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AI-Driven Autonomous Control of Proton-Boron Fusion Reactors Using Backpropagation Neural Networks

Michele Laurelli

TL;DR

This paper proposes a novel approach utilizing backpropagation-based neural networks to autonomously control key parameters in a proton-boron fusion reactor, offering a potential breakthrough in stable and efficient p-11B fusion.

Abstract

Proton-boron (p-11B) fusion presents a promising path towards sustainable, neutron-free energy generation. However, its implementation is hindered by extreme operational conditions, such as plasma temperatures exceeding billions of degrees and the complexity of controlling high-energy particles. Traditional control systems face significant challenges in managing the highly dynamic and non-linear behavior of the plasma. In this paper, we propose a novel approach utilizing backpropagation-based neural networks to autonomously control key parameters in a proton-boron fusion reactor. Our method leverages real-time feedback and learning from physical data to adapt to changing plasma conditions, offering a potential breakthrough in stable and efficient p-11B fusion. Furthermore, we expand on the scalability and generalization of our approach to other fusion systems and future AI technologies.

AI-Driven Autonomous Control of Proton-Boron Fusion Reactors Using Backpropagation Neural Networks

TL;DR

This paper proposes a novel approach utilizing backpropagation-based neural networks to autonomously control key parameters in a proton-boron fusion reactor, offering a potential breakthrough in stable and efficient p-11B fusion.

Abstract

Proton-boron (p-11B) fusion presents a promising path towards sustainable, neutron-free energy generation. However, its implementation is hindered by extreme operational conditions, such as plasma temperatures exceeding billions of degrees and the complexity of controlling high-energy particles. Traditional control systems face significant challenges in managing the highly dynamic and non-linear behavior of the plasma. In this paper, we propose a novel approach utilizing backpropagation-based neural networks to autonomously control key parameters in a proton-boron fusion reactor. Our method leverages real-time feedback and learning from physical data to adapt to changing plasma conditions, offering a potential breakthrough in stable and efficient p-11B fusion. Furthermore, we expand on the scalability and generalization of our approach to other fusion systems and future AI technologies.

Paper Structure

This paper contains 50 sections, 1 equation.