Fuzzy Integration of kernel-based Gaussian Processes applied to Anomaly Detection in Nuclear Security

M. Alamaniotis
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Abstract

Advances in artificial intelligence (AI) have provided a variety of solutions in several real-world complex problems. One of the current trends contains the integration of various AI tools to improve the proposed solutions. The question that has to be revisited is how tools may be put together to form efficient systems suitable for the problem at hand. This paper frames itself in the area of nuclear security where an agent uses a radiation sensor to survey an area for radiological threats. The main goal of this application is to identify anomalies in the measured data that designate the presence of nuclear material that may consist of a threat. To that end, we propose the integration of two kernel modeled Gaussian processes (GP) by using a fuzzy inference system. The GP models utilize different types of information to make predictions of the background radiation contribution that will be used to identify an anomaly. The integration of the prediction of the two GP models is performed with means of fuzzy rules that provide the degree of existence of anomalous data. The proposed system is tested on a set of real-world gamma-ray spectra taken with a low-resolution portable radiation spectrometer.
基于核的高斯过程模糊集成在核安全异常检测中的应用
人工智能(AI)的进步为现实世界中的一些复杂问题提供了多种解决方案。目前的趋势之一是整合各种人工智能工具来改进所提出的解决方案。必须重新审视的问题是,如何将各种工具组合在一起,形成适合手头问题的有效系统。本文将自己置于核安全领域,其中代理人使用辐射传感器来调查辐射威胁区域。该应用程序的主要目的是识别测量数据中的异常情况,这些异常表明存在可能构成威胁的核材料。为此,我们提出用模糊推理系统对两个核模型高斯过程(GP)进行积分。GP模型利用不同类型的信息来预测背景辐射的贡献,这些贡献将用于识别异常。利用提供异常数据存在程度的模糊规则对两种GP模型的预测结果进行整合。用低分辨率便携式辐射光谱仪对该系统进行了实际伽马射线光谱测试。
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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