一种用于排放计算的新型排序排放因子检索方法

Sathees Paskaran, A. Gamage, S. Chandrasiri
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引用次数: 0

摘要

排放因子的选择是碳管理系统(CMS)排放计算中的一项重要任务。由于减少碳足迹的规定,对具有更好可用性和可扩展性的CMS的需求增加。然而,大多数CMS假设用户非常了解排放技术。为了规避这些问题,作者提出了一种采用综合评分方法构建EF排名系统的方法。它将每个EF视为文档单元,并将用户提供的排放活动信息视为搜索查询。该系统使用向量空间模型(VSM)和自然语言处理(NLP)词嵌入技术的线性组合来对EF文档进行精确和非精确搜索查询排序。该方法对“glove-wiki-gigaword-300”在0.41线性组合参数下的平均精度(MAP)测量的用户满意度比VSM模型好近30%,比词嵌入模型好127%。此外,本文还讨论了性能指标,如速度、未来EFs可伸缩性和与解决方案的整体可伸缩性相关的系统资源利用率。与单一排序方法(VSM或Word Embedding)相比,该方法可以为EF选择任务提供更好的可用性和可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Ranked Emission-Factor Retrieval for Emission Calculation
Emission Factors (EF) selection is a vital task during Carbon Management Systems (CMS) emission calculation. Due to Carbon footprint reduction regulations, there is a demand increase for CMS with better usability and scalability. However, most CMS assumes users know emission technologies well. To circumvent these problems, authors have proposed an approach to building an EF ranking system with a combined scoring approach. It has considered each EF as a document unit and emission activity information provided by the user as the search query. This system uses a linear combination of the Vector Space Model (VSM) and Natural Language Processing (NLP) Word Embedding techniques to rank EF documents for exact and non-exact search queries. This approach's user satisfaction measured with Mean Average Precision (MAP) for “glove-wiki-gigaword-300” at 0.41 linear combination parameter was nearly 30% better than the VSM model and 127% more than the word embedding. In addition, the paper discusses performance metrics such as speed, future EFs scalability, and system resource utilization concerning the solution's overall scalability. This approach can provide better usability and scalable for EF selection tasks compared to single-ranking approaches (VSM or Word Embedding).
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