Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/42846
Title: Learning Multiple Radiation SourceDistribution Models using Gaussian Processes
Authors: DE SCHEPPER, David
SIMONS, Mattias 
SCHROEYERS, Wouter 
KELLENS, Karel
DEMEESTER, Eric
Issue Date: 2023
Source: 56th International Symposium on Robotics (ISR Europe), Stuttgart (Germany), 26/09/2023-27/09/2023
Abstract: Over the past years, automated, robotic radiation source localisation has become of emerging interest due to a variety of reasons, e.g. disaster response, homeland security, or dismantling and decommissioning of nuclear contaminated areas. Nowadays, to perform in-the-field measurements, radiation protection officers and safety personnel are tasked with characterising an environment before a nuclear contaminated area can enter the final phase of the dismantling and decommissioning process. This involves some severe drawbacks such as the absence of any a priori information on the potentially contaminated area. Besides the potential health risks involved, this preliminary task is very time-consuming and prone to errors concerning the taken measurements and the post-processing of the obtained measurements. To further automate this task, this paper presents an approach to build a radiation model of the environment based on measurements collected by a robotic arm during in-situ laboratory tests. The task of estimating the radiation distribution in an environment is modeled as a regression problem, where the framework of Gaussian Processes is adopted. The experiments conducted in an in-situ laboratory environment demonstrate that the approach is feasible to model the radiation distribution caused by multiple radiation point sources, for both static measurements, where a robot stops moving to sample a measurement, and dynamic measurements, where a robot executes measurements in a continuous manner.
Keywords: Index Terms-Robotics for nuclear power plants;Ra- diological mapping;Gaussian Processes;Field robotics;Robotic exploration
Document URI: http://hdl.handle.net/1942/42846
Category: C2
Type: Conference Material
Appears in Collections:Research publications

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