Quantum Machine Learning for Photovoltaic Topology Optimization

2022 13th International Conference on Information, Intelligence, Systems & Applications (IISA)(2022)

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摘要
Photovoltaic array topology optimization was shown to improve efficiency in renewable energy plants. Previous studies demonstrated improvements via simulation at the level of 7-12% or more. In this paper, we describe solar array topology optimization systems based on quantum machine learning algorithms. The idea of using quantum machine learning can be useful in cases where the objective is to optimize power output in large sites with several thousands of panels. We specifically propose and assess a quantum circuit for a neural network implementation for photovoltaic topology optimization. Results and comparisons are presented using classical and quantum neural network implementations. In addition, solar array topology optimization simulations and comparisons using a quantum neural network are described for different numbers of qubits.
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关键词
neural network implementation,photovoltaic topology optimization,quantum neural network,solar array topology optimization simulations,quantum machine learning,photovoltaic array topology optimization,renewable energy plants,solar array topology optimization systems,quantum circuit
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