Two-layer network evolutionary game model applied to complex systems

IF 1.6 4区 物理与天体物理 Q3 PHYSICS, CONDENSED MATTER
Liming Zhang, Ming Cai, Yingxin Zhang, Shuai Wang, Yao Xiao
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引用次数: 0

Abstract

 Elements within a system undergo dynamic changes, steering its evolution. However, the heterogeneity and complex interconnections of real-world system elements make it difficult for single-layer network game methods to effectively integrate with reality and describe the evolutionary process. To tackle this issue, we propose a complex network-based two-layer evolutionary game model, applicable to complex systems. This model includes the element evolution network and the group game network. The surface layer presents the relationships and developmental trends of system elements, while the underlying layer simulates participant strategy optimization, which in turn drives the evolution of the surface layer. To enhance practical applications, this paper abstracts elements as strategies and extends the participant’s strategies into combinations of multiple strategies. This approach overcomes the limitations of finite strategy options in traditional 2\(\times \)2 game models. In this paper, the cross-citation data from the literature and the Bidirectional Encoder Representations from Transformers (BERT) model are employed to measure the system evolution-related strategy values. Through mathematical reasoning, it is determined that the number of elements is a critical factor influencing time-sensitivity in simulations across various scenarios. This paper conducts a system evolution analysis using the Intelligent Transportation System (ITS) as a case study. Initially, the electric vehicle popularization (EVP) scenario, characterized by relatively mature market development, is employed for model calibration. The experimental results show that the relative error of the calibrated model is 0.3132 and the absolute error is 0.0138. Compared to traditional fitting models, the output evolutionary trajectory aligns significantly with real-world conditions. Based on the calibration parameters, an application analysis is conducted on the cooperative vehicle infrastructure (CVI) scenario, which reflects the level of intelligence in ITS. The analysis predicts market evolution trends for different levels of autonomous vehicles, providing a scientific foundation for decision-making processes within governments and enterprises.

Abstract Image

应用于复杂系统的双层网络演化博弈模型
系统中的元素会发生动态变化,从而引导系统的演化。然而,现实世界中系统元素的异质性和复杂的相互联系使得单层网络博弈方法难以有效地与现实结合并描述演化过程。针对这一问题,我们提出了一种适用于复杂系统的基于复杂网络的双层演化博弈模型。该模型包括要素演化网络和群体博弈网络。表层呈现系统元素的关系和发展趋势,底层模拟参与者的策略优化,进而推动表层的演化。为了加强实际应用,本文将元素抽象为策略,并将参与者的策略扩展为多种策略的组合。这种方法克服了传统 2 (次)2 博弈模型中有限策略选项的局限性。本文采用文献交叉引用数据和变压器双向编码器表征(BERT)模型来测量与系统演化相关的策略值。通过数学推理,确定了元素数量是影响各种情景模拟中时间敏感性的关键因素。本文以智能交通系统(ITS)为案例进行了系统演化分析。首先,采用市场发展相对成熟的电动汽车普及(EVP)情景进行模型校准。实验结果表明,标定模型的相对误差为 0.3132,绝对误差为 0.0138。与传统的拟合模型相比,输出的演化轨迹与实际情况明显吻合。根据标定参数,对反映智能交通系统智能化水平的协同车辆基础设施(CVI)场景进行了应用分析。分析预测了不同级别自动驾驶汽车的市场演变趋势,为政府和企业的决策过程提供了科学依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
The European Physical Journal B
The European Physical Journal B 物理-物理:凝聚态物理
CiteScore
2.80
自引率
6.20%
发文量
184
审稿时长
5.1 months
期刊介绍: Solid State and Materials; Mesoscopic and Nanoscale Systems; Computational Methods; Statistical and Nonlinear Physics
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