Practical Quantum K-Means Clustering: Performance Analysis and Applications in Energy Grid Classification [article]

Stephen DiAdamo, Corey O'Meara, Giorgio Cortiana, Juan Bernabé-Moreno
2021 arXiv   pre-print
In this work, we aim to solve a practical use-case of unsupervised clustering which has applications in predictive maintenance in the energy operations sector using quantum computers. Using only cloud access to quantum computers, we complete a thorough performance analysis of what some current quantum computing systems are capable of for practical applications involving non-trivial mid-to-high dimensional datasets. We first benchmark how well distance estimation can be performed using two
more » ... ent metrics based on the swap-test, using both angle and amplitude data embedding. Next, for the clustering performance analysis, we generate sets of synthetic data with varying cluster variance and compare simulation to physical hardware using the two metrics. From the results of this performance analysis, we propose a general, competitive, and parallelized version of quantum k-means clustering to avoid some pitfalls discovered due to noisy hardware and apply the approach to a real energy grid clustering scenario. Using real-world German electricity grid data, we show that the new approach improves the balanced accuracy of the standard quantum k-means clustering by 67.8% with respect to the labeling of the classical algorithm.
arXiv:2112.08506v1 fatcat:3kr6tyqtgrekjkx4ecvvg32cme