协同应用深度学习模型,提高碳中和异常检测的准确性和预测能力

Yi Wang, Tianyu Wang, Wanyu Wang, Yiru Hou
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引用次数: 0

摘要

面对日益加剧的全球气候变化,碳中和已成为遏制温室气体排放和应对与气候挑战相关的复杂问题的关键战略。然而,实现碳中和提出了一个艰巨的挑战:识别和减少碳封存过程中的异常现象。这些异常现象可能导致二氧化碳意外泄漏、排放或系统故障,从而危及碳中和计划的可行性和适应性。这项研究引入了 ResNet-BIGRU-TPA 网络,这是一个将深度学习技术与时间序列关注机制相结合的创新模型。研究的主要重点是解决碳抵消领域异常检测的复杂任务,特别是提高识别各种复杂异常事件的精度。通过对四个不同数据集的严格实验验证,该模型表现出了卓越的性能。
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Collaborative Application of Deep Learning Models for Enhanced Accuracy and Prediction in Carbon Neutrality Anomaly Detection
In the face of intensifying global climate change, carbon neutrality has emerged as a pivotal strategy to curb greenhouse gas emissions and confront the complexities associated with climate challenges. However, achieving carbon neutrality poses a formidable challenge: the identification and mitigation of anomalies within the carbon sequestration process. These anomalies can result in unintended carbon dioxide leakage, emissions, or system failures, thus jeopardizing the feasibility and resilience of carbon neutrality initiatives. This research introduces the ResNet-BIGRU-TPA network, an innovative model that integrates deep learning techniques with time series attention mechanisms. The primary focus centers on addressing the intricate task of anomaly detection within the realm of carbon offsetting, specifically aiming to enhance precision in identifying a wide array of complex anomalous events. Through rigorous experimental validation across four diverse datasets, the model has exhibited exceptional performance.
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