Carbon footprint tracing and pattern recognition framework based on visual analytics

IF 10.9 1区 环境科学与生态学 Q1 ENVIRONMENTAL STUDIES
Jieyang Peng , Andreas Kimmig , Dongkun Wang , Zhibin Niu , Xiufeng Liu , Xiaoming Tao , Jivka Ovtcharova
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引用次数: 0

Abstract

With growing concerns about global warming, industrial carbon footprints have garnered increased attention due to the energy-intensive and uninterrupted operation of industrial equipment. Fine-grained modeling and visual analytics of industrial carbon footprints can reveal the mechanisms behind the formation and evolution of carbon chains. However, the mechanisms underlying industrial carbon emissions remain unclear, leading to a lack of accuracy and specificity in current carbon quantification models. To address these gaps, we developed a comprehensive quantitative model that considers specific pathways involved in industrial processes, providing more accurate estimations of carbon emissions. We also designed an innovative visual analytical framework that uncovers implicit patterns and spatiotemporal distributions of industrial carbon footprints. By comparing our approach with state-of-the-art studies, we validated the superiority of our method in terms of its intuitiveness and interactivity. Empirical studies revealed potential emission patterns and spatiotemporal dynamics that traditional studies could not identify. We identified four consistent patterns in industrial carbon emissions: normal, high-emission, low-emission, and dedicated patterns. Our findings also led to optimization suggestions for different emission patterns, highlighting the system’s capability in extracting valuable insights from workshop carbon emission data. Our research showcases a unified visual analytical approach that supports exploratory analysis, and we believe it will uncover implicit knowledge within industrial carbon data, providing valuable insights for optimization.

基于视觉分析的碳足迹追踪和模式识别框架
随着人们对全球变暖问题的日益关注,由于工业设备的能源密集型和不间断运行,工业碳足迹日益受到重视。对工业碳足迹进行精细建模和可视化分析,可以揭示碳链形成和演变背后的机制。然而,工业碳排放的内在机制仍不清楚,导致目前的碳量化模型缺乏准确性和针对性。为了弥补这些不足,我们开发了一个综合量化模型,该模型考虑了工业流程中涉及的特定路径,可提供更准确的碳排放估算。我们还设计了一个创新的可视化分析框架,以揭示工业碳足迹的隐含模式和时空分布。通过将我们的方法与最先进的研究进行比较,我们验证了我们的方法在直观性和互动性方面的优越性。实证研究揭示了传统研究无法识别的潜在排放模式和时空动态。我们发现了工业碳排放的四种一致模式:正常模式、高排放模式、低排放模式和专用模式。我们的研究结果还针对不同的排放模式提出了优化建议,这凸显了该系统从车间碳排放数据中提取有价值见解的能力。我们的研究展示了一种支持探索性分析的统一可视化分析方法,我们相信它将发现工业碳数据中的隐含知识,为优化提供有价值的见解。
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来源期刊
Sustainable Production and Consumption
Sustainable Production and Consumption Environmental Science-Environmental Engineering
CiteScore
17.40
自引率
7.40%
发文量
389
审稿时长
13 days
期刊介绍: Sustainable production and consumption refers to the production and utilization of goods and services in a way that benefits society, is economically viable, and has minimal environmental impact throughout its entire lifespan. Our journal is dedicated to publishing top-notch interdisciplinary research and practical studies in this emerging field. We take a distinctive approach by examining the interplay between technology, consumption patterns, and policy to identify sustainable solutions for both production and consumption systems.
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