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Logistic Models for Simulating the Growth of Plants by Defining the Maximum Plant Size as the Limit of Information Flow

机译:通过将最大植物尺寸定义为信息流量的最大植物尺寸来模拟植物生长的逻辑模型

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Today, the Logistic equations are widely applied to simulate the population growth across a range of fields, chiefly, demography and ecology. Based on an assumption that growth-regulating factors within the Logistic model, namely, the rate of increase (r) and carrying capacity (K), can be considered as the functions reflecting the combination of the organism- and environment-specific parameters, here, we discussed the possible application of modified synthetic Logistic equations to the simulation of the changes in (1) population (density per volume) of photosynthetically growing free-living algae and (2) size (mass per individual) of higher plants, by newly composing r value as a function reflecting the photosynthetic activities. Since higher plants are multi-cellular organisms, a novel concept for the carrying capacity K must also be introduced. We brought the a priori assumption that information sharing amongst cells strongly influences the physiology of multi-cellular structures eventually defining the maximum size of plants, into view. A simplest form of 'synthetic organism' conformed to test this assumption is a linear chain of cells, and the first physiological phenomenon, modeled in this way, is growth. This combination of information flow along a chain, with exponential growth, produces a simple allotropic relationship. This relationship is compared with results for plants and is found to have excellent predictive power. This theory shows that fast-growing organisms, or multicellular structures, remain small, because of their inability to share information sufficiently quickly and, also, predicts determinate growth. The success of this simple model suggests, firstly, that the inclusion of information flows in theoretical physiology models, which have been, to date, dominated by energetic or metabolic assumptions, will be improved by incorporating information flows. Secoyndly, the application of more complex information theories, such as those of Shannon, to biological sstems will offer deep insights into the mechanisms and control of intercellular communication.
机译:如今,物流方程被广泛应用于模拟各种领域的人口增长,主要是人口和生态学。基于逻辑模型内的生长调节因子,即增加(R)和携带能力(k),可以视为反映有机体和环境特定参数组合的功能,我们讨论了改进的合成物流方程,以新近地区讨论了改进的合成物流方程在光合生长的自由生物藻类和(2)尺寸(每种单个质量)的(每体积密度)的变化的模拟作为反映光合活动的函数构成r值。由于高等植物是多细胞生物,因此还必须引入携带能力K的新颖概念。我们带来了先验假设,即细胞之间的信息共享强烈影响多蜂窝结构的生理学,最终将植物的最大尺寸定义为视图。一种最简单的“合成生物”形式符合测试这种假设是细胞的线性链,以及以这种方式建模的第一个生理现象是生长。这种信息流动的组合沿着链条,具有指数增长,产生了简单的同种异体关系。将这种关系与植物的结果进行了比较,并且被发现具有出色的预测力。该理论表明,快速增长的生物体或多细胞结构仍然很小,因为它们无法充分地分享信息,并且还预测,确定生长。这一简单模型的成功表明,通过结合信息流来提高迄今为止,迄今为止,迄今为止的理论生理模型中的信息流量将得到改善。 SECOYLY,应用更复杂的信息理论,如香农,生物系统将对细胞间通信的机制和控制提供深入的见解。

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