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Energy saving analysis and management modeling based on index decomposition analysis integrated energy saving potential method: Application to complex chemical processes

机译:基于指标分解分析综合节能潜力方法的节能分析与管理建模:在复杂化工过程中的应用

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摘要

Energy saving and management of complex chemical processes play a crucial role in the sustainable development procedure. In order to analyze the effect of the technology, management level, and production structure having on energy efficiency and energy saving potential, this paper proposed a novel integrated framework that combines index decomposition analysis (IDA) with energy saving potential method. The IDA method can obtain the level of energy activity, energy hierarchy and energy intensity effectively based on data-drive to reflect the impact of energy usage. The energy saving potential method can verify the correctness of the improvement direction proposed by the IDA method. Meanwhile, energy efficiency improvement, energy consumption reduction and energy savings can be visually discovered by the proposed framework. The demonstration analysis of ethylene production has verified the practicality of the proposed method. Moreover, we can obtain the corresponding improvement for the ethylene production based on the demonstration analysis. The energy efficiency index and the energy saving potential of these worst months can be increased by 6.7% and 7.4%, respectively. And the carbon emissions can be reduced by 7.4-8.2%. (C) 2017 Elsevier Ltd. All rights reserved.
机译:节能和复杂化学过程的管理在可持续发展过程中起着至关重要的作用。为了分析技术,管理水平和生产结构对节能和节能潜力的影响,本文提出了一种将指标分解分析(IDA)与节能潜力方法相结合的新型集成框架。 IDA方法可以基于数据驱动有效地获取能源活动水平,能源等级和能源强度,以反映能源使用的影响。节能潜力方法可以验证IDA方法提出的改进方向的正确性。同时,通过所提出的框架可以直观地发现能源效率的提高,能耗的减少和节能。乙烯生产的论证分析证明了该方法的实用性。此外,通过论证分析,我们可以得到乙烯生产的相应改进。这些最坏月份的能效指数和节能潜力可以分别提高6.7%和7.4%。碳排放量可减少7.4-8.2%。 (C)2017 Elsevier Ltd.保留所有权利。

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