虛擬物種的基本原理及其在物種分布模型評(píng)估中的應(yīng)用
Abstract:
The fascinating scientific questions of how and where species will potentially distribute under current and changing environmental conditions have inspired many biogeographers, ecologists, and managers to predict the potential distributions of plants or animals by quantifying species-environment relationships. The species distribution model (SDM), an essential modeling tool, has been developed. A key challenge in using real species data (presence-absence data and/or presence-only data) for SDM is the uncertainty about where and how the thousands of species distribution data records are attained. The majority of species distribution data sets are derived from herbaria, university databases, museums, or even amateur field workers. Therefore, attaining a reasonable explanation for species distribution in the wild is often hindered by the problems inherent in these large data sets, including species-specific properties (e.g., species prevalence, dispersal barriers, interspecific competition, distribution pattern), biased sampling (e.g., reachability of observation sites, visibility or detectability of observation objects), variability among observation methods (e.g., time interval and spatial range), and habitat types, particularly for data collected over a long time interval and a large spatial range. The use of virtual species could provide a suitable unifying framework to select the most appropriate model for such evaluations, by comparing the predictive accuracy and virtual distributions in a geographic information system model of a real landscape. In recent years, virtual species distribution models have become increasingly important tools to study various problems in the fields of conservation biology, ecology, biogeography, climate change research, and evolution. Virtual species have many advantages, including the ease of attaining a large number of data sets for each scenario, ability to fully control the quality of data, prevention of the over-fitted phenomenon inherent to SDMs, and the ability to independently evaluate the predictive power of SDMs regardless of other factors. There are three common methods to generate virtual species: the additive method, multiplicative method, and comprehensive method. Here, we provide an overview of recent advances in the development of virtual species distribution models by using spatially explicit simulated distribution data to represent the 'true’ species' distributions. We highlight the four main applications of these models, including species-specific characteristics, sampling bias, geographic information, and threshold standard for species occurrence, in evaluating model performance. Considering the current limitations, we propose future directions for the development of virtual species, including avoiding excessive assumptions that do not reflect reality, optimizing the generation of virtual species to avoid the compensatory effect and reflect true species dynamics and biological characteristics, and generating a virtual model organism, population, community, and ecosystem. To help researchers generate virtual species easily and quickly, our research team has developed a software package, SDMvspecies, based on R language. The software package has four methods to create virtual species, including the niche synthesis method, pick mean method, pick median method, and artificial bell-shaped response method. The SDMvspecies software can be accessed with a free download from the website http://cran.r-project.org/web/packages/sdmvspecies/. We further address the need for better integration of virtual species with ecological theory, which is expected to lead to new questions, theories, and an improved mechanistic understanding of ecological systems.
相關(guān)知識(shí)
一種對(duì)食用轉(zhuǎn)基因作物哺乳動(dòng)物健康水平的分級(jí)方法及評(píng)估系統(tǒng)
模擬電路測(cè)評(píng)報(bào)告模板下載: 基于實(shí)際應(yīng)用場(chǎng)景的性能評(píng)估
體外消化模型研究進(jìn)展及其在食品中的應(yīng)用
情景模擬教學(xué)在護(hù)理個(gè)案中的實(shí)操應(yīng)用
虛擬現(xiàn)實(shí)技術(shù)在肺癌患者健康管理中的應(yīng)用研究進(jìn)展
從Sora到“世界模擬”:視頻大模型的技術(shù)原理、應(yīng)用場(chǎng)景與未來(lái)進(jìn)路
免費(fèi)物理治療模擬場(chǎng)景
基于Matlab的醫(yī)療衛(wèi)生數(shù)據(jù)分析與模擬應(yīng)用
虛擬現(xiàn)實(shí)技術(shù)在心理治療中的應(yīng)用及效果分析
虛擬現(xiàn)實(shí)技術(shù)在心臟康復(fù)中的應(yīng)用.docx
網(wǎng)址: 虛擬物種的基本原理及其在物種分布模型評(píng)估中的應(yīng)用 http://m.u1s5d6.cn/newsview1349378.html
推薦資訊
- 1發(fā)朋友圈對(duì)老公徹底失望的心情 12775
- 2BMI體重指數(shù)計(jì)算公式是什么 11235
- 3補(bǔ)腎吃什么 補(bǔ)腎最佳食物推薦 11199
- 4性生活姿勢(shì)有哪些 盤(pán)點(diǎn)夫妻性 10428
- 5BMI正常值范圍一般是多少? 10137
- 6在線基礎(chǔ)代謝率(BMR)計(jì)算 9652
- 7一邊做飯一邊躁狂怎么辦 9138
- 8從出汗看健康 出汗透露你的健 9063
- 9早上怎么喝水最健康? 8613
- 10五大原因危害女性健康 如何保 7828