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The Salt Marsh Vegetation Spread Dynamics Simulating and Prediction Based on Conditions Optimized CA

机译:基于条件优化CA的盐沼植被扩展动力学模拟和预测

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The biodiversity conservation and management of the salt marsh vegetation relies on processing their spatial information. Nowadays, more attentions are focused on their classification surveying and describing qualitatively dynamics based on RS images interpreted, rather than on simulating and predicting their dynamics quantitatively, which is of greater importance for managing and planning the salt marsh vegetation. In this paper, our notion is to make a dynamic model on large-scale and to provide a virtual laboratory in which researchers can run it according requirements. Firstly, the characteristic of the cellular automata was analyzed and a conclusion indicated that it was necessary for a CA model to be extended geographically under varying conditions of space-time circumstance in order to make results matched the facts accurately. Based on the conventional cellular automata model, the author introduced several new conditions to optimize it for simulating the vegetation objectively, such as elevation, growth speed, invading ability, variation and inheriting and so on. Hence the CA cells and remote sensing image pixels, cell neighbors and pixel neighbors, cell rules and nature of the plants were unified respectively. Taking JiuDuanSha as the test site, where holds mainly Phragmites australis (P.australis) community, Scirpus mariqueter (S.mariqueter)community and Spartina alterniflora (S.alterniflora)community. The paper explored the process of making simulation and predictions about these salt marsh vegetable changing with the conditions optimized CA (COCA) model, and examined the links among data, statistical models, and ecological predictions. This study exploited the potential of applying Conditioned Optimized CA model technique to solve this problem.
机译:盐沼植被的生物多样性保护和管理依赖于加工其空间信息。如今,更多的注意力集中在他们的分类测量和基于RS图像解释的定性动态,而不是定量模拟和预测其动力学,这对于管理和规划盐沼植被具有更重要的。在本文中,我们的概念是在大规模上进行动态模型,并提供一个虚拟实验室,其中研究人员可以根据要求运行它。首先,分析了蜂窝自动机的特征,结论表明,CA模型需要在地理上延长时空环境环境,以便准确地与事实匹配。基于传统的蜂窝自动机模型,作者介绍了几种新条件,以优化其客观地模拟植被,例如高度,生长速度,入侵能力,变异和继承等。因此,分别统一CA电池和遥感图像像素,小区邻居和像素邻居,细胞规则和植物的性质。将Jiuduansha作为测试网站,主要是芦苇澳大利亚(P.australis)群落,Scirpus Marqueter(S.Marriveeter)群落和Spartina alternflora(S.Alterniflora)社区。本文探讨了对这些盐沼蔬菜改变的模拟和预测,随着优化的CA(COCA)模型,并检查了数据,统计模型和生态预测之间的链接。本研究利用应用条件优化的CA模型技术来解决这个问题的可能性。

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