Research on Collaborative Optimization Strategy of Railway Signal Nonlinear Control System Based on BBO Algorithm and Multi-objective Optimization

Xue Li , Yixuan Yang , Zheng Li , Hui He
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引用次数: 0

Abstract

This study focuses on exploring collaborative optimization strategies for a nonlinear control system of railway signals based on the BBO algorithm. Currently, the railway signal control system faces performance bottlenecks such as response lag and local optima due to parameter coupling when dealing with multi-objective optimization problems like train operating speed and signal delays. Traditional optimization methods struggle to achieve global collaborative regulation under complex operating conditions. Therefore, there is an urgent need to introduce efficient intelligent algorithms to enhance the system's real-time capabilities and reliability. The research constructs a mathematical model with multiple objective constraints, accurately identifies the adaptation shortcomings of the existing system in dynamic scenarios, and then employs a Biogeography-Based Optimization (BBO) algorithm for global optimization of control parameters. Specifically, it sets a population size of 50, a maximum number of iterations of 200, a migration rate dynamically adjusted between 0.6-0.9, and an adaptive mutation rate of 0.01-0.05, using root mean square error and response time as performance evaluation metrics for parameter optimization. Experimental data show that compared to traditional methods, this strategy can increase the average operating speed of trains by 15%, reduce signal delays by 20%, and improve system robustness indicators by 18.5%, achieving a collaborative enhancement of efficiency and safety while ensuring stable operation, thus providing an engineering-valued solution for the intelligent upgrade of railway transport.
基于BBO算法和多目标优化的铁路信号非线性控制系统协同优化策略研究
研究了基于BBO算法的铁路信号非线性控制系统的协同优化策略。目前,铁路信号控制系统在处理列车运行速度、信号延迟等多目标优化问题时,由于参数耦合存在响应滞后、局部最优等性能瓶颈。传统的优化方法难以在复杂的运行条件下实现全局协同调节。因此,迫切需要引入高效的智能算法来提高系统的实时性和可靠性。该研究构建了具有多目标约束的数学模型,准确识别了现有系统在动态场景下的自适应缺陷,并采用基于生物地理的优化算法(BBO)对控制参数进行全局优化。具体而言,该算法设置种群规模为50,最大迭代次数为200,迁移率在0.6-0.9之间动态调整,自适应突变率为0.01-0.05,以均方根误差和响应时间作为参数优化的性能评价指标。实验数据表明,与传统方法相比,该策略可使列车平均运行速度提高15%,信号延迟降低20%,系统鲁棒性指标提高18.5%,在保证运行稳定的同时实现了效率与安全的协同提升,为铁路运输智能化升级提供了具有工程价值的解决方案。
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CiteScore
13.80
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