Viewed by 2919
Abstract
Both spotted-wing drosophila (SWD, Drosophila suzukii) and American black cherry (ABC, Prunus serotina) are invasive species with major deleterious effects on forest ecosystems in Europe. ABC, a host of SWD, can sustain large populations of SWD, and SWD in turn can [...] Read more.
Both spotted-wing drosophila (SWD, Drosophila suzukii) and American black cherry (ABC, Prunus serotina) are invasive species with major deleterious effects on forest ecosystems in Europe. ABC, a host of SWD, can sustain large populations of SWD, and SWD in turn can constrain the regeneration of its host. Here, we examined the range shifts of SWD, ABC, and their range overlap under future scenarios using range shift models. In the current–future scenarios, both SWD and ABC were predicted to undergo potential range expansions in Europe, suggesting that their invasion risks might increase in the future. Climate change might be the major driver of range shifts of both the pest and host, followed by land-use and host availability changes; therefore, mitigating future climate change might be key for controlling their future invasions in Europe. The relative contribution of climate and host availability to shaping the potential ranges of invasive species might not only vary with their feeding habitats (polyphagy/oligophagy) but also with the relative abundance of hosts among available host reservoirs. Range overlap under current and future scenarios was mainly observed in the UK, Germany, France, Switzerland, Italy, and Eastern Europe; this area is of high and low priority for the control of SWD and ABC, respectively. Full article
(This article belongs to the Section Forest Health)
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9 pages, 1512 KB  
Communication
Confronting the Issue of Invasive Native Tree Species Due to Land Use Change in the Eastern United States
by Brice B. Hanberry
Land 2022, 11(2), 161; https://doi.org/10.3390/land11020161 - 20 Jan 2022
Cited by 5 | Viewed by 3850
Abstract
The increased abundance of historically rare native tree species is symptomatic of land-use change, which causes ecosystem regime shifts. I tested for an association between mean agricultural area, a proxy for land-use change, and native tree species. I first modeled agricultural area during [...] Read more.
The increased abundance of historically rare native tree species is symptomatic of land-use change, which causes ecosystem regime shifts. I tested for an association between mean agricultural area, a proxy for land-use change, and native tree species. I first modeled agricultural area during the years 1850 to 1997 and the historical and current percent composition of tree genera, along with the dissimilarity and difference between the historical and current composition, for the northern part of the eastern U.S. I then modeled agricultural area and current genera and species for the eastern U.S. and regionally. For the northeast, agricultural area was most associated (R2 of 78%) with the current percentage of elms and a diverse, uncommon “other” genera. For the eastern U.S., Ulmus, Juglans, Prunus, boxelder (Acer negundo), black cherry (Prunus serotina), and hackberry (Celtis occidentalis) best predicted agricultural area (R2 of 66%). Regionally, two elm and ash species, black walnut (Juglans nigra), mockernut hickory (Carya tomentosa), red maple (Acer rubrum), sweetgum (Liquidambar styraciflua), and American sycamore (Platanus occidentalis) increased with agricultural area. Increases in historically rare and diverse species associated with agricultural area represent an overall pattern of invasive native tree species that have replaced historical ecosystems after land-use change disrupted historical vegetation and disturbance regimes. Full article
(This article belongs to the Special Issue Land: 10th Anniversary)
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