Prediction of Solar Irradiation Using Quantum Support Vector Machine Learning Algorithm

HTML  XML Download Download as PDF (Size: 1046KB)  PP. 293-301  
DOI: 10.4236/sgre.2016.712022    2,364 Downloads   6,301 Views  Citations

ABSTRACT

Classical machine learning, which is at the intersection of artificial intelligence and statistics, investigates and formulates algorithms which can be used to discover patterns in the given data and also make some forecasts based on the given data. Classical machine learning has its quantum part, which is known as quantum machine learning (QML). QML, which is a field of quantum computing, uses some of the quantum mechanical principles and concepts which include superposition, entanglement and quantum adiabatic theorem to assess the data and make some forecasts based on the data. At the present moment, research in QML has taken two main approaches. The first approach involves implementing the computationally expensive subroutines of classical machine learning algorithms on a quantum computer. The second approach concerns using classical machine learning algorithms on a quantum information, to speed up performance of the algorithms. The work presented in this manuscript proposes a quantum support vector algorithm that can be used to forecast solar irradiation. The novelty of this work is in using quantum mechanical principles for application in machine learning. Python programming language was used to simulate the performance of the proposed algorithm on a classical computer. Simulation results that were obtained show the usefulness of this algorithm for predicting solar irradiation.

Share and Cite:

Senekane, M. and Taele, B. (2016) Prediction of Solar Irradiation Using Quantum Support Vector Machine Learning Algorithm. Smart Grid and Renewable Energy, 7, 293-301. doi: 10.4236/sgre.2016.712022.

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.