PyARC 住宅负荷曲线重构 Python 算法

IF 2.4 4区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING SoftwareX Pub Date : 2024-09-13 DOI:10.1016/j.softx.2024.101878
Lorenzo Giannuzzo , Daniele Salvatore Schiera , Francesco Demetrio Minuto , Andrea Lanzini
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引用次数: 0

摘要

由于数据稀缺以及通过统计分析获得的标准曲线不完善,住宅总体的负荷曲线分析遇到了挑战。在缺乏每小时数据的情况下,许多方法都依赖于标准曲线,这可能会导致消耗量估算出现重大误差,尤其是在评估特定集合时。本文介绍的 PyARC 是一种基于 Python 的算法,可通过自定义消耗数据进行训练,通过使用从类似用户中提取的类型学特征来解决与评估特定集合能源消耗相关的问题,从而提高准确性。该算法的创新方法使用关联规则挖掘和随机森林分类来重构集合体的负荷曲线,为在数据有限的情况下估算电力负荷提供了更稳健的解决方案。
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PyARC the Python Algorithm for Residential load profiles reConstruction

Load profiling for residential aggregates encounters challenges due to data scarcity and the inadequacy of standard profiles obtained from statistical analyses. In the absence of hourly data, many methods rely on standard profiles, which could lead to significant errors in consumption estimation, especially for evaluating specific aggregates. This article presents PyARC, a Python-based algorithm trainable with customizable consumption data, which addresses the problem related to evaluating the energy consumption of specific aggregates by using typological profiles extracted from similar users, thereby improving accuracy. The algorithm's innovative approach uses Association Rule Mining and Random Forest Classification to reconstruct the load profiles of aggregates, providing a more robust solution for estimating the electrical load with limited data.

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来源期刊
SoftwareX
SoftwareX COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
5.50
自引率
2.90%
发文量
184
审稿时长
9 weeks
期刊介绍: SoftwareX aims to acknowledge the impact of software on today''s research practice, and on new scientific discoveries in almost all research domains. SoftwareX also aims to stress the importance of the software developers who are, in part, responsible for this impact. To this end, SoftwareX aims to support publication of research software in such a way that: The software is given a stamp of scientific relevance, and provided with a peer-reviewed recognition of scientific impact; The software developers are given the credits they deserve; The software is citable, allowing traditional metrics of scientific excellence to apply; The academic career paths of software developers are supported rather than hindered; The software is publicly available for inspection, validation, and re-use. Above all, SoftwareX aims to inform researchers about software applications, tools and libraries with a (proven) potential to impact the process of scientific discovery in various domains. The journal is multidisciplinary and accepts submissions from within and across subject domains such as those represented within the broad thematic areas below: Mathematical and Physical Sciences; Environmental Sciences; Medical and Biological Sciences; Humanities, Arts and Social Sciences. Originating from these broad thematic areas, the journal also welcomes submissions of software that works in cross cutting thematic areas, such as citizen science, cybersecurity, digital economy, energy, global resource stewardship, health and wellbeing, etcetera. SoftwareX specifically aims to accept submissions representing domain-independent software that may impact more than one research domain.
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