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The pseudo-compartment method for coupling partial differential equation and compartment-based models of diffusion

机译:用于耦合偏微分方程和基于隔室的扩散模型的伪隔室方法

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Spatial reaction-diffusion models have been employed to describe many emergent phenomena in biological systems. The modelling technique most commonly adopted in the literature implements systems of partial differential equations (PDEs), which assumes there are sufficient densities of particles that a continuum approximation is valid. However, owing to recent advances in computational power, the simulation and therefore postulation, of computationally intensive individual-based models has become a popular way to investigate the effects of noise in reaction-diffusion systems in which regions of low copy numbers exist. The specific stochastic models with which we shall be concerned in this manuscript are referred to as 'compartment-based' or 'on-lattice'. These models are characterized by a discretization of the computational domain into a grid/lattice of 'compartments'. Within each compartment, particles are assumed to be well mixed and are permitted to react with other particles within their compartment or to transfer between neighbouring compartments. Stochastic models provide accuracy, but at the cost of significant computational resources. For models that have regions of both low and high concentrations, it is often desirable, for reasons of efficiency, to employ coupled multi-scale modelling paradigms. In this work, we develop two hybrid algorithms in which a PDE in one region of the domain is coupled to a compartment-based model in the other. Rather than attempting to balance average fluxes, our algorithms answer a more fundamental question: 'how are individual particles transported between the vastly different model descriptions?' First, we present an algorithm derived by carefully redefining the continuous PDE concentration as a probability distribution. While this first algorithm shows very strong convergence to analytical solutions of test problems, it can be cumbersome to simulate. Our second algorithm is a simplified and more efficient implementation of the first, it is derived in the continuum limit over the PDE region alone. We test our hybrid methods for functionality and accuracy in a variety of different scenarios by comparing the averaged simulations with analytical solutions of PDEs for mean concentrations.
机译:已经采用空间反应扩散模型来描述生物系统中的许多新兴现象。局部微分方程(PDE)的文献实施系统中最常采用的建模技术,其假设存在连续近似有效的足够密度的粒子。然而,由于近期计算能力的进步,仿真和诸如基于个人的型号的仿真和施加,已经成​​为研究噪声在反应扩散系统中的影响的流行方式,其中存在低拷贝数的区域。我们将在本手稿中关注的具体随机模型被称为“基于舱室”或“榜首”。这些模型的特征在于将计算域的离散化分成栅格/晶格的“隔间”。在每个隔室内,假设颗粒充分混合,并且被允许与其室内的其他颗粒反应或在相邻隔室之间传递。随机模型提供准确性,但以重要的计算资源的成本为代价。对于具有低浓度和高浓度区域的模型,出于效率的原因,通常需要耦合的多尺度建模范式。在这项工作中,我们开发了两个混合算法,其中域的一个区域中的PDE耦合到另一个区域中的基于隔间的模型。我们的算法而不是试图平衡平均助势,而不是试图平衡平均流量,而是回答一个更基本的问题:“如何在众异的模型描述之间运输单个粒子?”首先,我们介绍一种通过仔细重新定义作为概率分布的连续PDE浓度来衍生的算法。虽然该第一算法显示出对测试问题的分析解决方案的浓度非常强烈,但模拟可能很麻烦。我们的第二种算法是首先进行简化且更高效的实现,它在仅通过PDE区域的连续内极限中导出。我们通过将平均模拟与PDE的分析解的分析解决方案进行平均浓度,测试我们的混合方法,以获得各种不同情景的功能和准确性。

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