Numerical treatment of stochastic and deterministic alcohol drinker dynamics with Euler–Maruyama method

IF 1.8 4区 物理与天体物理 Q3 PHYSICS, APPLIED Modern Physics Letters B Pub Date : 2024-04-05 DOI:10.1142/s021798492450355x
Nabeela Anwar, Iftikhar Ahmad, Hijab Javaid, Adiqa Kausar Kiani, Muhammad Shoaib, Muhammad Asif Zahoor Raja
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Abstract

Alcohol abuse is a substantial cause of various health and societal issues, as well as a significant factor in global disease. Once alcohol is consumed in the gastrointestinal tract, it undergoes metabolism in the liver and lungs. In this investigation, the nonlinear deterministic and stochastic differential frameworks are analyzed numerically to predict the dynamic evolution of the virus in the drinker alcohol model. The framework for apprehending drinking patterns is categorized into three distinct groups: the susceptible population, risk drinkers, and moderate drinkers. The approximate solution for each population group is determined by exhaustively creating scenarios that vary the probability ratio of infection in susceptible individuals who do not consume alcohol, the increasing rate of alcohol consumption, the rate at which individuals transition from acute to chronic drinking categories, the rate at which new non-drinking consumers are attracted, the death rate of the population, the ratio affecting the rate of sociability in heavy drinkers, and the overall population rate. The Euler–Maruyama approach for the stochastic framework and the Adams method for the deterministic framework are utilized, respectively, to determine the solutions of the alcohol drinker model. This study compares deterministic and stochastic frameworks to underscore their distinct characteristics and efficiency, achieved through comprehensive simulations and in-depth analysis of the numerical outcomes.

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用 Euler-Maruyama 方法对随机和确定性饮酒者动力学进行数值处理
酗酒是造成各种健康和社会问题的重要原因,也是导致全球疾病的一个重要因素。酒精进入胃肠道后,会在肝脏和肺部进行新陈代谢。在这项研究中,对非线性确定性和随机微分框架进行了数值分析,以预测饮酒者酒精模型中病毒的动态演化。用于理解饮酒模式的框架分为三个不同的群体:易感人群、风险饮酒者和适度饮酒者。每个人群的近似解法是通过详尽地创建各种情景来确定的,这些情景包括:不饮酒的易感人群的感染概率比、饮酒量的增加率、从急性饮酒到慢性饮酒的过渡率、吸引新的不饮酒消费者的比率、人群的死亡率、影响重度饮酒者社交率的比率以及总体人群比率。随机框架的欧拉-马鲁山方法和确定性框架的亚当斯方法分别用于确定饮酒者模型的解。本研究对确定性框架和随机性框架进行了比较,通过全面模拟和对数值结果的深入分析,强调了这两种框架的不同特点和效率。
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来源期刊
Modern Physics Letters B
Modern Physics Letters B 物理-物理:凝聚态物理
CiteScore
3.70
自引率
10.50%
发文量
235
审稿时长
5.9 months
期刊介绍: MPLB opens a channel for the fast circulation of important and useful research findings in Condensed Matter Physics, Statistical Physics, as well as Atomic, Molecular and Optical Physics. A strong emphasis is placed on topics of current interest, such as cold atoms and molecules, new topological materials and phases, and novel low-dimensional materials. The journal also contains a Brief Reviews section with the purpose of publishing short reports on the latest experimental findings and urgent new theoretical developments.
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