Persistent Homology in Solar Production

Revathi G, G. Ilango
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Abstract

Persistent homology, an algebraic topology-based mathematical framework, presents an innovative method for capturing and characterizing the inherent topological features present in time series datasets. The research aims to evaluate the efficacy of features derived from persistent homology in enhancing the accuracy and interpretability of classification models. This investigation contributes to the expanding convergence of topology and time series analysis, providing valuable insights into the potential of persistent homology for extracting information from temporal data. The study specifically focuses on the analysis of region-wise solar production data obtained from India for the year 2022. The examination of this data is conducted using R-Software, and the resulting topological properties are represented through persistent diagrams.
太阳能生产中的持久同源性
持久同源性是一种基于代数拓扑的数学框架,它提出了一种创新方法,用于捕捉和描述时间序列数据集中存在的固有拓扑特征。这项研究旨在评估从持久同源性中提取的特征在提高分类模型的准确性和可解释性方面的功效。这项研究有助于拓扑学和时间序列分析不断扩大的融合,为持久同源性从时间数据中提取信息的潜力提供有价值的见解。本研究特别关注对 2022 年印度地区太阳能生产数据的分析。使用 R 软件对这些数据进行了检查,并通过持久图来表示由此产生的拓扑特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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