Investigating the Correlation between Background Radiation and Weather Conditions: A Predictive Model Employing Machine Learning Techniques.
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Date
2024-12-06
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Oregon State University
Abstract
Ensuring public safety and protecting environmental health rely heavily on dependable
radiation monitoring systems. Accurately predicting variations in background radiation levels
is paramount, particularly in environments where natural factors such as weather significantly
influence these changes. Background radiation is known to be influenced by weather
conditions such as temperature, humidity, atmospheric pressure, wind speed, and rainfall.
These factors interact in intricate ways, making it challenging to discern natural fluctuations
from potential radiation hazards. This study investigates the connection between background
radiation and weather by analyzing data collected over three months at Oregon State
University. Utilizing advanced machine learning techniques, particularly Gradient Boosted
Regression Trees (GBRT), a predictive model was developed to estimate background
radiation levels. Its performance was compared to a simpler linear regression model to
illustrate the advantages of sophisticated techniques in comprehending intricate relationships.
The results demonstrated that the GBRT model exhibited superior performance compared
with the linear regression model in predicting background radiation levels. The GBRT model
effectively captured the nonlinear relationships and interactions among the variables,
resulting in enhanced accuracy and improved generalization. Key findings indicated that
humidity and temperature exhibited consistent and significant correlations with radiation
count rates, while factors such as rainfall and wind speed exhibited limited effects. Despite
some challenges in predicting extreme values, the GBRT model demonstrated a robust ability
to minimize prediction errors and effectively manage noisy data. This research underscores
the significance of integrating environmental data into predictive frameworks and employing
sophisticated machine learning algorithms to enhance the accuracy of radiation monitoring
systems.
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Keywords
Radiation Detection, Radiation Monitoring Systems, Machine Learning in Radiation Monitoring, Gradient Boosting Regression Trees (GBRT)