基于粒子滤波寻源的核辐射环境态势估计方法

Method for Nuclear Radiation Environment Situation Assessment Based on Particle Filter Source Seeking

  • 摘要: 面对核应急、核退役场景下的核污染态势感知,传统的全覆盖扫描检测耗时长、缺少环境地理信息、智能化水平低。本文提出了一种基于粒子滤波寻源的核辐射环境态势感知方法,依托智能寻源机器人快速生成可准确融合地图信息的态势图。首先,构建了自主导航与核辐射探测结合的机器人平台,设计了一套能反馈到达角的探测机制。其次,在粒子滤波算法中引入到达角信息,通过约束估值区域增强检测效率与准确性。最后,在基于高斯模型的插值过程中融入寻源估计结果,利用粒子滤波的优势减少测量数据量,进而快速生成高精度辐射态势图。实验中,引用基于测量集与训练集的交叉评估指标,通过平均绝对百分比误差分析态势图生成质量,并通过仿真和真实放射源搜寻测试证明了该方法的有效性。

     

    Abstract: In the face of escalating nuclear safety concerns, especially during nuclear emergency response and decommissioning, precise and efficient nuclear pollution situation awareness is crucial. Traditional nuclear radiation detection methods, like full-coverage scanning, are flawed. They consume excessive time, taking hours or days for large-area scans, thus delaying emergency responses and heightening radiation exposure risks. Additionally, they lack environmental and geographical information integration, impeding comprehensive assessment of nuclear pollution’s ecological impact. Their low-intelligence nature also renders them unsuitable for complex and dynamic environments. Our study aims to develop an advanced method to surmount these limitations. A novel approach relying on particle filter source seeking, with the goal of swiftly and accurately mapping nuclear radiation situations, was presented. To this end, a sophisticated robot platform integrating autonomous navigation and radiation detection was constructed. Equipped with LiDAR and cameras, the robot can navigate diverse terrains and avoid obstacles. A unique detection mechanism was devised to precisely feedback the angle of arrival of nuclear radiation, which is vital for subsequent data processing. The angle-of-arrival information into the particle filter algorithm was then introduced, effectively constraining the estimation area. This significantly enhanced detection efficiency and source seeking accuracy. By incorporating source seeking estimation results into the Gaussian-model-based interpolation process and leveraging the particle filter’s advantages, measurement data were reduced, enabling rapid generation of high-precision radiation situation maps. In experiments, cross-evaluation indicators from measurement and training sets were used. The mean absolute percentage error was applied to analyze map quality. Extensive simulations in various virtual scenarios and real-world radioactive source search tests in controlled environments verified the method’s effectiveness. The generated maps had a far lower mean absolute percentage error than traditional methods, highlighting its high accuracy. In summary, our particle-filter-based source seeking method offers a more efficient, accurate, and intelligent solution for nuclear pollution situation assessment, holding great promise for nuclear emergency and decommissioning applications.

     

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