Unveiling the nexus and promoting integration of diverse factors: Prospects of big data-driven artificial intelligence technology in achieving carbon neutrality in Chongming District

Wenbo Zhu , Renzhou Gui , Ru Guo
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Abstract

Climate change is one of the most pressing challenges facing the world today. The large amount of greenhouse gas emissions produced by human activities, especially the emission of carbon dioxide, is an important driving factor behind climate issues. Under the background of China’s “3060” decarbonization goal”, Chongming District in Shanghai is actively promoting the construction of a world-class ecological island and is committed to creating a carbon–neutral demonstration zone with global influence. However, Chongming District faces challenges as the mechanism of carbon-neutrality transition path remains unclear. The data related to evaluating carbon neutrality status are heterogeneous from multiple sources. It is difficult to effectively implement relevant evaluation and response measures, impeding the progress of its low-carbon transformation. In response to the aforementioned challenges, this paper will propose and discuss the potential methods based on the new generation of information technology, represented by big data and artificial intelligence. These technologies aim to facilitate the integration of diverse factors, including carbon, and explore the nexus among them, thus exploring pathways for low-carbon transformation, and ultimately achieving decarbonization goal in Chongming District. Hopefully, the research conducted in this paper will contribute to the efforts of China and the global community in addressing carbon-related challenges and advancing towards a more sustainable and low-carbon future.

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揭示多因素联系促进多因素融合:大数据驱动的人工智能技术在崇明区实现碳中和中的应用前景
气候变化是当今世界面临的最紧迫的挑战之一。人类活动产生的大量温室气体排放,特别是二氧化碳的排放,是气候问题背后的重要驱动因素。在中国“3060”脱碳目标的背景下,上海市崇明区积极推进世界级生态岛建设,致力于打造具有全球影响力的碳中和示范区。然而,由于碳中和过渡路径的机制尚不明确,崇明区面临挑战。与评估碳中和状况相关的数据来自多个来源,具有异质性。相关评估和应对措施难以有效实施,阻碍了其低碳转型的进展。针对上述挑战,本文将提出并讨论以大数据和人工智能为代表的新一代信息技术的潜在方法。这些技术旨在促进包括碳在内的多种因素的整合,并探索它们之间的联系,从而探索低碳转型的途径,最终实现崇明区的脱碳目标。希望本文的研究将有助于中国和国际社会应对碳相关挑战,朝着更可持续、低碳的未来迈进。
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