摘要
针对分布式光纤声波传感信号在实际应用中受环境噪声干扰、光纤传输限制及多任务处理需求影响,导致低信噪比问题,提出了基于全波形反演的自适应任务调度方法,旨在提高信号信噪比,优化多任务调度,从而提升传感系统的整体性能。利用基于改进伴随状态源方程的全波形反演方法,对分布式光纤声波传感信号直接实施全波形反演。采用构建的神经网络,学习变量关系,根据变量关系给出当前迁移阶段选择主体任务各自子任务的解剩余数量,更新迁移任务被择选的概率,自适应地动态选择迁移任务,实现多任务调度。在基准测试函数上进行多任务调度效果检验,适应度与离散度评估结果的发展态势均相对积极,适应度超过8,离散度低于0.3。可见,该方法能够有效处理传感信号的低信噪比问题,提高分布式光纤声波传感系统的多任务调度质量,对于低信噪比信号的系统多任务调度具有强助力作用。
Distributed fiber optic acoustic sensing signals are affected by environmental noise interference,fiber optic transmission limitations,and multitasking processing requirements in practical applications.To solve this problem,an adaptive task scheduling method based on full waveform inversion is proposed,aiming to improve the signal-to-noise ratio,optimize multi task scheduling processing,and thus enhance the overall performance of the sensing system.Using a full waveform inversion method based on an improved adjoint state source equation,direct full waveform inversion is performed on distributed fiber optic acoustic sensing signals.Using a constructed neural network to learn variable relationships.Based on the variable relationship,provide the remaining number of solutions for each subtask of the selected main task in the current migration stage,update the probability of selecting the migration task,adaptively and dynamically select the migration task,and achieve multi task scheduling.The performance of multi task scheduling was tested on the benchmark test function,and the development trend of fitness and dispersion evaluation results was relatively positive,with fitness exceeding 8 and dispersion below 0.3.It can be seen that this method can effectively handle the problem of low signal-to-noise ratio of sensing signals,improve the quality of multi task scheduling in distributed fiber optic acoustic sensing systems,and have a strong assisting effect on multi task scheduling in systems with low signal-to-noise ratio signals.
作者
谭乐婷
邓慧
TAN Le-ting;DENG Hui(School of Computer Science and Software Engineering,Southwest Petroleum University,Nanchong 637001,China)
出处
《吉林大学学报(工学版)》
北大核心
2025年第4期1412-1418,共7页
Journal of Jilin University:Engineering and Technology Edition
基金
2023年西南石油大学(南充)市校科技战略合作专项项目(23XNSYSX0062).
关键词
分布式光纤声波传感系统
低信噪比信号
全波形反演
变量关系学习
迁移任务动态选择
多任务调度
distributed fiber optic acoustic sensing system
low signal-to-noise ratio signal
full waveform inversion
variable relationship learning
dynamic selection of migration tasks
multi task scheduling